Active Learning for Natural Language Parsing and Information Extraction 论文

1999引用 291
Machine Learning and AlgorithmsNatural Language Processing TechniquesTopic Modeling

详细信息

发表日期
1999-06-27
发表年份
1999

关键词

Machine Learning and AlgorithmsNatural Language Processing TechniquesTopic Modeling

摘要

In natural language acquisition, it is difficult to gather the annotated data needed for supervised learning; however, unannotated data is fairly plentiful. Active learning methods attempt to select for annotation and training only the most informative examples, and therefore are potentially very useful in natural language applications. However, existing results for active learning have only considered standard classification tasks. To reduce annotation effort while maintaining accuracy, we apply active learning to two non-classification tasks in natural language processing: semantic parsing and information extraction. We show that active learning can significantly reduce the number of annotated examples required to achieve a given level of performance for these complex tasks. Keywords: active learning, natural language learning, learning for parsing, learning for information extraction Email address of contact author: cthomp@csli.stanford.edu Phone number of contact author: (650)8...