Outlier Detection for Business Intelligence using Data Mining Techniques

نویسندگان

  • Mohiuddin Ali Khan
  • Sateesh Kumar Pradhan
  • M. A. Khaleel
  • Arun K. Pujari
  • Mohiuddin Ali
  • Sateesh K Pradhan
  • Man Wai Lee
  • Sherry Y. Chen
  • Kyriacos Chrysostomou
  • Xiaohui Liu
  • Yufeng Kou
  • Chang-Tien Lu
چکیده

In this paper we have made a review of various outlier detection techniques from data mining perspective. Existing studies in data mining focus generally on finding patterns from large datasets and using it for organizational decision making. However, finding exceptions and outliers did not receive much attention in the data mining field as other topics received. Finally, this paper concludes some advances in outlier detection recently.

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تاریخ انتشار 2014