Twitter成交量峰值:股票交易中的分析与应用

Yuexin Mao, Wei Wei, B. Wang
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引用次数: 19

摘要

股票是推特上的热门话题。与某只股票相关的推文数量会在几天内发生变化,有时会出现显著的峰值。在本文中,我们研究了推特成交量峰值与标准普尔500指数股票的关系,以及它们是否对股票交易有用。通过相关性分析,我们可以洞察Twitter数量峰值何时发生以及这些峰值的可能原因。我们通过比较推特交易量峰值前后股票的隐含波动率,进一步探讨这些峰值是否令市场参与者感到意外。此外,我们开发了一个贝叶斯分类器,该分类器使用Twitter成交量峰值来辅助股票交易,并表明它可以提供可观的利润。我们进一步开发了一种增强的策略,将贝叶斯分类器和股票底部选择方法相结合,并证明它可以在短时间内获得显着的收益。模拟半年多的股市数据,27个交易日平均涨幅为8.6%,55个交易日平均涨幅为15.0%。统计测试表明,增益在统计上是显著的,并且增强的策略明显优于仅使用贝叶斯分类器的策略以及使用交易量峰值的底部选择方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Twitter volume spikes: analysis and application in stock trading
Stock is a popular topic in Twitter. The number of tweets concerning a stock varies over days, and sometimes exhibits a significant spike. In this paper, we investigate Twitter volume spikes related to S&P 500 stocks, and whether they are useful for stock trading. Through correlation analysis, we provide insight on when Twitter volume spikes occur and possible causes of these spikes. We further explore whether these spikes are surprises to market participants by comparing the implied volatility of a stock before and after a Twitter volume spike. Moreover, we develop a Bayesian classifier that uses Twitter volume spikes to assist stock trading, and show that it can provide substantial profit. We further develop an enhanced strategy that combines the Bayesian classifier and a stock bottom picking method, and demonstrate that it can achieve significant gain in a short amount of time. Simulation over a half year's stock market data indicates that it achieves on average 8.6% gain in 27 trading days and 15.0% gain in 55 trading days. Statistical tests show that the gain is statistically significant, and the enhanced strategy significantly outperforms the strategy that only uses the Bayesian classifier as well as a bottom picking method that uses trading volume spikes.
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