An intelligent stock trading decision system based on ensemble classifier through multimodal perturbation
Xiaoyu Hou,
Chao Luo,
Baozhong Gao
Abstract:Candlesticks are widely used as an effective technical analysis tool in financial markets. Traditionally, different combinations of candlesticks have formed specific bullish/bearish patterns providing investors with increased opportunities for profitable trades. However, most patterns derived from subjective expertise without quantitative analysis. In this article, combining bullish/bearish patterns with ensemble learning, we present an intelligent system for making stock trading decisions. The Ensemble Classi… Show more
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