3,340 results on '"Dynamic systems"'
Search Results
2. When Supply Chain Sustainability Means Supply Chain Resilience: The Case of Dr. Bronner's
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Stolze, Hannah, author, Kirchoff, Jon, author, and Bateman, Alexis, author
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- 2024
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3. The role of information dissemination in sustaining a stable and resilient traffic network under disruption.
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Mamdoohi, Sohrab and Miller-Hooks, Elise
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INFORMATION dissemination ,DYNAMICAL systems ,INFORMATION resources management ,INFORMATION storage & retrieval systems ,OSCILLATIONS - Abstract
A functioning roadway system is key to any society and economy. Traffic events such as maintenance and accidents reduce roadway capacity and can have immediate, large and lasting impact on traffic conditions. This paper investigates the role of information dissemination as a control tool for reducing the negative effects of a traffic event. It examines how timely information can prevent unnecessary route changes and counteract misinformation, restoring traffic equilibrium faster. Systems that recover equilibrium more rapidly are considered more resilient. A traffic flow evolution model is applied to analyze network behavior post-disruption, with a model parameter interpreted as an information dissemination penetration rate adjustable by operators. Numerical experiments investigate the effects of the penetration rate on travel times, revealing a critical rate for quickly re-establishing a new equilibrium. Beyond this rate, greater traffic oscillations can be expected. The study determines the best information penetration rate to maximize network resilience while ensuring stability. [ABSTRACT FROM AUTHOR]
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- 2024
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4. Temporal graphs anomaly emergence detection: benchmarking for social media interactions.
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Lazebnik, Teddy and Iny, Or
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COMPUTER network security ,DYNAMICAL systems ,SOCIAL interaction ,DISEASE outbreaks ,SOCIAL dynamics - Abstract
Temporal graphs have become an essential tool for analyzing complex dynamic systems with multiple agents. Detecting anomalies in temporal graphs is crucial for various applications, including identifying emerging trends, monitoring network security, understanding social dynamics, tracking disease outbreaks, and understanding financial dynamics. In this paper, we present a comprehensive benchmarking study that compares 12 data-driven methods for anomaly detection in temporal graphs. We conduct experiments on two temporal graphs extracted from Twitter and Facebook, aiming to identify anomalies in group interactions. Surprisingly, our study reveals an unclear pattern regarding the best method for such tasks, highlighting the complexity and challenges involved in anomaly emergence detection in large and dynamic systems. The results underscore the need for further research and innovative approaches to effectively detect emerging anomalies in dynamic systems represented as temporal graphs. [ABSTRACT FROM AUTHOR]
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- 2024
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5. Does a Fractional-Order Recurrent Neural Network Improve the Identification of Chaotic Dynamics?
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Echenausía-Monroy, José Luis, Magallón-García, Daniel Alejandro, Ontañón-García, Luis Javier, Rivera Rodriguez, Raul, Pena Ramirez, Jonatan, and Álvarez, Joaquín
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ARTIFICIAL neural networks , *RECURRENT neural networks , *CHAOS theory , *DYNAMICAL systems , *SYSTEM dynamics - Abstract
This paper presents a quantitative study of the effects of using arbitrary-order operators in Neural Networks. It is based on a Recurrent Wavelet First-Order Neural Network (RWFONN), which can accurately identify several chaotic systems (measured by the mean square error and the coefficient of determination, also known as R-Squared, r 2 ) under a fixed parameter scheme in the neural algorithm. Using fractional operators, we analyze whether the identification capabilities of the RWFONN are improved, and whether it can identify signals from fractional-order chaotic systems. The results presented in this paper show that using a fractional-order Neural Network does not bring significant advantages in the identification process, compared to an integer-order RWFONN. Nevertheless, the neural algorithm (modeled with an integer-order derivative) proved capable of identifying fractional-order dynamical systems, whose behavior ranges from periodic and multi-stable to chaotic oscillations. That is, the performances of the Neural Network model with an integer-order derivative and the fractional-order network are practically identical, making the use of fractional-order RWFONN-type networks meaningless. The results deepen the work previously published by the authors, and contribute to developing structures based on robust and generic neural algorithms to identify more than one chaotic oscillator without retraining the Neural Network. [ABSTRACT FROM AUTHOR]
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- 2024
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6. Real-Time Simulator for Dynamic Systems on FPGA.
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Silva, Sérgio N., Goldbarg, Mateus A. S. de S., Silva, Lucileide M. D. da, and Fernandes, Marcelo A. C.
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FIELD programmable gate arrays ,DYNAMICAL systems ,INDUSTRIALISM ,SOFTWARE development tools ,FACTORIES - Abstract
This work presents the development of an embedded platform using Field Programmable Gate Arrays (FPGAs) for real-time simulation of dynamic systems in industrial plants. The platform, Real-Time Simulator for Dynamic Systems in FPGA (RTSDS-FPGA), is designed for industrial and academic applications. In industrial contexts, the RTSDS-FPGA facilitates the optimization and tuning of embedded control algorithms, while in academia, it supports research on new embedded solutions in automation and control. It is also an educational tool for undergraduate and postgraduate students developing embedded control system projects. Additionally, the simulator accelerates the simulation of slow dynamic systems, significantly reducing overall simulation time. Experimental results demonstrate the platform's capability to perform real-time simulations effectively, validating its accuracy and performance through comparative analyses with established software tools such as Matlab/Simulink. [ABSTRACT FROM AUTHOR]
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- 2024
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7. Dynamic regulatory processes among child welfare parents: Temporal associations between physiology and parenting behavior.
- Abstract
This study examined how temporal associations between parents' physiological and behavioral responses may reflect underlying regulatory difficulties in at-risk parenting. Time-series data of cardiac indices (second-by-second estimates of inter-beat intervals – IBI, and respiratory sinus arrhythmia – RSA) and parenting behaviors were obtained from 204 child welfare-involved parents (88% mothers, M age = 32.32 years) during child-led play with their 3- to 7-year-old children (45.1% female; M age = 4.76 years). Known risk factors for maltreatment, including parents' negative social cognitions, mental health symptoms, and inhibitory control problems, were examined as moderators of intra-individual physiology-behavior associations. Results of ordinary differential equations suggested increases in parents' cardiac arousal at moments when they showed positive parenting behaviors. In turn, higher arousal was associated with momentary decreases in both positive and negative parenting behaviors. Individual differences in these dynamic processes were identified in association with parental risk factors. In contrast, no sample-wide RSA-behavior associations were evident, but a pattern of increased positive parenting at moments of parasympathetic withdrawal emerged among parents showing more total positive parenting behaviors. This study illustrated an innovative and ecologically-valid approach to examining regulatory patterns that may shape parenting in real-time and identified mechanisms that should be addressed in interventions. [ABSTRACT FROM AUTHOR]
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- 2024
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8. A Deep Dynamic Latent Block Model for Co-clustering of Zero-Inflated Data Matrices.
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Marchello, Giulia, Corneli, Marco, and Bouveyron, Charles
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ORDINARY differential equations , *STOCHASTIC processes , *DYNAMICAL systems , *MACHINE learning , *DYNAMIC models - Abstract
The simultaneous clustering of observations and features of datasets (known as co-clustering) has recently emerged as a central machine learning application to summarize massive datasets. However, most existing models focus on continuous and dense data in stationary scenarios, where cluster assignments do not evolve over time. This work introduces a novel latent block model for the dynamic co-clustering of data matrices with high sparsity. To properly model this type of data, we assume that the observations follow a time and block dependent mixture of zero-inflated distributions, thus, combining stochastic processes with the time-varying sparsity modeling. To detect abrupt changes in the dynamics of both cluster memberships and data sparsity, the mixing and sparsity proportions are modeled through systems of ordinary differential equations. The inference relies on an original variational procedure whose maximization step trains fully connected neural networks in order to solve the dynamical systems. Numerical experiments on simulated and real world datasets demonstrate the effectiveness of the proposed methodology in the context of count data. [ABSTRACT FROM AUTHOR]
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- 2024
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9. Evaluating Volatility Using an ANFIS Model for Financial Time Series Prediction.
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Orozco-Castañeda, Johanna M., Alzate-Vargas, Sebastián, and Bedoya-Valencia, Danilo
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BOX-Jenkins forecasting ,TIME series analysis ,FUZZY systems ,MATHEMATICAL optimization ,PRICES - Abstract
This paper develops and implements an Autoregressive Integrated Moving Average model with an Adaptive Neuro-Fuzzy Inference System (ARIMA-ANFIS) for BTCUSD price prediction and risk assessment. The goal of these forecasts is to identify patterns from past data and achieve an understanding of the future behavior of the price and its volatility. The proposed ARIMA-ANFIS model is compared with a benchmark ARIMA-GARCH model. To evaluated the adequacy of the models in terms of risk assessment, we compare the confidence intervals of the price and accuracy measures for the testing sample. Additionally, we implement the diebold and Mariano test to compare the accuracy of the two volatility forecasts. The results revealed that each volatility model focuses on different aspects of the data dynamics. The ANFIS model, while effective in certain scenarios, may expose one to unexpected risks due to its underestimation of volatility during turbulent periods. On the other hand, the GARCH(1,1) model, by producing higher volatility estimates, may lead to excessive caution, potentially reducing returns. [ABSTRACT FROM AUTHOR]
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- 2024
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10. Original actions performed by a beginner attacker modify defensive dispersion in small-sided soccer games
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Paulo Henrique Borges, Lucas Shoiti Carvalho Ueda, Paulo Vitor de Souza, Maria Eduarda Valente Binda, Juliano Fernandes da Silva, João Ribeiro, and José Guilherme
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Metastability ,Tactical ,Creativity ,Self-regulation ,Dynamic systems ,Soccer iniciation ,Medicine ,Science - Abstract
Abstract In complex systems, the system’s self-regulation processes can transition between states of equilibrium and disequilibrium, leading to changes in the distribution of players within the playing space. Actions that are surprising, rare, or out of the ordinary tend to be valued for their potential to destabilize the opposing defensive structure, altering player dispersion, and creating fragile spaces for the attack. With advancements in understanding the influence of the environment on players’ affordances, the tactical consequences from individuals’ solutions to various scenarios and their impact on the game context becomes a rich area for investigation. This study compared defensive dispersion in the moments preceding and following original actions in small-sided games. The original actions were obtained using the Creative Behavior Assessment in Team Sports (CBATS) observational matrix. At the same time, defensive dispersion was derived from positional data collected via GPS and processed using dedicated routines in MATLAB to obtain variables such as Stretch Index, Surface Area, Team Width, Team Length, and Individual Player Area. The Kolmogorov-Smirnov test was employed for normality, and the General Linear Model with Repeated Measures was used to compare pre-and post-action moments across different action classifications (pass and shot) and game configurations (SSG4v4 − Small, SSG4v4 − Large, SSG5v5 − Small, and SSG5v5 − Large). Differences were found in the Stretch Index, Surface Area, and Team Width variables in SSG4v4 − Small and Surface Area in SSG5v5 − Small (p
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- 2024
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11. Fog Computing Task Scheduling with Energy Consciousness for the Industrial Internet of Things
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Yurij Pavlovich Butsenko, Subhi Hammadi Hamdoun, Mehdi Muhemed Mool, Azhar Raheem Mohammed Al-Ani, Saif Kamil Shnain, Abdul Mohsen Jaber Almaaly, and Mohammed Abdul Majeed
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fog computing ,industrial iot ,energy-aware ,metaheuristic approach ,optimization ,resource allocation ,computational efficiency ,dynamic systems ,sustainability. ,Telecommunication ,TK5101-6720 - Abstract
Background: The Industrial Internet of Things (IIoT) has revolutionized operations for businesses, and fog computing is a valuable resource management and job scheduling tool that has facilitated the transformation. In this regard, efficient resource usage will be more useful for the performance and energy cost-saving limit of IIoT system. Objective: The article proposed a new energy-aware metaheuristic approach to enhancing the performance and efficiency of IIoT systems in fog computing environments. The study aims to come up with a methodology that strikes a balance between efficiency in compute requirements and energy consumption. Methodology: A meta-heuristic method inspired by natural processes such as genetic algorithms and simulated annealing is applied to optimize the selection of which jobs should be scheduled. This approach takes into account several parameters like when the job is needed, availability of resources, and usage patterns to efficiently schedule jobs across the network. Results: The results show that the proposed approach drastically improves energy efficiency and system performance. In this paper, the fog orchestration master intends to divide the workload between fog and cloud in an excellent manner and resolve specific Issues of fog computing in IIoT environment. This manages to keep energy usage low and the operating efficiency high. Conclusions: Metaheuristic optimization techniques integrate into fog computing environments for IIoT job schedule complexity. This methodology enhances the sustainability of IIoT operations, and their ability to meet robust performance requirements over time. Our findings provide the crucial insight needed to enable industries that need seamless IIoT integration and plan further research in the field of energy-efficient fog computing.
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- 2024
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12. Optimization on frequency constraints with FFT using automatic differentiation on hybrid ODE applications
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Agobert, Lucas, Delinchant, Benoit, and Gerbaud, Laurent
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- 2024
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13. A simple chaotic system using signum function.
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Tatlıcıoğlu, Buğçe Eminağa
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RANDOM number generators , *ELECTRONIC circuits - Abstract
Starting from Lorenz System, a simpler system using signum function was obtained, which shows chaotic behavior. The conditions for stability were explained. Lyapunov and bifurcation analyses were carried out to exhibit the chaotic behavior. The system's suitability for circuit realization was shown with an electronic circuit implementation which is based mainly on opamps, whose simulation results were in harmony with Matlab results. Finally, as an application, a random number generator (RNG) scheme was designed, in which binary data were obtained from x , y , z variables. In order to reveal that the RNG scheme is functional, NIST-Test was applied to the obtained binary data. [ABSTRACT FROM AUTHOR]
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- 2024
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14. Exploring Digital Twins of Nonlinear Systems through Meta-Modeling with Echo State Networks
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Laisa Cristina Juffo Cristina Juffo Campos, Ana Carolina Spindola Rangel Dias, Wellington Betencurte da Silva, and Julio Cesar Sampaio Dutra
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echo state networks ,dynamic systems ,digital twins ,Electronic computers. Computer science ,QA75.5-76.95 - Abstract
monitoring, and control rely on precise dynamic models that can capture the inherent nonlinearities of chemical systems. However, rigorous modeling of complex industrial processes can be computationally demanding. Meta modeling using machine learning methodologies offers a viable approach to generate computationally efficient surrogate representations. Specifically, Echo State Networks (ESNs) are a promising neural network approach for meta-modeling nonlinear dynamical systems. ESNs simplify training through fixed input weights while they focus learning on output weights. This study explores the development of ESN-based digital twins for a nonlinear dynamic process. An ESN is employed to construct a meta-model of a simulated continuously stirred tank reactor with biochemical kinetic. The network was trained on input-output data obtained from the simulation of an ordinary differential equation system, and the performance was evaluated both in-sample and out-of-sample. The results indicate that the ESN meta-model can successfully approximate the underlying dynamics, accurately capturing temporal evolution. A closed-loop digital twin deployment using the ESN surrogate also showed reliable behavior. This work presents initial steps toward developing digital twins of chemical processes using ESN-driven meta-modeling. The findings suggest ESNs can effectively generate computationally efficient surrogate representations of nonlinear dynamical systems. Such digital twins hold promise for online process monitoring and optimized control of industrial plants.
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- 2024
15. Societies with fission–fusion dynamics as complex adaptive systems: the importance of scale.
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Madsen, Anastasia and de Silva, Shermin
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SOCIAL systems , *DYNAMICAL systems , *SOCIAL stability , *ENRICHED foods , *SOCIAL groups - Abstract
In this article, we argue that social systems with fission–fusion (FF) dynamics are best characterized within a complex adaptive systems (CAS) framework. We discuss how different endogenous and exogenous factors drive scale-dependent network properties across temporal, spatial and social domains. Importantly, this view treats the dynamics themselves as objects of study, rather than variously defined notions of static 'social groups' that have hitherto dominated thinking in behavioural ecology. CAS approaches allow us to interrogate FF dynamics in taxa that do not conform to more traditional conceptualizations of sociality and encourage us to pose new types of questions regarding the sources of stability and change in social systems, distinguishing regular variations from those that would lead to system-level reorganization. This article is part of the theme issue 'Connected interactions: enriching food web research by spatial and social interactions'. [ABSTRACT FROM AUTHOR]
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- 2024
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16. Working the system—An empirical analysis of the relationship between systems thinking, paradoxical cognition, and sustainability practices.
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Schulte, Meike Nicole and Paris, Cody Morris
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CORPORATE sustainability ,STRUCTURAL equation modeling ,SYSTEMS theory ,SMALL business ,STAKEHOLDER theory - Abstract
Sustainability is an inherently complex problem. Often, a reductionist mindset underpins corporate sustainability practices. Understanding the collective impact of systems thinking and paradoxical cognition on sustainability practices could foster new cognitive strategies for sustainability efforts. Informed by stakeholder theory, this study investigates the impacts of systems thinking and paradoxical cognition on sustainability practices in small and medium‐sized enterprises (SMEs). Primary data was collected through a survey of SME managers in the United Arab Emirates (n = 554), and the hypothesized model was analyzed using structural equation modelling. The findings imply that systems thinking, paradoxical thinking, and the ability to recognize paradoxical tensions positively influenced sustainability practices. The study's findings offer novel insights advocating for the integration of cognitive frameworks and sustainability practices in the context SMEs, highlighting the need for a shift from traditional linear management approaches to more adaptive and integrative strategies. [ABSTRACT FROM AUTHOR]
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- 2024
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17. Present a model determining the oil market transferability turmoil on the financial markets of the Iranian economy (Dynamic systems approach).
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Farhadi, Ahmad, Minouei, Mehrzad, and Zomordian, Gholamreza
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PETROLEUM industry ,FINANCIAL crises ,STOCK exchanges ,FOREIGN exchange ,MACROECONOMICS ,COMPUTER simulation - Abstract
A model for determining the oil market transferability turmoil on the financial markets of the Iranian economy using the dynamic systems approach. At first, data related to oil, gold, stock exchange and foreign exchange were extracted from statistics related to the World Bank, Central Bank and Statistics Center of Iran and were analyzed with statistical analysis and simulation software. Then the research model was constructed using simulation methods and system analysis and the results were analyzed. The oil market in supply and demand for price determination is based on global systemic behavior. this simulation has used the factors affecting oil supply, oil demand, the expectations that shape this supply and demand, as well as macro factors such as macroeconomic indicators of the US economy, sanctions on the oil sector in Iran, the rate of world industry development and the available knowledge on oil substitution. Hidden mechanisms are the main reason for some oil price behaviors. The results of the research have led to the forecast of oil prices in the baseline scenario until 2025. The presence of political problems due to the interconnectedness of parallel markets in Iran causes widespread fluctuations in the currency and gold sectors in the Iranian economy. [ABSTRACT FROM AUTHOR]
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- 2024
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18. Exploring Effective Intervention Strategies for Depression as a Complex System: Targeted Interventions Through Network Simulations.
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Omizu, Takumi and Kunisato, Yoshihiko
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PSYCHOTHERAPY , *MENTAL depression , *DYNAMICAL systems , *SYMPTOMS , *SIMULATION methods & models - Abstract
We conducted mathematical simulations to identify effective treatment options for depression. These simulations involved treatment component nodes that targeted specific symptoms within the depressive symptom network, examining how interventions for certain symptoms could improve the overall symptomatology. The results indicate that targeting a symptom with higher centrality can lead to significant improvement. Furthermore, while interventions targeting symptoms with the lowest centrality did not show any improvement, targeting multiple lower‐centrality symptoms simultaneously may lead to an improvement in overall symptomatology. Insights from these simulations are expected to advance the understanding of effective intervention strategies for depression and the application of psychological networks in clinical settings. [ABSTRACT FROM AUTHOR]
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- 2024
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19. Intervention analysis for fake news diffusion: an evolutionary game theory perspective.
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Liu, Jusheng, Song, Mei, and Fu, Guiyuan
- Abstract
Controlling the dissemination of fake news is paramount for societal well-being. This paper explores how to govern fake news on social media, considering the reputation of both government and social media platform, reward and punishment mechanisms, as well as the associated costs and benefits from the perspective of evolutionary game theory. Within the game, the government can opt for supervision or no supervision, the social media platform can decide whether to respond to government strategies actively or not, while individuals can choose to forward or abstrain from forwarding fake news. The results show that the system will stabilize in three states contingent upon initial parameters: (not forward, not active, supervise), (forward, not active, supervise), and (forward, active, supervise). Key factors influencing the governance of fake news are also identified. Individually, reducing the benefits of forwarding fake news and increasing penalties from both the government and social media can discourage individuals from sharing fake news. On the social media level, minimizing the cost of their responses to government regulation, decreasing the revenue they gain from individual retweeting of fake news, and increasing the benefits of their responses to government policies can incentivize proactive social media responses. At the government level, enhancing rewards for social media compliance with government policies and enforcing penalties for non-compliance can motivate social media to align with regulatory strategies. The findings in this paper provide valuable insights into governing fake news. [ABSTRACT FROM AUTHOR]
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- 2024
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20. Assessing unpredictability in caregiver–child relationships: Insights from theoretical and empirical perspectives.
- Abstract
There has been significant interest and progress in understanding the role of caregiver unpredictability on brain maturation, cognitive and socioemotional development, and psychopathology. Theoretical consensus has emerged about the unique influence of unpredictability in shaping children's experience, distinct from other adverse exposures or features of stress exposure. Nonetheless, the field still lacks theoretical and empirical common ground due to difficulties in accurately conceptualizing and measuring unpredictability in the caregiver–child relationship. In this paper, we first provide an overview of the role of unpredictability in theories of caregiving and childhood adversity and present four issues that are currently under-discussed but are crucial to the field. Focusing on how moment-to-moment and day-to-day dynamics are at the heart of caregiver unpredictability, we review three approaches aiming to address some of these nuances: Environmental statistics, entropy, and dynamic systems. Lastly, we conclude with a broad summary and suggest future research directions. Systematic progress in this field can inform interventions and policies aiming to increase stability in the lives of children. [ABSTRACT FROM AUTHOR]
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- 2024
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21. Soil Fertility Depletion is not a Credible Mechanism for Population Boom/Bust Cycles in Early Agricultural Societies.
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Kondor, Daniel and Turchin, Peter
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SOIL fertility , *SOIL management , *RESOURCE exploitation , *AGRICULTURAL organizations , *RENEWABLE natural resources - Abstract
Soil fertility depletion presents a negative feedback mechanism that could have impacted early adopters of agriculture. We consider whether such feedback can lead to population cycles among early agriculturalists, such as the boom-and-bust patterns suggested by an increasing amount of evidence for Neolithic Europe. Using general mathematical arguments, we show that this is unlikely, due to the interplay of two factors. First, there is an important mathematical difference between biotic (i.e., logistic) and abiotic resource replenishment; soil nutrients are better modeled by the abiotic case, which leads to more stable dynamics. Second, under realistic conditions, the resource replenishment process operates on fast time scales compared to attainable population growth rates, reinforcing the tendency towards stable dynamics. Both these factors are relevant for early agricultural societies and imply that nutrient depletion is likely not the main contributing factor to boom-and-bust cycles observed in the archaeological record. [ABSTRACT FROM AUTHOR]
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- 2024
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22. Coordination Dynamics in Motor Learning: Acquisition and Adaptation in a Serial Stimulus Tracking Task.
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Pacheco, Matheus M., Ambrósio, Natália F.A., Santos, Fernando G., Tani, Go, and Basso, Luciano
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DEGREES of freedom , *TRIAL practice , *MOTOR ability , *DYNAMICAL systems , *MASTER'S degree , *MOTOR learning - Abstract
The dynamics of mastering the degrees of freedom in motor learning are still far from being understood. The present work explored coordination dynamics in a redundant task, relating it to performance and adaptation in a serial stimulus tracking task. One hundred and sixty-three children (10–14 years of age) continuously responded to sequential stimuli (containing five stimuli) by pressing the respective sensors before the next stimulus presentation. Participants performed 120 trials with a fixed sequence (4–2–5–3–1) and a fixed interstimuli interval (800 ms) to learn the first pattern (practice phase). Then, a changed sequence (4–2–5–1–3) with a shorter interval (700 ms) was presented for 40 trials (adaptation phase). To measure coordination and its change, we calculated the correlation matrix of the stimulus–touch interval between the five sensors in blocks of 20 trials of the practice phase and classified individuals in terms of clusters. We found associations between coordination dynamics, performance curves, and adaptation in both coordination and performance. Furthermore, using network analyses, we found a tendency for all groups to increase the clustering coefficient. We discuss the possibility of this result representing a process of progressive segregation. [ABSTRACT FROM AUTHOR]
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- 2024
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23. Artificial neural network‐based adaptive control for nonlinear dynamical systems.
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Saini, Kartik, Kumar, Narendra, Bhushan, Bharat, and Kumar, Rajesh
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ARTIFICIAL neural networks , *ADAPTIVE control systems , *NONLINEAR dynamical systems , *OPTIMIZATION algorithms , *RADIAL basis functions - Abstract
Summary: This research article presents an artificial neural network (ANN)‐based indirect adaptive control method for nonlinear dynamical systems. In this article, a modified Elman recurrent neural network (MERNN) is proposed as an identifier and controller for controlling nonlinear systems. The architecture of the proposed controller is a modified form of the existing Elman recurrent neural network. The parameter training of ANN‐based controllers is obtained by using the most popular optimization algorithm which is known as the back‐propagation algorithm. A comparative study includes Elman, Diagonal, Jordan, feed‐forward neural network (FFNN), and radial basis function network (RBFN)‐based controllers to compare with the proposed MERNN controller. To determine the controller's robustness, parameter variations, and disturbance signals have been considered. The performance analysis of the proposed controller is illustrated by two simulation examples. The simulation results reveal that MERNN can not only identify the unknown dynamics of the plant but also adaptively control it compared to the others. [ABSTRACT FROM AUTHOR]
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- 2024
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24. Orthonormal Eigenfunction Expansions for Iterative Boundary Value Problems on Time Scales.
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Lalitha, S., Rao, Alaka Krishna, Ravisankar, Ronanki, and Vidyasagar, K. V.
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BOUNDARY value problems ,EIGENFUNCTION expansions ,DYNAMICAL systems ,CALCULUS ,EIGENVALUES - Abstract
This paper explores orthonormal eigenfunction expansions for solving iterative boundary value problems (BVPs) on time scales, a framework that unifies continuous and discrete calculus. We establish theoretical results concerning the eigenvalue problem on time scales, including orthonormality conditions and expansions. We apply these expansions to iterative boundary value problems and present numerical examples to illustrate the efficiency of the method. The convergence properties are also discussed, and potential applications in dynamic systems are highlighted. [ABSTRACT FROM AUTHOR]
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- 2024
25. Improved learning in human evolutionary systems with dynamic contrastive learning.
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Johnson, Joseph, Giraud-Carrier, Christophe, and Hatch, Bradley
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MACHINE learning , *DEEP learning , *DYNAMICAL systems , *LEARNING , *GRAPH algorithms - Abstract
We introduce a new inductive bias for learning in dynamic event-based human systems. This is intended to partially address the issue of deep learning in chaotic systems. Instead of fitting the data to polynomial expansions that are expressive enough to approximate the generative functions or of inducing a universal approximator to learn the patterns and inductive bias, we only assume that the relationship between the input features and output classes changes over time, and embed this assumption through a form of dynamic contrastive learning in pre-training, where pre-training labels contain information about the class labels and time periods. We do this by extending and integrating two separate forms of contrastive learning. We note that this approach is not equivalent to inserting an extra feature into the input data that contains time period, because the input data cannot contain the label. We illustrate the approach on a recently designed learning algorithm for event-based graph time-series classification, and demonstrate its value on real-world data. [ABSTRACT FROM AUTHOR]
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- 2024
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26. UTILIZING GAUSSIAN PROCESS REGRESSION FOR NONLINEAR MAGNETIC SEPARATION PROCESS IDENTIFICATION.
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Volovetskyi, Oleksandr
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KRIGING ,MAGNETIC separation ,INDUSTRIAL efficiency ,NONLINEAR regression ,DYNAMICAL systems - Abstract
Copyright of Informatics Control Measurement in Economy & Environment Protection / Informatyka, Automatyka, Pomiary w Gospodarce i Ochronie Środowiska is the property of Lublin University of Technology 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.)
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- 2024
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27. Dynamics of production of greenhouse gases in the sectors of steel production and vehicle production.
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Montenegro Robles, Roberto Alfonso and Calderón Díaz, Mayda Alejandra
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GREENHOUSE gas mitigation ,CLIMATE change mitigation ,AUTOMOBILE industry ,CARBON emissions ,DYNAMICAL systems ,GREENHOUSE gases - Abstract
Copyright of Revista Ciencia y Poder Aéreo is the property of Escuela de Postgrados de la Fuerza Aerea Colombiana 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.)
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- 2024
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28. Multivariate risks assessment for complex bio-systems by Gaidai reliability method
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Oleg Gaidai, Vladimir Yakimov, Qingsong Hu, and Stas Loginov
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Dynamic Systems ,Public Health ,Prognostics ,SARS-CoV-2 ,Artificial Intelligence ,Risk ,Information technology ,T58.5-58.64 ,Electronic computers. Computer science ,QA75.5-76.95 - Abstract
Spread of novel coronavirus and other flu-like illnesses, periodically causing increased death and morbidity rates, places pressures on national health systems. In order to provide a reliable long-term forecast of the new coronavirus infection rate, this research employs novel Gaidai bio-system reliability technique, especially suitable for multi-regional biological, environmental and public health systems. The goal of this study was to directly apply state of art statistical techniques to unprocessed raw clinical data, utilizing a multicenter, population-based biostatistical methodology. Epidemiological risks have been accurately forecasted, specifically for European Union member states. Based on their clinical survey data, suggested spatiotemporal methodology may be applied in a variety of public biological and health applications.
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- 2024
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29. The Screening Paradox and Dynamic Systems
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Balayla, Jacques and Balayla, Jacques
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- 2024
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30. Variable Assignment Invariant Neural Networks for Learning Logic Programs
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Phua, Yin Jun, Inoue, Katsumi, Goos, Gerhard, Series Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Besold, Tarek R., editor, d’Avila Garcez, Artur, editor, Jimenez-Ruiz, Ernesto, editor, Confalonieri, Roberto, editor, Madhyastha, Pranava, editor, and Wagner, Benedikt, editor
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- 2024
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31. Counterfactual-Based Root Cause Analysis for Dynamical Systems
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Weilbach, Juliane, Gerwinn, Sebastian, Barsim, Karim, Fränzle, Martin, Goos, Gerhard, Series Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Bifet, Albert, editor, Davis, Jesse, editor, Krilavičius, Tomas, editor, Kull, Meelis, editor, Ntoutsi, Eirini, editor, and Žliobaitė, Indrė, editor
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- 2024
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32. Discrete-Time Systems
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Sundararajan, Dr. D. and Sundararajan, D.
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- 2024
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33. Using Time Series for Biomedical Signal Processing Under Uncertainties
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Burichenko, Mikle, Ivanets, Olga, Arkhyrei, Maryna, Khrashchevskyi, Rimvidas, Melnykov, Oleg, Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, Ostroumov, Ivan, editor, and Zaliskyi, Maksym, editor
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- 2024
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34. Diagnosis of Event Sequences with LFIT
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Ribeiro, Tony, Folschette, Maxime, Magnin, Morgan, Okazaki, Kotaro, Kuo-Yen, Lo, Inoue, Katsumi, Goos, Gerhard, Founding Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Muggleton, Stephen H., editor, and Tamaddoni-Nezhad, Alireza, editor
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- 2024
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35. Modelling the Semiosphere on Thermodynamic Open Systems
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Piva, Heidi Campana, Valsiner, Jaan, Series Editor, and Tragel, Elli Marie, editor
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- 2024
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36. Numerical Modeling and Some Optimal Control Problems of Dynamic Systems Describing Contact Problems with Friction in Elasticity
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Pop, Nicolae, Sireteanu, Tudor, Vladareanu, Luige, Iliescu, Mihaiela, Mitu, Ana-Maria, Maxim, Vicentiu Marius, Olaru, Sorin, editor, Cushing, Jim, editor, Elaydi, Saber, editor, and Lozi, René, editor
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- 2024
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37. On Dynamic Axiomatic Design or Projections of System Control Theory on Axiomatic Design
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Kaliteevskii, Vasilii, Borgianni, Yuri, Chechurin, Leonid, Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, Puik, Erik, editor, Cochran, David S., editor, Foley, Joseph Timothy, editor, and Foith-Förster, Petra, editor
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- 2024
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38. Learning Stable Nonlinear Dynamical System from One Demonstration
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Zhang, Yu, Han, Lijun, Wang, Zirui, Xia, Xiuze, Li, Houcheng, Cheng, Long, Goos, Gerhard, Founding Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Luo, Biao, editor, Cheng, Long, editor, Wu, Zheng-Guang, editor, Li, Hongyi, editor, and Li, Chaojie, editor
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- 2024
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39. Assessing unpredictability in caregiver-child relationships: Insights from theoretical and empirical perspectives.
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Ugarte, Elisa and Hastings, Paul D
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Cognitive and Computational Psychology ,Psychology ,Mental Health ,Pediatric ,Behavioral and Social Science ,caregiver unpredictability ,dynamic systems ,entropy ,environmental statistics ,unpredictability ,Cognitive Sciences ,Developmental & Child Psychology ,Applied and developmental psychology ,Biological psychology ,Clinical and health psychology - Abstract
There has been significant interest and progress in understanding the role of caregiver unpredictability on brain maturation, cognitive and socioemotional development, and psychopathology. Theoretical consensus has emerged about the unique influence of unpredictability in shaping children's experience, distinct from other adverse exposures or features of stress exposure. Nonetheless, the field still lacks theoretical and empirical common ground due to difficulties in accurately conceptualizing and measuring unpredictability in the caregiver-child relationship. In this paper, we first provide an overview of the role of unpredictability in theories of caregiving and childhood adversity and present four issues that are currently under-discussed but are crucial to the field. Focusing on how moment-to-moment and day-to-day dynamics are at the heart of caregiver unpredictability, we review three approaches aiming to address some of these nuances: Environmental statistics, entropy, and dynamic systems. Lastly, we conclude with a broad summary and suggest future research directions. Systematic progress in this field can inform interventions and policies aiming to increase stability in the lives of children.
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- 2023
40. Dynamic autonomic nervous system states arise during emotions and manifest in basal physiology.
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Noohi, Fatemeh, Veziris, Christina, Kosik, Eena, Holley, Sarah, Brown, Jesse, Roy, Ashlin, Chow, Tiffany, Saggar, Manish, Kramer, Joel, Miller, Bruce, Rosen, Howard, Seeley, William, Sturm, Virginia, Allen, Isabel, Lee, Alex, and Pasquini, Lorenzo
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autonomic nervous system ,baseline ,dynamic systems ,emotions ,physiology ,resting state ,Humans ,Aged ,Autonomic Nervous System ,Emotions ,Love ,Disgust ,Sadness - Abstract
The outflow of the autonomic nervous system (ANS) is continuous and dynamic, but its functional organization is not well understood. Whether ANS patterns accompany emotions, or arise in basal physiology, remain unsettled questions in the field. Here, we searched for brief ANS patterns amidst continuous, multichannel physiological recordings in 45 healthy older adults. Participants completed an emotional reactivity task in which they viewed video clips that elicited a target emotion (awe, sadness, amusement, disgust, or nurturant love); each video clip was preceded by a pre-trial baseline period and followed by a post-trial recovery period. Participants also sat quietly for a separate 2-min resting period to assess basal physiology. Using principal components analysis and unsupervised clustering algorithms to reduce the second-by-second physiological data during the emotional reactivity task, we uncovered five ANS states. Each ANS state was characterized by a unique constellation of patterned physiological changes that differentiated among the trials of the emotional reactivity task. These ANS states emerged and dissipated over time, with each instance lasting several seconds on average. ANS states with similar structures were also detectable in the resting period but were intermittent and of smaller magnitude. Our results offer new insights into the functional organization of the ANS. By assembling short-lived, patterned changes, the ANS is equipped to generate a wide range of physiological states that accompany emotions and that contribute to the architecture of basal physiology.
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- 2023
41. DYNAMIC MODEL REDUCTION USING MODAL TRUNCATION IN THE BUILDING MOTION PROBLEM
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Vu Thi Nguyet
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modal truncation ,model reduction ,dynamic systems ,eigenmode analysis ,duilding motion model ,Technology ,Social sciences (General) ,H1-99 - Abstract
Modal truncation, an advanced algorithm for model reduction in dynamic systems, efficiently simplifies complex models by selectively discarding less influential eigenmodes, maintaining a balance between computational efficiency and model accuracy. This paper explores the algorithm's application to a 48th order building model. Proceed to reduce this model to lower orders, then analyze errors in time and frequency domains. Modal truncation algorithm systematically reduces model dimensions while preserving critical dynamic attributes. Numerical simulations reveal a favorable reduction order range (from order 6th to order 25th) for optimal balance, with sensitivity observed at order 25th. From the results obtained, depending on specific requirements, users can use a lower-order model corresponding to the allowed error to replace the original system. Recommendations include iterative refinement for adaptive reduction orders and in-depth analysis around critical points. This algorithm becomes an effective method for researchers dealing with high-dimensional dynamic systems, offering simpler yet accurate model representations. As technology develops, continued refinements and applications of modal truncation are expected, solidifying its role in the realm of model reduction.
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- 2024
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42. Edge-based relative entropy as a sensitive indicator of critical transitions in biological systems
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Renhao Hong, Yuyan Tong, Huisheng Liu, Pei Chen, and Rui Liu
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Critical transition of complex disease ,Edge-based relative entropy ,Direct interaction networks ,Edge-biomarker ,Dynamic systems ,Informational entropy ,Medicine - Abstract
Abstract Background Disease progression in biosystems is not always a steady process but is occasionally abrupt. It is important but challenging to signal critical transitions in complex biosystems. Methods In this study, based on the theoretical framework of dynamic network biomarkers (DNBs), we propose a model-free method, edge-based relative entropy (ERE), to identify temporal key biomolecular associations/networks that may serve as DNBs and detect early-warning signals of the drastic state transition during disease progression in complex biological systems. Specifically, by combining gene‒gene interaction (edge) information with the relative entropy, the ERE method converts gene expression values into network entropy values, quantifying the dynamic change in a biomolecular network and indicating the qualitative shift in the system state. Results The proposed method was validated using simulated data and real biological datasets of complex diseases. The applications show that for certain diseases, the ERE method helps to reveal so-called “dark genes” that are non-differentially expressed but with high ERE values and of essential importance in both gene regulation and prognosis. Conclusions The proposed method effectively identified the critical transition states of complex diseases at the network level. Our study not only identified the critical transition states of various cancers but also provided two types of new prognostic biomarkers, positive and negative edge biomarkers, for further practical application. The method in this study therefore has great potential in personalized disease diagnosis.
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- 2024
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43. Early social-cognitive development as a dynamic developmental system--a lifeworld approach.
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Kärtner, Joscha and Köster, Moritz
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DYNAMICAL systems ,SELF-consciousness (Awareness) ,SOCIAL learning ,PROSOCIAL behavior ,SYSTEMS theory ,STATE regulation - Abstract
Based on developmental systems and dynamic systems theories, we propose the lifeworld approach--a conceptual framework for research and a hypothesis concerning early social-cognitive development. As a framework, the lifeworld approach recognizes the social embeddedness of development and shifts the focus away from individual developmental outcomes toward the reciprocal interplay of processes within and between individuals that co-constitutes early social-cognitive development. As a hypothesis, the lifeworld approach proposes that the changing developmental system--spanning the different individuals as their subsystems--strives toward attractor states through regulation at the behavioral level, which results in both the emergence and further differentiation of developmental attainments. The lifeworld approach--as a framework and a hypothesis, including key methodological approaches to test it--is exemplified by research on infants' self-awareness, prosocial behavior and social learning. Equipped with, first, a conceptual framework grounded in a modern view on development and, second, a growing suite of methodological approaches, developmental science can advance by analyzing the mutually influential relations between intra-individual and interactional processes in order to identify key mechanisms underlying early social-cognitive development. [ABSTRACT FROM AUTHOR]
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- 2024
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44. A Recurrent Neural Network for Identifying Multiple Chaotic Systems.
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Echenausía-Monroy, José Luis, Pena Ramirez, Jonatan, Álvarez, Joaquín, Rivera-Rodríguez, Raúl, Ontañón-García, Luis Javier, and Magallón-García, Daniel Alejandro
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RECURRENT neural networks , *COMPUTER simulation , *TIME series analysis , *DYNAMICAL systems - Abstract
This paper presents a First-Order Recurrent Neural Network activated by a wavelet function, in particular a Morlet wavelet, with a fixed set of parameters and capable of identifying multiple chaotic systems. By maintaining a fixed structure for the neural network and using the same activation function, the network can successfully identify the three state variables of several different chaotic systems, including the Chua, PWL-Rössler, Anishchenko–Astakhov, Álvarez-Curiel, Aizawa, and Rucklidge models. The performance of this approach was validated by numerical simulations in which the accuracy of the state estimation was evaluated using the Mean Square Error (MSE) and the coefficient of determination ( r 2 ), which indicates how well the neural network identifies the behavior of the individual oscillators. In contrast to the methods found in the literature, where a neural network is optimized to identify a single system and its application to another model requires recalibration of the neural algorithm parameters, the proposed model uses a fixed set of parameters to efficiently identify seven chaotic systems. These results build on previously published work by the authors and advance the development of robust and generic neural network structures for the identification of multiple chaotic oscillators. [ABSTRACT FROM AUTHOR]
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- 2024
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45. A longitudinal investigation of the relationship between Chinese counseling trainees' anxiety and client symptom outcome.
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Li, Xu, Wu, Manxuan, and Lin, Chaihua
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PSYCHOTHERAPIST attitudes , *ANXIETY , *EVALUATION of medical care , *ALLIED health personnel , *STUDENTS , *CLIENT relations , *LONGITUDINAL method , *STATE-Trait Anxiety Inventory , *COUNSELING , *PSYCHOLOGICAL tests - Abstract
This study examined the reciprocal association between counseling trainees' trait and state anxiety and their clients' symptom distress and the mediating effects of working alliance. Data set included 6,888 sessions conducted by 211 master's level beginning therapists with their 1,216 clients in China. Trainees completed a measure of trait anxiety at the beginning of practicum. Before each session, trainees completed the state anxiety measure and clients reported their symptom distress; and after every session, both the trainees and clients rated their perceived working alliance. Multilevel modeling showed that (a) Therapist trainees' level of trait anxiety did not predict overall client outcome in terms of symptom reduction. (b) At the session-to-session level, higher therapist state anxiety before one session significantly predicted higher client distress before the next session, and higher client distress before one session significantly predicted higher therapist state anxiety before the subsequent session. (c) Therapist and client perceptions of working alliance were both significant mediators of the reciprocal relationship between therapist state anxiety and client distress. Findings suggested that it was trainees' state anxiety, instead of trait anxiety, that reciprocally related to client symptom outcome at the session-to-session level. Implications for clinical training were discussed. PRACTICAL IMPLICATIONS A generally more anxious therapist trainee does not seem to have worse overall clinical effectiveness compared with a generally less anxious trainee. From session to session, trainees who experience less state anxiety tend to establish a stronger working alliance with their clients, which leads to more client symptom relief. Evidence suggests against selecting trainees based on their trait anxiety level; but it is recommended that supervisors help trainees manage their state anxiety before a session. [ABSTRACT FROM AUTHOR]
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- 2024
- Full Text
- View/download PDF
46. A comparison of centrality measures and their role in controlling the spread in epidemic networks.
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Dudkina, Ekaterina, Bin, Michelangelo, Breen, Jane, Crisostomi, Emanuele, Ferraro, Pietro, Kirkland, Steve, Mareček, Jakub, Murray-Smith, Roderick, Parisini, Thomas, Stone, Lewi, Yilmaz, Serife, and Shorten, Robert
- Subjects
- *
SCIENTIFIC community , *WEIGHTED graphs , *INFECTIOUS disease transmission , *EPIDEMICS , *COVID-19 pandemic , *AGRICULTURAL extension work - Abstract
The ranking of nodes in a network according to their centrality or ''importance'' is a classic problem that has attracted the interest of different scientific communities in the last decades. The COVID-19 pandemic has recently rejuvenated the interest in this problem, as the ranking may be used to decide who should be tested, or vaccinated, first, in a population of asymptomatic individuals. In this paper, we review classic methods for node ranking and compare their performance in a benchmark network that considers the community-based structure of society. The outcome of the ranking procedure is then used to decide which individuals should be tested, and possibly quarantined, first. Finally, we also review the extension of these ranking methods to weighted graphs and explore the importance of weights in a contact network by providing a toy model and comparing node rankings for this case in the context of disease spread. [ABSTRACT FROM AUTHOR]
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- 2024
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47. Application of Dynamic Systems Modeling Approach to Rank Optimal Urban Waste Management Strategies Using SWOT Method.
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Shahbandarzadeh, Hamid and Kabgani, Mohammad Hossein
- Abstract
Purpose: In a city, there are different sectors in operation, and each sector also plays a role in the production of municipal waste, which draws attention to waste management methods. The present study explains a model to identify the factors affecting waste production in Bushehr Methodology: The main dimensions of the model are taken from the review of the theoretical literature. A dynamic systems approach has also been used to identify urban waste management strategies. First, we identified and modelled the factors affecting municipal waste production with dynamic systems. The reasons for using the dynamic systems approach for this research can also be enumerated as follows: 1) an appropriate approach in determining and predicting the effects of factors affecting waste production, 2) helping to understand the relationships between variables and examining the behaviour and structure of systems, incredibly complex systems (creating a conceptual model), 3) a flexible approach with the ability to analyze quantitatively and qualitatively, 4) the ability to review the system in the future under different scenarios and policies of decision makers and 5) dynamic system models are considered as simulation models; therefore, they have the advantages of using the simulation method over the analysis methods. In the next step, the organization's internal and external factors in urban waste management were performed by referring to the SWOT analysis method, urban waste management strategies in Bushehr. Findings: The results of the SWOT method showed that the vulnerability threshold of urban waste management in Bushehr is very high, and it is necessary to provide appropriate policies to address weaknesses and threats using strengths and opportunities. In the next step, Mikhailov's nonlinear method was used to rank the four strategies. This approach shows that among SO strategies, increasing awareness and changing citizens' attitudes towards proper waste management is in the first place. Among ST strategies, culturing for recyclable containers weighing 0.51 is in the first place. Employing knowledgeable people for proper waste segregation and disposal among WT strategies, with a weight of 0.57, was ranked first, and finally, the strategy of encouraging the private sector to invest, with a weight equivalent to 0.43 among WO strategies, Ranked first. Pollution from poor waste management in urban areas imposes irreversible health and aesthetic consequences on society. Among the consequences of poor waste management will be a variety of diseases. Environmental issues are also at the top of all human problems Originality/Value: In this research, an attempt has been made to examine innovation from three aspects: theoretical, technical and practical gaps, which can be mentioned as the strengths of the current research compared to other research. From a theoretical point of view, it has been tried to conduct a relatively comprehensive study of factors affecting urban waste management to formulate strategies. Also, from the technical point of view, the current research is innovative by focusing on combining fuzzy logic with the dynamic systems modelling approach and the Delphi method. Finally, it has been tried to reduce the practical vacuum of previous research in this field by formulating optimal strategies. [ABSTRACT FROM AUTHOR]
- Published
- 2024
48. Interval Parity Relations for Fault Diagnosis in Discrete-Time Stationary Dynamic Systems.
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Zhirabok, A. N. and Zuev, A. V.
- Abstract
The problem of designing interval parity relations to solve the problem of fault detection in stationary systems described by linear and nonlinear dynamic models under external disturbances is studied. The solution is based on a model of the original system that has the minimal dimension, estimates some linear function of the system's output vector, and is insensitive or minimally sensitive to disturbances. The results obtained allow designing interval parity relations based on which the problem of diagnosing faults is solved. The theoretical results are illustrated by an example. [ABSTRACT FROM AUTHOR]
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- 2024
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49. Online Energy-Aware Scheduling for Deadline-Constrained Applications in Distributed Heterogeneous Systems.
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Liu, Yifan, Du, Chengelie, Chen, Jinchao, and Du, Xiaoyan
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ENERGY consumption , *SCHEDULING , *DYNAMICAL systems , *HETEROGENEOUS computing - Abstract
In the current computing environment, the significance of distributed heterogeneous systems has gained prominence. The research on scheduling problems in distributed systems that consider energy consumption has garnered substantial attention due to its potential to enhance system stability, achieve energy savings, and contribute to environmental preservation. However, efficient scheduling in such systems necessitates not only the consideration of energy consumption but also the ability to adapt to the dynamic nature of the system. To tackle these challenges, we propose an online energy-aware scheduling algorithm for deadline-constrained applications in distributed heterogeneous systems, leveraging dynamic voltage and frequency scaling (DVFS) techniques. First, the algorithm models the continuously arriving applications and heterogeneous processors and proposes a novel task-sorting method to prioritize tasks, ensuring that more applications are completed within their respective deadlines. Second, the algorithm controls the selection range of processors based on the task's subdeadline and assigns the task to the processor with the minimum energy consumption. Through experiments conducted with randomly generated applications, our approach consistently exhibits superior performance when compared to similar scheduling algorithms. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
50. Meta-Emotion and Emotion Socialization by Mothers of Preschoolers During Storytelling Tasks.
- Author
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Soucie, Kendall, Scott, Shawna A., Partridge, Ty, Hakim-Larson, Julie, Babb, Kimberly A., and Voelker, Sylvia
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READING , *TASK performance , *RESEARCH funding , *EMOTIONS , *PHILOSOPHY , *EDUCATIONAL tests & measurements , *DESCRIPTIVE statistics , *MENTORING , *BEHAVIOR , *BOOKS , *SOUND recordings , *CAREGIVERS , *PSYCHOLOGY of mothers , *STORYTELLING , *BODY language , *MOTHER-child relationship , *THEORY , *COGNITION , *SOCIALIZATION - Abstract
In the present study, we employed a multi-method approach to study the process by which mothers of preschool-aged children actively socialize complex emotions. Within the context of a dynamic systems framework, we examined the associations between maternal meta-emotion philosophies, via an interview-based assessment (the Meta-Emotion Interview, MEI), and the use of emotion words mapped onto a state-space grid during a narrative storytelling task. Mothers were asked to read an emotionally evocative, wordless picture-story book in a comfortable setting in their homes to their preschool-aged child. All interactions were audio recorded, transcribed verbatim, and categories of negative and positive emotion words, and their behavioural expressions were coded from a rubric by independent raters with a 96% agreement rate. We found that higher levels of maternal awareness of emotion and emotion coaching strategies on the MEI were correlated with a wide array of positive and negative emotion word usage and behavioral expressions of emotion during the storytelling task, as well as with more flexible, fluid, and diverse state-space grid profiles. These results are consistent with meta-emotion theory and suggest that meta-emotion philosophies have an implicit influence on the ways in which caregivers socialize emotions in natural settings. We argue that an SSG methodology adds an innovative dimension to the study of meta-emotion and emotion socialization. Highlights: Examined emotion socialization with the use of a state space grid (SSG) methodology. Emotion awareness and coaching strategies correlated with more diverse SSGs. These results were most pronounced when exploring negative emotions. SSGs add a novel approach for integrating meta-emotion and emotion socialization. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
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