LGMar 15

Towards One-for-All Anomaly Detection for Tabular Data

arXiv:2603.1440794.22 citationsh-index: 12
AI Analysis

This addresses the need for efficient and generalizable anomaly detection in tabular data across diverse real-world applications, representing a novel paradigm shift rather than an incremental improvement.

The paper tackles the problem of high computational cost and limited generalization in tabular anomaly detection by proposing OFA-TAD, a one-for-all framework that achieves superior performance and strong cross-domain generalizability, as demonstrated on 34 datasets from 14 domains.

Tabular anomaly detection (TAD) aims to identify samples that deviate from the majority in tabular data and is critical in many real-world applications. However, existing methods follow a ``one model for one dataset (OFO)'' paradigm, which relies on dataset-specific training and thus incurs high computational cost and yields limited generalization to unseen domains. To address these limitations, we propose OFA-TAD, a generalist one-for-all (OFA) TAD framework that only requires one-time training on multiple source datasets and can generalize to unseen datasets from diverse domains on-the-fly. To realize one-for-all tabular anomaly detection, OFA-TAD extracts neighbor-distance patterns as transferable cues, and introduces multi-view neighbor-distance representations from multiple transformation-induced metric spaces to mitigate the transformation sensitivity of distance profiles. To adaptively combine multi-view distance evidence, a Mixture-of-Experts (MoE) scoring network is employed for view-specific anomaly scoring and entropy-regularized gated fusion, with a multi-strategy anomaly synthesis mechanism to support training under the one-class constraint. Extensive experiments on 34 datasets from 14 domains demonstrate that OFA-TAD achieves superior anomaly detection performance and strong cross-domain generalizability under the strict OFA setting.

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