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Unified Feature and Instance Based Domain Adaptation for Aspect-Based Sentiment Analysis

Chenggong Gong, Jianfei Yu, Rui Xia

202067 citationsDOIOpen Access PDF

Abstract

The supervised models for aspect-based sentiment analysis (ABSA) rely heavily on labeled data. However, fine-grained labeled data are scarce for the ABSA task. To alleviate the dependence on labeled data, prior works mainly focused on feature-based adaptation, which used the domain-shared knowledge to construct auxiliary tasks or domain adversarial learning to bridge the gap between domains, while ignored the attribute of instance-based adaptation. To resolve this limitation, we propose an end-to-end framework to jointly perform feature and instance based adaptation for the ABSA task in this paper. Based on BERT, we learn domain-invariant feature representations by using part-of-speech features and syntactic dependency relations to construct auxiliary tasks, and jointly perform word-level instance weighting in the framework of sequence labeling. Experiment results on four benchmarks show that the proposed method can achieve significant improvements in comparison with the state-of-the-arts in both tasks of cross-domain End2End ABSA and crossdomain aspect extraction.

Topics & Concepts

Computer scienceArtificial intelligenceConstruct (python library)WeightingDomain adaptationFeature (linguistics)Sentiment analysisDomain (mathematical analysis)Natural language processingTask (project management)Word (group theory)Adaptation (eye)Feature extractionTask analysisMachine learningPattern recognition (psychology)Classifier (UML)MathematicsProgramming languageLinguisticsGeometryPhysicsEconomicsOpticsMathematical analysisRadiologyMedicinePhilosophyManagementSentiment Analysis and Opinion MiningTopic ModelingText and Document Classification Technologies
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