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Semantics-aware Content-based Recommender Systems

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Semantics-aware Content-based Recommender Systems

Pasquale Lops

Department of Computer Science University of Bari “Aldo Moro”

Via E. Orabona, 4, I70126 Bari, Italy

lops@di.uniba.it

ABSTRACT

Content-based recommender systems (CBRS) filter very large repos- itories of items (books, news, music tracks, TV assets, web pages?) by analyzing items previously rated by a user and building a model of user interests, called user profile, based on the features of the items rated by that user. The user profile is then exploited to rec- ommend new potentially relevant items.

CBRS usually use textual features to represent items and user profiles, hence they inherit the classical problems of natural lan- guage ambiguity. The ever increasing interest in semantic tech- nologies and the availability of several open knowledge sources have fueled recent progress in the field of CBRS. Novel research works have introduced semantic techniques that shift a keyword- based representation of items and user profiles to a concept-based one.

In this talk I will focus on the main problems of CBRS, such as limited content analysis, and overspecialization, showing the cur- rent research directions for overcoming them, including

• top-down semantic approaches, based on the use of different open knowledge sources (ontologies, Wikipedia, DBpedia)

• bottom-up semantic approaches, based on the distributional hypothesis, which states that "words that occur in the same contexts tend to have similar meanings"

• cross-language recommender systems and algorithms for learn- ing multilingual content-based profiles

• the generation of serendipitous recommendations

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CBRecSys 2014,October 6, 2014, Silicon Valley, CA, USA.

Copyright 2014 by the author(s).

1 Copyright 2014 for the individual papers by the paper’s authors.

Copying permitted for private and academic purposes. This volume is published and copyrighted by its editors.

CBRecSys 2014, October 6, 2014, Silicon Valley, CA, USA.

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