期刊名称:Conference on European Chapter of the Association for Computational Linguistics (EACL)
出版年度:2017
卷号:2017
页码:164-169
语种:English
出版社:ACL Anthology
摘要:Multi-task learning (MTL) in deep neural networks for NLP has recently received increasing interest due to some compelling benefits, including its potential to efficiently regularize models and to reduce the need for labeled data. While it has brought significant improvements in a number of NLP tasks, mixed results have been reported, and little is known about the conditions under which MTL leads to gains in NLP. This paper sheds light on the specific task relations that can lead to gains from MTL models over single-task setups.