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SCANViz: Interpreting the Symbol-Concept Association Captured by Deep Neural Networks through Visual Analytics

机译:ScanViz:通过视觉分析解释由深神经网络捕获的符号概念关联

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Two fundamental problems in machine learning are recognition and generation. Apart from the tremendous amount of research efforts devoted to these two problems individually, finding the association between them has attracted increasingly more attention recently. Symbol-Concept Association Network (SCAN) is one of the most popular models for this problem proposed by Google DeepMind lately, which integrates an unsupervised concept abstraction process and a supervised symbol-concept association process. Despite the outstanding performance of this deep neural network, interpreting and evaluating it remain challenging. Guided by the practical needs from deep learning experts, this paper proposes a visual analytics attempt, i.e., SCANViz, to address this challenge in the visual domain. Specifically, SCANViz evaluates the performance of SCAN through its power of recognition and generation, facilitates the exploration of the latent space derived from both the unsupervised extraction and supervised association processes, empowers interactive training of SCAN to interpret the model's understanding on a particular visual concept. Through concrete case studies with multiple deep learning experts, we validate the effectiveness of SCANViz.
机译:机器学习中的两个基本问题是认可和一代。除了单独致力于这两个问题的大量研究工作之外,在最近发现它们之间的关联受到越来越多的关注。符号概念关联网络(扫描)是谷歌深度最近提出的这个问题最受欢迎的模型之一,这集成了无监督的概念抽象过程和监督符号概念关联过程。尽管这种深度神经网络的表现突出,但诠释和评估它仍然具有挑战性。通过深度学习专家的实践需求为指导,本文提出了一种视觉分析尝试,即ScanViz,解决视觉域中的这一挑战。具体而言,ScanViz通过其识别和生成的功率评估扫描的性能,促进探讨了无监督的提取和监督协会过程的潜在空间,Empowers的扫描互动培训来解释模型对特定视觉概念的理解。通过具有多个深度学习专家的具体案例研究,我们验证了Scanviz的有效性。

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