Abstract (EN):
In this paper we tackle the problem of automatically assigning
tags to music artists in the Web 2.0 radio Last.fm.
We present a proof-of-concept method that, using a reference
list of Last.fm user-defined tags, searches Wikipedia
abstracts of music artists (only those written in English language)
for new tag candidates. Tag candidates are ranked
using an heuristic weighting function. We evaluate the top
ranked tag suggestion for over 27,000 artists by (i) performing
automatic evaluation using diachronic Last.fm data, and
(ii) by performing manual evaluation on a sample of artists.
Our method shows promising results regarding the accurate
propagation of artist tags: the top ranked suggestion is relevant
for more than 50% of the artists. More specifically, the
method shows good performance for artists with no previous
user-defined tags, confirming that it can be worthwhile
to investigate further in the context of the “cold start problem”
typical of social tagging system. After analysing and
discussing errors, we present several directions for future improvement
of our method.
Idioma:
Português
Tipo (Avaliação Docente):
Científica
Contacto:
eco@fe.u.pt