学术动态
当前位置: 首页 > 学术动态 > 正文
南京审计大学孔新兵教授学术报告通知
发布时间 : 2019-10-14     点击量:

报告题目:Discrepancy between global and local principal component analysis on large-panel high-frequency data

报告时间:2019年10月16日,星期三,下午2:30-4:30

报告地点:兴庆校区数学楼二楼2-2会议室

报告人:孔新兵,南京审计大学

报告摘要

The global principal component analysis (GPCA), PCA applied to the whole sample, is not reliable to reconstruct the common components of a large-panel high-frequency data when the factor space is time-varying, but it works when the factor space does not change in the time domain. The local principal component analysis (LPCA), PCA carried on subsamples, results in consistent estimates of the common components even if the factor loading processes follow continuous-time It\^{o} semimartingales, but it loses efficiency when the factor space is time invariant. This motivates us to study the discrepancy between the GPCA and LPCA in recovering the common components of a large-panel high-frequency data. In this paper, we measure the discrepancy by the total sum of squared differences between common components reconstructed from GPCA and LPCA. The asymptotic distribution of the discrepancy measure is provided when the factor space is time invariant and the dimension $p$ and the sample size $n$ tends to infinity simultaneously. Alternatively when some factor loadings are time-varying, the discrepancy measure explodes in a rate higher than $\sqrt{pk^{3/2}_n/n}$ under some mild signal conditions on the magnitude of time-variation of the factor loadings, where $k_n$ is the size of each subsample. We apply the theory to test  the hypothesis that the factor space does not change in time. We show that the test performs well in controlling the type I error and detecting time-varying factor spaces. This is checked by extensive simulation studies. A real data analysis provides strong evidence that the factor space is always time-varying within a time span longer than one week.

报告人简介:

     孔新兵现为南京审计大学教授,主要研究兴趣为髙维数据分析、高频数据分析。在统计学顶级期刊发表论文13篇,其中独立作者3篇。主持国家自然科学基金3项目。获香港数学会最佳博士论文奖,复旦大学管理学院优秀青年教师新星奖,江苏省应用统计最佳论文奖。入选江苏省双创计划,江苏省青蓝工程中青年学术带头人。

 

陕西省西安市碑林区咸宁西路28号     云顶国际4008服务平台 - 云顶国际4008优惠申请 版权所有

邮编:710049     电话 :86-29-82668551     传真:86-29-82668551