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Outlier Detection Based on Robust Mahalanobis Distance and Its Application 被引量:1

Outlier Detection Based on Robust Mahalanobis Distance and Its Application
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摘要 Classical Mahalanobis distance is used as a method of detecting outliers, and is affected by outliers. Some robust Mahalanobis distance is proposed via the fast MCD estimator. However, the bias of the MCD estimator increases significantly as the dimension increases. In this paper, we propose the improved Mahalanobis distance based on a more robust Rocke estimator under high-dimensional data. The results of numerical simulation and empirical analysis show that our proposed method can better detect the outliers in the data than the above two methods when there are outliers in the data and the dimensions of data are very high. Classical Mahalanobis distance is used as a method of detecting outliers, and is affected by outliers. Some robust Mahalanobis distance is proposed via the fast MCD estimator. However, the bias of the MCD estimator increases significantly as the dimension increases. In this paper, we propose the improved Mahalanobis distance based on a more robust Rocke estimator under high-dimensional data. The results of numerical simulation and empirical analysis show that our proposed method can better detect the outliers in the data than the above two methods when there are outliers in the data and the dimensions of data are very high.
出处 《Open Journal of Statistics》 2019年第1期15-26,共12页 统计学期刊(英文)
关键词 MCD ESTIMATOR Rocke ESTIMATOR OUTLIER Mahalanobis DISTANCE MCD Estimator Rocke Estimator Outlier Mahalanobis Distance
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  • 1黄洪宇,林甲祥,陈崇成,樊明辉.离群数据挖掘综述[J].计算机应用研究,2006,23(8):8-13. 被引量:42
  • 2Agrawal R, Gehrke J, Gunopulos D, et al. Automatic Sub,space Clustering of High Dimensional Data for Data Mining Applications[ C]//Haas L M, Tiwary A. Proc. of the ACM SIGMOD International Conference on Management of Data. Seattle: ACM Press, 1998: 94 - 105.
  • 3Hawkins D. Identification of Oudiers[M]. London: Chapman and Hall, 1980.
  • 4Aggarwal C C, Yu P S. An Effective and Efficient Algorithm for High-dimensional Outlier Detection[J]. The VLDB Journal,2005,14(2) :211 - 221.
  • 5Aggarwal C C, Yu P S. Outlier Detection for High Dimensional Data[M]. [s. l. ] :ACM,2001.
  • 6Nurunnabi A, West G, Belton D. Robust outlier detection and saliency features estimation in point cloud data[ C ]. 2013 In- ternational Conference on. IEEE,2013.
  • 7Huber P J. Robust statistics [ M ]. Springer Berlin Heidel- berg, 2011.
  • 8Gimenez E, Crespi M, Garrido M S, et al. Multivariate outlier detection based on robust computation of Mahalanobis dis- tances: Application to positioning assisted by RTK GNSS Networks[J]. International Journal of Applied Earth Obser- vation and Geoinformation ,2012,16:94 - 100.
  • 9Maronna R A, Martin R D, Yohai V J. Robust statistics [ M ]. Wiley J ,2006.
  • 10Rousseeuw P J. Multivariate estimation with high breakdown point [ J ].Mathematical Statistics and Applications, 1985, B : 283 - 297.

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