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A Case Based Deep Neural Network Interpretability Framework and Its User Study

机译:基于案例的深神经网络解释性框架及其用户学习

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Despite its popularity, the decision making process of a Deep Neural Network (DNN) model is opaque to users, making it difficult to understand the behaviour of the model. We present the design of a Web-based DNN interpretability framework which is based on the core notions in case-based reasoning approaches where exemplars (e.g., data points considered similar to a chosen data point) are utilised to help achieve effective interpretation. We demonstrate the framework via a Web based tool called Deep Explorer (DeX) and present the results of user acceptance studies. Our studies showed the effectiveness of the tool in gaining a better understanding of the decision making process of a DNN model as well as the efficacy of the case-based approach in improving DNN interpretability.
机译:尽管它受欢迎,但深度神经网络(DNN)模型的决策过程对用户来说是不透明的,使得难以理解模型的行为。我们介绍了基于Web的DNN解释性框架的设计,该框架基于基于案例的推理方法,其中利用示例性的推理方法(例如,类似于所选择的数据点)来帮助实现有效的解释。我们通过名为Deep Explorer(DEX)的基于Web的工具来演示框架,并呈现用户验收研究的结果。我们的研究表明,该工具在更好地了解DNN模型的决策过程中的有效性以及基于案例的方法改善DNN解释性的效果。

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