Ling Peng, Xiangyong Tan, Peiwen Xiao, Zeinab Rizk, Xiaohui Liu
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引用次数: 0
Abstract
AbstractTrace regression has received a lot of attention due to its ability to account for matrix-type covariates, including panel data, images, and genomic microarrays as special cases. However, most of its existing research focuses on the case of mean regression. In this paper, we consider the expectile trace regression, which can provide a more diversified picture of the regression relationship at different expectiles, via the low-rank and group sparsity regularization. The upper bound for the statistical rate of convergence of the regularized estimator is established under some mild conditions. Some simulations, as well as a real data example, are also provided to illustrate the finite sample performance of the developed expectile trace regression.Keywords: Expectile trace regressionlow-rankupper boundconvergence ratematrix-type covariates2020 Mathematics Subject Classifications: 62J9962H12 AcknowledgementsThe authors thank one anonymous referee and the associate editor for their valuable comments, which have led to many improvements to this paper.Disclosure statementNo potential conflict of interest was reported by the author(s).Additional informationFundingLing Peng's research was supported by the NSF of China (Grant No. 12201259), Jiangxi Provincial NSF (Grant No. 20224BAB211008), and the Science & Technology research project of the Education Department of Jiangxi Province (Grant No. GJJ2200537). Xiangyong Tan's research was supported by the NSF of China (Grant No. 12201260), Jiangxi Provincial NSF (Grant No. 20212BAB211010), and China Postdoctoral Science Foundation (2022M711425). Xiaohui Liu's research is supported by NSF of China (Grant No. 11971208), the National Social Science Foundation of China (21&ZD152), and the Outstanding Youth Fund Project of the Science and Technology Department of Jiangxi Province (No. 20224ACB211003).
期刊介绍:
Statistics publishes papers developing and analysing new methods for any active field of statistics, motivated by real-life problems. Papers submitted for consideration should provide interesting and novel contributions to statistical theory and its applications with rigorous mathematical results and proofs. Moreover, numerical simulations and application to real data sets can improve the quality of papers, and should be included where appropriate. Statistics does not publish papers which represent mere application of existing procedures to case studies, and papers are required to contain methodological or theoretical innovation. Topics of interest include, for example, nonparametric statistics, time series, analysis of topological or functional data. Furthermore the journal also welcomes submissions in the field of theoretical econometrics and its links to mathematical statistics.