نتایج جستجو برای: bootstrap circuit

تعداد نتایج: 125617  

2016
N. Iranpanah M. Mohammadzadeh C. C. Taylor

8 Efron (1979) introduced the bootstrap method for independent data but it can not be easily applied to spatial data because of their dependency. For spatial data that are correlated in terms of their locations in the underlying space the moving block bootstrap method is usually used to estimate the precision measures of the estimators. The precision of the moving block bootstrap estimators is ...

2013
Peter Sebastian Nordholt Jesper Buus Nielsen

We present two new approaches to maliciously secure two-party computation with practical efficiency: • First, we present the first maliciously secure two-party computation protocol with practical efficiency based on the classic semi-honest protocol given by Goldreich et al. at STOC 1987. Before now all practical protocols with malicious security were based on Yao’s garbled circuits. We report o...

2015
Lorenzo Camponovo

We study the validity of the pairs bootstrap for Lasso estimators in linear regression models with random covariates and heteroscedastic error terms. We show that the naive pairs bootstrap does not consistently estimate the distribution of the Lasso estimator. In particular, we identify two different sources for the failure of the bootstrap. First, in the bootstrap samples the Lasso estimator f...

Journal: :Computational Statistics & Data Analysis 2011
N. Iranpanah M. Mohammadzadeh Charles C. Taylor

8 Efron (1979) introduced the bootstrap method for independent data but it can not be easily applied to spatial data because of their dependency. For spatial data that are correlated in terms of their locations in the underlying space the moving block bootstrap method is usually used to estimate the precision measures of the estimators. The precision of the moving block bootstrap estimators is ...

2005
Peter J. Bickel Anat Sakov

The m out of n bootstrap Bickel et al. [1997], Politis and Romano [1994] is a modification of the ordinary bootstrap which can rectify bootstrap failure when the bootstrap sample size is n. The modification is to take bootstrap samples of size m where m → ∞ and m/n→ 0. The choice of m is an important matter, in general. In this paper we consider an adaptive rule proposed by Bickel, Götze and va...

2009
Russell DAVIDSON Russell Davidson

The bootstrap is a statistical technique used more and more widely in econometrics. While it is capable of yielding very reliable inference, some precautions should be taken in order to ensure this. Two “Golden Rules” are formulated that, if observed, help to obtain the best the bootstrap can offer. Bootstrapping always involves setting up a bootstrap data-generating process (DGP). The main typ...

2007
Yongdai Kim Jaeyong Lee

Bayesian bootstrap was proposed by Rubin (1981) and its theoretical properties and application to survival models without covariates was studies by Lo (1993) and others. Bayesian bootstrap, empirical likelihood and bootstrap are diierent approaches based on the same idea, approximating the nonparametric model with the family of distributions whose supports are the set of observations. Based on ...

Journal: :J. Multivariate Analysis 2013
Guang Cheng Zhuqing Yu Jianhua Z. Huang

The cluster bootstrap resamples clusters or subjects instead of individual observations in order to preserve the dependence within each cluster or subject. In this paper, we provide a theoretical justification of using the cluster bootstrap for the inferences of the generalized estimating equations (GEE) for clustered/longitudinal data. Under the general exchangeable bootstrap weights, we show ...

2017
Anna E. Dudek

In the paper row-wise periodically correlated triangular arrays are considered. The period length is assumed to grow in time. The Fourier decomposition of the mean and autocovariance functions for each row of the matrix is presented. To construct bootstrap estimators of the Fourier coefficients two block bootstrap techniques are used. These are the circular version of the Generalized Seasonal B...

2007
Russell Davidson

The bootstrap is a statistical technique used more and more widely in econometrics. While it is capable of yielding very reliable inference, some precautions should be taken in order to ensure this. Two “Golden Rules” are formulated that, if observed, help to obtain the best the bootstrap can offer. Bootstrapping always involves setting up a bootstrap data-generating process (DGP). The main typ...

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