Improving constrained clustering with active query selection
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摘要
In this article, we address the problem of automatic constraint selection to improve the performance of constraint-based clustering algorithms. To this aim we propose a novel active learning algorithm that relies on a k-nearest neighbors graph and a new constraint utility function to generate queries to the human expert. This mechanism is paired with propagation and refinement processes that limit the number of constraint candidates and introduce a minimal diversity in the proposed constraints. Existing constraint selection heuristics are based on a random selection or on a min–max criterion and thus are either inefficient or more adapted to spherical clusters. Contrary to these approaches, our method is designed to be beneficial for all constraint-based clustering algorithms. Comparative experiments conducted on real datasets and with two distinct representative constraint-based clustering algorithms show that our approach significantly improves clustering quality while minimizing the number of human expert solicitations.
论文关键词:Active semi-supervised clustering,Pairwise constraints,k-Nearest neighbors graph
论文评审过程:Received 14 February 2011, Revised 14 September 2011, Accepted 5 October 2011, Available online 9 November 2011.
论文官网地址:https://doi.org/10.1016/j.patcog.2011.10.016