夏普比率
交易策略
波动性(金融)
计量经济学
水位下降(水文)
信息率
动量(技术分析)
衡平法
经济
计算机科学
趋势跟踪
金融经济学
文件夹
工程类
岩土工程
政治学
法学
含水层
地下水
作者
Patrik Eggebrecht,Eva Lütkebohmert
出处
期刊:The journal of financial data science
[Pageant Media US]
日期:2023-03-09
卷期号:5 (2): 41-66
被引量:1
标识
DOI:10.3905/jfds.2023.1.120
摘要
In this article, the authors present a new deep trend-following strategy that selectively buys constituents of the S&P 500 Index that are estimated to be upward trending. Therefore, they construct a binary momentum indicator based on a recursive algorithm and then train a convolutional neural network combined with a long short-term memory model to classify periods that are defined as upward trends. The strategy, which can be used as an alternative to traditional quantitative momentum ranking models, generates returns up to 27.3% per annum over the out-of-sample period from January 2010 to December 2019 and achieves a Sharpe ratio of 1.3 after accounting for transaction costs on daily data. The authors show that volatility scaling can further increase the risk–return profile and lower the maximum drawdown of the strategy.
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