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 novel attribution graph that reveals and summarizes crucial neuron associations and substructures that contribute to a model's outcomes. Summit scales to large data, such as the ImageNet dataset with 1.2M images, and leverages neural network feature visualization and dataset examples to help users distill large, complex neural network models into compact, interactive visualizations. We present neural network exploration scenarios where Summit helps us discover multiple surprising insights into a prevalent, large-scale image classifier's learned representations and informs future neural network architecture design. The Summit visualization runs in modern web browsers and is open-sourced.
翻译:深度学习越来越多地用于决策任务。然而,了解神经网络如何产生最终预测仍然是一个根本性的挑战。现有关于图像解释神经网络预测的工作往往侧重于解释单一图像或神经元的预测。由于预测往往从数百万倍重的优化超过数百万图象中计算,因此这种解释很容易错过一个更大的图象。我们介绍了峰会,这是一个互动系统,它以可调整和系统的方式总结和直观地展示一个深层次学习模型所学特征以及这些特征如何相互作用来作出预测。峰会引入了两种新的可缩放综合技术:(1)启动集发现重要的神经元,(2)神经影响汇总发现这些神经元之间的关系。峰会结合了这些技术,以创建新的属性图,揭示和汇总有助于模型结果的关键神经协会和子结构。峰会的尺度是大型数据,例如图像网络数据集,利用神经网络特征可视化和数据集实例帮助用户将大型、复杂的神经网络模型纳入紧凑、互动可视化的可视化系统。我们目前使用的神经网络模型和图像分析了峰会的大规模图像分析结构,我们从中了解到了峰会的图像分析结构。