Briola Antonio, Bartolucci Silvia, Aste Tomaso
Department of Computer Science, University College London, London, WC1E 6EA, UK.
Systemic Risk Centre, London School of Economics, London, WC2A 2AE, UK.
Quant Finance. 2025 Jul 22:1-31. doi: 10.1080/14697688.2025.2522911.
We exploit cutting-edge deep learning methodologies to explore the predictability of high-frequency Limit Order Book mid-price changes for a heterogeneous set of stocks traded on the NASDAQ exchange. In so doing, we release 'LOBFrame', an open-source code base to efficiently process large-scale Limit Order Book data and quantitatively assess state-of-the-art deep learning models' forecasting capabilities. Our results are twofold. We demonstrate that the stocks' microstructural characteristics influence the efficacy of deep learning methods and that their high forecasting power does not necessarily correspond to actionable trading signals. We argue that traditional machine learning metrics fail to adequately assess the quality of forecasts in the Limit Order Book context. As an alternative, we propose an innovative operational framework that evaluates predictions' practicality by focusing on the probability of accurately forecasting complete transactions. This work offers academics and practitioners an avenue to make informed and robust decisions on the application of deep learning techniques, their scope and limitations, effectively exploiting emergent statistical properties of the Limit Order Book.
我们利用前沿的深度学习方法,探索纳斯达克交易所交易的一组异类股票的高频限价订单簿中间价变化的可预测性。在此过程中,我们发布了“LOBFrame”,这是一个开源代码库,用于高效处理大规模限价订单簿数据,并定量评估最先进的深度学习模型的预测能力。我们的结果有两方面。我们证明了股票的微观结构特征会影响深度学习方法的有效性,且其高预测能力不一定对应于可操作的交易信号。我们认为传统机器学习指标无法充分评估限价订单簿背景下预测的质量。作为替代方案,我们提出了一个创新的操作框架,该框架通过关注准确预测完整交易的概率来评估预测的实用性。这项工作为学者和从业者提供了一条途径,以便就深度学习技术的应用、其范围和局限性做出明智且稳健的决策,从而有效地利用限价订单簿新出现的统计特性。