Meta-Learning Acquisition Functions for Transfer Learning in Bayesian Optimization

Published: Apr 30, 2020
Abstract
Transferring knowledge across tasks to improve data-efficiency is one of the open key challenges in the area of global optimization algorithms. Readily available algorithms are typically designed to be universal optimizers and, thus, often suboptimal for specific tasks. We propose a novel transfer learning method to obtain customized optimizers within the well-established framework of Bayesian optimization, allowing our algorithm to utilize the...
Paper Details
Title
Meta-Learning Acquisition Functions for Transfer Learning in Bayesian Optimization
Published Date
Apr 30, 2020
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