基于情绪分析的线性回归股票价格预测

Yahya Eru Cakra, Bayu Distiawan Trisedya
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引用次数: 90

摘要

股票价格预测是一项困难的任务,因为它非常依赖于股票的需求,并且没有一定的变量可以精确地预测每天一只股票的需求。然而,有效市场假说(Efficient Market Hypothesis, EMH)认为,股价对新信息的依赖性也很大。许多信息来源之一是人们在社交媒体上的观点。人们对某些公司产品的看法可能会决定该公司的声誉,从而影响人们购买该公司股票的决定。在使用意见作为主要资料时,有必要对其进行适当的分析。使用意见作为数据的一个著名例子是情绪分析。情绪分析是一个确定人们对某事的看法的情绪/感觉的过程,在这个例子中是一些公司的产品。关于情绪分析在股票价格预测中的应用已有一些研究。Bollen在他的研究中得出结论,人们在Twitter等社交媒体上的观点可以预测道琼斯指数的价值,准确率为87.6%。这说明情绪分析与股价之间存在一定的关系。我们研究的目的是用简单的情绪分析来预测印尼股市。使用朴素贝叶斯和随机森林算法对tweet进行分类,以计算对公司的情绪。利用情绪分析的结果预测公司股价。采用线性回归方法建立预测模型。我们的实验表明,以之前的股票价格和混合特征作为预测因子的预测模型给出了最好的预测,其决定系数分别为0.9989和0.9983。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stock price prediction using linear regression based on sentiment analysis
Stock price prediction is a difficult task, since it very depending on the demand of the stock, and there is no certain variable that can precisely predict the demand of one stock each day. However, Efficient Market Hypothesis (EMH) said that stock price also depends on new information significantly. One of many information sources is people's opinion in social media. People's opinion about products from certain companies may determine the company's reputation and thus affecting people's decision to buy the stock of the company. When using opinion as primary data, it is necessary to make a suitable analysis of it. A famous example using opinion as data is sentiment analysis. Sentiment analysis is a process to determine emotion/feeling within people opinion about something, in this case products of some companies. There are some researches about sentiment analysis used to predict the stock prices. Bollen on his research concludes that people opinion on social media such as Twitter can predict DJIA value with 87.6% accuracy. This shows that there is a relation between sentiment analysis and stock prices. Our purpose on this research is to predict the Indonesian stock market using simple sentiment analysis. Naive Bayes and Random Forest algorithm are used to classify tweet to calculate sentiment regarding a company. The results of sentiment analysis are used to predict the company stock price. We use linear regression method to build the prediction model. Our experiment shows that prediction models using previous stock price and hybrid feature as predictor gives the best prediction with 0.9989 and 0.9983 coefficient of determination.
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