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Outlier detection in high-dimensional regression model

Author

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  • Tao Wang
  • Zhonghua Li

Abstract

An outlier is defined as an observation that is significantly different from the others in its dataset. In high-dimensional regression analysis, datasets often contain a portion of outliers. It is important to identify and eliminate the outliers for fitting a model to a dataset. In this paper, a novel outlier detection method is proposed for high-dimensional regression problems. The leave-one-out idea is utilized to construct a novel outlier detection measure based on distance correlation, and then an outlier detection procedure is proposed. The proposed method enjoys several advantages. First, the outlier detection measure can be simply calculated, and the detection procedure works efficiently even for high-dimensional regression data. Moreover, it can deal with a general regression, which does not require specification of a linear regression model. Finally, simulation studies show that the proposed method behaves well for detecting outliers in high-dimensional regression model and performs better than some other competing methods.

Suggested Citation

  • Tao Wang & Zhonghua Li, 2017. "Outlier detection in high-dimensional regression model," Communications in Statistics - Theory and Methods, Taylor & Francis Journals, vol. 46(14), pages 6947-6958, July.
  • Handle: RePEc:taf:lstaxx:v:46:y:2017:i:14:p:6947-6958
    DOI: 10.1080/03610926.2016.1140783
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