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演講公告

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Perturbation Analysis: a Novel Method to Detect and Correct the Bias of Unmeasured Factors

  • 2011-06-13 (Mon.), 10:30 AM
  • 中研院-統計所 2F 交誼廳
  • 茶 會:上午10:10統計所二樓交誼廳
  • Prof. Wen-Chung Lee (李文宗教授)
  • 國立台灣大學流行病學暨預防醫學研究所

Abstract

Randomized controlled study is the gold standard research method in biomedicine. By contrast, the validity of a (non-randomized) observational study is often threatened by unknown/unmeasured factors which have confounding and/or effect-modifying potentials. In this talk, I will propose a ‘perturbation test’ to detect the bias of unmeasured factors and a ‘perturbation adjustment’ to correct it. The perturbation analysis is an ingenious method; it circumvents the problem of measuring the unknowns by collecting the ‘perturbations’ of the unmeasured factors instead. Any variable can be counted as a perturbation variable even if it is only very weakly associated with the unmeasured factors in question. Computer simulation shows that as the number of the perturbation variables increases, the operating characteristic of the perturbation test increases (progressively up to ~1.0), and the bias after the perturbation adjustment decreases (progressively down to nearly zero). Perturbation analysis can be a valuable tool to deal with the pervasive problem of residual bias in observation studies.

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