592 results on '"nonlinear methods"'
Search Results
2. The Impact of Maternal Obesity on Fetal Heart Rate Variability During Labor: A Non-Linear Analysis
- Author
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Martinez-Reyna, Emiliano, Dorantes-Méndez, Guadalupe, Espinosa-Guerrero, Araceli, Reyes-Lagos, José Javier, Magjarević, Ratko, Series Editor, Ładyżyński, Piotr, Associate Editor, Ibrahim, Fatimah, Associate Editor, Lackovic, Igor, Associate Editor, Rock, Emilio Sacristan, Associate Editor, Flores Cuautle, José de Jesús Agustín, editor, Benítez-Mata, Balam, editor, Reyes-Lagos, José Javier, editor, Hernandez Acosta, Humiko Yahaira, editor, Ames Lastra, Gerardo, editor, Zuñiga-Aguilar, Esmeralda, editor, Del Hierro-Gutierrez, Edgar, editor, and Salido-Ruiz, Ricardo Antonio, editor
- Published
- 2025
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3. Re-evaluation of One-Dimensional Site Response Methods Using Vs Adjusted Borehole Arrays.
- Author
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Kuan, Pei-Hsien, Tsai, Chi-Chin, and Park, Duhee
- Abstract
Site response analyses are crucial for estimating local effects on ground shaking during earthquakes. However, recent investigations utilizing KiK-net borehole array data have revealed a consistent underprediction of high-frequency ground motion by both equivalent linear and fully nonlinear methods, contrary to expectations. This study reassess the accuracy of 1D site response analysis methods, including equivalent linear, frequency-dependent equivalent linear model, and nonlinear analysis, by integrating depth-dependent stiffness and adjusted shear wave velocity. Nine instrumented vertical arrays, featuring a total of 132 recorded ground motions, are subjected to analysis. For the sites and ground motions considered, the results indicate that the nonlinear method performs without significant bias, whereas the equivalent linear and frequency-dependent equivalent linear methods tend to respectively underestimate and overestimate high-frequency results. To enhance accuracy, it is recommended to incorporate depth-dependent stiffness and adjusted shear wave velocity when predicting high-frequency ground motion in site response analyses. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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- View/download PDF
4. Asymmetric Effects of Local and Global Variables on Domestic Food Prices in China: An Evidence from Quantile on Quantile Regression Technique.
- Author
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Chang, Bisharat Hussain, K. Saxena, Ashish, Privara, Andrej, Uddin, Mohammed Ahmar, and Cruz, Sebastian
- Subjects
FOOD prices ,QUANTILE regression ,LOCAL foods ,QUANTILES ,COHERENCE (Physics) - Abstract
The existing research investigates the impact of global and national variables on local food prices. This study adds to the current research by examining such impact at various quantiles, frequencies, and time periods. Utilizing data from January 2004 to June 2021, our research incorporates six global factors and three domestic factors as explanatory variables. Furthermore, this study employs cutting-edge econometric techniques such as Quantile-on-Quantile Regression (QQR), Wavelet Coherence (WC), and Granger Causality in Quantiles (GCQ). Similarly, this research utilizes the Quantile Regression (QR) method to assess the robustness of the results. Results based on the GCQ technique indicate that the association between the variables exists at most quantiles, except for the lowest, and middle quantiles for all variables. Moreover, the WC findings demonstrate a strong correlation between the determinants of local food prices and their occurrences at various moments and intervals. Likewise, QQR results indicate that the impact of independent variables on local food prices varies across quantiles. The QR technique also supports these results. Finally, our research suggests policy recommendations based on the findings of this study. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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5. GCN and Non-negative Matrix Factorization-Based Community Detection Mechanism
- Author
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Saxena, Priyanka, Saxena, Neha, Kumar, Rakesh, Angrisani, Leopoldo, Series Editor, Arteaga, Marco, Series Editor, Chakraborty, Samarjit, Series Editor, Chen, Shanben, Series Editor, Chen, Tan Kay, Series Editor, Dillmann, Rüdiger, Series Editor, Duan, Haibin, Series Editor, Ferrari, Gianluigi, Series Editor, Ferre, Manuel, Series Editor, Hirche, Sandra, Series Editor, Jabbari, Faryar, Series Editor, Jia, Limin, Series Editor, Kacprzyk, Janusz, Series Editor, Khamis, Alaa, Series Editor, Kroeger, Torsten, Series Editor, Li, Yong, Series Editor, Liang, Qilian, Series Editor, Martín, Ferran, Series Editor, Ming, Tan Cher, Series Editor, Minker, Wolfgang, Series Editor, Misra, Pradeep, Series Editor, Mukhopadhyay, Subhas, Series Editor, Ning, Cun-Zheng, Series Editor, Nishida, Toyoaki, Series Editor, Oneto, Luca, Series Editor, Panigrahi, Bijaya Ketan, Series Editor, Pascucci, Federica, Series Editor, Qin, Yong, Series Editor, Seng, Gan Woon, Series Editor, Speidel, Joachim, Series Editor, Veiga, Germano, Series Editor, Wu, Haitao, Series Editor, Zamboni, Walter, Series Editor, Tan, Kay Chen, Series Editor, Agrawal, Jitendra, editor, Shukla, Rajesh K., editor, Sharma, Sanjeev, editor, and Shieh, Chin-Shiuh, editor
- Published
- 2024
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6. Empirical dynamic programming for model‐free ecosystem‐based management
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Stephan B. Munch and Antoine Brias
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approximate dynamic programming ,ecosystem management ,Gaussian process regression ,nonlinear methods ,temporal difference learning ,time‐delay embedding ,Ecology ,QH540-549.5 ,Evolution ,QH359-425 - Abstract
Abstract Quantitative ecosystem‐based management typically relies on hypothetical ecosystem models that are difficult to validate for all but the best‐studied systems. Here, we develop a management scheme that is based on predictive models driven by the observed dynamics. We show that near‐optimal management policies can be constructed from time‐series data by merging empirical dynamic modelling and stochastic dynamic programming. The Empirical Dynamic Programming approach performs well in cases we examined and outperformed a commonly used single‐species alternative. We expect model‐free ecosystem‐based management to be of use wherever ecosystem dynamics are uncertain or observations of the system do not cover all relevant species.
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- 2024
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7. Empirical dynamic programming for model‐free ecosystem‐based management.
- Author
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Munch, Stephan B. and Brias, Antoine
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DYNAMIC programming ,ECOSYSTEM dynamics ,UNCERTAIN systems ,ECOLOGICAL disturbances ,KRIGING ,STOCHASTIC programming - Abstract
Quantitative ecosystem‐based management typically relies on hypothetical ecosystem models that are difficult to validate for all but the best‐studied systems.Here, we develop a management scheme that is based on predictive models driven by the observed dynamics.We show that near‐optimal management policies can be constructed from time‐series data by merging empirical dynamic modelling and stochastic dynamic programming. The Empirical Dynamic Programming approach performs well in cases we examined and outperformed a commonly used single‐species alternative.We expect model‐free ecosystem‐based management to be of use wherever ecosystem dynamics are uncertain or observations of the system do not cover all relevant species. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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- View/download PDF
8. Time, frequency, and quantile-based impacts of disaggregated electricity generation on carbon neutrality: evidence from leading European Union countries.
- Author
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Kartal, Mustafa Tevfik, Pata, Ugur Korkut, Kılıç Depren, Serpil, and Erdogan, Sinan
- Subjects
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QUANTILE regression , *ELECTRIC power production , *CARBON offsetting , *WAVELET transforms , *FOSSIL fuels , *COUNTRIES , *CARBON emissions - Abstract
Due to increasing geopolitical tensions and disruption of gas supplies, European countries have been looking for alternatives for electricity generation (EG). As part of this process, one of the most important goals for long-term sustainability is to ensure carbon neutrality. Therefore, this study analyzes time, frequency, and quantile-based impacts of EG from different electricity generation sources (i.e., renewable, nuclear, and fossil fuels) on carbon neutrality, focusing on four leading European countries. The study applies the wavelet transform coherence (WC), quantile-on-quantile regression (QQ), and Granger causality in quantiles (GQ) to high-frequency daily data between January 2, 2019 and March 10, 2023. Results show that (i) there is a strong time and frequency dependence between EG and CO2 emissions across countries, while results vary by EG sources and countries; (ii) renewable EG dampens CO2 emissions. At higher quantiles, a higher share of renewable EG lowers CO2 emissions in Germany and Spain, while they increase in France; (iii) nuclear EG is beneficial only for the United Kingdom. (iv) Fossil EG increases CO2 emissions in all countries. Excessive fossil EG leads to more CO2 emissions at higher quantiles; (v) the impacts of EG on CO2 emissions have a time-, frequency-, quantile-, country-, and EG source-dependent structure. The outcomes of the study demonstrates that the ideal EG source for countries is mainly renewable EG, while in the case of the United Kingdom, nuclear EG could be an alternative for improving the environment while reducing fossil fuels. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
9. Food prices response to global and national factors: Evidence beyond asymmetry
- Author
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Omer Faruk Derindag, Bisharat Hussain Chang, Raheel Gohar, Wing-Keung Wong, and Niaz Ahmed Bhutto
- Subjects
national factors ,global factors ,domestic food prices ,nonlinear methods ,India ,Q13 ,Finance ,HG1-9999 ,Economic theory. Demography ,HB1-3840 - Abstract
AbstractThe current series of studies examine how local food prices are affected by domestic and international factors. This research advances the existing body of knowledge by examining this effect at different quantiles, frequencies, and times. We use research data from January 1999 to August 2022 using three local and six global variables as independent variables. Additionally, our study uses recent econometric methods, including Wavelet Coherence, Quantile-on-Quantile Regression (QQR), and Granger Causality in Quantiles (GCQ). Moreover, this research uses the Quantile Regression (QR) approach to determine how reliable the findings are. Based on the GCQ approach, the results demonstrate that the correlation persists at most of the quantiles. Moreover, the WC results demonstrate a substantial association between local prices of food and the independent factors across various frequencies and times. Additionally, QQR estimates demonstrate that the impact of exogenous variables on food prices vary among quantiles. These findings are also supported by the QR method. Last but not least, our study offers policy suggestions obtained based on the results of this study.
- Published
- 2023
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10. The Dynamical Hypothesis in Situ: Challenges and Opportunities for a Dynamical Social Approach to Interpersonal Coordination.
- Author
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Paxton, Alexandra
- Abstract
Over the past three decades, Van Gelder's dynamical hypothesis has been instrumental in reconceptualizing the ways in which perception‐action‐cognition unfolds over time and in context. Here, I examine how the dynamical approach has enriched the theoretical understanding of social dynamics within cognitive science, with a particular focus on
interpersonal coordination . I frame this review around seven principles in dynamical systems: three that are well‐represented in interpersonal coordination research to date (emergent behavior, context‐sensitive behavior , andattractors ) and four that could be useful opportunities for future growth (hysteresis, sensitivity to initial conditions, equifinality , andreciprocal compensation ). In addition to identifying specific promising lines of theoretical inquiry, I focus on the significant potential afforded by computationally intensive science—especially in naturally occurring data or trace data. Building on the foundation laid over the past three decades, I argue that looking to increasingly situated and naturalistic settings (and data) is not only necessary to realize thefull commitment to the dynamical hypothesis but is also critical to building parsimonious and principled theories of social phenomena. [ABSTRACT FROM AUTHOR]- Published
- 2023
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11. Autonomic nervous system assessment using heart rate variability.
- Author
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Grégoire, Jean-Marie, Gilon, Cédric, Carlier, Stéphane, and Bersini, Hugues
- Subjects
HEART beat ,AUTONOMIC nervous system ,PARASYMPATHETIC nervous system ,VENTRICULAR arrhythmia ,AMBULATORY electrocardiography - Abstract
The role of the autonomic nervous system in the onset of supraventricular and ventricular arrhythmias is well established. It can be analysed by the spontaneous behaviour of the heart rate with ambulatory ECG recordings, through heart rate variability measurements. Input of heart rate variability parameters into artificial intelligence models to make predictions regarding the detection or forecast of rhythm disorders is becoming routine and neuromodulation techniques are now increasingly used for their treatment. All this warrants a reappraisal of the use of heart rate variability for autonomic nervous system assessment. Measurements performed over long periods such as 24H-variance, total power, deceleration capacity, and turbulence are suitable for estimating the individual basal autonomic status. Spectral measurements performed over short periods provide information on the dynamics of systems that disrupt this basal balance and may be part of the triggers of arrhythmias, as well as premature atrial or ventricular beats. All heart rate variability measurements essentially reflect the modulations of the parasympathetic nervous system which are superimposed on the impulses of the adrenergic system. Although heart rate variability parameters have been shown to be useful for risk stratification in patients with myocardial infarction and patients with heart failure, they are not part of the criteria for prophylactic implantation of an intracardiac defibrillator, because of their high variability and the improved treatment of myocardial infarction. Graphical methods such as Poincaré plots allow quick screening of atrial fibrillation and are set to play an important role in the e-cardiology networks. Although mathematical and computational techniques allow manipulation of the ECG signal to extract information and permit their use in predictive models for individual cardiac risk stratification, their explicability remains difficult and making inferences about the activity of the ANS from these models must remain cautious. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
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12. Scatter Comparison of Heart Rate Variability Parameters
- Author
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Pater, Antonina, Soliński, Mateusz, Kacprzyk, Janusz, Series Editor, Pal, Nikhil R., Advisory Editor, Bello Perez, Rafael, Advisory Editor, Corchado, Emilio S., Advisory Editor, Hagras, Hani, Advisory Editor, Kóczy, László T., Advisory Editor, Kreinovich, Vladik, Advisory Editor, Lin, Chin-Teng, Advisory Editor, Lu, Jie, Advisory Editor, Melin, Patricia, Advisory Editor, Nedjah, Nadia, Advisory Editor, Nguyen, Ngoc Thanh, Advisory Editor, Wang, Jun, Advisory Editor, Piaseczna, Natalia, editor, Gorczowska, Magdalena, editor, and Łach, Agnieszka, editor
- Published
- 2022
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13. Evaluation of the Methods for Nonlinear Analysis of Heart Rate Variability.
- Author
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Gospodinova, Evgeniya, Lebamovski, Penio, Georgieva-Tsaneva, Galya, and Negreva, Mariya
- Subjects
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HEART beat , *NONLINEAR analysis , *EVALUATION methodology , *ARRHYTHMIA , *FRACTALS , *STANDARD deviations - Abstract
The dynamics of cardiac signals can be studied using methods for nonlinear analysis of heart rate variability (HRV). The methods that are used in the article to investigate the fractal, multifractal and informational characteristics of the intervals between heartbeats (RR time intervals) are: Rescaled Range, Detrended Fluctuation Analysis, Multifractal Detrended Fluctuation Analysis, Poincaré plot, Approximate Entropy and Sample Entropy. Two groups of people were studied: 25 healthy subjects (15 men, 10 women, mean age: 56.3 years) and 25 patients with arrhythmia (13 men, 12 women, mean age: 58.7 years). The results of the application of the methods for nonlinear analysis of HRV in the two groups of people studied are shown as mean ± std. The effectiveness of the methods was evaluated by t-test and the parameter Area Under the Curve (AUC) from the Receiver Operator Curve (ROC) characteristics. The studied 11 parameters have statistical significance (p < 0.05); therefore, they can be used to distinguish between healthy and unhealthy subjects. It was established by applying the ROC analysis that the parameters Hq=2(MFDFA), F(α)(MFDFA) and SD2(Poincaré plot) have a good diagnostic value; H(R/S), α1(DFA), SD1/SD2(Poincaré plot), ApEn and SampEn have a very good score; α2(DFA), αall(DFA) and SD1(Poincaré plot) have an excellent diagnostic score. In conclusion, the methods used for nonlinear analysis of HRV have been evaluated as effective, and with their help, new perspectives are opened in the diagnosis of cardiovascular diseases. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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- View/download PDF
14. Association of heartbeat complexity with survival in advanced non-small cell lung cancer patients.
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Shuang Wu, Guangqiao Li, Man Chen, Sai Zhang, Yufu Zhou, Bo Shi, and Xiaochun Zhang
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NON-small-cell lung carcinoma ,CANCER patients ,HEART beat ,FREQUENCY-domain analysis ,UNCERTAINTY (Information theory) - Abstract
Background: Previous studies have shown that the predictive value of traditional linear (time domain and frequency domain) heart rate variability (HRV) for the survival of patients with advanced non-small cell lung cancer (NSCLC) is controversial. Nonlinear methods, based on the concept of complexity, have been used to evaluate HRV, providing a new means to reveal the physiological and pathological changes in HRV. This study aimed to assess the association between heartbeat complexity and overall survival in patients with advanced NSCLC. Methods: This study included 78 patients with advanced NSCLC (mean age: 62.0 ± 9.3 years). A 5-min resting electrocardiogram of advanced NSCLC patients was collected to analyze the following HRV parameters: time domain indicators, i.e., standard deviation of the normal-normal intervals (SDNN) and root mean square of successive interval differences (RMSSD); frequency domain indicators, i.e., total power (TP), low frequency power (LF), high frequency power (HF), and the ratio of LF to HF (LF/HF); nonlinear HRV indicators characterizing heartbeat complexity, i.e., approximate entropy (ApEn), sample entropy (SampEn), and recurrence quantification analysis (RQA) indexes: mean diagonal line length (Lmean), maximal diagonal line length (Lmax), recurrence rate (REC), determinism (DET), and shannon entropy (ShanEn). Results: Univariate analysis revealed that the linear frequency domain parameter HF and nonlinear RQA parameters Lmax, REC, and DET were significantly correlated with the survival of advanced NSCLC patients (all p < 0.05). After adjusting for confounders in the multivariate analysis, HF, REC, and DET were found to be independent prognostic factors for the survival of patients with advanced NSCLC (all p < 0.05). Conclusion: There was an independent association between heartbeat complexity and survival in advanced NSCLC patients. The nonlinear analysis method based on RQA may provide valuable additional information for the prognostic stratification of patients with advanced NSCLC and may supplement the traditional time domain and frequency domain analysis methods. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
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15. Probability of Initiation in Neutron Transport.
- Author
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Brown, Peter N.
- Subjects
- *
NEUTRON transport theory , *NUMERICAL solutions to integro-differential equations , *NUMERICAL solutions to equations , *NEUTRONS , *TRANSPORT equation - Abstract
We discuss the numerical solution of the nonlinear integro-differential equation for the probability of a divergent neutron chain in a stationary system (i.e., the probability of initiation (POI)). We follow the development described in Bell's classic paper on the stochastic theory of neutron transport. As noted by Bell, the linearized form of this equation resembles the linear adjoint neutron transport equation. A matrix formalism for the discretized steady state (or forward) neutron equation in slab geometry is first developed, and is then used to derive the discrete adjoint equation. A main advantage of this discrete development is that the resulting discrete adjoint equation does not depend upon how the multigroup cross sections for the forward problem are obtained. That is, we derive the discrete adjoint directly from the discrete forward equations rather than discretizing directly the adjoint equation. This also guarantees that the discrete adjoint operator is consistent with the inner product used to define the adjoint operator. We discuss three approaches for the numerical solution of the POI equations, and present numerical results on several test problems. The three solution methods are a simple fixed point iteration, a second approach that is akin to a nonlinear Power iteration, and a third approach which uses a Newton-Krylov nonlinear solver. We also give sufficient conditions to guarantee the existence and uniqueness of nontrivial solutions to our discrete POI equations when the discrete system is supercritical, and that only the trivial solution exists when the discrete system is subcritical. Our approach is modeled after the analysis presented for the continuous POI equations by Mokhtar-Kharroubi and Jarmouni-Idrissi, and by Pazy and Rabinowitz. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
16. Structural Health Monitoring (SHM) Study of Polymer Matrix Composite (PMC) Materials Using Nonlinear Vibration Methods Based on Embedded Piezoelectric Transducers.
- Author
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Dolbachian, Loan, Harizi, Walid, and Aboura, Zoheir
- Subjects
- *
STRUCTURAL health monitoring , *PIEZOELECTRIC transducers , *PIEZOELECTRIC detectors , *POLYVINYLIDENE fluoride , *POLYMERS - Abstract
Nowadays, nonlinear vibration methods are increasingly used for the detection of damage mechanisms in polymer matrix composite (PMC) materials, which are anisotropic and heterogeneous. The originality of this study was the use of two nonlinear vibration methods to detect different types of damage within PMC through an in situ embedded polyvinylidene fluoride (PVDF) piezoelectric sensor. The two used methods are nonlinear resonance (NLR) and single frequency excitation (SFE). They were first tested on damage introduced during the manufacturing of the smart PMC plates, and second, on the damage that occurred after the manufacturing. The results show that both techniques are interesting, and probably a combination of them will be the best choice for SHM purposes. During the experimentation, an accelerometer was used, in order to validate the effectiveness of the integrated PVDF sensor. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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- View/download PDF
17. Food prices response to global and national factors: Evidence beyond asymmetry.
- Author
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Derindag, Omer Faruk, Chang, Bisharat Hussain, Gohar, Raheel, Wong, Wing-Keung, and Bhutto, Niaz Ahmed
- Subjects
FOOD prices ,QUANTILE regression ,INDEPENDENT variables ,QUANTILES ,LOCAL foods - Abstract
The current series of studies examine how local food prices are affected by domestic and international factors. This research advances the existing body of knowledge by examining this effect at different quantiles, frequencies, and times. We use research data from January 1999 to August 2022 using three local and six global variables as independent variables. Additionally, our study uses recent econometric methods, including Wavelet Coherence, Quantile-on-Quantile Regression (QQR), and Granger Causality in Quantiles (GCQ). Moreover, this research uses the Quantile Regression (QR) approach to determine how reliable the findings are. Based on the GCQ approach, the results demonstrate that the correlation persists at most of the quantiles. Moreover, the WC results demonstrate a substantial association between local prices of food and the independent factors across various frequencies and times. Additionally, QQR estimates demonstrate that the impact of exogenous variables on food prices vary among quantiles. These findings are also supported by the QR method. Last but not least, our study offers policy suggestions obtained based on the results of this study. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
18. The entropy of RR intervals is associated to gestational age in full-term newborns with adequate weight for gestational age.
- Author
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Porto, Deyse Costa, Sande, Larissa Silva, Perrone, Ana Carolina Bahia, Campos, Ludmilla Ferreira de Souza, Couto, David Lomanto, da Silva, Jonas R. D., Passos, Rafael da Silva, Oliveira, Alinne Alves, and Pereira, Rafael
- Subjects
- *
PHYSICS , *CROSS-sectional method , *GESTATIONAL age , *PHYSIOLOGICAL adaptation , *BIRTH weight , *QUESTIONNAIRES - Abstract
Introduction: The variability of successive RR intervals has been pointed out as an indicator of systemic homeostasis. The entropy of successive RR intervals is associated with a greater adaptive capacity, which is essential after childbirth, characterized by a change from an intrauterine environment that constantly adapts to the fetal demands, to an extrauterine environment that requires constant biological adaptations by the neonate.Objectives: To analyze the association between gestational age (GA) and the entropy of RR intervals in term infants with adequate birth weight in the first hours of extrauterine life.Methods: In a cross-sectional study design maternal, labor and neonatal characteristics were collected from the obstetric records. Successive RR intervals were recorded from neonates up to 72 hours (i.e. 3 days) of birth.Subjects: Fifty term infants, healthy and with adequate birth weight. Outcome measures: the variability of RR intervals was analyzed obtaining the entropy of 1000 successive RR intervals. Pearson's correlation was used to evaluate the association between GA and the entropy of successive RR intervals, while linear regression was used to obtain the coefficient of determination (r2) as well as a prediction model. The adequacy of the prediction model was evaluated using the Komolgorov-Smirnov test to evaluate the residuals distribution.Results: There was a positive and significant association between the studied variables (r = 0.437; p = .002). The coefficient of determination allowed us to infer that approximately 19.3% of the RR interval entropy from the studied sample can be explained by the GA (r2 = 0.193; p = .002). The analysis of the residuals distribution confirmed that the regression model obtained here was adequate.Conclusion: Our results indicate that, even within a normal range of GA (≥37 a < 42 weeks) and birth weight, a longer intrauterine life allows a greater entropy of successive RR intervals, indicating a greater maturation of biological systems and adaptive capacity. [ABSTRACT FROM AUTHOR]- Published
- 2021
- Full Text
- View/download PDF
19. INTEREST RATES, HOUSEHOLD PORTFOLIO CHOICE AND ASSET PRICE CYCLES.
- Author
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ŞAHİN, Serçin and ÖĞÜT, Kaan İ.
- Subjects
PORTFOLIO management (Investments) ,PRICE fluctuations ,PRICE levels ,BUSINESS cycles ,ASSETS (Accounting) ,MONETARY policy ,STOCK prices - Abstract
Copyright of Journal of Financial Politic & Economic Reviews / Finans Politik & Ekonomik Yorumlar is the property of Journal of Financial Politic & Economic Reviews / Finans Politik & Ekomomik Yorumlar and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2021
20. Evaluation of nonlinear Iterative methods on pipe network.
- Author
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da Silva Teixeira, Guilherme, Vilalta-Alonso, Guillermo, and Mendes N., Lourival J.
- Subjects
- *
NEWTON-Raphson method , *PIPE - Abstract
The analysis and design of pipe networks is usually a very complex task and depending of many factors. The paper here presented explores issues related to the accuracy and robustness of three iterative nonlinear methods used for designing pipe networks: Hardy Cross method, Gradient method and Newton-Raphson method. The last two methods are implemented in EPANET and Matlab, through the fsolve function. In order to evaluate the performance of each numerical method, three pipe networks, were assessed. No differences in the results were found by using fsolve (of MatLab) and Hardy-Cross methods. However, the EPANET results show differences up to 115% regarding other two methods. This behavior can be explained by the magnitude of head loss and the flow rate in some tubes of the network with errors close to the errors set up and by the Nodal Newton-Raphson method used at EPANET's code. The Hardy Cross method proved to be robust on three evaluated cases. [ABSTRACT FROM AUTHOR]
- Published
- 2021
21. Photoplethysmography-derived approximate entropy and sample entropy as measures of analgesia depth during propofol–remifentanil anesthesia.
- Author
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Chen, Wanlin, Jiang, Feng, Chen, Xinzhong, Feng, Ying, Miao, Jiajun, Chen, Shali, Jiao, Cuicui, and Chen, Hang
- Abstract
The ability to monitor the physiological effect of the analgesic agent is of interest in clinical practice. Nonstationary changes would appear in photoplethysmography (PPG) during the analgesics-driven transition to analgesia. The present work studied the properties of nonlinear methods including approximate entropy (ApEn) and sample entropy (SampEn) derived from PPG responding to a nociceptive stimulus under various opioid concentrations. Forty patients with ASA I or II were randomized to receive one of the four possible remifentanil effect-compartment target concentrations (Ce
remi ) of 0, 1, 3, and 5 ng·ml−1 and a propofol effect-compartment target-controlled infusion to maintain the state entropy (SE) at 50 ± 10. Laryngeal mask airway (LMA) insertion was applied as a standard noxious stimulation. To optimize the performance of ApEn and SampEn, different coefficients were carefully evaluated. The monotonicity of ApEn and SampEn changing from low Ceremi to high Ceremi was assessed with prediction probabilities (PK ). The result showed that low Ceremi (0 and 1 ng·ml−1 ) could be differentiated from high Ceremi (3 and 5 ng·ml−1 ) by ApEn and SampEn. Depending on the coefficient employed in algorithm: ApEn with k = 0.15 yielded the largest PK value (0.875) whereas SampEn gained its largest PK of 0.867 with k = 0.2. Thus, PPG-based ApEn and SampEn with appropriate k values have the potential to offer good quantification of analgesia depth under general anesthesia. [ABSTRACT FROM AUTHOR]- Published
- 2021
- Full Text
- View/download PDF
22. Linear and Non-linear Quantification of the Respiratory Sinus Arrhythmia Using Support Vector Machines
- Author
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John Morales, Pascal Borzée, Dries Testelmans, Bertien Buyse, Sabine Van Huffel, and Carolina Varon
- Subjects
respiratory sinus arrhythmia ,heart rate variability ,support vector machines ,nonlinear methods ,biomedical data processing ,electrocardiogram ,Physiology ,QP1-981 - Abstract
Respiratory sinus arrhythmia (RSA) is a form of cardiorespiratory coupling. It is observed as changes in the heart rate in synchrony with the respiration. RSA has been hypothesized to be due to a combination of linear and nonlinear effects. The quantification of the latter, in turn, has been suggested as a biomarker to improve the assessment of several conditions and diseases. In this study, a framework to quantify RSA using support vector machines is presented. The methods are based on multivariate autoregressive models, in which the present samples of the heart rate variability are predicted as combinations of past samples of the respiration. The selection and tuning of a kernel in these models allows to solve the regression problem taking into account only the linear components, or both the linear and the nonlinear ones. The methods are tested in simulated data as well as in a dataset of polysomnographic studies taken from 110 obstructive sleep apnea patients. In the simulation, the methods were able to capture the nonlinear components when a weak cardiorespiratory coupling occurs. When the coupling increases, the nonlinear part of the coupling is not detected and the interaction is found to be of linear nature. The trends observed in the application in real data show that, in the studied dataset, the proposed methods captured a more prominent linear interaction than the nonlinear one.
- Published
- 2021
- Full Text
- View/download PDF
23. Convergent Validation of Methods for the Identification of Psychotherapeutic Phase Transitions in Time Series of Empirical and Model Systems
- Author
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Günter Schiepek, Helmut Schöller, Giulio de Felice, Sune Vork Steffensen, Marie Skaalum Bloch, Clemens Fartacek, Wolfgang Aichhorn, and Kathrin Viol
- Subjects
self-organization ,phase transitions ,pattern identification ,nonlinear methods ,change points ,real-time monitoring ,Psychology ,BF1-990 - Abstract
AimIn many cases, the dynamics of psychotherapeutic change processes is characterized by sudden and critical transitions. In theoretical terms, these transitions may be “phase transitions” of self-organizing nonlinear systems. Meanwhile, a variety of methods is available to identify phase transitions even in short time series. However, it is still an open question if different methods for timeseries analysis reveal convergent results indicating the moments of critical transitions and related precursors.Methods and ProceduresSeven concepts which are commonly used in nonlinear time series analysis were investigated in terms of their ability to identify changes in psychological time series: Recurrence Plots, Change Point Analysis, Dynamic Complexity, Permutation Entropy, Time Frequency Distributions, Instantaneous Frequency, and Synchronization Pattern Analysis, i.e., the dynamic inter-correlation of the system’s variables. Phase transitions were simulated by shifting control parameters in the Hénon map dynamics, in a simulation model of psychotherapy processes (one by an external shift of the control parameter and one created by a simulated control parameter shift), and three sets of empirical time series generated by daily self-ratings of patients during the treatment.ResultsThe applied methods showed converging results indicating the moments of dynamic transitions within an acceptable tolerance. The convergence of change points was confirmed statistically by a comparison to random surrogates. In the three simulated dynamics with known phase transitions, these could be identified, and in the empirical cases, the methods converged indicating one and the same transition (possibly the phase transitions of the cases). Moreover, changes that did not manifest in a shift of mean or variance could be detected.ConclusionChanges can occur in many different ways in the psychotherapeutic process. For instance, there can be very slow and small transitions or very high and sudden ones. The results show the validity and stability of different measures indicating pattern transitions and/or early warning signals of those transitions. This has profound implications for real-time monitoring in psychotherapy, especially in cases where a transition is not obvious to the eye. Reliably identifying points of change is mandatory also for research on precursors, which in turn can help improving treatment.
- Published
- 2020
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- View/download PDF
24. Linear and Non-linear Quantification of the Respiratory Sinus Arrhythmia Using Support Vector Machines.
- Author
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Morales, John, Borzée, Pascal, Testelmans, Dries, Buyse, Bertien, Van Huffel, Sabine, and Varon, Carolina
- Subjects
SINUS arrhythmia ,SUPPORT vector machines ,HEART beat ,SLEEP apnea syndromes ,AUTOREGRESSIVE models - Abstract
Respiratory sinus arrhythmia (RSA) is a form of cardiorespiratory coupling. It is observed as changes in the heart rate in synchrony with the respiration. RSA has been hypothesized to be due to a combination of linear and nonlinear effects. The quantification of the latter, in turn, has been suggested as a biomarker to improve the assessment of several conditions and diseases. In this study, a framework to quantify RSA using support vector machines is presented. The methods are based on multivariate autoregressive models, in which the present samples of the heart rate variability are predicted as combinations of past samples of the respiration. The selection and tuning of a kernel in these models allows to solve the regression problem taking into account only the linear components, or both the linear and the nonlinear ones. The methods are tested in simulated data as well as in a dataset of polysomnographic studies taken from 110 obstructive sleep apnea patients. In the simulation, the methods were able to capture the nonlinear components when a weak cardiorespiratory coupling occurs. When the coupling increases, the nonlinear part of the coupling is not detected and the interaction is found to be of linear nature. The trends observed in the application in real data show that, in the studied dataset, the proposed methods captured a more prominent linear interaction than the nonlinear one. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
25. Efficient Nonlinear RX Anomaly Detectors.
- Author
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Padron Hidalgo, Jose A., Perez-Suay, Adrian, Nar, Fatih, and Camps-Valls, Gustau
- Abstract
Current anomaly detection (AD) algorithms are typically challenged by either accuracy or efficiency. More accurate nonlinear detectors are typically slow and not scalable. In this letter, we propose two families of techniques to improve the efficiency of the standard kernel Reed–Xiaoli (KRX) method for AD by approximating the kernel function with either the data-independent random Fourier features or the data-dependent basis with the Nyström approach. We compare all methods for both real multi- and hyperspectral images. We show that the proposed efficient methods have a lower computational cost, and they perform similar to (or outperform) the standard KRX algorithm thanks to their implicit regularization effect. Last but not least, the Nyström approach has an improved power of detection. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
26. Convergent Validation of Methods for the Identification of Psychotherapeutic Phase Transitions in Time Series of Empirical and Model Systems.
- Author
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Schiepek, Günter, Schöller, Helmut, de Felice, Giulio, Steffensen, Sune Vork, Bloch, Marie Skaalum, Fartacek, Clemens, Aichhorn, Wolfgang, and Viol, Kathrin
- Subjects
TIME series analysis ,PHASE transitions ,DISTRIBUTION (Probability theory) ,SELF-organizing systems ,DYNAMICAL systems - Abstract
Aim: In many cases, the dynamics of psychotherapeutic change processes is characterized by sudden and critical transitions. In theoretical terms, these transitions may be "phase transitions" of self-organizing nonlinear systems. Meanwhile, a variety of methods is available to identify phase transitions even in short time series. However, it is still an open question if different methods for timeseries analysis reveal convergent results indicating the moments of critical transitions and related precursors. Methods and Procedures: Seven concepts which are commonly used in nonlinear time series analysis were investigated in terms of their ability to identify changes in psychological time series: Recurrence Plots, Change Point Analysis, Dynamic Complexity, Permutation Entropy, Time Frequency Distributions, Instantaneous Frequency, and Synchronization Pattern Analysis, i.e., the dynamic inter-correlation of the system's variables. Phase transitions were simulated by shifting control parameters in the Hénon map dynamics, in a simulation model of psychotherapy processes (one by an external shift of the control parameter and one created by a simulated control parameter shift), and three sets of empirical time series generated by daily self-ratings of patients during the treatment. Results: The applied methods showed converging results indicating the moments of dynamic transitions within an acceptable tolerance. The convergence of change points was confirmed statistically by a comparison to random surrogates. In the three simulated dynamics with known phase transitions, these could be identified, and in the empirical cases, the methods converged indicating one and the same transition (possibly the phase transitions of the cases). Moreover, changes that did not manifest in a shift of mean or variance could be detected. Conclusion: Changes can occur in many different ways in the psychotherapeutic process. For instance, there can be very slow and small transitions or very high and sudden ones. The results show the validity and stability of different measures indicating pattern transitions and/or early warning signals of those transitions. This has profound implications for real-time monitoring in psychotherapy, especially in cases where a transition is not obvious to the eye. Reliably identifying points of change is mandatory also for research on precursors, which in turn can help improving treatment. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
27. A general class of second-order [formula omitted]-stable explicit numerical methods for stiff problems.
- Author
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Hoang, Manh Tuan and Ehrhardt, Matthias
- Subjects
- *
INITIAL value problems , *FINITE differences , *MATHEMATICAL analysis , *DIFFERENTIAL equations , *FINITE difference method - Abstract
In this paper, we propose a simple approach to the construction of a general class of L -stable explicit second-order one-step methods for solving stiff problems. These methods are nonlinear and derive from a novel approximation for the right-hand side functions of differential equations inspired by the nonstandard finite difference methodology introduced by Mickens. Through rigorous mathematical analysis, it is proved that the proposed numerical methods are not only explicit and L -stable, but also convergent of order two. Therefore, they are suitable and efficient to solve stiff problems. The proposed numerical methods generalize and improve a nonstandard explicit integration scheme for initial value problems formulated by Ramos (2007). Moreover, the present approach can be extended to construct A -stable and L -stable high-order explicit one-step methods for differential equations. Finally, the theoretical findings and advantages of the developed numerical methods are supported and illustrated by a series of numerical experiments in which stiff problems are considered. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
28. On the m-Term Best Approximation of Signals, Greedy Algorithm
- Author
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Grigoryan, Martin G., Öchsner, Andreas, Series editor, da Silva, Lucas F. M., Series editor, and Altenbach, Holm, Series editor
- Published
- 2015
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29. Nonlinear Methods
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Teixeira, Pedro Nuno, editor and Shin, Jung Cheol, editor
- Published
- 2020
- Full Text
- View/download PDF
30. A Kinetic Model of Photocatalytic Hydrogen Production Employing a Hole Scavenger.
- Author
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Durán-Pérez, José F., García-Martínez, Julio C., Medina-Mendoza, Ana K., Puebla-Núñez, Héctor, González-Brambila, Margarita M., and Colín-Luna, Jose Antonio
- Subjects
- *
PARAMETER estimation , *HYDROGEN production , *SUPEROXIDES , *MODEL validation , *MANUFACTURING processes , *HOLES - Abstract
Reactions involved in photocatalytic hydrogen production through water splitting combined with a hole scavenger involve several stages that make kinetic analysis quite complicated. In the present work, a kinetic model for the photocatalytic production of hydrogen has been developed based on competitive adsorption, considering the photocatalytic decomposition of an organic molecule coupled to hydrolysis through photocatalytic water splitting. Parameter estimation is performed by using the Levenberg‐Marquardt method. Model validation results give an estimation of the strength of adsorption of acetol and the acetaldehyde. As a fuel, hydrogen has a high heating value and is environmentally friendly, and thus, a hydrogen production process must be sustainable and inexpensive. Photocatalytic processes meet these requirements. An improved multi‐response kinetic model based on experimental observations is presented for the photocatalytic production of hydrogen. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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- View/download PDF
31. Estimation of Parameters in Random Dynamical Systems
- Author
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Konsulke, Silke, van den Boogaart, K. Gerard, Ballani, Fellix, Franke, Markus, Sauke, Martin, Blondel, Philippe, Series editor, Reitner, Joachim, Series editor, Stüwe, Kurt, Series editor, Trauth, Martin H., Series editor, Yuen, David A., Series editor, Pardo-Igúzquiza, Eulogio, editor, Guardiola-Albert, Carolina, editor, Heredia, Javier, editor, Moreno-Merino, Luis, editor, Durán, Juan José, editor, and Vargas-Guzmán, Jose Antonio, editor
- Published
- 2014
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- View/download PDF
32. Nonlinear Methods Most Applied to Heart-Rate Time Series: A Review
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Teresa Henriques, Maria Ribeiro, Andreia Teixeira, Luísa Castro, Luís Antunes, and Cristina Costa-Santos
- Subjects
nonlinear methods ,heart-rate dynamics ,time series ,Science ,Astrophysics ,QB460-466 ,Physics ,QC1-999 - Abstract
The heart-rate dynamics are one of the most analyzed physiological interactions. Many mathematical methods were proposed to evaluate heart-rate variability. These methods have been successfully applied in research to expand knowledge concerning the cardiovascular dynamics in healthy as well as in pathological conditions. Notwithstanding, they are still far from clinical practice. In this paper, we aim to review the nonlinear methods most used to assess heart-rate dynamics. We focused on methods based on concepts of chaos, fractality, and complexity: Poincaré plot, recurrence plot analysis, fractal dimension (and the correlation dimension), detrended fluctuation analysis, Hurst exponent, Lyapunov exponent entropies (Shannon, conditional, approximate, sample entropy, and multiscale entropy), and symbolic dynamics. We present the description of the methods along with their most notable applications.
- Published
- 2020
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- View/download PDF
33. Modeling Probability Density Functions as Data Objects
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Piotr Kokoszka, Chao Zhang, and Alexander M. Petersen
- Subjects
Statistics and Probability ,Economics and Econometrics ,Series (mathematics) ,Computer science ,Nonlinear methods ,05 social sciences ,Probabilistic logic ,Probability density function ,01 natural sciences ,Regression ,010104 statistics & probability ,Distribution (mathematics) ,0502 economics and business ,Center (algebra and category theory) ,Statistical physics ,0101 mathematics ,Statistics, Probability and Uncertainty ,Data objects ,050205 econometrics - Abstract
Recent developments in the probabilistic and statistical analysis of probability density functions are reviewed. Density functions are treated as data objects for which suitable notions of the center of distribution and variability are discussed. Special attention is given to nonlinear methods that respect the constraints density functions must obey. Regression, time series and spatial models are discussed. The exposition is illustrated with data examples. A supplementary vignette contains expanded versions of data analyses with accompanying codes.
- Published
- 2022
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34. MS Based Nonlinear Methods for Gastric Cancer Early Detection
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Meng, Jun, Liu, Xiangyin, Qiu, Fuming, Huang, Jian, Hutchison, David, editor, Kanade, Takeo, editor, Kittler, Josef, editor, Kleinberg, Jon M., editor, Mattern, Friedemann, editor, Mitchell, John C., editor, Naor, Moni, editor, Nierstrasz, Oscar, editor, Pandu Rangan, C., editor, Steffen, Bernhard, editor, Sudan, Madhu, editor, Terzopoulos, Demetri, editor, Tygar, Doug, editor, Vardi, Moshe Y., editor, Weikum, Gerhard, editor, Istrail, Sorin, editor, Pevzner, Pavel, editor, Waterman, Michael S., editor, Li, Kang, editor, Jia, Li, editor, Sun, Xin, editor, Fei, Minrui, editor, and Irwin, George W., editor
- Published
- 2010
- Full Text
- View/download PDF
35. Gone in 30 days! Predictions for car import planning.
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Lacic, Emanuel, Traub, Matthias, Duricic, Tomislav, Haslauer, Eva, and Lex, Elisabeth
- Subjects
AUTOMOBILE industry ,AUTOMOBILE exports & imports ,REGISTRATION of automobiles - Abstract
A challenge for importers in the automobile industry is adjusting to rapidly changing market demands. In this work, we describe a practical study of car import planning based on the monthly car registrations in Austria. We model the task as a data driven forecasting problem and we implement four different prediction approaches. One utilizes a seasonal ARIMA model, while the other is based on LSTM-RNN and both compared to a linear and seasonal baselines. In our experiments, we evaluate the 33 different brands by predicting the number of registrations for the next month and for the year to come. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
36. Interspecies Correlations for Predicting the Acute Toxicity of Xenobiotics
- Author
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Devillers, James, Pandard, Pascal, Thybaud, Eric, Merle, Anne, and Devillers, James, editor
- Published
- 2009
- Full Text
- View/download PDF
37. Artificial Neural Network Modeling of the Environmental Fate and Ecotoxicity of Chemicals
- Author
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Devillers, James and Devillers, James, editor
- Published
- 2009
- Full Text
- View/download PDF
38. Application of nonlinear methods in evaluation of mineral grades
- Author
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A. S. Vyaltsev
- Subjects
Mineral ,Nonlinear methods ,Mineralogy ,Geotechnical Engineering and Engineering Geology ,Geology - Published
- 2021
- Full Text
- View/download PDF
39. ارزیابی پیشبینی پذیری قیمت طلا و مقایسه پیشبینی روشهای خطی و غیرخطی
- Author
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عزیز آرمن and علی رئوفی
- Subjects
Predictability ,Neuro-fuzzy network ,ANFIS ,BDS test ,Nonlinear methods ,Social Sciences ,Economics as a science ,HB71-74 - Abstract
در این مقاله قابلیت پیشبینی بازده روزانه قیمت جهانی طلا از تاریخ 25/07/2011 تا 17/12/2012 مورد بررسی قرار گرفته است. بدین منظور ابتدا با استفاده از آزمون براک- دیکرت- شاینکمن (BDS) به بررسی خطی، غیرخطی و آشوبناک بودن سری مورد مطالعه پرداخته شده است. نتایج تحقیق فرض تصادفی بودن سری مورد مطالعه را رد میکند که شاهدی بر پیشبینی پذیر بودن بازده روزانه قیمت طلاست. همچنین فرضیه عدم وجود رابطه غیرخطی در جملات پسماند مدل خطی رد میشود که نشان از وجود رفتار غیرخطی در سری مورد بررسی است. برای پیشبینی بازده روزانه قیمت طلا یک مدل عصبی فازی ANFIS طراحی گردیده و نتایج آن با استفاده از معیارهای مختلف مورد ارزیابی قرار گرفته است. همچنین نتایج با نتایج دو مدل خطی ARMA و غیرخطی GARCH مقایسه شد که مطابق انتظار، مدل غیرخطی ANFIS پیشبینی بهتری از سایر مدلهای رقیب داشت. در نهایت با استفاده از آماره مورگان- گرنجر- نیبولد (MGN) معنیداری اختلاف پیشبینی مدلها مورد بررسی قرار گرفت. نتایج حاکی از معنیدار بودن اختلاف پیشبینی مدلهای غیرخطی نسبت به مدل خطی ARMA است.
- Published
- 2014
40. A Review on Nonlinear Methods Using Electroencephalographic Recordings for Emotion Recognition
- Author
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Beatriz García-Martínez, Raúl Alcaraz, Arturo Martínez-Rodrigo, and Antonio Fernández-Caballero
- Subjects
medicine.diagnostic_test ,Computer science ,Nonlinear methods ,Speech recognition ,020206 networking & telecommunications ,02 engineering and technology ,Stimulus (physiology) ,Electroencephalography ,Human-Computer Interaction ,Nonlinear system ,Distance measurement ,0202 electrical engineering, electronic engineering, information engineering ,medicine ,020201 artificial intelligence & image processing ,Emotion recognition ,Time series ,Software ,Eeg signal analysis - Abstract
Electroencephalographic (EEG) recordings are receiving growing attention in the field of emotion recognition, since they monitor the brain’s first response to an external stimulus. Traditionally, EEG signals have been studied from a linear viewpoint by means of statistical and frequency features. Nevertheless, given that the brain follows a completely nonlinear and nonstationary behavior, linear metrics present certain important limitations. In this sense, the use of nonlinear methods has recently revealed new information that may help to understand how the brain works under a series of emotional states. Hence, this paper summarizes the most recent works that have applied nonlinear methods in EEG signal analysis for emotion recognition. This paper also identifies some nonlinear indices that have not been employed yet in this research area.
- Published
- 2021
- Full Text
- View/download PDF
41. Methods to distinguish labour and pregnancy contractions: a systematic literature review
- Author
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Daton Medenou, Latif Fagbemi, Mohamed Sbihi, Thierry R. Jossou, Aziz Ettahir, Abdelmajid Bybi, and Davide Piaggio
- Subjects
medicine.medical_specialty ,Pregnancy ,020205 medical informatics ,Obstetrics ,business.industry ,Nonlinear methods ,Biomedical Engineering ,Bioengineering ,02 engineering and technology ,medicine.disease ,Applied Microbiology and Biotechnology ,Linear methods ,Clinical method ,Uterine contraction ,03 medical and health sciences ,0302 clinical medicine ,Snowball sampling ,Systematic review ,Due date ,0202 electrical engineering, electronic engineering, information engineering ,medicine ,030212 general & internal medicine ,medicine.symptom ,business ,Biotechnology - Abstract
Uterine contractions monitoring is essential during pregnancy progression for due date prediction and the screening of preterm deliveries, i.e., those related to labour contractions occurring before 37 weeks of gestation. As there are different kinds of uterine contraction, distinguishing between true labour ones and normal physiological ones during pregnancy is not trivial. Thus, early identification is necessary for the effective and efficient care of pregnant women to avoid unnecessary and costly hospitalization. In this regard, while classical clinical methods proved their limitations, real-time monitoring of uterine contractions is now possible thanks to a new technique called ElectroHysteroGraphy which measures the uterine electrical activity that is a proxy for the mechanical activity of the muscles of the uterus. An exhaustive and comprehensive literature review was conducted to retrieve and report the state-of-the-art of the methods to distinguish labour contractions from pregnancy contractions. A systematic search was run on different search engines using a search string. A snowball sampling approach was applied to the references of the retrieved articles to identify further appropriate papers. According to this, the relevant references included in the bibliography of each analysed article led to other appropriate articles. Thus, papers dealing with the methods to distinguish labour from pregnancy (normal physiological) contractions and published between 2001 and 2020 were selected. Linear and nonlinear methods have been developed for uterine contractions signals (EHG/EMG) analysis to distinguish labour from pregnancy contractions. Nonlinear methods yielded better results compared to the linear methods, but not all nonlinear methods are promising in terms of clinical application.
- Published
- 2021
- Full Text
- View/download PDF
42. Emotions as Proximal Causes of Word of Mouth: A Nonlinear Approach.
- Author
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Lopes, Rita Rueff, Navarro, José, and Junça Silva, Ana
- Subjects
EMOTIONAL contagion ,ARTIFICIAL neural networks ,CRITICAL incident technique ,SATISFACTION ,EMOTIONS - Abstract
Service research tends to operationalize word of mouth (WOM) behavior as one of the many responses to service satisfaction. In this sense, little is known about its antecedents or moderators. The objective of this study was to investigate the role of customers’ emotions during service experiences on WOM, applying nonlinear techniques and exploring the moderating role of customers’ propensity for emotional contagion. Using the critical incidents technique, 122 customers recalled significant service experiences and the emotions they aroused, and reported if they shared said experiences with other individuals. We found that, whereas linear methods presented non-significant results in the emotions-WOM relationship, nonlinear ones (artificial neural networks) explained 46% of variance. Negative emotions were stronger predictors of WOM and the importance of emotions for WOM was significantly higher for individuals with high propensity for emotional contagion (R² = .79) than for those with lower levels (R² = .48). Theoretical and practical implications are discussed. [ABSTRACT FROM AUTHOR]
- Published
- 2018
43. Poor handling of continuous predictors in clinical prediction models using logistic regression: a systematic review.
- Author
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Ma J, Dhiman P, Qi C, Bullock G, van Smeden M, Riley RD, and Collins GS
- Subjects
- Humans, Logistic Models, Prognosis, Models, Statistical
- Abstract
Background and Objectives: When developing a clinical prediction model, assuming a linear relationship between the continuous predictors and outcome is not recommended. Incorrect specification of the functional form of continuous predictors could reduce predictive accuracy. We examine how continuous predictors are handled in studies developing a clinical prediction model., Methods: We searched PubMed for clinical prediction model studies developing a logistic regression model for a binary outcome, published between July 01, 2020, and July 30, 2020., Results: In total, 118 studies were included in the review (18 studies (15%) assessed the linearity assumption or used methods to handle nonlinearity, and 100 studies (85%) did not). Transformation and splines were commonly used to handle nonlinearity, used in 7 (n = 7/18, 39%) and 6 (n = 6/18, 33%) studies, respectively. Categorization was most often used method to handle continuous predictors (n = 67/118, 56.8%) where most studies used dichotomization (n = 40/67, 60%). Only ten models included nonlinear terms in the final model (n = 10/18, 56%)., Conclusion: Though widely recommended not to categorize continuous predictors or assume a linear relationship between outcome and continuous predictors, most studies categorize continuous predictors, few studies assess the linearity assumption, and even fewer use methodology to account for nonlinearity. Methodological guidance is provided to guide researchers on how to handle continuous predictors when developing a clinical prediction model., Competing Interests: Declaration of Competing Interest The authors of this manuscript have no conflicts of interest to declare., (Copyright © 2023 The Author(s). Published by Elsevier Inc. All rights reserved.)
- Published
- 2023
- Full Text
- View/download PDF
44. Recognition of Emotional States from EEG Signals with Nonlinear Regularity- and Predictability-Based Entropy Metrics
- Author
-
Antonio Fernández-Caballero, Arturo Martínez-Rodrigo, Beatriz García-Martínez, and Luciano Zunino
- Subjects
Computer science ,Cognitive Neuroscience ,Emotions ,Ingeniería ,02 engineering and technology ,Electroencephalography ,03 medical and health sciences ,0302 clinical medicine ,Quadratic equation ,Entropy metrics ,0202 electrical engineering, electronic engineering, information engineering ,medicine ,Preprocessor ,Predictability ,Forward selection ,Informática ,medicine.diagnostic_test ,business.industry ,Nonlinear methods ,Pattern recognition ,Computer Science Applications ,Sample entropy ,Nonlinear system ,020201 artificial intelligence & image processing ,Computer Vision and Pattern Recognition ,Artificial intelligence ,Nonlinear analysis ,business ,030217 neurology & neurosurgery - Abstract
Recently, the recognition of emotions with electroencephalographic (EEG) signals has received increasing attention. Furthermore, the nonstationarity of brain has intensified the application of nonlinear methods. Nonetheless, metrics like quadratic sample entropy (QSE), amplitude-aware permutation entropy (AAPE) and permutation min-entropy (PME) have never been applied to discern between more than two emotions. Therefore, this study computes for the first time QSE, AAPE and PME for recognition of four groups of emotions. After preprocessing the EEG recordings, the three entropy metrics were computed. Then, a tenfold classification approach based on a sequential forward selection scheme and a support vector machine classifier was implemented. This procedure was applied in a multi-class scheme including the four groups of study simultaneously, and in a binary-class approach for discerning emotions two by two, regarding their levels of arousal and valence. For both schemes, QSE+AAPE and QSE+PME were combined. In both multi-class and binary-class schemes, the best results were obtained in frontal and parietal brain areas. Furthermore, in most of the cases channels from QSE and AAPE/PME were selected in the classification models, thus highlighting the complementarity between those different types of entropy indices and achieving global accuracy results higher than 90% in multi-class and binary-class schemes. The combination of regularity- and predictability-based entropy indices denoted a high degree of complementarity between those nonlinear methods. Finally, the relevance of frontal and parietal areas for recognition of emotions has revealed the essential role of those brain regions in emotional processes., Facultad de Ingeniería, Centro de Investigaciones Ópticas
- Published
- 2020
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- View/download PDF
45. Analysis of second-order effects evaluation of steel frames behaviour
- Author
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Raminta Venslavavičiūtė, Vaidotas Šapalas, and Kęstutis Urbonas
- Subjects
Flexibility (anatomy) ,Computer science ,0211 other engineering and technologies ,Structure (category theory) ,second-order analysis ,020101 civil engineering ,02 engineering and technology ,Linear analysis ,steel framed structures ,0201 civil engineering ,021105 building & construction ,medicine ,Sensitivity (control systems) ,structural analysis ,sensitivity to the second-order effects ,business.industry ,Nonlinear methods ,eurocode 3 ,Stiffness ,numerical modelling ,Structural engineering ,Engineering (General). Civil engineering (General) ,Order (biology) ,medicine.anatomical_structure ,Steel frame ,medicine.symptom ,TA1-2040 ,business ,semi-rigid joints - Abstract
The evaluation of second-order effects of steel framed structures can provide different analysis results than using linear analysis methods. In various structural engineering literature were distinguished different methods of analysis: taking or without taking into account second-order effects. It depends on the sensitivity to the horizontal actions. The slenderer the structure, the more sensitive it is to horizontal actions. Using nonlinear methods, the sensitivity of steel frame to second-order impact is considered. This paper shows the importance of evaluations of the second-order effects in behaviour of steel frame structures. Performed investigations reveal the influence of the rotational stiffness of the joints to the behaviour of whole framed structure. Calculation results show that decreased flexibility of the semi-rigid joints increase sensitivity of the framed structure to the second-order effects and vice versa. The identified interdependence between the sensitivity to the second-order effects and the flexibility of the semi-rigid joints highlights the importance of evaluation of such dependencies.
- Published
- 2020
46. Investigation of the Application of New Mathematical Methods for the Analysis of Cardiac Data
- Author
-
Gospodinov, Mitko
- Subjects
RR Interval Series ,Linear Methods ,Heart Rate Variability ,PP Interval Series ,Nonlinear Methods - Abstract
The article shows the results of the implementation of the first stage of the project "Study of the application of new mathematical methods for analysis of cardiac data", funded by the Research Fund. The results are related to the creation of a portable information system for individual monitoring of the cardiovascular system, which includes a portable device for recording photoplethysmographic (PPG) signals and software for processing, mathematical analysis and assessment of heart rate variability. An important advantage of the portable device is the ability to constantly monitor and record the functioning and parameters of the cardiovascular system of the individual. This allows more accurate diagnosis of patients in different life situations in normal life, which is based on subsequent scientific analysis of the registered cardiac information through developed specialized software using linear and nonlinear mathematical methods. The article also shows the results for validation of the created new device, by means of an experimental scheme with which electrocardiographic (ECG) and PPG signals are registered simultaneously. The obtained two types of signals are compared in terms of the accuracy parameter of the registered signals. The results show that the two types of registered signals are identical; therefore the developed portable device can be used as an alternative to the currently widely used ECG and Holter devices. Научното изследване е проведено като част от проекта „Изследване на приложението на нови математически методи за анализ на кардиологични данни“ по договор № КП-06-Н22/5 от 07.12.2018 г., финансиран от Фонд „Научни Изследвания“.
- Published
- 2020
- Full Text
- View/download PDF
47. Seismic Performance Evaluation of Steel Moment-Resisting Frames Designed According to 3rd and 4th Editions of 2800 Seismic Code
- Author
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Navid Amini and Mohsen Izadinia
- Subjects
Computer science ,business.industry ,Nonlinear methods ,0211 other engineering and technologies ,Structure (category theory) ,020101 civil engineering ,Modification factor ,02 engineering and technology ,Structural engineering ,Geotechnical Engineering and Engineering Geology ,0201 civil engineering ,Stress (mechanics) ,Moment (mathematics) ,Nonlinear system ,Code (cryptography) ,business ,Ductility ,021101 geological & geomatics engineering ,Civil and Structural Engineering - Abstract
Current design codes have prepared linear analysis methods instead of nonlinear ones in order to reduce time, cost and other factors such as less need of these methods for expert knowledge. In linear analysis method, elastic strength demand of structure is decreased by applying a response modification factor called behavior factor (R) and by considering the design code regulations, structure members will be permitted to experience nonlinear response (in the time of middle-to-severe earthquakes). Because of different assumptions for linear (force-based method that has deficiencies) and nonlinear methods and whereas seismic stability or instability is not merely related to the strength of structure, rather it depends largely on the capability of structure to resist drifts, seismic performance evaluation of structures designed by linear procedure appears to be necessary using standards for evaluation. In this research, seismic performance of steel moment frames once designed based on 3rd edition of 2800-Iranian seismic code and allowable stress design (ASD) method and another time based on new ones, the 4th edition of 2800 seismic code and load and resistance factor design (LRFD) method, are compared with each other through nonlinear pushover and time-history analyses according to ASCE/SEI 41–13. Results showed positive change of design codes procedure with respect to alteration of design method in both types of ductile design, intermediate and special. Since mean of overstrength values and mean of ductility values have increased a little, mean of behavior factor values has become closer to the recommended values of the new seismic code. Also, a small number of structures met total collapse during nonlinear time-history analyses.
- Published
- 2020
- Full Text
- View/download PDF
48. Defects detection from time series of cutting force in composite milling process by recurrence analysis
- Author
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Kazimierz Zaleski, Krzysztof Kecik, and Krzysztof Ciecieląg
- Subjects
0209 industrial biotechnology ,Materials science ,Polymers and Plastics ,Series (mathematics) ,Mechanical Engineering ,Nonlinear methods ,Composite number ,Process (computing) ,02 engineering and technology ,021001 nanoscience & nanotechnology ,020901 industrial engineering & automation ,Mechanics of Materials ,Cutting force ,Materials Chemistry ,Ceramics and Composites ,Composite material ,0210 nano-technology - Abstract
The article presents possibility of defects detection from milling time series using nonlinear methods: recurrence plots and recurrence quantifications. The defects are modeled as the holes with different diameters and depths. This allows estimation of the minimal size of defect possible to detect. Based on the conducted research, it has been shown that some of the recurrence indicators enable detection of defects. These recurrence indicators have been tested on the reals damage. Additionally, we show influence of the defect depth on the recurrence indicator values.
- Published
- 2020
- Full Text
- View/download PDF
49. On nonlinear methods in environmental and biological measurements
- Author
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Adam Josko, Bogdan Dziadak, and Lukasz Makowski
- Subjects
Measurement method ,Data processing ,Computer science ,Nonlinear methods ,System of measurement ,media_common.quotation_subject ,020208 electrical & electronic engineering ,Control engineering ,02 engineering and technology ,Signal ,Nonlinear system ,0202 electrical engineering, electronic engineering, information engineering ,Quality (business) ,Electrical and Electronic Engineering ,Instrumentation ,Air quality index ,media_common - Abstract
This paper presents relations between real-world phenomena, sensors and measurement methods that without applied simplifications are generally nonlinear. The article is built upon real-world examples which directly affect quality of human life or straightforwardly refer to life itself. First, the health of a human being is investigated. Next, attention is moved towards measurements of water and air quality. We conclude with an observation that commonly demanded linear characteristics of a measurement system are feasible with nonlinear methods of signal and data processing.
- Published
- 2020
- Full Text
- View/download PDF
50. Calculation of Reinforced Concrete Structures with a Set Seismic Stability Level on an Earthquake.
- Author
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Mkrtychev, O.V. and Busalova, M.S.
- Subjects
EARTHQUAKE resistant design ,NUMERICAL calculations ,NUMERICAL analysis ,VOLUMETRIC analysis - Abstract
The article discusses a calculation technique for a reinforced concrete building with a braced frame on an earthquake. It allows to produce an adequate assessment of a of seismic stability level. A direct simulation of concrete, reinforcement and their binding with the help of volumetric and core finite elements is fulfilled. The paper presents the concrete work chart and considers mathematical models for the material. The authors propose calculation technique of reinforced concrete buildings with the actual reinforcement taking into account. The results of the numerical calculations of structural elements (crossbar) are compared to the field experiments conducted by US Department of Transportation Federal Highway Administration. The article examines the level of seismic stability of buildings with a braced frame, the actual reinforcement taking into account when calculating on a seismic action. [ABSTRACT FROM AUTHOR]
- Published
- 2016
- Full Text
- View/download PDF
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