English

Towards Time-Aware Distant Supervision for Relation Extraction

Computation and Language 2019-03-11 v1 Artificial Intelligence

Abstract

Distant supervision for relation extraction heavily suffers from the wrong labeling problem. To alleviate this issue in news data with the timestamp, we take a new factor time into consideration and propose a novel time-aware distant supervision framework (Time-DS). Time-DS is composed of a time series instance-popularity and two strategies. Instance-popularity is to encode the strong relevance of time and true relation mention. Therefore, instance-popularity would be an effective clue to reduce the noises generated through distant supervision labeling. The two strategies, i.e., hard filter and curriculum learning are both ways to implement instance-popularity for better relation extraction in the manner of Time-DS. The curriculum learning is a more sophisticated and flexible way to exploit instance-popularity to eliminate the bad effects of noises, thus get better relation extraction performance. Experiments on our collected multi-source news corpus show that Time-DS achieves significant improvements for relation extraction.

Keywords

Cite

@article{arxiv.1903.03289,
  title  = {Towards Time-Aware Distant Supervision for Relation Extraction},
  author = {Tianwen Jiang and Sendong Zhao and Jing Liu and Jin-Ge Yao and Ming Liu and Bing Qin and Ting Liu and Chin-Yew Lin},
  journal= {arXiv preprint arXiv:1903.03289},
  year   = {2019}
}
R2 v1 2026-06-23T08:01:56.883Z