Kosorok Michael R
Department of Biostatistics and Department of Statistics and Operations Research, University of North Carolina at Chapel Hill.
Ann Appl Stat. 2009 Jan 1;3(4):1266-1269. doi: 10.1214/09-AOAS312.
We discuss briefly the very interesting concept of Brownian distance covariance developed by Székely and Rizzo (2009) and describe two possible extensions. The first extension is for high dimensional data that can be coerced into a Hilbert space, including certain high throughput screening and functional data settings. The second extension involves very simple modifications that may yield increased power in some settings. We commend Székely and Rizzo for their very interesting work and recognize that this general idea has potential to have a large impact on the way in which statisticians evaluate dependency in data.
我们简要讨论了由塞凯利和里佐(2009年)提出的非常有趣的布朗距离协方差概念,并描述了两种可能的扩展。第一种扩展适用于可以强制纳入希尔伯特空间的高维数据,包括某些高通量筛选和功能数据设置。第二种扩展涉及非常简单的修改,在某些情况下可能会提高功效。我们赞扬塞凯利和里佐的这项非常有趣的工作,并认识到这一总体思路有可能对统计学家评估数据依赖性的方式产生重大影响。