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Solving Aspect Category Sentiment Analysis as a Text Generation Task

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arxiv 2110.07310 v1 pith:AWFQZ55W submitted 2021-10-14 cs.CL

Solving Aspect Category Sentiment Analysis as a Text Generation Task

classification cs.CL
keywords languagepre-trainedaspectmodelsanalysiscategorydirectgeneration
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Aspect category sentiment analysis has attracted increasing research attention. The dominant methods make use of pre-trained language models by learning effective aspect category-specific representations, and adding specific output layers to its pre-trained representation. We consider a more direct way of making use of pre-trained language models, by casting the ACSA tasks into natural language generation tasks, using natural language sentences to represent the output. Our method allows more direct use of pre-trained knowledge in seq2seq language models by directly following the task setting during pre-training. Experiments on several benchmarks show that our method gives the best reported results, having large advantages in few-shot and zero-shot settings.

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