Fundamental Multi-factor Deep-learning Strategy For Cryptocurrency Trading

Yinghe Qing, Jifeng Sun, Ying Kong, Jianwu Lin
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引用次数: 1

Abstract

This paper investigates how to use deep learning methods to combine with traditional multi-factor models and construct a quantitative trading model based on an AutoEncoder algorithm (AE) to classify cryptocurrencies since 2009, so as to screen out ones with investment value and then construct an effective investment portfolio. The AE algorithm is capable of handling high-dimensional data and mining interfactor non-linearities. Our empirical results on cryptocurrencies show that the model outperforms single-type factors and benchmark in terms of Cumulative Returns and the Sharpe Ratio.
加密货币交易的基本多因素深度学习策略
本文研究了如何利用深度学习方法结合传统的多因素模型,构建基于AutoEncoder算法(AE)的量化交易模型,对2009年以来的加密货币进行分类,从而筛选出具有投资价值的加密货币,构建有效的投资组合。声发射算法具有处理高维数据和挖掘交互因素非线性的能力。我们对加密货币的实证结果表明,该模型在累积回报和夏普比率方面优于单一类型因素和基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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