Long-Term Outlier Prediction Through Outlier Score Modeling
arXiv cs.LG / 3/24/2026
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Key Points
- The paper introduces a new time-series task called long-term outlier prediction, addressing the limitation of existing methods that mainly detect outliers only near the present moment.
- It proposes an unsupervised, model-agnostic two-layer framework where the first layer detects outliers and the second layer forecasts future outlier scores using temporal patterns from past outliers.
- The approach aims to support both immediate outlier detection and longer-horizon forecasting of outlier likelihoods rather than only pointwise anomaly alerts.
- Experiments on synthetic datasets indicate the method performs well across both detection and prediction settings, positioning it as a baseline for future research in outlier detection/forecasting.
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