Universal features of price formation in financial markets: perspectives from deep learning

被引:114
|
作者
Sirignano, Justin [1 ]
Cont, Rama [2 ]
机构
[1] Univ Illinois, Ind & Syst Engn, Urbana, IL USA
[2] Univ Oxford, Math Inst, Oxford, England
关键词
Financial econometrics; High-frequency data; Machine learning; Deep learning; Price formation; Market microstructure; Intraday data; Limit order book; ORDER; MODELS; MEMORY; FACTS;
D O I
10.1080/14697688.2019.1622295
中图分类号
F8 [财政、金融];
学科分类号
0202 ;
摘要
Using a large-scale Deep Learning approach applied to a high-frequency database containing billions of market quotes and transactions for US equities, we uncover nonparametric evidence for the existence of a universal and stationary relation between order flow history and the direction of price moves. The universal price formation model exhibits a remarkably stable out-of-sample accuracy across a wide range of stocks and time periods. Interestingly, these results also hold for stocks which are not part of the training sample, showing that the relations captured by the model are universal and not asset-specific. The universal model-trained on data from all stocks-outperforms asset-specific models trained on time series of any given stock. This weighs in favor of pooling together financial data from various stocks, rather than designing asset- or sector-specific models, as is currently commonly done. Standard data normalizations based on volatility, price level or average spread, or partitioning the training data into sectors or categories such as large/small tick stocks, do not improve training results. On the other hand, inclusion of price and order flow history over many past observations improves forecast accuracy, indicating that there is path-dependence in price dynamics.
引用
收藏
页码:1449 / 1459
页数:11
相关论文
共 50 条
  • [21] Cross-Market Price Difference Forecast Using Deep Learning for Electricity Markets
    Das, Ronit
    Bo, Rui
    Rehman, Waqas Ur
    Chen, Haotian
    Wunsch, Donald
    2020 IEEE PES INNOVATIVE SMART GRID TECHNOLOGIES EUROPE (ISGT-EUROPE 2020): SMART GRIDS: KEY ENABLERS OF A GREEN POWER SYSTEM, 2020, : 854 - 858
  • [22] Interpretable image-based deep learning for price trend prediction in ETF markets
    Zhang, Ruixun
    Zhao, Chaoyi
    Lin, Guanglian
    EUROPEAN JOURNAL OF FINANCE, 2023,
  • [23] Exuberance in Financial Markets: Evidence from Machine Learning Algorithms
    Viebig, Jan
    JOURNAL OF BEHAVIORAL FINANCE, 2020, 21 (02) : 128 - 135
  • [24] Portfolio formation with preselection using deep learning from long-term financial data
    Wang, Wuyu
    Li, Weizi
    Zhang, Ning
    Liu, Kecheng
    EXPERT SYSTEMS WITH APPLICATIONS, 2020, 143
  • [25] A multi-agent deep reinforcement learning framework for algorithmic trading in financial markets
    Shavandi, Ali
    Khedmati, Majid
    EXPERT SYSTEMS WITH APPLICATIONS, 2022, 208
  • [26] Domain-Specific Sentiment Analysis: An Optimized Deep Learning Approach for the Financial Markets
    Yekrangi, Mehdi
    Nikolov, Nikola S.
    IEEE ACCESS, 2023, 11 : 70248 - 70262
  • [27] Price and Size Discovery in Financial Markets: Evidence from the US Treasury Securities Market
    Fleming, Michael J.
    Giang Nguyen
    REVIEW OF ASSET PRICING STUDIES, 2019, 9 (02): : 256 - 295
  • [28] The Impact of Political Risks on Financial Markets: Evidence from a Stock Price Crash Perspective
    Ma, Yanping
    Wei, Qian
    Gao, Xiang
    INTERNATIONAL JOURNAL OF FINANCIAL STUDIES, 2024, 12 (02):
  • [29] Deep Learning for Financial News Analysis and Stock Price Prediction: A Case Study of TCS
    Dhyani, Bijesh
    Taneja, Sanjay
    Prakash, Chandra
    Tiwari, Rajesh
    Ozen, Ercan
    BRAIN-BROAD RESEARCH IN ARTIFICIAL INTELLIGENCE AND NEUROSCIENCE, 2024, 15 (03) : 153 - 166
  • [30] Ship Formation Identification with Spatial Features and Deep Learning for HFSWR
    Wang, Jiaqi
    Liu, Aijun
    Yu, Changjun
    Ji, Yuanzheng
    REMOTE SENSING, 2024, 16 (03)