作者
Aparna Nayak, MM Manohara Pai, Radhika M Pai
发表日期
2016/1/1
期刊
Procedia Computer Science
卷号
89
页码范围
441-449
出版商
Elsevier
简介
Stock market price data is generated in huge volume and it changes every second. Stock market is a complex and challenging system where people will either gain money or lose their entire life savings. In this work, an attempt is made for prediction of stock market trend. Two models are built one for daily prediction and the other one is for monthly prediction. Supervised machine learning algorithms are used to build the models. As part of the daily prediction model, historical prices are combined with sentiments. Up to 70% of accuracy is observed using supervised machine learning algorithms on daily prediction model. Monthly prediction model tries to evaluate whether there is any similarity between any two months trend. Evaluation proves that trend of one month is least correlated with the trend of another month.
引用总数
2017201820192020202120222023202439141948432811
学术搜索中的文章
A Nayak, MMM Pai, RM Pai - Procedia Computer Science, 2016