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Title Applying Community Detection Methods to Cluster Tags in Multimedia Search Results
Authors Teresa Bracamonte, Aidan Hogan, Bárbara Poblete
Publication date 2016
Abstract Multimedia searches often return items that can be
categorized into several "topics", allowing users to disambiguate
and explore answers more efficiently. In this paper we investigate
methods for clustering tags associated with multimedia search
results, where each resulting cluster represents a topic computed
online for that particular search. We specifically investigate the
applicability of community detection algorithms to the tag graph
induced from the search results. This type of approach allows us
to exploit tag similarity and create ad-hoc topics for each search,
without specify the number and sizes of clusters a priori.
In this work we experiment with well-known algorithms in this
field and propose two new methods based on adaptive island cuts.
Using the Social20 dataset (a collection gathered from Flickr) we
evaluate several community detection methods, with quantitative
analysis of each algorithm in terms of the relative number of
communities (which we interpret as topics) that they produce and
their sizes, as well as qualitative analysis of topics per human
judgement. Our evaluation shows that it is possible to extract
ad-hoc topics for search results using community detection,
but that different community detection methods produce very
different results. In particular, our proposed methods produce
more compact and less noisy clusters as well as less relative recall
when compared to methods that produce much larger clusters.
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Pages paper 96
Conference name IEEE International Symposium on Multimedia
Publisher IEEE Computer Society Press (Los Alamitos, CA, USA)
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