2021
DOI: 10.48550/arxiv.2103.11431
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SEMIE: SEMantically Infused Embeddings with Enhanced Interpretability for Domain-specific Small Corpus

Rishabh Gupta,
Rajesh N Rao

Abstract: Word embeddings are a basic building block of modern NLP pipelines. Efforts have been made to learn rich, efficient, and interpretable embeddings for large generic datasets available in the public domain. However, these embeddings have limited applicability for small corpora from specific domains such as automotive, manufacturing, maintenance and support, etc. In this work, we present a comprehensive notion of interpretability for word embeddings and propose a novel method to generate highly interpretable and … Show more

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