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Latent Segmentation of Stock Trading Strategies Using Multi-Modal Imitation Learning

Author

Listed:
  • Iwao Maeda

    (Department of Systems Innovation, School of Engineering, The University of Tokyo, Tokyo 113-8654, Japan)

  • David deGraw

    (Daiwa Securities Co., Ltd., Tokyo 100-6752, Japan)

  • Michiharu Kitano

    (Daiwa Institute of Research Ltd., Tokyo 135-8460, Japan)

  • Hiroyasu Matsushima

    (Department of Systems Innovation, School of Engineering, The University of Tokyo, Tokyo 113-8654, Japan)

  • Kiyoshi Izumi

    (Department of Systems Innovation, School of Engineering, The University of Tokyo, Tokyo 113-8654, Japan)

  • Hiroki Sakaji

    (Department of Systems Innovation, School of Engineering, The University of Tokyo, Tokyo 113-8654, Japan)

  • Atsuo Kato

    (Daiwa Institute of Research Ltd., Tokyo 135-8460, Japan)

Abstract

While exchanges and regulators are able to observe and analyze the individual behavior of financial market participants through access to labeled data, this information is not accessible by other market participants nor by the general public. A key question, then, is whether it is possible to model individual market participants’ behaviors through observation of publicly available unlabeled market data alone. Several methods have been suggested in the literature using classification methods based on summary trading statistics, as well as using inverse reinforcement learning methods to infer the reward function underlying trader behavior. Our primary contribution is to propose an alternative neural network based multi-modal imitation learning model which performs latent segmentation of stock trading strategies. As a result that the segmentation in the latent space is optimized according to individual reward functions underlying the order submission behaviors across each segment, our results provide interpretable classifications and accurate predictions that outperform other methods in major classification indicators as verified on historical orderbook data from January 2018 to August 2019 obtained from the Tokyo Stock Exchange. By further analyzing the behavior of various trader segments, we confirmed that our proposed segments behaves in line with real-market investor sentiments.

Suggested Citation

  • Iwao Maeda & David deGraw & Michiharu Kitano & Hiroyasu Matsushima & Kiyoshi Izumi & Hiroki Sakaji & Atsuo Kato, 2020. "Latent Segmentation of Stock Trading Strategies Using Multi-Modal Imitation Learning," JRFM, MDPI, vol. 13(11), pages 1-12, October.
  • Handle: RePEc:gam:jjrfmx:v:13:y:2020:i:11:p:250-:d:433565
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    References listed on IDEAS

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