Beyond a Single Signal: SPECTREG2, A Unified MultiExpert Anomaly Detector for Unknown Unknowns
Rahul D Ray

TL;DR
SPECTRE-G2 is a multi-signal anomaly detection system that combines eight signals from a dual-backbone neural network to effectively identify unknown anomalies in diverse datasets, improving safety in uncertain environments.
Contribution
The paper introduces SPECTRE-G2, a novel multi-signal anomaly detector that integrates multiple signals and adaptive fusion for enhanced detection of unknown unknowns.
Findings
Outperforms baselines on AUROC, AUPR, FPR95 metrics
Effective across synthetic and real-world datasets
Stable performance across different random seeds
Abstract
Epistemic intelligence requires machine learning systems to recognise the limits of their own knowledge and act safely under uncertainty, especially when faced with unknown unknowns. Existing uncertainty quantification methods rely on a single signal such as confidence or density and fail to detect diverse structural anomalies. We introduce SPECTRE-G2, a multi-signal anomaly detector that combines eight complementary signals from a dual-backbone neural network. The architecture includes a spectral normalised Gaussianization encoder, a plain MLP preserving feature geometry, and an ensemble of five models. These produce density, geometry, uncertainty, discriminative, and causal signals. Each signal is normalised using validation statistics and calibrated with synthetic out-of-distribution data. An adaptive top-k fusion selects the most informative signals and averages their scores.…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Explainable Artificial Intelligence (XAI) · Adversarial Robustness in Machine Learning
