Human-in-the-loop Outlier Detection
Author(s)
Chai, Chengliang; Cao, Lei; Li, Guoliang; Li, Jian; Luo, Yuyu; Madden, Samuel R; ... Show more Show less
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Outlier detection is critical to a large number of applications from finance fraud detection to health care. Although numerous approaches have been proposed to automatically detect outliers, such outliers detected based on statistical rarity do not necessarily correspond to the true outliers to the interest of applications. In this work, we propose a human-in-the-loop outlier detection approach HOD that effectively leverages human intelligence to discover the true outliers. There are two main challenges in HOD. The first is to design human-friendly questions such that humans can easily understand the questions even if humans know nothing about the outlier detection techniques. The second is to minimize the number of questions. To address the first challenge, we design a clustering-based method to effectively discover a small number of objects that are unlikely to be outliers (aka, inliers) and yet effectively represent the typical characteristics of the given dataset. HOD then leverages this set of inliers (called context inliers) to help humans understand the context in which the outliers occur. This ensures humans are able to easily identify the true outliers from the outlier candidates produced by the machine-based outlier detection techniques. To address the second challenge, we propose a bipartite graph-based question selection strategy that is theoretically proven to be able to minimize the number of questions needed to cover all outlier candidates. Our experimental results on real data sets show that HOD significantly outperforms the state-of-the-art methods on both human efforts and the quality of the discovered outliers.
Date issued
2020-05Department
Massachusetts Institute of Technology. Computer Science and Artificial Intelligence Laboratory; Massachusetts Institute of Technology. Department of Electrical Engineering and Computer ScienceJournal
Proceedings of the 2020 ACM SIGMOD International Conference on Management of Data
Publisher
Association for Computing Machinery (ACM)
Citation
Chai, Chengliang et al. "Human-in-the-loop Outlier Detection." Proceedings of the 2020 ACM SIGMOD International Conference on Management of Data, May 2020, Portland Oregon, Association for Computing Machinery, May 2020. © 2020 Association for Computing Machinery
Version: Final published version
ISBN
9781450367356