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Gordon W. Paynter

Researcher at University of Waikato

Publications -  31
Citations -  3487

Gordon W. Paynter is an academic researcher from University of Waikato. The author has contributed to research in topics: Metadata & Meta Data Services. The author has an hindex of 17, co-authored 31 publications receiving 3422 citations. Previous affiliations of Gordon W. Paynter include University of California, Riverside & University of California.

Papers
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Proceedings ArticleDOI

KEA: practical automatic keyphrase extraction

TL;DR: Kea as mentioned in this paper identifies candidate keyphrases using lexical methods, calculates feature values for each candidate, and uses a machine learning algorithm to predict which candidates are good keyphrase candidates.
Posted Content

KEA: Practical Automatic Keyphrase Extraction

TL;DR: This paper uses a large test corpus to evaluate Kea’s effectiveness in terms of how many author-assigned keyphrases are correctly identified, and describes the system, which is simple, robust, and publicly available.
Proceedings Article

Domain-specific keyphrase extraction

TL;DR: This paper shows that a simple procedure for keyphrase extraction based on the naive Bayes learning scheme performs comparably to the state of the art, and explains how this procedure's performance can be boosted by automatically tailoring the extraction process to the particular document collection at hand.
Journal ArticleDOI

Improving browsing in digital libraries with keyphrase indexes

TL;DR: A new kind of search engine, Keyphind, is built that is explicitly designed to support browsing and provides a keyphrase index, allowing users to interact with the collection at the level of topics and subjects rather than words and documents.
Journal ArticleDOI

Automatic extraction of document keyphrases for use in digital libraries: evaluation and applications

TL;DR: It is found that for some settings, Kea's performance is better than that of similar systems, and thatKea's ranking of extracted keyphrases is effective, and it is determined that author-specified keyphRases appear to exhibit an inherent ranking, and are rated highly and therefore suitable for use in training and evaluation of automaticKeyphrasing systems.