Location of Repository

Detecting Family Resemblance: Automated Genre Classification.

By Dr Yunhyong Kim and Seamus Ross

Abstract

This paper presents results in automated genre classification of digital documents in PDF format. It describes genre classification as an important ingredient in contextualising scientific data and in retrieving targetted material for improving research. The current paper compares the role of visual layout, stylistic features and language model features in clustering documents and presents results in retrieving five selected genres (Scientific Article, Thesis, Periodicals, Business Report, and Form) from a pool of materials populated with documents of the nineteen most popular genres found in our experimental data set.

Topics: M Resource Discovery, EA Metadata
Year: 2006
DOI identifier: 10.2481/dsj.6.s172
OAI identifier: oai:eprints.erpanet.org:116

Suggested articles

Preview


To submit an update or takedown request for this paper, please submit an Update/Correction/Removal Request.