Empirical Learning of Natural Language Processing Tasks (1997)
| Venue: | Lecture Notes in Artificial Intelligence, , number 1224 |
| Citations: | 3 - 1 self |
BibTeX
@INPROCEEDINGS{Daelemans97empiricallearning,
author = {Walter Daelemans and Antal Van Den Bosch and Ton Weijters},
title = {Empirical Learning of Natural Language Processing Tasks},
booktitle = {Lecture Notes in Artificial Intelligence, , number 1224},
year = {1997},
pages = {337--344},
publisher = {Springer-Verlag}
}
OpenURL
Abstract
Language learning has thus far not been a hot application for machine-learning (ML) research. This limited attention for work on empirical learning of language knowledge and behaviour from text and speech data seems unjusti ed. After all, it is becoming apparent that empirical learning of Natural Language Processing (NLP) can alleviate NLP's all-time main problem, viz. the knowledge acquisition bottleneck: empirical ML methods such as rule induction, top down induction of decision trees, lazy learning, inductive logic programming, and some types of neural network learning, seem to be excellently suited to automatically induce exactly that knowledge that is hard to gather by hand. In this paper we address the question why NLP is an interesting application for empirical ML, and provide a brief overview of current work in this area. 1 Empirical Learning of Natural Language Looking at the ML literature of the last decade, it is clear that language learning has not been an important application area of ML techniques. Especially the absence of







