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Polibits

versión On-line ISSN 1870-9044

Polibits  no.44 México jul./dic. 2011

 

Inference of Fine–grained Attributes of Bengali Corpus for Stylometry Detection

 

Tanmoy Chakraborty* and Sivaji Bandyopadhyay**

 

Department of Computer Science and Engineering, Jadavpur University, Kolkata, India (e–mail: *its_tanmoy@yahoo.co.in, **sivaji_cse_ju@yahoo.com).

 

Manuscript received November 7, 2010.
Manuscript accepted for publication February 6, 2011.

 

Abstract

Stylometry, the science of inferring characteristics of the author from the characteristics of documents written by that author, is a problem with a long history and belongs to the core task of Text categorization that involves authorship identification, plagiarism detection, forensic investigation, computer security, copyright and estáte disputes etc. In this work, we present a strategy for stylometry detection of documents written in Bengali. We adopt a set of fine–grained attribute features with a set of lexical markers for the analysis of the text and use three semi–supervised measures for making decisions. Finally, a majority voting approach has been taken for final classification. The system is fully automatic and language–independent. Evaluation results of our attempt for Bengali author' s stylometry detection show reasonably promising accuracy in comparison to the baseline model.

Key words: Stylometry, stylistic markers, cosine–similarity, chi–square measure, Euclidean distance.

 

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