Then, we reduce dimension by PCA, finally, we used machine learning to deal with data, including Adaboost, XGboost and GBDT, decision tree, logistics regression. After voting process, we find GBDT is the most accurate algorithm to predict the stock. Comparing with previous work, we focus on...
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