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Latent Opinions Transfer Network for Target-Oriented Opinion Words Extraction

About

Target-oriented opinion words extraction (TOWE) is a new subtask of ABSA, which aims to extract the corresponding opinion words for a given opinion target in a sentence. Recently, neural network methods have been applied to this task and achieve promising results. However, the difficulty of annotation causes the datasets of TOWE to be insufficient, which heavily limits the performance of neural models. By contrast, abundant review sentiment classification data are easily available at online review sites. These reviews contain substantial latent opinions information and semantic patterns. In this paper, we propose a novel model to transfer these opinions knowledge from resource-rich review sentiment classification datasets to low-resource task TOWE. To address the challenges in the transfer process, we design an effective transformation method to obtain latent opinions, then integrate them into TOWE. Extensive experimental results show that our model achieves better performance compared to other state-of-the-art methods and significantly outperforms the base model without transferring opinions knowledge. Further analysis validates the effectiveness of our model.

Zhen Wu, Fei Zhao, Xin-Yu Dai, Shujian Huang, Jiajun Chen• 2020

Related benchmarks

TaskDatasetResultRank
Opinion Term Extraction14res SemEval 2014 (test)
Precision84
37
Opinion Term ExtractionSemEval res 2015 (test)
Precision76.61
28
Target-Oriented Opinion Word Extraction14lap SemEval 2014 (test)
Precision77.08
27
Target-Oriented Opinion Word ExtractionSemEval res 2016 (test)
Precision86.57
27
Opinion Term Extractionres 14
F1-score (%)82.21
16
Opinion Term Extraction16-Res
F1-score83.62
14
Opinion Term Extractionlap 14
F1-score72.02
14
Opinion Term ExtractionRes 15
F1-score73.29
14
Aspect-Opinion Pair Extraction (Pair)16res (test)
F1 Score83.62
13
Aspect-Opinion Pair Extraction (Pair)14res (test)
F1 Score82.21
13
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