DiffLOB: Diffusion Models for Counterfactual Generation in Limit Order Books
AI 摘要
DiffLOB提出了一种基于扩散模型的条件LOB生成方法,用于可控和反事实的轨迹生成。
主要贡献
- 提出了DiffLOB模型,用于生成可控和反事实的LOB轨迹。
- 引入了基于未来市场状态调节的生成过程。
- 设计了一个系统化的反事实LOB生成评估框架。
方法论
利用扩散模型,通过调节未来市场状态(趋势、波动率等)生成LOB轨迹,并设计评估框架验证。
原文摘要
Modern generative models for limit order books (LOBs) can reproduce realistic market dynamics, but remain fundamentally passive: they either model what typically happens without accounting for hypothetical future market conditions, or they require interaction with another agent to explore alternative outcomes. This limits their usefulness for stress testing, scenario analysis, and decision-making. We propose \textbf{DiffLOB}, a regime-conditioned \textbf{Diff}usion model for controllable and counterfactual generation of \textbf{LOB} trajectories. DiffLOB explicitly conditions the generative process on future market regimes--including trend, volatility, liquidity, and order-flow imbalance, which enables the model to answer counterfactual queries of the form: ``If the future market regime were X instead of Y, how would the limit order book evolve?'' Our systematic evaluation framework for counterfactual LOB generation consists of three criteria: (1) \textit{Controllable Realism}, measuring how well generated trajectories can reproduce marginal distributions, temporal dependence structure and regime variables; (2) \textit{Counterfactual validity}, testing whether interventions on future regimes induce consistent changes in the generated LOB dynamics; (3) \textit{Counterfactual usefulness}, assessing whether synthetic counterfactual trajectories improve downstream prediction of future market regimes.