Data di Pubblicazione:
2013
Abstract:
Finding similar users in social communities is often challenging, especially
in the presence of sparse data or when working with heterogeneous or
specialized domains. When computing semantic similarity among users it is desirable
to have a measure which allows to compare users w.r.t. any concept in
the domain. We propose such a technique which reduces the problems caused by
data sparsity, especially in the cold start phase, and enables granular and contextbased
adaptive suggestions. It allows referring to a certain set of most similar
users in relation to a particular concept when a user needs suggestions about a
certain topic (e.g. cultural events) and to a possibly completely different set when
the user is interested in another topic (e.g. sport events). Our approach first uses
a variation of the spreading activation technique to propagate the users’ interests
on their corresponding ontology-based user models, and then computes the
concept-biased cosine similarity (CBC similarity), a variation of the cosine similarity
designed for privileging a particular concept in an ontology. CBC similarity
can be used in many adaptation techniques to improve suggestions to users. We
include an empirical evaluation on a collaborative filtering algorithm, showing
that the CBC similarity works better than the cosine similarity when dealing with
sparse data.
Tipologia CRIS:
04A-Conference paper in volume
Elenco autori:
F. Osborne; S. Likavec; F. Cena
Link alla scheda completa:
Titolo del libro:
Lecture Notes in Computer Science
Pubblicato in: