Papers
Topics
Authors
Recent
2000 character limit reached

RVRAE: A Dynamic Factor Model Based on Variational Recurrent Autoencoder for Stock Returns Prediction

Published 4 Mar 2024 in q-fin.PM, cs.LG, and q-fin.PR | (2403.02500v1)

Abstract: In recent years, the dynamic factor model has emerged as a dominant tool in economics and finance, particularly for investment strategies. This model offers improved handling of complex, nonlinear, and noisy market conditions compared to traditional static factor models. The advancement of machine learning, especially in dealing with nonlinear data, has further enhanced asset pricing methodologies. This paper introduces a groundbreaking dynamic factor model named RVRAE. This model is a probabilistic approach that addresses the temporal dependencies and noise in market data. RVRAE ingeniously combines the principles of dynamic factor modeling with the variational recurrent autoencoder (VRAE) from deep learning. A key feature of RVRAE is its use of a prior-posterior learning method. This method fine-tunes the model's learning process by seeking an optimal posterior factor model informed by future data. Notably, RVRAE is adept at risk modeling in volatile stock markets, estimating variances from latent space distributions while also predicting returns. Our empirical tests with real stock market data underscore RVRAE's superior performance compared to various established baseline methods.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (8)
  1. L. Callot, M. Caner, A. Ö. Önder, and E. Ulaşan, “A nodewise regression approach to estimating large portfolios,” 2021, Journal of Business and Economic Statistics, 39, 520-531.
  2. L. Chen, M. Pelger, andJ. Zhu, “Deep learning in asset pricing,” 2023, Management Science, in press.
  3. S. A. Ross, “The Arbitrage Theory of Capital Asset Pricing,” 1976, Journal of Economic Theory, 13, 341–360.
  4. B. T. Kelly, S. Pruitt, and Y. Su, “Characteristics are covariances: A unified model of risk and return,” 2019, Journal of Financial Economics, 134, 501-524.
  5. S. Gu, B. Kelly, and D. Xiu, “Empirical asset pricing via machine learning,” 2020, Review of Financial Studies, 33, 2223–2273.
  6. A. Shewalkar, D. Nyavanandi, and A. S. Ludwig, “Performance evaluation of deep neural networks applied to speech recognition: RNN, LSTM and GRU,” 2019, Journal of Artificial Intelligence and Soft Computing Research, 9, 235-245.
  7. S. Gu, B. Kelly, and D. Xiu, “Autoencoder asset pricing models,” 2021, Journal of Econometrics, 222, 429-450.
  8. J. Freyberger, A. Neuhierl, and M. Weber, “Dissecting characteristics nonparametrically,” 2020, Review of Financial Studies, 33, 2326-2377.

Summary

Paper to Video (Beta)

Whiteboard

No one has generated a whiteboard explanation for this paper yet.

Open Problems

We haven't generated a list of open problems mentioned in this paper yet.

Continue Learning

We haven't generated follow-up questions for this paper yet.

Authors (2)

Collections

Sign up for free to add this paper to one or more collections.

Tweets

Sign up for free to view the 1 tweet with 0 likes about this paper.