LGMLMay 23, 2024

Heteroscedastic Preferential Bayesian Optimization with Informative Noise Distributions

arXiv:2405.14657v11 citationsh-index: 4
Originality Incremental advance
AI Analysis

This addresses the challenge of accurately modeling varying human uncertainty in preference learning, particularly for experts with partial knowledge, though it is an incremental advancement in the field.

The paper tackled the problem of human aleatoric uncertainty in preferential Bayesian optimization by proposing a heteroscedastic noise model based on anchors, which improved performance over homoscedastic methods in empirical evaluations.

Preferential Bayesian optimization (PBO) is a sample-efficient framework for learning human preferences between candidate designs. PBO classically relies on homoscedastic noise models to represent human aleatoric uncertainty. Yet, such noise fails to accurately capture the varying levels of human aleatoric uncertainty, particularly when the user possesses partial knowledge among different pairs of candidates. For instance, a chemist with solid expertise in glucose-related molecules may easily compare two compounds from that family while struggling to compare alcohol-related molecules. Currently, PBO overlooks this uncertainty during the search for a new candidate through the maximization of the acquisition function, consequently underestimating the risk associated with human uncertainty. To address this issue, we propose a heteroscedastic noise model to capture human aleatoric uncertainty. This model adaptively assigns noise levels based on the distance of a specific input to a predefined set of reliable inputs known as anchors provided by the human. Anchors encapsulate partial knowledge and offer insight into the comparative difficulty of evaluating different candidate pairs. Such a model can be seamlessly integrated into the acquisition function, thus leading to candidate design pairs that elegantly trade informativeness and ease of comparison for the human expert. We perform an extensive empirical evaluation of the proposed approach, demonstrating a consistent improvement over homoscedastic PBO.

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