基于LSTM网络预测和组合投资的投资模型

Fuyang Zhang, Yuhan Ma, Shuhan Yu
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引用次数: 1

摘要

近年来,比特币吸引了越来越多投资者的关注。与传统金融资产不同,比特币的价格波动极大。因此,投资者需要选择合适的资产组合,以对冲比特币与传统金融资产的风险。长短期记忆(LSTM)网络是时间序列预测深度学习中最先进的顺序学习方法,它可以准确预测金融资产的价格,从而为交易者提供最赚钱的资产组合。本文以2016-2021年黄金和比特币数据为研究样本,建立LSTM-CNN资产价格预测模型,获得收益最大化交易策略。本研究的贡献在于将深度学习应用于金融资产价格预测,提高预测精度,并将其作为资产配置的依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investment Model Based on LSTM Network Forecasting and Portfolio Investment
In recent years, Bitcoin has attracted more and more investors' attention. Different from traditional financial assets, the price of Bitcoin is extremely volatile. Therefore, investors need to choose an appropriate asset portfolio to hedge the risk of bitcoin with traditional financial assets. Long Short Term Memory (LSTM) networks are the most advanced sequential learning methods in deep learning of time series prediction, which can accurately predict the prices of financial assets and thus provide traders with the most profitable asset portfolio. In this paper, LSTM-CNN asset price prediction models are developed with data of gold and bitcoin in 2016-2021 as research samples to obtain return maximizing trading strategy. The contribution of this study is to apply deep learning to financial asset price prediction to improve the prediction accuracy and use it as a basis for asset allocation.
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