Since its introduction by Owen in [29, 30], the empirical likelihood method has been extensively investigated and widely used to construct confidence regions and to test hypotheses in the literature. For a large class of statistics that can be obtained via solving estimating equations, the empirical likelihood function can be formulated from these estimating equations as proposed by [35]. If only a small part of parameters is of interest, a profile empirical likelihood method has to be employed to construct confidence regions, which could be computationally costly. In this paper we propose a jackknife empirical likelihood method to overcome this computational burden. This proposed method is easy to implement and works well in practice
Darba tēma ir Jackknife empīriskās ticamības metode un tās pielietojums U - statistikām. Parastā emp...
Nonparametric statistical inference methods have become very popular in recent years and are the pre...
In statistics it is of interest to find a better interval estimator of the absolute mean deviation. ...
Since its introduction by Owen in [29, 30], the empirical likelihood method has been extensively inv...
AbstractEmpirical likelihood for general estimating equations is a method for testing hypothesis or ...
Empirical likelihood for general estimating equations is a method for testing hypothesis or construc...
U-statistics generalizes the concept of mean of independent identically distributed (i.i.d.) random ...
In this dissertation, we investigate jackknife empirical likelihood methods motivated by recent stat...
AbstractIn this paper we propose a smoothed jackknife empirical likelihood method to construct confi...
Computing profile empirical likelihood function is a key step in applications of empirical likelihoo...
Empirical likelihood has been found very useful in many different occasions. However, when applied d...
Empirical likelihood methods are widely used in different settings to construct the confidence regio...
Motivated by applications to goodness of fit U-statistics testing, the jackknife empirical likelihoo...
Mūsdienās arvien lielāku popularitāti gūst neparametriskās statistikas metodes. Viena no šādām plaši...
Copulas are used to depict dependence among several random variables. Both parametric and non-parame...
Darba tēma ir Jackknife empīriskās ticamības metode un tās pielietojums U - statistikām. Parastā emp...
Nonparametric statistical inference methods have become very popular in recent years and are the pre...
In statistics it is of interest to find a better interval estimator of the absolute mean deviation. ...
Since its introduction by Owen in [29, 30], the empirical likelihood method has been extensively inv...
AbstractEmpirical likelihood for general estimating equations is a method for testing hypothesis or ...
Empirical likelihood for general estimating equations is a method for testing hypothesis or construc...
U-statistics generalizes the concept of mean of independent identically distributed (i.i.d.) random ...
In this dissertation, we investigate jackknife empirical likelihood methods motivated by recent stat...
AbstractIn this paper we propose a smoothed jackknife empirical likelihood method to construct confi...
Computing profile empirical likelihood function is a key step in applications of empirical likelihoo...
Empirical likelihood has been found very useful in many different occasions. However, when applied d...
Empirical likelihood methods are widely used in different settings to construct the confidence regio...
Motivated by applications to goodness of fit U-statistics testing, the jackknife empirical likelihoo...
Mūsdienās arvien lielāku popularitāti gūst neparametriskās statistikas metodes. Viena no šādām plaši...
Copulas are used to depict dependence among several random variables. Both parametric and non-parame...
Darba tēma ir Jackknife empīriskās ticamības metode un tās pielietojums U - statistikām. Parastā emp...
Nonparametric statistical inference methods have become very popular in recent years and are the pre...
In statistics it is of interest to find a better interval estimator of the absolute mean deviation. ...