Exploiting Document Knowledge for Aspect-level Sentiment Classification
About
Attention-based long short-term memory (LSTM) networks have proven to be useful in aspect-level sentiment classification. However, due to the difficulties in annotating aspect-level data, existing public datasets for this task are all relatively small, which largely limits the effectiveness of those neural models. In this paper, we explore two approaches that transfer knowledge from document- level data, which is much less expensive to obtain, to improve the performance of aspect-level sentiment classification. We demonstrate the effectiveness of our approaches on 4 public datasets from SemEval 2014, 2015, and 2016, and we show that attention-based LSTM benefits from document-level knowledge in multiple ways.
Ruidan He, Wee Sun Lee, Hwee Tou Ng, Daniel Dahlmeier• 2018
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Aspect-level sentiment classification | SemEval Laptop 2014 (test) | Accuracy71.91 | 59 | |
| Aspect-based Sentiment Classification | Lap14 | Accuracy71.15 | 37 | |
| Aspect-based Sentiment Analysis | SemEval Task 4 Subtask 2 Restaurant domain 2014 (test) | Accuracy78.73 | 30 | |
| Aspect extraction and sentiment classification | res 14 | -- | 26 | |
| Sentiment Classification | SemEval Twitter Sentiment Analysis 2015 (test) | -- | 17 | |
| Sentiment Classification | SemEval Twitter Sentiment Analysis 2016 (test) | -- | 17 | |
| Aspect-based Sentiment Classification | Res15 | Accuracy81.3 | 10 | |
| Aspect-level sentiment classification | D1 | Accuracy79.11 | 9 | |
| Aspect-level sentiment classification | D3 | Accuracy81.3 | 9 | |
| Aspect-level sentiment classification | D4 | Accuracy85.58 | 9 |
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