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AIMSA
2006
Springer

N-Gram Feature Selection for Authorship Identification

13 years 8 months ago
N-Gram Feature Selection for Authorship Identification
Automatic authorship identification offers a valuable tool for supporting crime investigation and security. It can be seen as a multi-class, single-label text categorization task. Character n-grams are a very successful approach to represent text for stylistic purposes since they are able to capture nuances in lexical, syntactical, and structural level. So far, character n-grams of fixed length have been used for authorship identification. In this paper, we propose a variable-length n-gram approach inspired by previous work for selecting variable-length word sequences. Using a subset of the new Reuters corpus, consisting of texts on the same topic by 50 different authors, we show that the proposed approach is at least as effective as information gain for selecting the most significant n-grams although the feature sets produced by the two methods have few common members. Moreover, we explore the significance of digits for distinguishing between authors showing that an increase in perfor...
John Houvardas, Efstathios Stamatatos
Added 20 Aug 2010
Updated 20 Aug 2010
Type Conference
Year 2006
Where AIMSA
Authors John Houvardas, Efstathios Stamatatos
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