Ensuring smoothly navigable approximation sets by Bezier curve parameterizations in evolutionary bi-objective optimization -- applied to brachytherapy treatment planning for prostate cancer
S. C. Maree, T. Alderliesten, P. A. N. Bosman

TL;DR
This paper introduces BezEA, an evolutionary algorithm that uses Bezier curve parameterizations to generate smooth, navigable approximation sets in decision space, improving decision-making in bi-objective optimization, exemplified in prostate cancer brachytherapy planning.
Contribution
The paper presents a novel approach to enforce smoothness in approximation sets using Bezier curves and UHV reformulation, enhancing navigability in bi-objective optimization.
Findings
BezEA produces high-quality, smooth approximation sets.
BezEA can outperform traditional domination-based algorithms.
Smooth trajectories facilitate better decision-maker navigation.
Abstract
The aim of bi-objective optimization is to obtain an approximation set of (near) Pareto optimal solutions. A decision maker then navigates this set to select a final desired solution, often using a visualization of the approximation front. The front provides a navigational ordering of solutions to traverse, but this ordering does not necessarily map to a smooth trajectory through decision space. This forces the decision maker to inspect the decision variables of each solution individually, potentially making navigation of the approximation set unintuitive. In this work, we aim to improve approximation set navigability by enforcing a form of smoothness or continuity between solutions in terms of their decision variables. Imposing smoothness as a restriction upon common domination-based multi-objective evolutionary algorithms is not straightforward. Therefore, we use the recently…
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Taxonomy
TopicsAdvanced Multi-Objective Optimization Algorithms · Advanced Numerical Analysis Techniques · Scheduling and Timetabling Solutions
