GLAD
Citations Over TimeTop 10% of 2015 papers
Abstract
Traditional anomaly detection on social media mostly focuses on individual point anomalies while anomalous phenomena usually occur in groups. Therefore, it is valuable to study the collective behavior of individuals and detect group anomalies. Existing group anomaly detection approaches rely on the assumption that the groups are known, which can hardly be true in real world social media applications. In this article, we take a generative approach by proposing a hierarchical Bayes model: Group Latent Anomaly Detection (GLAD) model. GLAD takes both pairwise and point-wise data as input, automatically infers the groups and detects group anomalies simultaneously. To account for the dynamic properties of the social media data, we further generalize GLAD to its dynamic extension d-GLAD. We conduct extensive experiments to evaluate our models on both synthetic and real world datasets. The empirical results demonstrate that our approach is effective and robust in discovering latent groups and detecting group anomalies.
Related Papers
- → Auxiliary Deep Generative Models(2016)154 cited
- → Towards Understanding the Interplay of Generative Artificial Intelligence and the Internet(2023)9 cited
- → Generative Model for Person Re-Identification: A Review(2020)
- → Are generative approaches to ZSAR a look in the right direction?(2023)
- → TC-VAE: Uncovering Out-of-Distribution Data Generative Factors(2023)