• Corpus ID: 16643114

Stock Market Forecasting Using Machine Learning Algorithms

  title={Stock Market Forecasting Using Machine Learning Algorithms},
  author={Shunrong Shen and Haomiao Jiang and Tongda Zhang},
Prediction of stock market is a long-time attractive topic to researchers from different fields. In particular, numerous studies have been conducted to predict the movement of stock market using machine learning algorithms such as support vector machine (SVM) and reinforcement learning. In this project, we propose a new prediction algorithm that exploits the temporal correlation among global stock markets and various financial products to predict the next-day stock trend with the aid of SVM… 

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