会议专题

Stock Price Prediction Using Financial News Articles

Stock price prediction is one of the most important issues to he investigated in academic and financial researches.Data mining techniques are frequently involved in the studies aimed to achieve this problem.In this paper we investigate predicting stock prices using financial news articles.A prediction model,finding and analyzing correlation between contents of news articles and stock prices and then making predictions for future prices,was developed.We retriee financial news articles published in last year,and we get stock prices for same period.All articles are labeled positive or negative according to their effects on stock price.So we use price changes to label the articles.While analyzing textual data,we use word couples consisting of a noun and a verb as features instead of using single words.Afterwards,support vector machines classifier is trained with labeled train articles.Finally,classes of test articles are predicted with using the model resulted from train phase.We achieve serious success rates that prove predictive power of our system.

stock price prediction data mining text mining text categorization financial news

M.I.Yasef Kaya M.Elif Karsligil

Department of Computer Engineering Yildiz Technical University Istanbul.Turkey

国际会议

2010 2nd IEEE International Conference on Information and Financial Engineering(2010年第二届IEEE信息与金融工程国际会议 ICIFE 2010)

重庆

英文

478-482

2010-09-17(万方平台首次上网日期,不代表论文的发表时间)