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Explainable Deep Convolutional Candlestick Learner
Chen, Jun-Hao, Chen, Samuel Yen-Chi, Tsai, Yun-Cheng, Shur, Chih-Shiang
Candlesticks are graphical representations of price movements for a given period. Although deep convolutional neural networks have achieved great success for recognizing the candlestick patterns, their reasoning hides inside a black box. The traders cannot make sure what the model has learned. In this contribution, we provide a framework which is to explain the reasoning of the learned model determining the specific candlestick patterns of time series. Based on the local search adversarial attacks, we show that the learned model perceives the pattern of the candlesticks in a way similar to the human trader.