Kim, Sehwan Song, Qifan Liang, Faming
Published in
Journal of statistical computation and simulation
We propose a class of adaptive stochastic gradient Markov chain Monte Carlo (SGMCMC) algorithms, where the drift function is adaptively adjusted according to the gradient of past samples to accelerate the convergence of the algorithm in simulations of the distributions with pathological curvatures. We establish the convergence of the proposed algor...
Zhai, Ruoshui Gutman, Roee
Published in
Journal of statistical computation and simulation
In cluster randomized trials (CRTs) groups rather than individuals are randomized to different interventions. Individuals’ responses within clusters are commonly more similar than those across clusters. This dependency introduces complexity when calculating the number of clusters required to reach a specified statistical power for nominal significa...
Kang, Xiaoning Ranganathan, Shyam Kang, Lulu Gohlke, Julia Deng, Xinwei
Many applications involve data with qualitative and quantitative responses. When there is an association between the two responses, a joint model will provide improved results than modeling them separately. In this paper, we propose a Bayesian method to jointly model such data. The joint model links the qualitative and quantitative responses and ca...
Fang, Kuangnan Zhang, Xiaochen Ma, Shuangge Zhang, Qingzhao
Published in
Journal of statistical computation and simulation
Functional data analysis has attracted substantial research interest and the goal of functional sparsity is to produce a sparse estimate which assigns zero values over regions where the true underlying function is zero, i.e., no relationship between the response variable and the predictor variable. In this paper, we consider a functional linear reg...
Lyles, Robert H. Weiss, Paul Waller, Lance A.
Published in
Journal of statistical computation and simulation
Drawbacks of traditional approximate (Wald test-based) and exact (Clopper-Pearson) confidence intervals for a binomial proportion are well-recognized. Alternatives include an interval based on inverting the score test, adaptations of exact testing, and Bayesian credible intervals derived from uniform or Jeffreys beta priors. We recommend a new inte...
Jelsema, Casey M Kwok, Richard K Peddada, Shyamal D
Published in
Journal of statistical computation and simulation
Large spatial datasets are typically modeled through a small set of knot locations; often these locations are specified by the investigator by arbitrary criteria. Existing methods of estimating the locations of knots assume their number is known a priori, or are otherwise computationally intensive. We develop a computationally efficient method of e...
Han, Shengtong Zhang, Hongmei Sheng, Wenhui Arshad, Hasan
Published in
Journal of statistical computation and simulation
This article focuses on the clustering problem based on Dirichlet process (DP) mixtures. To model both time invariant and temporal patterns, different from other existing clustering methods, the proposed semi-parametric model is flexible in that both the common and unique patterns are taken into account simultaneously. Furthermore, by jointly clust...
Marino, Simeone Zhou, Nina Zhao, Yi Wang, Lu Wu, Qiucheng Dinov, Ivo D
Published in
Journal of statistical computation and simulation
There are no practical and effective mechanisms to share high-dimensional data including sensitive information in various fields like health financial intelligence or socioeconomics without compromising either the utility of the data or exposing private personal or secure organizational information. Excessive scrambling or encoding of the informati...
Xu, Yaqing Wu, Mengyun Ma, Shuangge Ahmed, Syed Ejaz
Published in
Journal of statistical computation and simulation
In biomedical and epidemiological studies, gene-environment (G-E) interactions have been shown to importantly contribute to the etiology and progression of many complex diseases. Most existing approaches for identifying G-E interactions are limited by the lack of robustness against outliers/contaminations in response and predictor spaces. In this s...
Gurevich, Gregory Vexler, Albert
Published in
Journal of statistical computation and simulation
Sample entropy based tests, methods of sieves and Grenander estimation type procedures are known to be very efficient tools for assessing normality of underlying data distributions, in one-dimensional nonparametric settings. Recently, it has been shown that the density based empirical likelihood (EL) concept extends and standardizes these methods, ...