Technical and Sentiment Analysis in Financial Forecasting with Genetic Programming

Eva Christodoulaki, Michael Kampouridis, Panagiotis A. Kanellopoulos
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引用次数: 6

Abstract

Financial Forecasting is a popular and thriving research area that relies on indicators derived from technical and sentiment analysis. In this paper, we investigate the advantages that sentiment analysis indicators provide, by comparing their performance to that of technical indicators, when both are used individually as features into a genetic programming algorithm focusing on the maximization of the Sharpe ratio. Moreover, while previous sentiment analysis research has focused mostly on the titles of articles, in this paper we use the text of the articles and their summaries. Our goal is to explore further on all possible sentiment features and identify which features contribute the most. We perform experiments on 26 different datasets and show that sentiment analysis produces better, and statistically significant, average results than technical analysis in terms of Sharpe ratio and risk.
遗传规划在财务预测中的技术和情绪分析
财务预测是一个流行和蓬勃发展的研究领域,它依赖于技术和情绪分析得出的指标。在本文中,我们通过比较情绪分析指标与技术指标的表现,研究了情绪分析指标提供的优势,当这两种指标分别作为特征使用到专注于夏普比率最大化的遗传规划算法中。此外,虽然以前的情感分析研究主要集中在文章的标题上,但在本文中,我们使用了文章的文本和摘要。我们的目标是进一步探索所有可能的情感特征,并确定哪些特征贡献最大。我们在26个不同的数据集上进行了实验,结果表明,在夏普比率和风险方面,情绪分析产生的平均结果比技术分析更好,而且在统计上显著。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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