Transfer Learning and Invariance for Bayesian Optimization
Project
Transfer Learning and Invariance for Bayesian Optimization
Principal Investigator
Oracle Principal Investigator
Michael Wick, Principal Research Scientist
Summary
Bayesian Optimization (BO) is used to perform hyperparameter optimization for Machine Learning models. Hyperparameter optimization can result in significant improvements to model performance, but it is computationally expensive, especially for large neural models.
This research is aimed at determining whether Bayesian Optimizations can be transferred to newer models. For example, for a given task and model, can we transfer from a Bayesian Optimization on low quality data to one on high quality data? Can we transfer from a Bayesian Optimization on a small model to one with more parameters?