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Understanding Pre-trained BERT for Aspect-based Sentiment Analysis

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arxiv 2011.00169 v1 pith:QAQ525JE submitted 2020-10-31 cs.CL

Understanding Pre-trained BERT for Aspect-based Sentiment Analysis

classification cs.CL
keywords absaaspectbertpre-trainedanalysisaspect-basedcontextfeatures
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper analyzes the pre-trained hidden representations learned from reviews on BERT for tasks in aspect-based sentiment analysis (ABSA). Our work is motivated by the recent progress in BERT-based language models for ABSA. However, it is not clear how the general proxy task of (masked) language model trained on unlabeled corpus without annotations of aspects or opinions can provide important features for downstream tasks in ABSA. By leveraging the annotated datasets in ABSA, we investigate both the attentions and the learned representations of BERT pre-trained on reviews. We found that BERT uses very few self-attention heads to encode context words (such as prepositions or pronouns that indicating an aspect) and opinion words for an aspect. Most features in the representation of an aspect are dedicated to the fine-grained semantics of the domain (or product category) and the aspect itself, instead of carrying summarized opinions from its context. We hope this investigation can help future research in improving self-supervised learning, unsupervised learning and fine-tuning for ABSA. The pre-trained model and code can be found at https://github.com/howardhsu/BERT-for-RRC-ABSA.

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