作者
Hendrik Strobelt, Sebastian Gehrmann, Hanspeter Pfister, Alexander M Rush
发表日期
2017/8/29
期刊
IEEE transactions on visualization and computer graphics
卷号
24
期号
1
页码范围
667-676
出版商
IEEE
简介
Recurrent neural networks, and in particular long short-term memory (LSTM) networks, are a remarkably effective tool for sequence modeling that learn a dense black-box hidden representation of their sequential input. Researchers interested in better understanding these models have studied the changes in hidden state representations over time and noticed some interpretable patterns but also significant noise. In this work, we present LSTMVis, a visual analysis tool for recurrent neural networks with a focus on understanding these hidden state dynamics. The tool allows users to select a hypothesis input range to focus on local state changes, to match these states changes to similar patterns in a large data set, and to align these results with structural annotations from their domain. We show several use cases of the tool for analyzing specific hidden state properties on dataset containing nesting, phrase structure …
引用总数
20162017201820192020202120222023202442069808480776236
学术搜索中的文章
H Strobelt, S Gehrmann, H Pfister, AM Rush - IEEE transactions on visualization and computer …, 2017