myCADI: my Contextual Anomaly Detection using Isolation - Pôle Systèmes Humains-Machines
Communication Dans Un Congrès Année : 2024

myCADI: my Contextual Anomaly Detection using Isolation

Résumé

myCADI is a machine learning framework associated with a graphical interface for discovering and understanding the internal structure of an unsupervised dataset. It is an intuitive end-user interface to the CADI approach [9], which uses a revised version of the Isolation Forest (IF) method to both 1) identify local anomalies, 2) reconstruct the cluster-based internal structure of the data, and 3) provide end-users with explanations of how anomalies deviate from the found clusters. myCADI takes numerical data as input and is structured around several interfaces, each of which displays a ranked list of the found anomalies, a description of the subspaces in which the different clusters lie, and feature attribution explanations to ease the interpretation of anomalies. These explanations make explicit why a selected point is considered to be a local anomaly of one (or more) cluster(s). The framework also provides dataset and trees visualizations.
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Dates et versions

hal-04743207 , version 1 (18-10-2024)

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Véronne Yepmo, Grégory Smits. myCADI: my Contextual Anomaly Detection using Isolation. Proceedings of the 33rd ACM International Conference on Information and Knowledge Management (CIKM ’24), Oct 2024, Boise, ID, United States. ⟨10.1145/3627673.3679208⟩. ⟨hal-04743207⟩
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