Paper ID: 2408.01861

Batch Active Learning in Gaussian Process Regression using Derivatives

Hon Sum Alec Yu, Christoph Zimmer, Duy Nguyen-Tuong

We investigate the use of derivative information for Batch Active Learning in Gaussian Process regression models. The proposed approach employs the predictive covariance matrix for selection of data batches to exploit full correlation of samples. We theoretically analyse our proposed algorithm taking different optimality criteria into consideration and provide empirical comparisons highlighting the advantage of incorporating derivatives information. Our results show the effectiveness of our approach across diverse applications.

Submitted: Aug 3, 2024