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Applying Class-to-Class Siamese Networks to Explain Classifications with Supportive and Contrastive Cases

机译:应用课堂暹罗网络以解释具有支持性和对比案件的分类

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Case-based classification is normally based on similarity between a query and class members in the case base. This paper proposes a difference-based approach, class-to-class Siamese network (C2C-SN) classification, in which classification is based on learning patterns of both similarity and difference between classes. A C2C-SN learns patterns from one class C_i to another class C_j. The network can then be used, given two cases, to determine whether their similarity and difference conform to the learned patterns. If they do, it provides evidence for their belonging to the corresponding classes. We demonstrate the use of C2C-SNs for classification, explanation, and prototypical case finding. We demonstrate that C2C-SN classification can achieve good accuracy for case pairs, with the benefit of one-shot learning inherited from Siamese networks.
机译:基于案例的分类通常基于案例基础中查询和类成员之间的相似性。本文提出了一种基于差异的方法,级别暹罗网络(C2C-SN)分类,其中分类基于类别的相似性和差异的学习模式。 C2C-SN从一个类C_I到另一个类C_J学习模式。然后可以在两个情况下使用网络来确定它们是否相似性和差异符合学习模式。如果他们这样做,它就为他们属于相应的课程提供了证据。我们展示了使用C2C-SNS进行分类,解释和原型案例发现。我们证明C2C-SN分类可以实现良好的案例对准确性,具有从暹罗网络继承的一次拍摄学习的好处。

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