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Quantifying StockTwits semantic terms' trading behavior in financial markets: An effective application of decision tree algorithms

机译:量化StockTwits语义术语在金融市场中的交易行为:决策树算法的有效应用

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Growing evidence is suggesting that postings on online stock forums affect stock prices, and alter investment decisions in capital markets, either because the postings contain new information or they might have predictive power to manipulate stock prices. In this paper, we propose a new intelligent trading support system based on sentiment prediction by combining text-mining techniques, feature selection and decision tree algorithms in an effort to analyze and extract semantic terms expressing a particular sentiment (sell, buy or hold) from stock-related micro-blogging messages called "StockTwits". An attempt has been made to investigate whether the power of the collective sentiments of StockTwits might be predicted and how the changes in these predicted sentiments inform decisions on whether to sell, buy or hold the Dow Jones Industrial Average (DJIA) Index. In this paper, a filter approach of feature selection is first employed to identify the most relevant terms in tweet postings. The decision tree (DT) model is then built to determine the trading decisions of those terms or, more importantly, combinations of terms based on how they interact. Then a trading strategy based on a predetermined investment hypothesis is constructed to evaluate the profitability of the term trading decisions extracted from the DT model. The experiment results based on 122-tweet term trading (TTT) strategies achieve a promising performance and the (TTT) strategies dramatically outperform random investment strategies. Our findings also confirm that StockTwits postings contain valuable information and lead trading activities in capital markets. (C) 2015 The Authors. Published by Elsevier Ltd.
机译:越来越多的证据表明,在线股票论坛上的帖子会影响股票价格,并改变资本市场中的投资决策,这可能是因为这些帖子包含新信息,或者它们可能具有操纵股价的预测能力。在本文中,我们结合文本挖掘技术,特征选择和决策树算法,提出了一种基于情感预测的新型智能交易支持系统,旨在分析和提取表示特定情感(出售,购买或持有)的语义术语。与股票相关的微博消息称为“ StockTwits”。已尝试调查是否可以预测StockTwits集体情绪的力量,以及这些预测情绪的变化如何决定是否出售,购买或持有道琼斯工业平均指数(DJIA)的决策。在本文中,首先使用特征选择的过滤方法来识别推文中最相关的术语。然后,建立决策树(DT)模型来确定这些条款或更重要的是根据条款之间的交互方式进行交易组合的交易决策。然后,构建基于预定投资假设的交易策略,以评估从DT模型提取的定期交易决策的盈利能力。基于122条推特交易(TTT)策略的实验结果取得了可喜的业绩,并且(TTT)策略大大优于随机投资策略。我们的发现还证实,StockTwits的过帐包含有价值的信息和资本市场中的潜在交易活动。 (C)2015作者。由Elsevier Ltd.发布

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