ArXiv TLDR

Early Detection of Latent Microstructure Regimes in Limit Order Books

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2604.20949

Prakul Sunil Hiremath, Vruksha Arun Hiremath

cs.LGq-fin.TRstat.MEstat.ML

TLDR

This paper introduces a trigger-based detector for early identification of latent stress build-up in limit order books, providing lead-time before market instability.

Key contributions

  • Formalizes a 3-regime causal process (stable -> latent build-up -> stress) for order books.
  • Establishes identifiability of the latent build-up regime and guarantees for early detection.
  • Proposes a trigger-based detector combining MAX aggregation, rising-edge, and adaptive thresholds.
  • Achieves +18.6 timesteps mean lead-time in simulations, outperforming classical baselines.

Why it matters

Traditional market stress indicators are reactive. This paper introduces a proactive method to detect hidden stress build-up in limit order books, offering a critical prediction window. This allows for earlier intervention, potentially mitigating financial risks and enhancing market stability.

Original Abstract

Limit order books can transition rapidly from stable to stressed conditions, yet standard early-warning signals such as order flow imbalance and short-term volatility are inherently reactive. We formalise this limitation via a three-regime causal data-generating process (stable $\to$ latent build-up $\to$ stress) in which a latent deterioration phase creates a prediction window prior to observable stress. Under mild assumptions on temporal drift and regime persistence, we establish identifiability of the latent build-up regime and derive guarantees for strictly positive expected lead-time and non-trivial probability of early detection. We propose a trigger-based detector combining MAX aggregation of complementary signal channels, a rising-edge condition, and adaptive thresholding. Across 200 simulations, the method achieves mean lead-time $+18.6 \pm 3.2$ timesteps with perfect precision and moderate coverage, outperforming classical change-point and microstructure baselines. A preliminary application to one week of BTC/USDT order book data shows consistent positive lead-times while baselines remain reactive. Results degrade in low signal-to-noise and short build-up regimes, consistent with theory.

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