31 results
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2. Estimation of multicomponent stress–strength reliability for exponentiated Gumbel distribution.
- Author
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Chacko, Manoj and Elizabeth Koshy, Ashly
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BAYES' estimation , *MARKOV chain Monte Carlo , *MAXIMUM likelihood statistics , *ERROR functions - Abstract
In this paper, the stress–strength reliability $ R_{s,k} $ R s , k of a multicomponent s-out-of-k system for exponentiated Gumbel distribution is considered. An s-out-of-k system means a system with total k components and the system can survive only when atleast s of the total components function properly. The ability of the system to overcome the experiencing stress with its strength is termed as its stress–strengh reliability. The maximum likelihood estimator and Bayes estimator for $ R_{s,k} $ R s , k are obtained. The Bayes estimators are obtained using Markov chain Monte Carlo(MCMC) method under both symmetric and asymmetric loss functions. The loss functions we considered are squared error loss function, LINEX loss function and entropy loss function. The asymptotic, bootstrap and highest posterior density(HPD) confidence intervals for $ R_{s,k} $ R s , k are also obtained. A simulation study is conducted for evaluating the efficiency of the estimators derived in this paper. Real data sets are also considered for illustration. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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3. Fitting data to a multiple structural measurement errors model.
- Author
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Al Dibi’i, Ro’ya, Abdul Rahman, Rosmanjawati, and Al-Nasser, Amjad
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ERRORS-in-variables models , *STANDARD deviations , *MOMENTS method (Statistics) , *GROSS national product , *MAXIMUM likelihood statistics - Abstract
AbstractThis paper proposes two new estimation methods to fit a multiple structural measurement error model when all variables are subject to errors. The new estimation methods were extensions of the Wald estimation method, one is the weighted grouping method, and the other is the iterative method. A Monte Carlo experiment is performed to investigate the performance of the new estimators compared with the classical estimation methods; the Maximum Likelihood Estimator and Method of Moment, in terms of root mean square error and its bias. The simulation outcomes demonstrated that the suggested estimators are more effective than conventional estimators. In addition, real data analysis is discussed to examine the relationship between the national gross domestic product, unemployment rate, and human development index after applying the two proposed estimation methods. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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4. Estimation of complier causal treatment effects under the additive hazards model with interval-censored data.
- Author
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Ma, Yuqing, Wang, Peijie, Li, Shuwei, and Sun, Jianguo
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TREATMENT effectiveness , *MAXIMUM likelihood statistics , *HAZARDS , *CENSORING (Statistics) , *DATA modeling , *EARLY detection of cancer , *CONFOUNDING variables - Abstract
Estimation of causal treatment effects has attracted a great deal of interest in many areas including social, biological and health science, and for this, instrumental variable (IV) has become a commonly used tool in the presence of unmeasured confounding. In particular, many IV methods have been developed for right-censored time-to-event outcomes. In this paper, we consider a much more complicated situation where one faces interval-censored time-to-event outcomes, which are ubiquitously present in studies with, for example, intermittent follow-up but are challenging to handle in terms of both theory and computation. A sieve maximum likelihood estimation procedure is proposed for estimating complier causal treatment effects under the additive hazards model, and the resulting estimators are shown to be consistent and asymptotically normal. A simulation study is conducted to evaluate the finite sample performance of the proposed approach and suggests that it works well in practice. It is applied to a breast cancer screening study. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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5. Bayesian estimation for geometric process with the Weibull distribution.
- Author
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Usta, Ilhan
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WEIBULL distribution , *MARKOV chain Monte Carlo , *BAYES' estimation , *ASYMPTOTIC distribution , *MAXIMUM likelihood statistics , *MOMENTUM transfer - Abstract
In this paper, we focus on Bayesian estimation of the parameters in the geometric process (GP) in which the first occurrence time of an event is assumed to have Weibull distribution. The Bayesian estimators are derived based on both symmetric (Squared Error) and asymmetric (General Entropy, LINEX) loss functions. Since the Bayesian estimators of unknown parameters cannot be obtained analytically, Lindley's approximation and the Markov Chain Monte Carlo (MCMC) methods are applied to compute the Bayesian estimates. Furthermore, by using the MCMC methods, credible intervals of the parameters are constructed. Maximum likelihood (ML) estimators are also derived for unknown parameters. The confidence intervals of the parameters are obtained based on an asymptotic distribution of ML estimators. Moreover, the performances of the proposed Bayesian estimators are compared with the corresponding ML, modified moment and modified maximum likelihood estimators through an extensive simulation study. Finally, analyses of two different real data sets are presented for illustrative purposes. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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6. Unit-bimodal Birnbaum-Saunders distribution with applications.
- Author
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Martínez-Flórez, Guillermo, Olmos, Neveka M., and Venegas, Osvaldo
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CENSORING (Statistics) , *RANDOM variables , *REGRESSION analysis , *PARAMETER estimation , *CUMULATIVE distribution function , *MAXIMUM likelihood statistics - Abstract
In this paper, we consider a transformation in a random variable which follows a bimodal Birnbaum-Saunders distribution. We propose the unit-bimodal Birnbaum-Saunders (UBBS) distribution and investigate some of its important properties, like cumulative distribution function, moments, survival function and risk function. We apply the UBBS distribution to censored data inflated at zero and one. We used the maximum likelihood approach for parameter estimation and to compare the models. Given the flexibility in UBBS distribution modes, our proposal performs best in beta regression models with zero and/or one excess. [ABSTRACT FROM AUTHOR]
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- 2024
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7. Identifying the time of step change in process parameter for Maxwell distribution.
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Kapase, Rupali A. and Ghute, Vikas B.
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MAXWELL-Boltzmann distribution law , *QUALITY control charts , *MAXIMUM likelihood statistics , *SKEWNESS (Probability theory) , *TIME perception - Abstract
Due to the quick identification of the root causes for an out-of-control process, the estimation of exact time of a process change would be helpful thing for the process improvement. In contrast to the typical normal assumption, this study realizes that a process may follow a skewed Maxwell distribution. In this paper, using maximum likelihood estimation, a considerably efficient change point model is proposed for $ V $ V control chart which underlying distribution is Maxwell distribution. The required chart statistics are calculated with its distributional properties. The proposed method is used when $ V $ V control chart signals a change in a process parameter. The proposed method, when used with $ V $ V control chart would be helpful for process engineers both in controlling and identifying a permanent step change in a process scale parameter. An illustrative example is given to understand the use of the proposed method. [ABSTRACT FROM AUTHOR]
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- 2024
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8. Estimation of structural parameters in balanced Bühlmann credibility model with correlation risk.
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Yang, Yang and Wang, Lichun
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BAYES' estimation , *MAXIMUM likelihood statistics , *PARAMETER estimation , *PANEL analysis - Abstract
In this paper, the longitudinal data analysis is used to interpret the balanced Bühlmann credibility model with correlation risk, and the homogeneous credibility estimator is derived. We obtain the restricted maximum likelihood estimators (RMLE) for the structural parameters involved in the credibility factor and show that they are unbiased. In addition, the linear Bayes method is employed to estimate the structural parameters, and the proposed linear Bayes estimators (LBE) appear to outperform RMLE in terms of the mean squared error matrix (MSEM) criterion. Simulation studies show that the proposed LBE performs well. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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9. Enhancing mortgage rate prediction: a comprehensive evaluation of computational statistical approaches.
- Author
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Zhu, Danlei, Khaliq, Yousaf, Wang, Haoyuan, Sun, Tingting, and Wang, Donglin
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MORTGAGE rates , *STANDARD deviations , *GIBBS sampling , *MAXIMUM likelihood statistics , *MORTGAGE banks , *FORECASTING - Abstract
The noterate is a tool for predicting home mortgage rates, it is often skewed and has missing information. The noterate could be affected by incomplete or inaccurate data, thus leading to inaccurate predictions. Financial organizations including mortgage companies or banks need to consider the risk of uncertainty carefully and make a more accurate prediction based on some suitable models. To deal with this situation, in this paper we compared six computational statistical methods, including the ordinary least square model, maximum likelihood estimation, maximum a posterior, bootstrapping, Metropolis-Hastings, and Gibbs sampling method on a mortgage dataset. Based on the k fold cross-validation technique and four metrics including mean absolute error (MAE), mean squared error (MSE), root mean squared error (RMSE), and mean absolute percentage error (MAPE), the bootstrapping method outperforms other methods. In practice, this method is recommended for predicting noterate. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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10. The Pareto type I joint frailty-copula model for clustered bivariate survival data.
- Author
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Lin, Yuan-Hsin, Sun, Li-Hsien, Tseng, Yi-Ju, and Emura, Takeshi
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SURVIVAL analysis (Biometry) , *MAXIMUM likelihood statistics , *SURVIVAL rate , *HAZARD function (Statistics) , *INFERENTIAL statistics , *BIVARIATE analysis , *SPLINES , *COMPETING risks - Abstract
Clustered bivariate survival data arise in various fields, such as biology and medicine, when individuals in a dataset are clustered and exhibit two survival outcomes. Recently, the joint frailty-copula model was proposed to analyze clustered bivariate survival outcomes by accommodating the between-cluster heterogeneity via a shared frailty term. In this model, researchers fitted the baseline hazard functions via the nonparametric model, the spline model, or the Weibull model. However, when a population has extremely large survival time, the baseline hazard functions are better modeled by a heavy-tailed distribution. In this paper, we adopt the Pareto type I distribution for the joint frailty-copula model, which is one of the most popular heavy-tailed distributions. We show that the moments of the Pareto type I joint frailty copula model diverge to infinity owing to the heavy right-tail. We develop statistical inference methods based on three types of censoring schemes: (i) bivariate random censoring, (ii) semi-competing risks, and (iii) competing risks. We develop maximum likelihood estimation procedures, and make our computational tools available for users. Simulations are performed to check the accuracy of the proposed method. We finally analyze a real dataset for illustration. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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11. Weighted Lindley regression model with varying precision: estimation, modeling and its diagnostics.
- Author
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Mota, Alex L., Santos-Neto, Manoel, Neto, Milton Miranda, Leão, Jeremias, Tomazella, Vera L. D., and Louzada, Francisco
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REGRESSION analysis , *MONTE Carlo method , *MAXIMUM likelihood statistics , *FISHER information - Abstract
The two-parameter weighted Lindley distribution has become much popular due to its simplicity, attractive properties, and flexibility to fit data when compared with similar generalizations of the exponential model, such as gamma and Weibull, among others. In this paper, we introduce a regression model based on a weighted Lindley distribution, which is reparameterized in terms of mean and precision parameters. In this model, both the mean and precision parameters vary with the explanatory variable values and general link functions are used in order to account for these relationships. We developed and implemented local influence diagnostics to identify potential influential observations. Hessian and Fisher information matrices are computed on the closed-form as well as their inverses. Classical inference based on the maximum likelihood method is presented. Extensive Monte Carlo simulation studies are carried out for a special case of the regression model in order to verify the asymptotic properties of the maximum likelihood estimators. Finally, the usefulness of the proposed model is illustrated through an empirical analysis. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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12. A new RCAR(1) model based on explanatory variables and observations.
- Author
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Sheng, Danshu, Wang, Dehui, and Kang, Yao
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QUANTILE regression , *ASYMPTOTIC normality , *RANDOM variables , *TIME series analysis , *MAXIMUM likelihood statistics , *ASYMPTOTIC distribution - Abstract
The random coefficient autoregressive (RCAR) processes are very useful to model time series in applications. It is commonly observed that the random autoregressive coefficient is assumed to be an independent identically distributed (i.i.d.) random variable sequence. To make the RCAR model more practical, this paper considers a new RCAR(1) model driven by explanatory variable and observations. We use the conditional least squares, the quantile regression and the conditional maximum likelihood methods to estimate the model parameters. The consistency and asymptotic normality of the proposed estimates are established. Simulation studies are conducted for the evaluation of the developed approaches and two applications to real-data examples are provided. The results show that the proposed procedures perform well for the simulations and application. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
13. The E-Bayesian and hierarchical Bayesian estimations for the reliability analysis of Kumaraswamy generalized distribution based on upper record values.
- Author
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Shi, Weihua, Ye, Tianrui, and Gui, Wenhao
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MEAN square algorithms , *MAXIMUM likelihood statistics , *ULTRASONIC testing , *GAMMA distributions , *BAYES' estimation , *FATIGUE testing machines - Abstract
This paper investigates the E-Bayesian and hierarchical Bayesian estimations of shape parameter and reliability function of Kumaraswamy generalized distribution based on upper record values. The classical estimation method is utilized to deduce the maximum likelihood estimation of unknown parameter and reliability function. Bayesian estimates are derived by using conjugate Gamma prior distributions under quadratic and general entropy loss functions. Furthermore, assuming that hyper-hyperparameters obey three prior distributions, the E-Bayesian estimates of unknown parameters and reliability functions are obtained. The hierarchical Bayesian estimates are obtained by using hierarchical prior distributions. We also explore some characteristics and size relationships of E-Bayesian and hierarchical Bayesian estimations. The performance of E-Bayesian, Hierarchical Bayesian, Bayesian, and maximum likelihood estimations is compared based on the minimum mean square error criterion. Finally, the proposed estimation methods are applied to evaluate the reliability of the specimen under ultrasonic fatigue testing, and the results align with their structures and profiles. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
14. Estimation of the stress-strength parameter under two-sample balanced progressive censoring scheme.
- Author
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Sultana, Farha, Çetinkaya, Çagatay, and Kundu, Debasis
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CENSORING (Statistics) , *PARAMETER estimation , *MAXIMUM likelihood statistics , *GIBBS sampling , *WEIBULL distribution , *SEARCH algorithms - Abstract
In this paper, we obtain the stress-strength reliability estimation under balanced joint Type-II progressive censoring scheme for independent samples from two different populations. We simultaneously place two independent samples where the experimental units follow Weibull distributions with common shape parameter β and different scale parameters α, λ, respectively. The maximum likelihood estimators of the unknown parameters are derived. Further, the Bayesian inference is considered using Lindley's approximation and Gibbs sampling method. Extensive simulations are performed to see the effectiveness of the proposed estimation methods. Further, we derive the optimal censoring scheme in the Bayesian framework by using the variable neighbourhood search method proposed by [Bhattacharya et al. On optimum life-testing plans under type-ii progressive censoring scheme using variable neighbourhood search algorithm. Test. 2016;25(2):309–330]. Further, some simulation schemes are provided to compare the performances of the estimations under the jointly censored samples versus two separate censored samples. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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15. Estimation of the trajectory and attitude of railway vehicles using inertial sensors with application to track geometry measurement.
- Author
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González-Carbajal, J., Urda, Pedro, Muñoz, Sergio, and Escalona, José L.
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RAILROAD trains , *TRACKING algorithms , *MAXIMUM likelihood statistics , *POSITION sensors , *DETECTORS , *KALMAN filtering , *MOTION - Abstract
This paper describes a novel method for the estimation of the trajectory and orientation of a rigid body moving along a railway track. Compared to other recent developments in the literature, the presented approach has the significant advantage of using inertial sensors only, excluding global position and orientation sensors. The excluded sensors are compensated with an odometry system and previous knowledge of the design track geometry. The procedure is based on a kinematic model of the relative motion of the body with respect to the track, together with a Kalman filter algorithm. Two different approaches are used and compared for the estimation of the noise covariance matrices in the Kalman filter. One is based on the use of experimental results with a known output. The other one relies upon constrained maximum likelihood estimation. The calculated trajectory and orientation are applied in this research to the problem of track geometry measurement. A scale track is used for experimental validation, showing that results are sufficiently accurate for this application. The obtained results also reveal that the constrained maximum likelihood estimation performs similarly to the known-output method. This is very convenient because it allows a straightforward application of the algorithm in different scenarios. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
16. An investigation of periodic degradation of axle box vibration spectrum for a high-speed rail vehicle based on Bayesian method.
- Author
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Yang, Ningrui, Wu, Xingwen, Cai, Wubin, Liang, Shulin, and Chi, Maoru
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VIBRATIONAL spectra , *HIGH speed trains , *MAXIMUM likelihood statistics , *WIENER processes , *SPECTRAL energy distribution , *SERVICE life - Abstract
Axle box vibration serves as the main source of excitations for rail vehicles. Due to the wear of wheel/rail contact and the re-profiling procedure, the axle box vibration usually degrades periodically with the increased mileage in the service. This could significantly impact the estimation of vibration fatigue when the component is subjected to the axle box vibration. This paper develop a method to describe the periodic evolution of axle box vibration spectrum to better characterise the vibration spectrum of axle box. In this study, a Wiener process incorporating with four random parameters was employed to model the non-linearity of the degradation process. The maximum likelihood estimation (MLE) algorithm is used to estimate the initial values of the random parameters, and a Bayesian approach is employed to update the parameters based on newly obtained data. Finally, the proposed methodology is tested using long-term field test data from a high-speed train, and the results demonstrate that it accurately estimates the evolution of the axle box acceleration spectral density (ASD) spectrum. This could aid in predicting the residual service life of structures subjected to axle box vibration and further contribute to the development of maintenance strategies and top-down design of the structure. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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- View/download PDF
17. Stein estimators for the drift of the mixing of two fractional Brownian motions.
- Author
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Djerfi, Kouider, Djellouli, Ghaouti, and Madani, Fethi
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BROWNIAN motion , *MAXIMUM likelihood statistics , *PARAMETER estimation - Abstract
In this paper, we consider the problem of efficient estimation for the drift parameter θ ∈ R d in the linear model Z t : = θ t + σ 1 B H 1 (t) + σ 2 B H 2 (t) , t ∈ [ 0 , T ]. Where B H 1 and B H 2 are two independent d-dimensional fractional Brownian motions with Hurst indices H1 and H2 such that 1 2 ≤ H 1 < H 2 < 1. The main goal is firstly to define the maximum likelihood estimator (MLE) of the drift θ, and secondly to provide a sufficient condition for the James-Stein type estimators which dominate, under the usual quadratic risk, the usual estimator (MLE). [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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18. The sparse estimation of the semiparametric linear transformation model with dependent current status data.
- Author
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Luo, Lin, Yu, Jinzhao, and Zhao, Hui
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NONPARAMETRIC estimation , *MAXIMUM likelihood statistics , *BERNSTEIN polynomials , *ALZHEIMER'S disease , *CENSORING (Statistics) - Abstract
In this paper, we study the sparse estimation under the semiparametric linear transformation models for the current status data, also called type I interval-censored data. For the problem, the failure time of interest may be dependent on the censoring time and the association parameter between them is left unspecified. To address this, we employ the copula model to describe the dependence between them and a two-stage estimation procedure to estimate both the association parameter and the regression parameter. In addition, we propose a penalized maximum likelihood estimation procedure based on the broken adaptive ridge regression, and Bernstein polynomials are used to approximate the nonparametric functions involved. The oracle property of the proposed method is established and the numerical studies suggest that the method works well for practical situations. Finally, the method is applied to an Alzheimer's disease study that motivated this investigation. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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19. Inference on the lifetime performance index of gamma distribution: point and interval estimation.
- Author
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Shaabani, J. and Jafari, A. A.
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GAMMA distributions , *FIX-point estimation , *MONTE Carlo method , *ACCEPTANCE sampling , *MAXIMUM likelihood statistics , *CONFIDENCE intervals - Abstract
Performance capability indices are valuable measures to evaluate the quality of a product. In this paper, we consider inference on a lifetime performance index when the product's lifetime follows a gamma distribution with unknown parameters. The bias and mean square error of the maximum likelihood estimator and other proposed estimators are compared. Also, an asymptotic confidence interval using the maximum likelihood estimator, thirteen bootstrap confidence intervals, and four generalized pivotal quantities are derived for the performance capability index. A Monte Carlo simulation is provided to investigate the accuracy of expected lengths and coverage probabilities of the confidence intervals. An actual data set is used to illustrate the estimators and confidence intervals. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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20. Poisson-Modification of Quasi Lindley regression model for over-dispersed count responses.
- Author
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Tharshan, Ramajeyam and Wijekoon, Pushpakanthie
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REGRESSION analysis , *MAXIMUM likelihood statistics , *POISSON regression - Abstract
This paper introduces an alternative linear regression model for over-dispersed count responses with appropriate covariates. It is an extended work of univariate Poisson-Modification of the Quasi Lindley (PMQL) distribution via the generalized linear model approach. A re-parametrized PMQL distribution is considered to demonstrate the flexible properties of the distribution on its regression model. Further, the performance of its maximum likelihood estimation method is examined by a simulation study based on the asymptotic theory. The maximum likelihood estimator is used to estimate the parameters of the regression model. Finally, three simulated data sets and a real-world data set are taken to show the applicability of the PMQL regression model against the Poisson, Negative binomial (NB), Poisson-Quasi Lindley (PQL), and Generalized Poisson-Lindley (GPL) regression models. The results of applications show that the newly introduced model provides a better fit for over-dispersed count responses with covariates than the Poisson, NB, PQL, GPL regression models. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
21. Theoretical results and modeling under the discrete Birnbaum-Saunders distribution.
- Author
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Vilca, Filidor, Vila, Roberto, Saulo, Helton, Sánchez, Luis, and Leão, Jeremias
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STATISTICAL reliability , *MONTE Carlo method , *MAXIMUM likelihood statistics , *REGRESSION analysis , *ORDER statistics - Abstract
In this paper, we discuss some theoretical results and properties of a discrete version of the Birnbaum-Saunders distribution. We present a proof of the unimodality of this model. Moreover, results on moments, quantile function, reliability and order statistics are also presented. In addition, we propose a regression model based on the discrete Birnbaum-Saunders distribution. The model parameters are estimated by the maximum likelihood method and a Monte Carlo study is performed to evaluate the performance of the estimators. Finally, we illustrate the proposed methodology with the use of real data sets. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
22. Bayes estimates of variance components in mixed linear model.
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Jiang, Jie, He, Tian, and Wang, Lichun
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BAYES' estimation , *MAXIMUM likelihood statistics , *ANALYSIS of variance - Abstract
This paper proves that in mixed linear model, the analysis of variance estimation (ANOVAE), the minimum norm quadratic unbiased estimation (MINQUE), the spectral decomposition estimation (SDE) and the restricted maximum likelihood estimation (RMLE) of variance components are the same under some conditions. Based on this result, we construct a linear Bayes estimation (LBE) for the parameter vector consisting of variance components and establish its superiorities. Numerical computations and an illustration show that the LBE is comparable to Lindley's approximation, Tierney and Kadane's approximation and the usual Bayes estimation (UBE) obtained by the MCMC method and easy to use as well. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
23. Simple methods for comparing two predictive values with incomplete data.
- Author
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Wu, Yougui
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MISSING data (Statistics) , *MAXIMUM likelihood statistics , *SENSITIVITY & specificity (Statistics) - Abstract
Statistical methods have been well developed for comparing the predictive values of two binary diagnostic tests under a paired design. However, existing methods do not make allowance for incomplete data. Although maximum likelihood based method can be used to deal with incomplete data, it requires iterative algorithm for implementation. A simple and easily implemented statistical method is therefore needed. Simple methods exist for comparing two sensitivities or specificities with incomplete data but such simple methods are not available for comparing two predictive values with incomplete data. In this paper, we propose two simple methods for comparing two predictive values with incomplete data. The test statistics derived by these two methods are simple to compute, only involving some minor modification of the existing weighted generalized score statistics with complete data. Simulation results demonstrate that the proposed methods are more efficient than the ad-hoc method that only uses the subjects wit complete data. As an illustration, the proposed methods are applied to an observational study comparing two non-invasive methods in detecting endometriosis. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
24. Statistical inference for Gompertz distribution under adaptive type-II progressive hybrid censoring.
- Author
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Lv, Qi, Tian, Yajie, and Gui, Wenhao
- Subjects
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DISTRIBUTION (Probability theory) , *INFERENTIAL statistics , *MAXIMUM likelihood statistics , *MONTE Carlo method , *EXPECTATION-maximization algorithms , *CENSORING (Statistics) - Abstract
Gompertz distribution is a significant and commonly used lifetime distribution, which plays an important role in reliability engineering. In this paper, we study the statistical inference of Gompertz distribution based on adaptive Type-II hybrid progressive censored schemes. From the perspective of frequentist, we derive the point estimations through the method of maximum likelihood estimation (MLE) and the existence of MLE is proved. Besides MLE, we propose the stochastic EM algorithm to reduce complexity and simplify computing. We also apply the method of Bootstraps (Bootstrap-p and Bootstrap-t) to construct confidence intervals. From Bayesian aspect, the Bayes estimates of the unknown parameters are evaluated by applying the MCMC method, the average length and coverage rate of credible intervals are also carried out. The Bayes inference is based on the squared error loss function and LINEX loss function. Furthermore, a numerical simulation is conducted to assess the performance of the proposed methods. Finally, a real-life example is considered to illustrate the application and development of the inference methods. In summary, the Bayesian method seems to perform the best among all approaches, while other approaches also present different advantages. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
25. Alternative classification rules for two inverse gaussian populations with a common mean and order restricted scale-like parameters.
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Kumar, Pushkal, Tripathy, Manas Ranjan, and Kumar, Somesh
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MAXIMUM likelihood statistics , *CLASSIFICATION , *GAUSSIAN processes - Abstract
The problem of classification into two inverse Gaussian populations with a common mean and ordered scale-like parameters is considered. Surprisingly, the maximum likelihood estimators (MLEs) of the associated model parameters have not been utilized for classification purposes. Note that the MLEs of the model parameters, including the MLE of the common mean, do not have closed-form expressions. In this paper, several classification rules are proposed that use the MLEs and some plug-in type estimators under order restricted scale-like parameters. In the sequel, the risk values of all the proposed estimators are compared numerically, which shows that the proposed plug-in type restricted MLE performs better than others, including the Graybill-Deal type estimator of the common mean. Further, the proposed classification rules are compared in terms of the expected probability of correct classification (EPC) numerically. It is seen that some of our proposed rules have better performance than the existing ones in most of the parameter space. Two real-life examples are considered for application purposes. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
26. Non-Bayesian and Bayesian estimation of stress-strength reliability from Topp-Leone distribution under progressive first-failure censoring.
- Author
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Saini, Shubham and Garg, Renu
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BAYES' estimation , *CENSORING (Statistics) , *MAXIMUM likelihood statistics , *GIBBS sampling , *CENSORSHIP - Abstract
In this paper, the Bayesian and non-Bayesian estimation of $$\psi = P(X \gt Y)$$ ψ = P (X > Y) based on the progressively first-failure censored data is considered. The $$X$$ X and $$Y$$ Y are strength and stress random variables and follow the Topp-Leone distributions, respectively. The maximum likelihood and Bayes estimators of $$\psi $$ ψ are derived. The Bayes estimators under generalized entropy loss function are computed using Lindley's approximation and Gibbs sampling methods. Different interval estimates like asymptotic, bootstrap confidence, Bayesian credible, and highest posterior density credible intervals of $$\psi $$ ψ are constructed. Furthermore, a Monte Carlo numerical study is conducted to check the performance of various estimators developed. Finally, an application of algorithm real data is considered for illustrative purposes. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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27. A new bivariate lifetime distribution: properties, estimations and its extension.
- Author
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Sarhan, Ammar M., Apaloo, Joseph, and Kundu, Debasis
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MARGINAL distributions , *BAYES' estimation , *MAXIMUM likelihood statistics , *BIVARIATE analysis , *DISTRIBUTION (Probability theory) , *COMPETING risks - Abstract
In this paper a new bivariate lifetime distribution is introduced. Its marginal distribution functions follow two-parameter Chen distribution, which has a bathtub shaped or increasing hazard rate functions. The proposed distribution, which we call a bivariate Chen distribution (BCD), is of Marshall-Olkin type and it is a singular distribution. Several properties of this proposed distribution are discussed. The BCD distribution has four unknown parameters. The maximum likelihood (ML) method and the Bayes techniques are used to estimate the unknown parameters. The maximum likelihood estimators or the Bayes estimators cannot be obtained in closed form. Numerical methods have been used in both cases. A real data set is analyzed using the proposed distribution for illustrative and comparison purposes. An application to dependent competing risks data is discussed, and finally we have extended the BCD to the multivariate case. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
28. A simulation-based study of ZIP regression with various zero-inflated submodels.
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Ali, Essoham
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MAXIMUM likelihood statistics , *POISSON regression , *REGRESSION analysis - Abstract
In this paper, we are interested in the robustness of the estimation in the Zero-Inflated Poisson regression model, when varying the class membership model of the underlying mixture. We propose an estimation procedure based on the maximum likelihood estimator. Simulations are used to examine the performance of the MLE. The results suggest that maximum likelihood allows for accurate inference. Using simulated datasets, we show that the proposed alternative link functions are quite flexible and outperform the standard link function. Also, an application to a real dataset is provided. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
29. Exact likelihood inference for Laplace distribution based on generalized hybrid censored samples.
- Author
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Zhu, Xiaojun and Balakrishnan, Narayanaswamy
- Subjects
- *
LAPLACE distribution , *MAXIMUM likelihood statistics , *GENERATING functions , *CENSORING (Statistics) - Abstract
In this paper, we first develop exact likelihood inference for Laplace distribution based on a generalized Type-I hybrid censored sample (Type-I HCS). We derive explicit expressions for the maximum likelihood estimators (MLEs) of the location and scale parameters. We then derive the joint moment generating function (MGF) of the MLEs, and use it to obtain the exact distributions and moments of the MLEs. Using an analogous approach, we extend the results to a generalized Type-II hybrid censored sample (Type-II HCS) next. Finally, we present a numerical example to illustrate all the results established here. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
30. Estimation for multivariate normal rapidly decreasing tempered stable distributions.
- Author
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Bianchi, Michele Leonardo and Tassinari, Gian Luca
- Subjects
- *
RANDOM variables , *PARAMETER estimation , *STOCK price indexes , *GAUSSIAN distribution , *MAXIMUM likelihood statistics - Abstract
In this paper we describe a methodology for parameter estimation of multivariate distributions defined as normal mean-variance mixture where the mixing random variable is rapidly decreasing tempered stable distributed. We address some numerical issues resulting from the use of the characteristic function for density approximation. We focus our attention on the practical implementation of numerical methods involving the use of these multivariate distributions in the field of finance and we empirical assess the proposed algorithm through an analysis on a five-dimensional series of stock index log-returns. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
31. Estimation and prediction for Burr type III distribution based on unified progressive hybrid censoring scheme.
- Author
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Dutta, Subhankar and Kayal, Suchandan
- Subjects
- *
MONTE Carlo method , *BAYES' estimation , *MAXIMUM likelihood statistics , *ASYMPTOTIC distribution , *CENSORSHIP , *FORECASTING - Abstract
The present communication develops the tools for estimation and prediction of the Burr-III distribution under unified progressive hybrid censoring scheme. The maximum likelihood estimates of model parameters are obtained. It is shown that the maximum likelihood estimates exist uniquely. Expectation maximization and stochastic expectation maximization methods are employed to compute the point estimates of unknown parameters. Based on the asymptotic distribution of the maximum likelihood estimators, approximate confidence intervals are proposed. In addition, the bootstrap confidence intervals are constructed. Furthermore, the Bayes estimates are derived with respect to squared error and LINEX loss functions. To compute the approximate Bayes estimates, Metropolis–Hastings algorithm is adopted. The highest posterior density credible intervals are obtained. Further, maximum a posteriori estimates of the model parameters are computed. The Bayesian predictive point, as well as interval estimates, are proposed. A Monte Carlo simulation study is employed in order to evaluate the performance of the proposed statistical procedures. Finally, two real data sets are considered and analysed to illustrate the methodologies established in this paper. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
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