LGJun 13, 2024

Weakly-supervised anomaly detection for multimodal data distributions

arXiv:2406.09147v1
Originality Incremental advance
AI Analysis

This addresses anomaly detection for multimodal data, an incremental improvement over prior weakly-supervised methods.

The paper tackles the problem of weakly-supervised anomaly detection for multimodal data distributions by proposing WVAD, which outperforms existing methods on three real-world datasets.

Weakly-supervised anomaly detection can outperform existing unsupervised methods with the assistance of a very small number of labeled anomalies, which attracts increasing attention from researchers. However, existing weakly-supervised anomaly detection methods are limited as these methods do not factor in the multimodel nature of the real-world data distribution. To mitigate this, we propose the Weakly-supervised Variational-mixture-model-based Anomaly Detector (WVAD). WVAD excels in multimodal datasets. It consists of two components: a deep variational mixture model, and an anomaly score estimator. The deep variational mixture model captures various features of the data from different clusters, then these features are delivered to the anomaly score estimator to assess the anomaly levels. Experimental results on three real-world datasets demonstrate WVAD's superiority.

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