Cooperative Multi-Objective Bayesian Design Optimization

Author:

Mo George1ORCID,Dudley John1ORCID,Chan Liwei2ORCID,Liao Yi-Chi3ORCID,Oulasvirta Antti3ORCID,Kristensson Per Ola1ORCID

Affiliation:

1. University of Cambridge, Cambridge, United Kingdom

2. National Yang Ming Chiao Tung University, Hsinchu, Taiwan

3. Aalto University, Aalto, Finland

Abstract

Computational methods can potentially facilitate user interface design by complementing designer intuition, prior experience, and personal preference. Framing a user interface design task as a multi-objective optimization problem can help with operationalizing and structuring this process at the expense of designer agency and experience. While offering a systematic means of exploring the design space, the optimization process cannot typically leverage the designer’s expertise in quickly identifying that a given “bad” design is not worth evaluating. We here examine a cooperative approach where both the designer and optimization process share a common goal and work in partnership by establishing a shared understanding of the design space. We tackle the research question: How can we foster cooperation between the designer and a systematic optimization process in order to best leverage their combined strength? We introduce and present an evaluation of a cooperative approach that allows the user to express their design insight and work in concert with a multi-objective design process. We find that the cooperative approach successfully encourages designers to explore more widely in the design space than when they are working without assistance from an optimization process. The cooperative approach also delivers design outcomes that are comparable to an optimization process run without any direct designer input but achieves this with greater efficiency and substantially higher designer engagement levels.

Funder

Research Council of Finland (flagship program: Finnish Center for Artificial Intelligence

subjective functions

National Science and Technology Council of Taiwan

EPSRC

Publisher

Association for Computing Machinery (ACM)

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