Enhancing Model Explainability in Financial Trading Using Training Aid Samples: A CNN-Based Candlestick Pattern Recognition Approach

Yun-Cheng Tsai, Jun-Hao Chen
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Abstract

Candlestick pattern recognition is a widely adopted technique in financial trading, leveraging visual patterns to analyze price movements. Deep Convolutional Neural Networks (CNNs) have exhibited remarkable accuracy in this domain. However, the increasing demand for transparency and explainability in CNN-based models raises concerns regarding their applicability in trading decision-making. This paper addresses these concerns by presenting a framework that enhances the explainability of CNN-based candlestick pattern recognition models. Our approach introduces an innovative data augmentation method to generate training aid samples, facilitating the model’s learning process within human domains. By incorporating this framework, traders gain valuable insights into the decision-making process, comprehending the rationale behind the model’s predictions. Our proposed approach exposes the inherent “black box” nature of CNN-based models, improving their interpretability and empowering traders to make well-informed decisions based on transparent and understandable insights. This advancement holds significant potential for enhancing decision-making processes in financial trading and fostering trust among traders.
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利用训练辅助样本增强金融交易模型的可解释性:一种基于cnn的烛台模式识别方法
烛台模式识别是金融交易中广泛采用的一种技术,利用视觉模式来分析价格走势。深度卷积神经网络(cnn)在这一领域表现出了显著的准确性。然而,对基于cnn的模型的透明度和可解释性的日益增长的需求引起了人们对其在交易决策中的适用性的担忧。本文通过提出一个框架来解决这些问题,该框架增强了基于cnn的烛台模式识别模型的可解释性。我们的方法引入了一种创新的数据增强方法来生成训练辅助样本,促进了模型在人类领域内的学习过程。通过结合这一框架,交易者获得了对决策过程的宝贵见解,理解了模型预测背后的基本原理。我们提出的方法揭示了基于cnn的模型固有的“黑箱”性质,提高了它们的可解释性,并使交易者能够根据透明和可理解的见解做出明智的决策。这一进步对于加强金融交易中的决策过程和促进交易者之间的信任具有重大潜力。
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