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Data Skeleton Learning: Scalable Active Clustering with Sparse Graph Structures

Published: September 10, 2025 | arXiv ID: 2509.08530v1

By: Wen-Bo Xie , Xun Fu , Bin Chen and more

Potential Business Impact:

Makes computers group data better with less help.

Business Areas:
Big Data Data and Analytics

In this work, we focus on the efficiency and scalability of pairwise constraint-based active clustering, crucial for processing large-scale data in applications such as data mining, knowledge annotation, and AI model pre-training. Our goals are threefold: (1) to reduce computational costs for iterative clustering updates; (2) to enhance the impact of user-provided constraints to minimize annotation requirements for precise clustering; and (3) to cut down memory usage in practical deployments. To achieve these aims, we propose a graph-based active clustering algorithm that utilizes two sparse graphs: one for representing relationships between data (our proposed data skeleton) and another for updating this data skeleton. These two graphs work in concert, enabling the refinement of connected subgraphs within the data skeleton to create nested clusters. Our empirical analysis confirms that the proposed algorithm consistently facilitates more accurate clustering with dramatically less input of user-provided constraints, and outperforms its counterparts in terms of computational performance and scalability, while maintaining robustness across various distance metrics.

Page Count
36 pages

Category
Computer Science:
Machine Learning (CS)