In the last years, hundreds of social networks sites have been launched with both professional (e.g., LinkedIn) and non-professional (e.g., MySpace, Facebook) orientations. This resulted in a renewed information overload problem, but it also provided a new and unforeseen way of gathering useful, accurate and constantly updated information about user interests and tastes. Content-based recommender systems can leverage the wealth of data emerging by social networks for building user profiles in which representations of the user interests are maintained. The idea proposed in this paper is to extract content-based user profiles from the data available in the LinkedIn social network, to have an image of the users' interests that can be used to recommend interesting academic research papers. A preliminary experiment provided interesting results which deserve further attention. © 2011 ACM.

Lops, P., De Gemmis, M., Semeraro, G., Narducci, F., Musto, C. (2011). Leveraging the LinkedIn social network data for extracting content-based user profiles. In RecSys'11 - Proceedings of the 5th ACM Conference on Recommender Systems (pp.293-296) [10.1145/2043932.2043986].

Leveraging the LinkedIn social network data for extracting content-based user profiles

NARDUCCI, FEDELUCIO
Penultimo
;
2011

Abstract

In the last years, hundreds of social networks sites have been launched with both professional (e.g., LinkedIn) and non-professional (e.g., MySpace, Facebook) orientations. This resulted in a renewed information overload problem, but it also provided a new and unforeseen way of gathering useful, accurate and constantly updated information about user interests and tastes. Content-based recommender systems can leverage the wealth of data emerging by social networks for building user profiles in which representations of the user interests are maintained. The idea proposed in this paper is to extract content-based user profiles from the data available in the LinkedIn social network, to have an image of the users' interests that can be used to recommend interesting academic research papers. A preliminary experiment provided interesting results which deserve further attention. © 2011 ACM.
abstract
content-based recommender systems; linkedin; social networks; Computer Graphics and Computer-Aided Design; Information Systems
English
ACM Conference on Recommender Systems, RecSys - 23/27 October
2011
RecSys'11 - Proceedings of the 5th ACM Conference on Recommender Systems
978-145030683-6
2011
293
296
none
Lops, P., De Gemmis, M., Semeraro, G., Narducci, F., Musto, C. (2011). Leveraging the LinkedIn social network data for extracting content-based user profiles. In RecSys'11 - Proceedings of the 5th ACM Conference on Recommender Systems (pp.293-296) [10.1145/2043932.2043986].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/78197
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