When Quotes Crumble: Detecting Transient Mechanical Liquidity Erosion in Limit Order Books
arXiv cs.LG / 4/27/2026
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Key Points
- The paper studies how to detect transient liquidity erosion (“crumbling quotes”) in electronic limit order books, where quote deterioration can stem from either liquidity withdrawal or informational repricing.
- Using the ABIDES agent-based simulator, the authors create a multi-agent environment that generates crumbling via stochastic regime switches in a market maker, enabling time-resolved ground-truth labels not available in real-world data.
- They propose an order-book-feature-based detection pipeline and train a neural model to output calibrated probabilities of crumbling.
- Experiments show the neural approach improves event identification quality by 36% AUC over rule-based baselines and remains robust across multiple market regimes (normal, high-volatility, bull, and bear).
- Ablation and dependence-structure tests indicate the method generalizes across both independent and autocorrelated liquidity-withdrawal mechanisms.
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