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Shallow Domain Adaptive Embeddings for Sentiment Analysis
by
Liang, Yingyu
, Sethares, William A
, Sarma, Prathusha K
in
Adaptation
/ Algorithms
/ Classification
/ Coders
/ Data mining
/ Embedding
/ Neural networks
/ Performance enhancement
/ Semantics
/ Sentiment analysis
/ Words (language)
2019
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Do you wish to request the book?
Shallow Domain Adaptive Embeddings for Sentiment Analysis
by
Liang, Yingyu
, Sethares, William A
, Sarma, Prathusha K
in
Adaptation
/ Algorithms
/ Classification
/ Coders
/ Data mining
/ Embedding
/ Neural networks
/ Performance enhancement
/ Semantics
/ Sentiment analysis
/ Words (language)
2019
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Paper
Shallow Domain Adaptive Embeddings for Sentiment Analysis
2019
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Overview
This paper proposes a way to improve the performance of existing algorithms for text classification in domains with strong language semantics. We propose a domain adaptation layer learns weights to combine a generic and a domain specific (DS) word embedding into a domain adapted (DA) embedding. The DA word embeddings are then used as inputs to a generic encoder + classifier framework to perform a downstream task such as classification. This adaptation layer is particularly suited to datasets that are modest in size, and which are, therefore, not ideal candidates for (re)training a deep neural network architecture. Results on binary and multi-class classification tasks using popular encoder architectures, including current state-of-the-art methods (with and without the shallow adaptation layer) show the effectiveness of the proposed approach.
Publisher
Cornell University Library, arXiv.org
Subject
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