English

Transductive Auxiliary Task Self-Training for Neural Multi-Task Models

Computation and Language 2019-09-24 v2

Abstract

Multi-task learning and self-training are two common ways to improve a machine learning model's performance in settings with limited training data. Drawing heavily on ideas from those two approaches, we suggest transductive auxiliary task self-training: training a multi-task model on (i) a combination of main and auxiliary task training data, and (ii) test instances with auxiliary task labels which a single-task version of the model has previously generated. We perform extensive experiments on 86 combinations of languages and tasks. Our results are that, on average, transductive auxiliary task self-training improves absolute accuracy by up to 9.56% over the pure multi-task model for dependency relation tagging and by up to 13.03% for semantic tagging.

Keywords

Cite

@article{arxiv.1908.06136,
  title  = {Transductive Auxiliary Task Self-Training for Neural Multi-Task Models},
  author = {Johannes Bjerva and Katharina Kann and Isabelle Augenstein},
  journal= {arXiv preprint arXiv:1908.06136},
  year   = {2019}
}

Comments

Camera ready version, to appear at DeepLo 2019 (EMNLP workshop)