Title :
Bibliometric-enhanced retrieval models for big scholarly information systems
Author :
Mayr, Philipp ; Mutschke, Peter
Author_Institution :
Knowledge Technol. for the Social Sci., Leibniz Inst. for the Social Sci., Cologne, Germany
Abstract :
Bibliometric techniques are not yet widely used to enhance retrieval processes in digital libraries, although they offer value-added effects for users. In this paper we will explore how statistical modelling of scholarship, such as Bradfordizing or network analysis of coauthorship network, can improve retrieval services for specific communities, as well as for large, cross-domain large collections. This paper aims to raise awareness of the missing link between information retrieval (IR) and bibliometrics / scientometrics and to create a common ground for the incorporation of bibliometric-enhanced services into retrieval at the digital library interface.
Keywords :
digital libraries; information analysis; information retrieval; statistical analysis; bibliometric-enhanced retrieval model; big scholarly information system; digital libraries; digital library interface; information retrieval; scientometrics; statistical modelling; value-added effect; Bibliometrics; Collaboration; Communities; Computational modeling; Information retrieval; Information systems; Libraries; Bibliometrics; Digital Libraries; Information Retrieval; Scientometrics;
Conference_Titel :
Big Data, 2013 IEEE International Conference on
Conference_Location :
Silicon Valley, CA
DOI :
10.1109/BigData.2013.6691762