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演講公告

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Estimation for Ultra-high Dimensional Factor Model: A Pivotal Variable Detection-based Approach

  • 2015-05-25 (Mon.), 10:00 AM
  • 中研院-統計所 2F 交誼廳
  • 茶 會:上午9:40統計所二樓交誼廳
  • Prof. Lixing Zhu(朱力行 教授)
  • Dept. of Mathematics, The Hong Kong Baptist University

Abstract

To estimate the high dimensional covariance matrix, row sparsity is often assumed such that each variable is mainly related with a small number of other variables. However, in some applications such as factor modelling, the common factors may lead some variables to strongly associate with many others and thus row sparsity does not hold. These variables are called the pivotal variables. In this paper, a novel pivotal variable detection approach is developed. As an application, estimating the high dimensional covariance matrix in factor model is investigated, and two-stage estimation procedures are proposed to handle ultra-high dimensionality. In these procedures, pivotal variable detection is performed as a screening step and then existing approaches are applied to refine the working model. The estimation efficiency can be promoted under weaker assumptions on the model structure. Simulations are conducted to examine the performance of the new method and a real dataset is analysed for illustration.

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