نتایج جستجو برای: maximum likelihood estimation mle

تعداد نتایج: 596801  

Journal: :Entropy 2017
Songbai Song Xiaoyan Song Yan Kang

Two methods based on the principle of maximum entropy (POME), the ordinary entropy method (ENT) and the parameter space expansion method (PSEM), are developed for estimating the parameters of a four-parameter exponential gamma distribution. Using six data sets for annual precipitation at the Weihe River basin in China, the PSEM was applied for estimating parameters for the four-parameter expone...

Journal: :Computational Statistics & Data Analysis 2004
Zhiyu Ge Peter J. Bickel John A. Rice

In dealing with parametric nonlinear mixed effects models, intensive numerical integration often makes exact maximum likelihood estimation impractical given the current computing capacity. Algorithms based on linearization, such as the first order method and the conditional first order method, have the potential of producing highly inconsistent estimates, although numerically they are more effi...

Journal: :The international journal of biostatistics 2012
Jordan Brooks Mark J van der Laan Alan S Go

Estimators of the conditional expectation, i.e., prediction, function involve a global bias-variance trade off. In some cases, an estimator that yields unbiased estimates of the conditional expectation for a particular partitioning of the data may be desirable. Such estimators are calibrated with respect to the partitioning. We identify the conditional expectation given a particular partitionin...

Journal: :Biometrika 2009
Donglin Zeng Qingxia Chen Joseph G Ibrahim

We propose a class of transformation models for multivariate failure times. The class of transformation models generalize the usual gamma frailty model and yields a marginally linear transformation model for each failure time. Nonparametric maximum likelihood estimation is used for inference. The maximum likelihood estimators for the regression coefficients are shown to be consistent and asympt...

Journal: :Molecular biology and evolution 2010
Edward Susko

The most frequent measure of phylogenetic uncertainty for splits is bootstrap support. Although large bootstrap support intuitively suggests that a split in a tree is well supported, it has not been clear how large bootstrap support needs to be to conclude that there is significant evidence that a hypothesized split is present. Indeed, recent work has shown that bootstrap support is not first-o...

Journal: :Applied Mathematics and Computation 2012
Nima Zoraghi Babak Abbasi Seyed Taghi Akhavan Niaki Mehrzad Abdi Khalife

The Burr III distribution properly approximates many familiar distributions such as Normal, Lognormal, Gamma, Weibull, and Exponential distributions. It plays an important role in reliability engineering, statistical quality control, and risk analysis models. The Burr III distribution has four parameters known as location, scale, and two shape parameters. The estimation process of these paramet...

2013
Christian HAFNER Oliver LINTON Christian M. HAFNER

The EGARCH is a popular model for discrete time volatility since it allows for asymmetric effects and naturally ensures positivity even when including exogenous variables. Estimation and inference is usually done via maximum likelihood. Although some progress has been made recently, a complete distribution theory of MLE for EGARCH models is still missing. Furthermore, the estimation procedure i...

2017
Zeinab Mahmoudi Niels Kjølstad Poulsen Henrik Madsen John Bagterp Jørgensen

The purpose of this study is to develop an adaptive unscented Kalman filter (UKF) by tuning the measurement noise covariance. We use the maximum likelihood estimation (MLE) and the covariance matching (CM) method to estimate the noise covariance. The multi-step prediction errors generated by the UKF are used for covariance estimation by MLE and CM. Then we apply the two covariance estimation me...

Journal: :Proceedings in applied mathematics & mechanics 2021

We compare four numerical methods for the prediction of missing values in different datasets [1]. These are 1) hierarchical maximum likelihood estimation (ℋ-MLE), and three machine learning (ML) methods, which include 2) k-nearest neighbors (kNN), 3) random forest, 4) Deep Neural Network (DNN). From ML best results (for considered datasets) were obtained by kNN method with (or seven) neighbors....

2013
Dominique Dehay

In this paper we investigate the large-sample behavior of the maximum likelihood estimate (MLE) of the unknown parameter θ for processes following the model dξt = θf(t)ξt dt+ dBt where f : R → R is a continuous function with period, say P > 0, and which is observed through continuous time interval [0, T ] as T → ∞. Here the periodic function f(·) is assumed known. We establish the consistency o...

نمودار تعداد نتایج جستجو در هر سال

با کلیک روی نمودار نتایج را به سال انتشار فیلتر کنید