周其仁:停止改革,我们将面临三大麻烦

恭喜石正丽确认为院士候选人

劳东燕:我反对!建议删除《治安管理处罚法(修订草案)》第34条第2-3项的规定

三法学教授谈《治安管理处罚法》修订草案:要慎重

除了美食,唐代人的餐桌上还有什么?

生成图片,分享到微信朋友圈

自由微信安卓APP发布,立即下载! | 提交文章网址

【学术报告】第30期

2017-05-17 上海财经大学统计与管理学院

摘要

In the context of sufficient dimension reduction (SDR), sliced inverse regression (SIR) is the first and perhaps one of the most popular tools to reduce the covariate dimension for high dimensional nonlinear regressions. Despite the fact that  the performance of SIR is very insensitive to the number of slices when the covariate is low or moderate dimensional, our empirical studies indicate that, the performance of SIR relies heavily upon the number of slices when the covariate is high or ultrahigh dimensional. How to select the optimal number of slices for SIR is still a longstanding problem in the SDR literature, which is a crucial issue for SIR to be effective in high and ultrahigh dimensional regressions.

In this paper, we work with an improved version of SIR, the cumulative slicing estimation (CUME) method, which does not require selecting the optimal number of slices. We provide a general framework to analyze the phase transition phenomenon for the CUME method.  We show that, without sparsity assumption, CUME is consistent if and only if $p/n\to 0$, where p stands for the covariate dimension and n stands for the sample size. If we make certain sparsity assumptions, then the thresholding estimate for the CUME method is consistent as long as $\log(p)/n\to0$. We demonstrate the superior performance of our proposals through extensive numerical experiments.

微信号

sctongguan

长按二维码识别关注


文章有问题?点此查看未经处理的缓存