AI RESEARCH

Adaptive Transfer Clustering: A Unified Framework

arXiv CS.LG

ArXi:2410.21263v4 Announce Type: replace-cross We propose a general transfer learning framework for clustering given a main dataset and an auxiliary one about the same subjects. The two datasets may reflect similar but different latent grouping structures of the subjects. We propose an adaptive transfer clustering (ATC) algorithm that automatically leverages the commonality in the presence of unknown discrepancy, by optimizing an estimated bias-variance decomposition.