Ensuring smoothly navigable approximation sets by Bezier curve
parameterizations in evolutionary bi-objective optimization -- applied to
brachytherapy treatment planning for prostate cancer
- URL: http://arxiv.org/abs/2006.06449v1
- Date: Thu, 11 Jun 2020 13:57:33 GMT
- Title: Ensuring smoothly navigable approximation sets by Bezier curve
parameterizations in evolutionary bi-objective optimization -- applied to
brachytherapy treatment planning for prostate cancer
- Authors: S. C. Maree, T. Alderliesten, P. A. N. Bosman
- Abstract summary: We study the case of parameterizing approximation sets as smooth Bezier curves in decision space.
We show that high-quality approximation sets can be obtained with BezEA, sometimes even outperforming the domination- and UHV-based algorithms.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- 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 introduced
uncrowded hypervolume (UHV) to reformulate the multi-objective optimization
problem as a single-objective problem in which parameterized approximation sets
are directly optimized. We study here the case of parameterizing approximation
sets as smooth Bezier curves in decision space. We approach the resulting
single-objective problem with the gene-pool optimal mixing evolutionary
algorithm (GOMEA), and we call the resulting algorithm BezEA. We analyze the
behavior of BezEA and compare it to optimization of the UHV with GOMEA as well
as the domination-based multi-objective GOMEA. We show that high-quality
approximation sets can be obtained with BezEA, sometimes even outperforming the
domination- and UHV-based algorithms, while smoothness of the navigation
trajectory through decision space is guaranteed.
Related papers
- Learning Multiple Initial Solutions to Optimization Problems [52.9380464408756]
Sequentially solving similar optimization problems under strict runtime constraints is essential for many applications.
We propose learning to predict emphmultiple diverse initial solutions given parameters that define the problem instance.
We find significant and consistent improvement with our method across all evaluation settings and demonstrate that it efficiently scales with the number of initial solutions required.
arXiv Detail & Related papers (2024-11-04T15:17:19Z) - Preference-Optimized Pareto Set Learning for Blackbox Optimization [1.9628841617148691]
No single solution exists that can optimize all the objectives simultaneously.
In a typical MOO problem, the goal is to find a set of optimum solutions (Pareto set) that trades off the preferences among objectives.
Our formulation leads to a bilevel optimization problem that can be solved by e.g. differentiable cross-entropy methods.
arXiv Detail & Related papers (2024-08-19T13:23:07Z) - Adaptive Preference Scaling for Reinforcement Learning with Human Feedback [103.36048042664768]
Reinforcement learning from human feedback (RLHF) is a prevalent approach to align AI systems with human values.
We propose a novel adaptive preference loss, underpinned by distributionally robust optimization (DRO)
Our method is versatile and can be readily adapted to various preference optimization frameworks.
arXiv Detail & Related papers (2024-06-04T20:33:22Z) - End-to-End Learning for Fair Multiobjective Optimization Under
Uncertainty [55.04219793298687]
The Predict-Then-Forecast (PtO) paradigm in machine learning aims to maximize downstream decision quality.
This paper extends the PtO methodology to optimization problems with nondifferentiable Ordered Weighted Averaging (OWA) objectives.
It shows how optimization of OWA functions can be effectively integrated with parametric prediction for fair and robust optimization under uncertainty.
arXiv Detail & Related papers (2024-02-12T16:33:35Z) - Learning Proximal Operators to Discover Multiple Optima [66.98045013486794]
We present an end-to-end method to learn the proximal operator across non-family problems.
We show that for weakly-ized objectives and under mild conditions, the method converges globally.
arXiv Detail & Related papers (2022-01-28T05:53:28Z) - A novel multiobjective evolutionary algorithm based on decomposition and
multi-reference points strategy [14.102326122777475]
Multiobjective evolutionary algorithm based on decomposition (MOEA/D) has been regarded as a significantly promising approach for solving multiobjective optimization problems (MOPs)
We propose an improved MOEA/D algorithm by virtue of the well-known Pascoletti-Serafini scalarization method and a new strategy of multi-reference points.
arXiv Detail & Related papers (2021-10-27T02:07:08Z) - An Online Prediction Approach Based on Incremental Support Vector
Machine for Dynamic Multiobjective Optimization [19.336520152294213]
We propose a novel prediction algorithm based on incremental support vector machine (ISVM)
We treat the solving of dynamic multiobjective optimization problems (DMOPs) as an online learning process.
The proposed algorithm can effectively tackle dynamic multiobjective optimization problems.
arXiv Detail & Related papers (2021-02-24T08:51:23Z) - Follow the bisector: a simple method for multi-objective optimization [65.83318707752385]
We consider optimization problems, where multiple differentiable losses have to be minimized.
The presented method computes descent direction in every iteration to guarantee equal relative decrease of objective functions.
arXiv Detail & Related papers (2020-07-14T09:50:33Z) - Convergence of adaptive algorithms for weakly convex constrained
optimization [59.36386973876765]
We prove the $mathcaltilde O(t-1/4)$ rate of convergence for the norm of the gradient of Moreau envelope.
Our analysis works with mini-batch size of $1$, constant first and second order moment parameters, and possibly smooth optimization domains.
arXiv Detail & Related papers (2020-06-11T17:43:19Z) - sKPNSGA-II: Knee point based MOEA with self-adaptive angle for Mission
Planning Problems [2.191505742658975]
Some problems have many objectives which lead to a large number of non-dominated solutions.
This paper presents a new algorithm that has been designed to obtain the most significant solutions.
This new algorithm has been applied to the real world application in Unmanned Air Vehicle (UAV) Mission Planning Problem.
arXiv Detail & Related papers (2020-02-20T17:07:08Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.