2021
DOI: 10.48550/arxiv.2111.14094
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Topic Driven Adaptive Network for Cross-Domain Sentiment Classification

Abstract: Cross-domain sentiment classification has been a hot spot these years, which aims to learn a reliable classifier using labeled data from the source domain and evaluate it on the target domain. In this vein, most approaches utilized domain adaptation that maps data from different domains into a common feature space. To further improve the model performance, several methods targeted to mine domain-specific information were proposed. However, most of them only utilized a limited part of domain-specific informatio… Show more

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