Jurica Ševa
University of Zagreb
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Featured researches published by Jurica Ševa.
Expert Systems With Applications | 2015
Jurica Ševa; Markus Schatten; Petra Grd
We examine the overall quality of Open Directory Project as a classifier.We compare several data grouping schemes and evaluate each of them.We show that ODP can be used both as a horizontal as well as vertical classifier.GENERAL grouping scheme yields best results for horizontal classification.Number of documents (limit models) yield best results for vertical classification. Content personalization reflects the ability of content classification into (predefined) thematic units or information domains. Content nodes in a single thematic unit are related to a greater or lesser extent. An existing connection between two available content nodes assumes that the user will be interested in both resources (but not necessarily to the same extent). Such a connection (and its value) can be established through the process of automatic content classification and labeling. One approach for the classification of content nodes is the use of a predefined classification taxonomy. With the help of such classification taxonomy it is possible to automatically classify and label existing content nodes as well as create additional descriptors for future use in content personalization and recommendation systems. For these purposes existing web directories can be used in creating a universal, purely content based, classification taxonomy. This work analyzes Open Directory Project (ODP) web directory and proposes a novel use of its structure and content as the basis for such a classification taxonomy. The goal of a unified classification taxonomy is to allow for content personalization from heterogeneous sources. In this work we focus on the overall quality of ODP as the basis for such a classification taxonomy and the use of its hierarchical structure for automatic labeling. Due to the structure of data in ODP different grouping schemes are devised and tested to find the optimal content and structure combination for a proposed classification taxonomy as well as automatic labeling processes. The results provide an in-depth analysis of ODP and ODP based content classification and automatic labeling models. Although the use of ODP is well documented, this question has not been answered to date.
European Quarterly of Political Attitudes and Mentalities | 2015
Markus Schatten; Jurica Ševa; Bogdan Okreša-Đurić
Proceedings of the 20th Central European Conference on Information and Intelligent Systems | 2009
Mirko Čubrilo; Markus Schatten; Jurica Ševa
European Quarterly of Political Attitudes and Mentalities | 2015
Markus Schatten; Jurica Ševa; Bogdan Okreša Đurić
Proceedings of the 22nd Central European Conference on Information and Intelligent Systems | 2011
Petra Koruga; Jurica Ševa; Miroslav Bača
European Quarterly of Political Attitudes and Mentalities | 2016
Jurica Ševa; Bogdan Okreša Đurić; Markus Schatten
Central European Conference on Information and Intelligent Systems 2016 | 2016
Markus Schatten; Igor Tomičić; Bogdan Okreša Đurić; Jurica Ševa
Central European Conference on Information and Intelligent Systems | 2017
Markus Schatten; Bogdan Okreša Ðurić; Igor Tomičić; Nikola Ivković; Mario Konecki; Jurica Ševa; Marko Maliković; Pietro Terna
IGIP'2011 ⎯ FORMING INTERNATIONAL ENGINEERS FOR THE INFORMATION SOCIETY | 2015
Benny Senjaya; Gregory T. Hales; Jurica Ševa; Stephen J. Elliott; Mathias J. Sutton
IGIP'2011 FORMING INTERNATIONAL ENGINEERS FOR THE INFORMATION SOCIETY | 2011
Gregory T. Hales; Nathan J. Price; Jurica Ševa; Stephen J. Elliott