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Encoding candlesticks as images for pattern classification using convolutional neural networks

机译:使用卷积神经网络编码烛台作为模式分类的图像

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Candlestick charts display the high, low, opening, and closing prices in a specific period. Candlestick patterns emerge because human actions and reactions are patterned and continuously replicate. These patterns capture information on the candles. According to Thomas Bulkowski’s Encyclopedia of Candlestick Charts, there are 103 candlestick patterns. Traders use these patterns to determine when to enter and exit. Candlestick pattern classification approaches take the hard work out of visually identifying these patterns. To highlight its capabilities, we propose a two-steps approach to recognize candlestick patterns automatically. The first step uses the Gramian Angular Field (GAF) to encode the time series as different types of images. The second step uses the Convolutional Neural Network (CNN) with the GAF images to learn eight critical kinds of candlestick patterns. In this paper, we call the approach GAF-CNN. In the experiments, our approach can identify the eight types of candlestick patterns with 90.7 % average accuracy automatically in real-world data, outperforming the LSTM model.
机译:烛台图表在特定时期显示高,低,开放和关闭价格。烛台图案出现,因为人类的行为和反应是图案化的,并且不断复制。这些模式捕获蜡烛的信息。根据Thomas Bulkowski的烛台图表的百科全书,有103种烛台图案。交易商使用这些模式来确定何时输入和退出。 Candlestick模式分类方法采取艰难的工作,以便在目前识别这些模式。为了突出其功能,我们提出了一项双步方法,可以自动识别烛台模式。第一步使用克朗尼亚角场(GAF)编码作为不同类型图像的时间序列。第二步使用卷积神经网络(CNN)与GAF图像学习八种关键类型的烛台模式。在本文中,我们称之为GAF-CNN。在实验中,我们的方法可以在真实数据中自动识别90.7%的平均精度的八种类型的烛台模式,优于LSTM模型。

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