Abstract
Topical annotation of documents with keyphrases is a proven method for revealing the subject of scientific and research documents to both human readers and information retrieval systems. This article describes a machine learning-based keyphrase annotation method for scientific documents that utilizes Wikipedia as a thesaurus for candidate selection from documents' content. We have devised a set of 20 statistical, positional and semantical features for candidate phrases to capture and reflect various properties of those candidates that have the highest keyphraseness probability. We first introduce a simple unsupervised method for ranking and filtering the most probable keyphrases, and then evolve it into a novel supervised method using genetic algorithms. We have evaluated the performance of both methods on a third-party dataset of research papers. Reported experimental results show that the performance of our proposed methods, measured in terms of consistency with human annotators, is on a par with that achieved by humans and outperforms rival supervised and unsupervised methods.
Original language | English |
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Pages (from-to) | 410-426 |
Number of pages | 17 |
Journal | Journal of Information Science |
Volume | 39 |
Issue number | 3 |
DOIs | |
Publication status | Published - Jun 2013 |
Keywords
- genetic algorithms
- keyphrase annotation
- keyphrase indexing
- metadata generation
- scientific digital libraries
- subject metadata
- text mining
- Wikipedia