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Recursive Neural Conditional Random Fields for Aspect-based Sentiment Analysis

About

In aspect-based sentiment analysis, extracting aspect terms along with the opinions being expressed from user-generated content is one of the most important subtasks. Previous studies have shown that exploiting connections between aspect and opinion terms is promising for this task. In this paper, we propose a novel joint model that integrates recursive neural networks and conditional random fields into a unified framework for explicit aspect and opinion terms co-extraction. The proposed model learns high-level discriminative features and double propagate information between aspect and opinion terms, simultaneously. Moreover, it is flexible to incorporate hand-crafted features into the proposed model to further boost its information extraction performance. Experimental results on the SemEval Challenge 2014 dataset show the superiority of our proposed model over several baseline methods as well as the winning systems of the challenge.

Wenya Wang, Sinno Jialin Pan, Daniel Dahlmeier, Xiaokui Xiao• 2016

Related benchmarks

TaskDatasetResultRank
Aspect ExtractionLaptop (test)
F1 Score78.42
30
Aspect ExtractionRestaurant (test)
F1 Score84.93
24
Aspect Term Extraction (ATE)SemEval Restaurant 2015 (test)
F1 Score0.6774
18
Aspect Term Extraction (ATE)SemEval Restaurant 2016 (test)
F1 Score69.72
18
Aspect Term ExtractionLaptop 2014 (test)
F1 Score78.42
17
Opinion ExtractionLaptop (test)
F1 Score79.44
16
Aspect Term ExtractionRestaurant 2014 (test)
F1 Score84.93
14
Opinion ExtractionRestaurant (test)
F1 Score84.11
6
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