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arxiv: 1712.02902 · v1 · pith:J5WEX36Anew · submitted 2017-12-08 · 📊 stat.ML

Multiple Adaptive Bayesian Linear Regression for Scalable Bayesian Optimization with Warm Start

classification 📊 stat.ML
keywords bayesianlinearmultipleoptimizationregressionadaptivecomplexityevaluations
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Bayesian optimization (BO) is a model-based approach for gradient-free black-box function optimization. Typically, BO is powered by a Gaussian process (GP), whose algorithmic complexity is cubic in the number of evaluations. Hence, GP-based BO cannot leverage large amounts of past or related function evaluations, for example, to warm start the BO procedure. We develop a multiple adaptive Bayesian linear regression model as a scalable alternative whose complexity is linear in the number of observations. The multiple Bayesian linear regression models are coupled through a shared feedforward neural network, which learns a joint representation and transfers knowledge across machine learning problems.

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