利用高阶因子分解机挖掘社交媒体数据:标普500高频数据的统计套利

Exploiting social media with higher-order Factorization Machines: statistical arbitrage on high-frequency data of the S&P 500

Quantitative Finance · 2018
被引 26
ABS 3

中文导读

首次将高阶因子分解机应用于社交媒体数据,预测标普500成分股每分钟的股票收益,发现基于该模型的交易策略在扣除交易成本后仍能获得正收益,优于支持向量机方法。

Abstract

Over the past 15 years, there have been a number of studies using text mining for predicting stock market data. Two recent publications employed support vector machines and second-order Factorization Machines, respectively, to this end. However, these approaches either completely neglect interactions between the features extracted from the text, or they only account for second-order interactions. In this paper, we apply higher-order Factorization Machines, for which efficient training algorithms have only been available since 2016. As Factorization Machines require hyperparameters to be specified, we also introduce a novel adaptive-order algorithm for automatically determining them. Our study is the first one to make use of social media data for predicting minute-by-minute stock returns, namely the ones of the S&P 500 stock constituents. We show that, unlike a trading strategy employing support vector machines, Factorization-Machine-based strategies attain positive returns after transactions costs for the years 2014 and 2015. Especially the approach applying the adaptive-order algorithm outperforms classical approaches with respect to a multitude of criteria, and it features very favorable characteristics.

金融经济学机器学习文本挖掘高频交易统计套利