Designing Optimal Behavioral Experiments Using Machine Learning
Simon Valentin, Steven Kleinegesse, Neil R. Bramley, Peggy Seri\`es,, Michael U. Gutmann, Christopher G. Lucas

TL;DR
This paper introduces a machine learning-based approach using Bayesian optimal experimental design to create more informative experiments for testing computational models of human behavior, demonstrated through a case study on decision-making.
Contribution
It presents a tutorial on applying BOED with machine learning to design optimal experiments for any model that can be simulated, improving model comparison and behavioral characterization.
Findings
Optimal designs outperform traditional methods in model selection efficiency.
The approach enables quick evaluation of models against experimental data.
Validated with simulations and real-world experiments.
Abstract
Computational models are powerful tools for understanding human cognition and behavior. They let us express our theories clearly and precisely, and offer predictions that can be subtle and often counter-intuitive. However, this same richness and ability to surprise means our scientific intuitions and traditional tools are ill-suited to designing experiments to test and compare these models. To avoid these pitfalls and realize the full potential of computational modeling, we require tools to design experiments that provide clear answers about what models explain human behavior and the auxiliary assumptions those models must make. Bayesian optimal experimental design (BOED) formalizes the search for optimal experimental designs by identifying experiments that are expected to yield informative data. In this work, we provide a tutorial on leveraging recent advances in BOED and machine…
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Taxonomy
TopicsMachine Learning and Data Classification · Advanced Bandit Algorithms Research · Advanced Multi-Objective Optimization Algorithms
MethodsAttentive Walk-Aggregating Graph Neural Network · Test
