作者
Fred Hohman, Haekyu Park, Caleb Robinson, Duen Horng Polo Chau
发表日期
2019/8/20
期刊
IEEE transactions on visualization and computer graphics
卷号
26
期号
1
页码范围
1096-1106
出版商
IEEE
简介
Deep learning is increasingly used in decision-making tasks. However, understanding how neural networks produce final predictions remains a fundamental challenge. Existing work on interpreting neural network predictions for images often focuses on explaining predictions for single images or neurons. As predictions are often computed from millions of weights that are optimized over millions of images, such explanations can easily miss a bigger picture. We present Summit, an interactive system that scalably and systematically summarizes and visualizes what features a deep learning model has learned and how those features interact to make predictions. Summit introduces two new scalable summarization techniques: (1) activation aggregation discovers important neurons, and (2) neuron-influence aggregation identifies relationships among such neurons. Summit combines these techniques to create the …
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