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  2. Ψηφιακό Αποθετήριο ΚΥΨΕΛΗ / Kypseli Digital Repository
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  4. Learning Cross-document Structural relationships using boosting
 
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Learning Cross-document Structural relationships using boosting

Author(s)
Otterbacher, Jahna 
Ανοικτό Πανεπιστήμιο Κύπρου / Open University of Cyprus 
Zhang Z.
Radev D.
Date Issued
2003
Page Start
124
Page End
130
DOI
10.1145/956863.956887
Faculty
Σχολή Θετικών και Εφαρμοσμένων Επιστημών / Faculty of Pure and Applied Sciences 
Abstract
Multi-document discoure analysis has emerged with the potential of improving various information retrieval applications. Based on the newly proposed Cross-document Structure Theory (CST), this paper describes an empirical study that uses boosting to classify CST relationships between sentence pairs extracted from topically related documents. We show that the binary classifier for determining existence of structural relationships significantly outperforms the baseline. We also achieve promising results on the multi-class case in which the full taxonomy of relationships are considered. Copyright 2003 ACM.
Publisher
Association for Computing Machinery
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