FoMo X: Modular Explainability Signals for Outlier Detection Foundation Models
Simon Kl\"uttermann, Tim Katzke, Phuong Huong Nguyen, Emmanuel M\"uller

TL;DR
FoMo-X introduces a modular, lightweight explainability framework for outlier detection foundation models that provides intrinsic diagnostic signals, improving interpretability and trustworthiness without sacrificing efficiency.
Contribution
FoMo-X is a novel framework that attaches auxiliary diagnostic heads to pretrained PFN embeddings, enabling real-time, interpretable outlier detection diagnostics in a zero-shot setting.
Findings
FoMo-X accurately recovers ground-truth diagnostic signals.
It provides calibrated confidence measures and risk tiers.
The approach incurs negligible inference overhead.
Abstract
Tabular foundation models, specifically Prior-Data Fitted Networks (PFNs), have revolutionized outlier detection (OD) by enabling unsupervised zero-shot adaptation to new datasets without training. However, despite their predictive power, these models typically function as opaque black boxes, outputting scalar outlier scores that lack the operational context required for safety-critical decision-making. Existing post-hoc explanation methods are often computationally prohibitive for real-time deployment or fail to capture the epistemic uncertainty inherent in zero-shot inference. In this work, we introduce FoMo-X, a modular framework that equips OD foundation models with intrinsic, lightweight diagnostic capabilities. We leverage the insight that the frozen embeddings of a pretrained PFN backbone already encode rich, context-conditioned relational information. FoMo-X attaches auxiliary…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Explainable Artificial Intelligence (XAI) · Anomaly Detection Techniques and Applications
