AI RESEARCH
When to Transfer: Adaptive Source Selection for Positive Transfer in Linear Models
arXiv CS.LG
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ArXi:2510.16986v2 Announce Type: replace-cross In many business settings, task-specific labeled data are scarce or costly to obtain, limiting supervised learning on a target task. A classical response is transfer learning (TL). Many TL works study how to transfer information from related sources. We study, for linear regression and classification, when to transfer via sample sharing: in a multi-source setting, we greedily decide from which sources and how many samples to incorporate into the target dataset.