Experimental Design
Experimental design focuses on optimizing the selection and execution of experiments to maximize information gain while minimizing resource consumption. Current research emphasizes Bayesian approaches, often incorporating machine learning models like neural networks (including normalizing flows) and Gaussian processes, and algorithms such as sequential Monte Carlo and Bayesian optimization, to tackle complex, high-dimensional problems across diverse fields. This improved efficiency in experimental design has significant implications for accelerating scientific discovery and optimizing resource allocation in areas ranging from materials science and drug discovery to robotics and quantum computing.
Papers
Synthetic Principal Component Design: Fast Covariate Balancing with Synthetic Controls
Yiping Lu, Jiajin Li, Lexing Ying, Jose Blanchet
Distinguishing representational geometries with controversial stimuli: Bayesian experimental design and its application to face dissimilarity judgments
Tal Golan, Wenxuan Guo, Heiko H. Schütt, Nikolaus Kriegeskorte