Search Acceleration of Evolutionary Multi-Objective Optimization Using an Estimated Convergence Point

Volume: 7, Issue: 2, Pages: 129 - 129
Published: Jan 28, 2019
Abstract
We propose a method to accelerate evolutionary multi-objective optimization (EMO) search using an estimated convergence point. Pareto improvement from the last generation to the current generation supports information of promising Pareto solution areas in both an objective space and a parameter space. We use this information to construct a set of moving vectors and estimate a non-dominated Pareto point from these moving vectors. In this work, we...
Paper Details
Title
Search Acceleration of Evolutionary Multi-Objective Optimization Using an Estimated Convergence Point
Published Date
Jan 28, 2019
Volume
7
Issue
2
Pages
129 - 129
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