Tagged Documents Co-Clustering
Abstract
Tags are short sequences of words allowing to describe textual and non-texual resources such as as music, image or book. Tags could be used by machine information retrieval systems to access quickly a document. These tags can be used to build recommender systems to suggest similar items to a user. However, the number of tags per document is limited, and often distributed according to a Zipf law. In this paper, we propose a methodology to cluster tags into conceptual groups. Data are preprocessed to remove power-law effects and enhance the context of low-frequency words. Then, a hierarchical agglomerative co-clustering algorithm is proposed to group together the most related tags into clusters. The capabilities were evaluated on a sparse synthetic dataset and a real-world tag collection associated with scientific papers. The task being unsupervised, we propose some stopping criterion for selectecting an optimal partitioning.
Cite
@article{arxiv.2110.11079,
title = {Tagged Documents Co-Clustering},
author = {Gaëlle Candel and David Naccache},
journal= {arXiv preprint arXiv:2110.11079},
year = {2021}
}
Comments
15 pages, submitted and accepted to the 2021 World Congress in Computer Science, Computer Engineering, & Applied Computing (CSCE'21) - track ICAI21