When is multitask learning effective? Semantic sequence prediction under varying data conditions
Computation and Language
2017-01-11 v2
Abstract
Multitask learning has been applied successfully to a range of tasks, mostly morphosyntactic. However, little is known on when MTL works and whether there are data characteristics that help to determine its success. In this paper we evaluate a range of semantic sequence labeling tasks in a MTL setup. We examine different auxiliary tasks, amongst which a novel setup, and correlate their impact to data-dependent conditions. Our results show that MTL is not always effective, significant improvements are obtained only for 1 out of 5 tasks. When successful, auxiliary tasks with compact and more uniform label distributions are preferable.
Cite
@article{arxiv.1612.02251,
title = {When is multitask learning effective? Semantic sequence prediction under varying data conditions},
author = {Héctor Martínez Alonso and Barbara Plank},
journal= {arXiv preprint arXiv:1612.02251},
year = {2017}
}
Comments
In EACL 2017