在情绪分析中使用股票价格作为基础真相来产生有利可图的交易信号

Ellie Birbeck, D. Cliff
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引用次数: 4

摘要

越来越多的“大”(大量)社交媒体数据的可用性激发了大量应用情绪分析来预测金融市场价格走势的研究。该领域之前的工作研究了文本的真实情绪(即积极或消极的观点)如何用于金融预测,基于在线表达的情绪代表真实市场情绪的假设。在这里,我们考虑相反的想法,即使用股票价格作为系统中的基本事实可能是一个更好的情绪指标。根据所讨论的股票价格在接下来的一个小时内是涨是跌,推文被标记为买入还是卖出,并以此为基础,为单个公司构建特定于股票的字典。贝叶斯分类器用于生成股票预测,并将其输入到自动交易算法中。在1个月内进行468笔交易,回报率为5.18%,年化回报率约为83%。该方法的性能明显优于随机机会,并且优于测试的两种基线情绪分析方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Stock Prices as Ground Truth in Sentiment Analysis to Generate Profitable Trading Signals
The increasing availability of “big” (large volume) social media data has motivated a great deal of research in applying sentiment analysis to predict the movement of prices within financial markets. Previous work in this field investigates how the true sentiment of text (i.e., positive or negative opinions) can be used for financial predictions, based on the assumption that sentiments expressed online are representative of the true market sentiment. Here we consider the converse idea, that using the stock price as the ground-truth in the system may be a better indication of sentiment. Tweets are labelled as Buy or Sell dependent on whether the stock price discussed rose or fell over the following hour, and from this, stock-specific dictionaries are built for individual companies. A Bayesian classifier is used to generate stock predictions, which are input to an automated trading algorithm. Placing 468 trades over a 1 month period yields a return rate of 5.18%, which annualises to approximately 83% per annum. This approach performs significantly better than random chance and outperforms two baseline sentiment analysis methods tested.
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