Towards One-for-All Anomaly Detection for Tabular Data
About
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.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Anomaly Detection | WBC | -- | 104 | |
| Tabular Anomaly Detection | pima | -- | 70 | |
| Anomaly Detection | Shuttle | -- | 61 | |
| Anomaly Detection | Satimage 2 | -- | 58 | |
| Outlier Detection | Yeast | AUC-PR0.4912 | 49 | |
| Anomaly Detection | Lympho | -- | 40 | |
| Anomaly Detection | AMAZON | AUPRC10.28 | 33 | |
| Anomaly Detection | Fraud | AUC-PR0.387 | 31 | |
| Anomaly Detection | pendigits | AUPRC97.58 | 27 | |
| Anomaly Detection | Optdigits | AUPRC81.62 | 27 |