Visual Exploration of Semantic Relationships in Neural Word Embeddings

Volume: 24, Issue: 1, Pages: 553 - 562
Published: Jan 1, 2018
Abstract
Constructing distributed representations for words through neural language models and using the resulting vector spaces for analysis has become a crucial component of natural language processing (NLP). However, despite their widespread application, little is known about the structure and properties of these spaces. To gain insights into the relationship between words, the NLP community has begun to adapt high-dimensional visualization...
Paper Details
Title
Visual Exploration of Semantic Relationships in Neural Word Embeddings
Published Date
Jan 1, 2018
Volume
24
Issue
1
Pages
553 - 562
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