Abstract

Generalization outside the scope of one’s training data requires leveraging prior knowledge about the effects that transfer, and the effects that don’t, between different data sources. Transfer learning is a framework for specifying and refining this knowledge about sets of source (training) and target (prediction) data. A challenging open problem is addressing the empirical phenomenon of negative transfer, whereby the transfer learner performs worse on the target data after taking the source data into account than before. We first introduce a Bayesian perspective on negative transfer, and then a method to address it. The key insight from our formulation is that negative transfer can stem from misspecified prior information about non-transferable causes of the source data. Our pro-posed method, proxy-informed robust method for probabilistic transfer learning (PROMPT), does not require prior knowledge of the source data (the data sources may be “unknown”). PROMPT is thus applicable when differences between tasks are unobserved, such as in the presence of latent confounders. Moreover, the learner need not have access to observations in the target task (may not have the ability to “fine-tune”), and instead makes use of proxy (indirect) information. Our theoretical results show that the threat of negative transfer does not depend on the informativeness of the proxy information, highlighting the usefulness of PROMPT in cases where only noisy indirect information, such as human feedback, is available.

Original languageEnglish
Pages (from-to)3958-3967
Number of pages10
JournalProceedings of Machine Learning Research
Volume286
Publication statusPublished - 2025
MoE publication typeA4 Conference publication
EventConference on Uncertainty in Artificial Intelligence - Rio de Janeiro, Brazil
Duration: 21 Jul 202525 Jul 2025
Conference number: 41

Funding

This work was supportedby the Research Council of Finland Flagship programme: Finnish Center for Artificial Intelligence FCAI and decisions 358958, 359567. SJS and SK were supported by the UKRI Turing AI World-Leading Researcher Fellowship, [EP/W002973/1].

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