Abstract

We propose using side information to further inform anomaly detection algorithms of the semantic context of the text data they are analyzing, thereby considering both divergence from the statistical pattern seen in particular datasets and divergence seen from more general semantic expectations. Computational experiments show that our algorithm performs as expected on data that reflect real-world events with contextual ambiguity, while replicating conventional clustering on data that are either too specialized or generic to result in contextual information being actionable. These results suggest that our algorithm could potentially reduce false positive rates in existing anomaly detection systems.

Details

Title
Contextual Anomaly Detection in Text Data
Author
Mahapatra, Amogh; Srivastava, Nisheeth; Srivastava, Jaideep
Pages
469-489
Publication year
2012
Publication date
2012
Publisher
MDPI AG
e-ISSN
19994893
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
1525987565
Copyright
Copyright MDPI AG 2012