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.

Abstract

We study the detection of transient liquidity erosion ("crumbling quotes") in electronic limit order books, where observable quote deterioration may reflect either mechanical liquidity withdrawal or informational repricing. Using the ABIDES agent-based simulator, we construct a multi-agent environment in which crumbling emerges from stochastic regime switches in a market maker, providing time-resolved ground truth unavailable in real market data. We develop a detection pipeline that identifies mechanically driven quote erosion using order book features, and train a neural model to produce calibrated crumbling probabilities. Experiments demonstrate that the proposed framework reliably identifies crumbling events against agent-level ground truth, with the neural model achieving +36% AUC improvement over rule-based baselines and robust performance across normal, high-volatility, bull, and bear market conditions. Ablation studies on temporal features and varying the dependence structure of the ground-truth mechanism confirm that the framework generalizes across both independent and autocorrelated liquidity withdrawal dynamics.