A Comparative Evaluation of Predominant Deep Learning Quantified Stock
Trading Strategies
- URL: http://arxiv.org/abs/2103.15304v1
- Date: Mon, 29 Mar 2021 03:21:40 GMT
- Title: A Comparative Evaluation of Predominant Deep Learning Quantified Stock
Trading Strategies
- Authors: Haohan Zhang
- Abstract summary: This study first reconstructs three deep learning powered stock trading models and their associated strategies that are representative of distinct approaches to the problem.
It then seeks to compare the performance of these strategies from different perspectives through trading simulations ran on three scenarios when the benchmarks are kept at historical low points for extended periods of time.
The results show that in extremely adverse market climates, investment portfolios managed by deep learning powered algorithms are able to avert accumulated losses by generating return sequences that shift the constantly negative CSI 300 benchmark return upward.
- Score: 0.38073142980733
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: This study first reconstructs three deep learning powered stock trading
models and their associated strategies that are representative of distinct
approaches to the problem and established upon different aspects of the many
theories evolved around deep learning. It then seeks to compare the performance
of these strategies from different perspectives through trading simulations ran
on three scenarios when the benchmarks are kept at historical low points for
extended periods of time. The results show that in extremely adverse market
climates, investment portfolios managed by deep learning powered algorithms are
able to avert accumulated losses by generating return sequences that shift the
constantly negative CSI 300 benchmark return upward. Among the three, the LSTM
model's strategy yields the best performance when the benchmark sustains
continued loss.
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