可视化文本分析的深度神经网络

Shaoliang Nie, C. Healey, Kalpesh Padia, Samuel P. Leeman-Munk, J. Benson, Dave Caira, Saratendu Sethi, Ravi Devarajan
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引用次数: 14

摘要

近年来,深度神经网络(dnn)在许多不同领域取得了巨大的进展。然而,这些网络内部是如何运作的,人们往往不太清楚。理解深度神经网络的进步将有利于并加速该领域的发展。我们提出TNNVis,一个可视化系统,支持理解深度神经网络,专门用于分析文本。TNNVis主要研究由全连接层和卷积层组成的深度神经网络。它集成了专门为我们的任务选择的视觉编码和交互技术。该工具允许用户:(1)使用节点链接图和矩阵表示的组合,直观地探索具有任意输入的DNN模型;(2)快速识别网络内的激活值、权重和特征映射模式;(3)通过阈值、检查、洞察查询、工具提示等操作,灵活聚焦感兴趣的视觉信息;(4)通过动画发现网络激活和训练模式;(5)比较不同DNN输入的内部激活模式之间的差异。这些功能使神经网络研究人员能够从新的角度检查他们的DNN模型,并对这些模型的功能产生见解。采用聚类和摘要技术支持大卷积和全连接层。基于几个不同结构和大小的词性模型,我们给出了可视化有助于理解模型的多个用例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visualizing Deep Neural Networks for Text Analytics
Deep neural networks (DNNs) have made tremendous progress in many different areas in recent years. How these networks function internally, however, is often not well understood. Advances in under-standing DNNs will benefit and accelerate the development of the field. We present TNNVis, a visualization system that supports un-derstanding of deep neural networks specifically designed to analyze text. TNNVis focuses on DNNs composed of fully connected and convolutional layers. It integrates visual encodings and interaction techniques chosen specifically for our tasks. The tool allows users to: (1) visually explore DNN models with arbitrary input using a combination of node–link diagrams and matrix representation; (2) quickly identify activation values, weights, and feature map patterns within a network; (3) flexibly focus on visual information of interest with threshold, inspection, insight query, and tooltip operations; (4) discover network activation and training patterns through animation; and (5) compare differences between internal activation patterns for different inputs to the DNN. These functions allow neural network researchers to examine their DNN models from new perspectives, producing insights on how these models function. Clustering and summarization techniques are employed to support large convolutional and fully connected layers. Based on several part of speech models with different structure and size, we present multiple use cases where visualization facilitates an understanding of the models.
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