Uncertainty quantification and exploration-exploitation trade-off in humans
Antonio Candelieri, Andrea Ponti, Francesco Archetti

TL;DR
This paper presents a theoretical framework analyzing how humans balance exploration and exploitation under uncertainty, using Pareto rationality within Gaussian Process-based Bayesian Optimization, highlighting the role of uncertainty quantification.
Contribution
It introduces a Pareto rationality model for human decision-making in exploration-exploitation trade-offs, incorporating uncertainty quantification measures within Bayesian Optimization.
Findings
Analytical framework characterizes deviations from rationality.
Selected uncertainty measure aligns with Pareto rationality.
Insights into how uncertainty influences exploration behavior.
Abstract
The main objective of this paper is to outline a theoretical framework to analyse how humans' decision-making strategies under uncertainty manage the trade-off between information gathering (exploration) and reward seeking (exploitation). A key observation, motivating this line of research, is the awareness that human learners are amazingly fast and effective at adapting to unfamiliar environments and incorporating upcoming knowledge: this is an intriguing behaviour for cognitive sciences as well as an important challenge for Machine Learning. The target problem considered is active learning in a black-box optimization task and more specifically how the exploration/exploitation dilemma can be modelled within Gaussian Process based Bayesian Optimization framework, which is in turn based on uncertainty quantification. The main contribution is to analyse humans' decisions with respect to…
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Taxonomy
MethodsGaussian Process
