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arxiv: 1212.0087 · v1 · pith:7BBN6DRWnew · submitted 2012-12-01 · 💻 cs.SI

A scalable mining of frequent quadratic concepts in d-folksonomies

classification 💻 cs.SI
keywords miningtimedimensionfolksonomiesalgorithmconsiderd-folksonomiesfolksonomy
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Folksonomy mining is grasping the interest of web 2.0 community since it represents the core data of social resource sharing systems. However, a scrutiny of the related works interested in mining folksonomies unveils that the time stamp dimension has not been considered. For example, the wealthy number of works dedicated to mining tri-concepts from folksonomies did not take into account time dimension. In this paper, we will consider a folksonomy commonly composed of triples <users, tags, resources> and we shall consider the time as a new dimension. We motivate our approach by highlighting the battery of potential applications. Then, we present the foundations for mining quadri-concepts, provide a formal definition of the problem and introduce a new efficient algorithm, called QUADRICONS for its solution to allow for mining folksonomies in time, i.e., d-folksonomies. We also introduce a new closure operator that splits the induced search space into equivalence classes whose smallest elements are the quadri-minimal generators. Carried out experiments on large-scale real-world datasets highlight good performances of our algorithm.

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