Authors
Paul Clough, Robert Gaizauskas, Scott SL Piao, Yorick Wilks
Publication date
2002/7
Conference
Proceedings of the 40th Annual Meeting of the Association for Computational Linguistics
Pages
152-159
Description
In this paper we present results from the METER (MEasuring TExt Reuse) project whose aim is to explore issues pertaining to text reuse and derivation, especially in the context of newspapers using newswire sources. Although the reuse of text by journalists has been studied in linguistics, we are not aware of any investigation using existing computational methods for this particular task. We investigate the classification of newspaper articles according to their degree of dependence upon, or derivation from, a newswire source using a simple 3-level scheme designed by journalists. Three approaches to measuring text similarity are considered: ngram overlap, Greedy String Tiling, and sentence alignment. Measured against a manually annotated corpus of source and derived news text, we show that a combined classifier with features automatically selected performs best overall for the ternary classification achieving an average F1-measure score of 0.664 across all three categories.
Total citations
20012002200320042005200620072008200920102011201220132014201520162017201820192020202120222023202421241569815111017121419191223159265
Scholar articles
P Clough, R Gaizauskas, SSL Piao, Y Wilks - Proceedings of the 40th Annual Meeting of the …, 2002