标题: 基于新闻字词涨跌极性之股价趋势分类预测
Stock Trend Forecasting: A Classification Approach based on Word Polarity in News
作者: 龚建彰
Kung, Chien-Chang
刘敦仁
Liu, Duen-Ren
资讯管理研究所
关键字: 股价预测;文字探勘;文件分类;支援向量机;STOCK PREDICTION;TEXT MINING;DOCUMENT CLASSIFICATION;SUPPORT VECTOR MACHINE
公开日期: 2013
摘要: 根据调查台湾人投资比例排名全球第三,投资工具又以股票投资为主,然而选择股票标的参考依据有很多种,其中一种方法就是针对财金新闻做分析。随着网路科技的发达,投资人可以接触到许多财金新闻,并看到某些新闻上的关键字词,进而直接影响投资人的买卖决策。例如关于台积电新闻出现“出现史上最长排队潮,订单塞到爆”这句话,“订单塞到爆”这个关键词使投资人看好台积电的未来,然后买入台积电股票,影响股价上扬。因此本研究假设财金新闻的关键字词会影响投资人的预期心理与买卖操作,使得个股股价产生涨跌。利用文字处理方法撷取新闻关键字词,判断每个关键字词对投资人产生正向/持平/负向的影响,然后预测未来股价趋势。本研究以SVM 演算法实作预测模型,以周为单位结合文字特性之分析与技术指标,探讨新闻对于股价涨跌之反应时间与影响,并验证股价资讯结合文字探勘之模式是否能有效应用于个股涨跌趋势预测问题,希望提供投资人更有效率的决策资讯。
According to the survey, Taiwanese investment ratio ranked top third in the world, and stocks are regarded as the first investment tool in Taiwan. However, there are many methods to choose what stock investors want to invest. One of methods is the financial news analysis. With the advancement of information technology, investors can catch many financial news articles. When investors read the particular keywords on financial news articles, it would directly affect investors' trading decisions. For example, there is a sentence “There are full of orders, which result in the longest queue in history” about TSMC news. So, “full of orders”, this keywords will make investors think that TSMC have a prosperous future. Then investors would buy the TSMC stock, thus the stock price rises. Therefore, we assumed that keywords of financial news articles would affect investors' psychological expectations and trading operations, then resulting in the stock price up or down. In this study, we take advantage of text processing methods as ways to extract the keywords. Next, we determine the positive, negative or neutral sentiment of each keyword to investors. Finally, we predict future price trends. SVM is the prediction model adopted in this study. We combine the weekly news articles and technical indicators to explore the news reaction time and the influence of stock price up or down. We also evaluate whether combined text analysis and stock price would impact the trend of stock or not. Through our study, we would provide investors an effective investing advice.
URI: http://140.113.39.130/cdrfb3/record/nctu/#GT070153418
http://hdl.handle.net/11536/74873
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