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Papers/Exploiting Coarse-to-Fine Task Transfer for Aspect-level S...

Exploiting Coarse-to-Fine Task Transfer for Aspect-level Sentiment Classification

Zheng Li, Ying WEI, Yu Zhang, Xiang Zhang, Xin Li, Qiang Yang

2018-11-16AAAI 2019 2018 11Sentiment AnalysisSentiment ClassificationGeneral Classification
PaperPDFCode(official)

Abstract

Aspect-level sentiment classification (ASC) aims at identifying sentiment polarities towards aspects in a sentence, where the aspect can behave as a general Aspect Category (AC) or a specific Aspect Term (AT). However, due to the especially expensive and labor-intensive labeling, existing public corpora in AT-level are all relatively small. Meanwhile, most of the previous methods rely on complicated structures with given scarce data, which largely limits the efficacy of the neural models. In this paper, we exploit a new direction named coarse-to-fine task transfer, which aims to leverage knowledge learned from a rich-resource source domain of the coarse-grained AC task, which is more easily accessible, to improve the learning in a low-resource target domain of the fine-grained AT task. To resolve both the aspect granularity inconsistency and feature mismatch between domains, we propose a Multi-Granularity Alignment Network (MGAN). In MGAN, a novel Coarse2Fine attention guided by an auxiliary task can help the AC task modeling at the same fine-grained level with the AT task. To alleviate the feature false alignment, a contrastive feature alignment method is adopted to align aspect-specific feature representations semantically. In addition, a large-scale multi-domain dataset for the AC task is provided. Empirically, extensive experiments demonstrate the effectiveness of the MGAN.

Results

TaskDatasetMetricValueModel
Sentiment AnalysisSemEval-2014 Task-4Laptop (Acc)76.21MGAN
Sentiment AnalysisSemEval-2014 Task-4Mean Acc (Restaurant + Laptop)78.85MGAN
Sentiment AnalysisSemEval-2014 Task-4Restaurant (Acc)81.49MGAN
Aspect-Based Sentiment Analysis (ABSA)SemEval-2014 Task-4Laptop (Acc)76.21MGAN
Aspect-Based Sentiment Analysis (ABSA)SemEval-2014 Task-4Mean Acc (Restaurant + Laptop)78.85MGAN
Aspect-Based Sentiment Analysis (ABSA)SemEval-2014 Task-4Restaurant (Acc)81.49MGAN

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