Multi-task Pairwise Neural Ranking for Hashtag Segmentation
Abstract
Hashtags are often employed on social media and beyond to add metadata to a textual utterance with the goal of increasing discoverability, aiding search, or providing additional semantics. However, the semantic content of hashtags is not straightforward to infer as these represent ad-hoc conventions which frequently include multiple words joined together and can include abbreviations and unorthodox spellings. We build a dataset of 12,594 hashtags split into individual segments and propose a set of approaches for hashtag segmentation by framing it as a pairwise ranking problem between candidate segmentations. Our novel neural approaches demonstrate 24.6% error reduction in hashtag segmentation accuracy compared to the current state-of-the-art method. Finally, we demonstrate that a deeper understanding of hashtag semantics obtained through segmentation is useful for downstream applications such as sentiment analysis, for which we achieved a 2.6% increase in average recall on the SemEval 2017 sentiment analysis dataset.
Cite
@article{arxiv.1906.00790,
title = {Multi-task Pairwise Neural Ranking for Hashtag Segmentation},
author = {Mounica Maddela and Wei Xu and Daniel Preoţiuc-Pietro},
journal= {arXiv preprint arXiv:1906.00790},
year = {2019}
}
Comments
12 pages, ACL 2019