Contextual Outlier Interpretation

28 Nov 2017Ninghao LiuDonghwa ShinXia Hu

Outlier detection plays an essential role in many data-driven applications to identify isolated instances that are different from the majority. While many statistical learning and data mining techniques have been used for developing more effective outlier detection algorithms, the interpretation of detected outliers does not receive much attention... (read more)

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