Proxy-informed Bayesian transfer learning with unknown sources
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. Bayesian transfer learning is a principled paradigm for specifying this knowledge, and refining it on the...
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Zusammenfassung: | 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. Bayesian transfer learning is a principled
paradigm for specifying this knowledge, and refining it on the basis of data
from the source (training) and target (prediction) tasks. We address the
challenging transfer learning setting where the learner (i) cannot fine-tune in
the target task, and (ii) does not know which source data points correspond to
the same task (i.e., the data sources are unknown). We propose a proxy-informed
robust method for probabilistic transfer learning (PROMPT), which provides a
posterior predictive estimate tailored to the structure of the target task,
without requiring the learner have access to any outcome information from the
target task. Instead, PROMPT relies on the availability of proxy information.
PROMPT uses the same proxy information for two purposes: (i) estimation of
effects specific to the target task, and (ii) construction of a robust
reweighting of the source data for estimation of effects that transfer between
tasks. We provide theoretical results on the effect of this reweighting on the
risk of negative transfer, and demonstrate application of PROMPT in two
synthetic settings. |
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DOI: | 10.48550/arxiv.2411.03263 |