A Three-Stage Bayesian Transfer Learning Framework to Improve Predictions in Data-Scarce Domains
Aidan Furlong, Robert Salko, Xingang Zhao, and Xu Wu

TL;DR
This paper introduces a three-stage Bayesian transfer learning framework that enhances prediction accuracy in data-scarce domains by combining feature extraction, domain adaptation, and uncertainty quantification.
Contribution
It presents a novel staged B-DANN method that integrates parameter transfer, domain-invariant features, and Bayesian neural networks for improved transfer learning.
Findings
Outperforms standard transfer techniques on synthetic benchmarks.
Improves predictive accuracy in heat flux prediction for nuclear engineering.
Provides calibrated uncertainty estimates for model predictions.
Abstract
The use of ML in engineering has grown steadily to support a wide array of applications. Among these methods, deep neural networks have been widely adopted due to their performance and accessibility, but they require large, high-quality datasets. Experimental data are often sparse, noisy, or insufficient to build resilient data-driven models. Transfer learning, which leverages relevant data-abundant source domains to assist learning in data-scarce target domains, has shown efficacy. Parameter transfer, where pretrained weights are reused, is common but degrades under large domain shifts. Domain-adversarial neural networks (DANNs) help address this issue by learning domain-invariant representations, thereby improving transfer under greater domain shifts in a semi-supervised setting. However, DANNs can be unstable during training and lack a native means for uncertainty quantification.…
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