授权PG在外汇交易

A. Suchaimanacharoen, T. Kasetkasem, S. Marukatat, I. Kumazawa, P. Chavalit
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引用次数: 2

摘要

假设资本市场遵循有效市场假说(EMH)的半强形式,已经采取了许多努力来击败非平稳金融市场,从时间序列分析,价格预测的人工智能到通过强化学习的自动决策。本实验将神经网络的时间序列预测能力与强化学习的动作选择能力相结合。CNN首先被训练来预测未来的价格,然后它将输出与历史数据一起输入到政策梯度(PG)模型中,以授权交易决策。实验以2014年至2018年欧元/美元对的30分钟间隔进行。实验结果表明,我们的模型在训练样本和验证样本上都比买入并持有策略获得更高的回报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empowered PG in Forex Trading
With the assumption that capital markets follow the semi-strong form of efficient market hypothesis (EMH), numerous efforts have been taken to defeat the non-stationary financial market, ranging from time series analysis, artificial intelligence for prices prediction, to automated decision making by reinforcement learning. This experiment integrated the power of time series forecasting of neural network with the competence of actions selecting of the reinforcement learning. CNN was trained first to predict future prices, and then it fed the output to the policy gradient (PG) model together with historical data to empower the trading decisions. The experiment was conducted on 30 minutes interval of EUR/USD pair in Forex between 2014 and 2018. Our experimental results showed that our model can achieve higher return in both train and validate samples than buy and hold strategy.
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