A Classification-Based Approach to Semi-Supervised Clustering with Pairwise Constraints
This addresses the problem of improving clustering accuracy with limited supervision for data analysis applications, but it is incremental as it builds on existing classification techniques.
The paper tackles semi-supervised clustering with pairwise constraints by decomposing it into two classification tasks, resulting in a method that achieves high performance across various datasets.
In this paper, we introduce a neural network framework for semi-supervised clustering (SSC) with pairwise (must-link or cannot-link) constraints. In contrast to existing approaches, we decompose SSC into two simpler classification tasks/stages: the first stage uses a pair of Siamese neural networks to label the unlabeled pairs of points as must-link or cannot-link; the second stage uses the fully pairwise-labeled dataset produced by the first stage in a supervised neural-network-based clustering method. The proposed approach, S3C2 (Semi-Supervised Siamese Classifiers for Clustering), is motivated by the observation that binary classification (such as assigning pairwise relations) is usually easier than multi-class clustering with partial supervision. On the other hand, being classification-based, our method solves only well-defined classification problems, rather than less well specified clustering tasks. Extensive experiments on various datasets demonstrate the high performance of the proposed method.