Deep limit order book forecasting: a microstructural guide
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.
| Item Type | Article |
|---|---|
| Copyright holders | © 2025 The Author(s). |
| Departments | LSE > Research Centres > Financial Markets Group > Systemic Risk Centre |
| DOI | 10.1080/14697688.2025.2522911 |
| Date Deposited | 29 Jul 2025 |
| Acceptance Date | 16 Jun 2025 |
| URI | https://researchonline.lse.ac.uk/id/eprint/128950 |
Explore Further
- C32 - Time-Series Models
- C53 - Forecasting and Other Model Applications
- G14 - Information and Market Efficiency; Event Studies
- Economic and Social Research Council
- Engineering and Physical Sciences Research Council
- European Commission, EC
- https://www.scopus.com/pages/publications/105011282782 (Scopus publication)
