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Autori principali: Park, Jong-Ik, Chaudhari, Shreyas, Pranav, Srinivasa, Joe-Wong, Carlee, Moura, José M. F.
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2512.22467
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author Park, Jong-Ik
Chaudhari, Shreyas
Pranav, Srinivasa
Joe-Wong, Carlee
Moura, José M. F.
author_facet Park, Jong-Ik
Chaudhari, Shreyas
Pranav, Srinivasa
Joe-Wong, Carlee
Moura, José M. F.
contents In many deployed systems (multilingual ASR, cross-hospital imaging, region-specific perception), multiple pretrained specialist models coexist. Yet, new target domains often require domain expansion: a generalized model that performs well beyond any single specialist's domain. Given a new target domain, existing methods obtain a single strong initialization prior for the model parameters by blending expert models to initialize a target model. However, heuristic blending -- using mixing coefficients based on data size or proxy metrics -- often yields lower target-domain test accuracy, and learning these coefficients on the target domain's loss function typically requires computationally-expensive full backpropagation through a neural network. We propose GLUE, Gradient-free Learning to Unify Experts, which initializes the target model as a convex combination of fixed experts and learns the mixture coefficients of this combination via gradient-free two-point SPSA (simultaneous perturbation stochastic approximation) updates, requiring only two forward passes per step. Across experiments on three datasets and three network architectures, GLUE produces model parameter priors that can be fine-tuned to outperform baselines. GLUE improves test accuracy by up to 8.5% over data-size weighting and by up to 9.1% over proxy-metric selection. GLUE either outperforms backpropagation-based full-gradient mixing or matches its performance within 1.4%.
format Preprint
id arxiv_https___arxiv_org_abs_2512_22467
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle GLUE: Gradient-free Learning to Unify Experts
Park, Jong-Ik
Chaudhari, Shreyas
Pranav, Srinivasa
Joe-Wong, Carlee
Moura, José M. F.
Machine Learning
In many deployed systems (multilingual ASR, cross-hospital imaging, region-specific perception), multiple pretrained specialist models coexist. Yet, new target domains often require domain expansion: a generalized model that performs well beyond any single specialist's domain. Given a new target domain, existing methods obtain a single strong initialization prior for the model parameters by blending expert models to initialize a target model. However, heuristic blending -- using mixing coefficients based on data size or proxy metrics -- often yields lower target-domain test accuracy, and learning these coefficients on the target domain's loss function typically requires computationally-expensive full backpropagation through a neural network. We propose GLUE, Gradient-free Learning to Unify Experts, which initializes the target model as a convex combination of fixed experts and learns the mixture coefficients of this combination via gradient-free two-point SPSA (simultaneous perturbation stochastic approximation) updates, requiring only two forward passes per step. Across experiments on three datasets and three network architectures, GLUE produces model parameter priors that can be fine-tuned to outperform baselines. GLUE improves test accuracy by up to 8.5% over data-size weighting and by up to 9.1% over proxy-metric selection. GLUE either outperforms backpropagation-based full-gradient mixing or matches its performance within 1.4%.
title GLUE: Gradient-free Learning to Unify Experts
topic Machine Learning
url https://arxiv.org/abs/2512.22467