Big Data Small Data, In Domain Out-of Domain, Known Word Unknown Word: The Impact of Word Representations on Sequence Labelling Tasks

Lizhen Qu, Gabriela Ferraro, Liyuan Zhou, Weiwei Hou, Nathan Schneider, Timothy Baldwin

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Abstract

Word embeddings — distributed word representations that can be learned from unlabelled data — have been shown to have high utility in many natural language processing applications. In this paper, we perform an extrinsic evaluation of four popular word embedding methods in the context of four sequence labelling tasks:part-of-speech tagging, syntactic chunking,named entity recognition, and multi word expression identification. A particular focus of the paper is analysing the effects of task-based updating of word representations.We show that when using word embeddings as features, as few as several hundred training instances are sufficient to achieve competitive results, and that word embeddings lead to improvements over out-of-vocabulary words and also out of domain. Perhaps more surprisingly,our results indicate there is little difference between the different word embedding methods, and that simple Brown clusters are often competitive with word embeddings across all tasks we consider.
Original languageEnglish
Title of host publicationProceedings of the Nineteenth Conference on Computational Natural Language Learning
Place of PublicationBeijing, China
PublisherAssociation for Computational Linguistics
Pages83-93
Number of pages11
ISBN (Print)978-1-941643-77-8
Publication statusPublished - 2015

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