English

Dataset Construction via Attention for Aspect Term Extraction with Distant Supervision

Computation and Language 2017-09-28 v1

Abstract

Aspect Term Extraction (ATE) detects opinionated aspect terms in sentences or text spans, with the end goal of performing aspect-based sentiment analysis. The small amount of available datasets for supervised ATE and the fact that they cover only a few domains raise the need for exploiting other data sources in new and creative ways. Publicly available review corpora contain a plethora of opinionated aspect terms and cover a larger domain spectrum. In this paper, we first propose a method for using such review corpora for creating a new dataset for ATE. Our method relies on an attention mechanism to select sentences that have a high likelihood of containing actual opinionated aspects. We thus improve the quality of the extracted aspects. We then use the constructed dataset to train a model and perform ATE with distant supervision. By evaluating on human annotated datasets, we prove that our method achieves a significantly improved performance over various unsupervised and supervised baselines. Finally, we prove that sentence selection matters when it comes to creating new datasets for ATE. Specifically, we show that, using a set of selected sentences leads to higher ATE performance compared to using the whole sentence set.

Keywords

Cite

@article{arxiv.1709.09220,
  title  = {Dataset Construction via Attention for Aspect Term Extraction with Distant Supervision},
  author = {Athanasios Giannakopoulos and Diego Antognini and Claudiu Musat and Andreea Hossmann and Michael Baeriswyl},
  journal= {arXiv preprint arXiv:1709.09220},
  year   = {2017}
}
R2 v1 2026-06-22T21:55:50.059Z