Abstract
Density-based methodology that exploits k-neighborhood of a data point has many good features. For instance, it is independent of the distribution of the data and is capable of detecting isolated objects. However it has some shortcomings:
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Notes
- 1.
In this illustration, LOF suffers the same deficiency when k is 6, 7, or 8. For example, LOF assigns outlierness value 1.5122 to ‘B’ and 1.1477 to ‘A’, and it fails to identify ‘A’ as the most significant outlier.
References
H. Huang, K. Mehrotra, C.K. Mohan, “Rank-based outlier detection.” J. Stat. Comput. Simul. 82, 1–14 (2011)
Y. Tao, D. Pi, “Unifying density-based clustering and outlier detection,” in 2009 Second International Workshop on Knowledge Discovery and Data Mining, Paris, France, pp. 644–647, 2009
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Mehrotra, K.G., Mohan, C.K., Huang, H. (2017). Rank Based Approaches. In: Anomaly Detection Principles and Algorithms. Terrorism, Security, and Computation. Springer, Cham. https://doi.org/10.1007/978-3-319-67526-8_7
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DOI: https://doi.org/10.1007/978-3-319-67526-8_7
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