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A Generalized Scalarization Method for Evolutionary Multi-Objective Optimization

Abstract

The decomposition-based multi-objective evolutionary algorithm (MOEA/D) transforms a multi-objective optimization problem (MOP) into a set of single-objective subproblems for collaborative optimization. Mismatches between subproblems and solutions can lead to severe performance degradation of MOEA/D. Most existing mismatch coping strategies only work when the LL_{\infty} scalarization is used. A mismatch coping strategy that can use any LpL_{p} scalarization, even when facing MOPs with non-convex Pareto fronts, is of great significance for MOEA/D. This paper uses the global replacement (GR) as the backbone. We analyze how GR can no longer avoid mismatches when LL_{\infty} is replaced by another LpL_{p} with p[1,)p\in [1,\infty), and find that the LpL_p-based (1p<1\leq p<\infty) subproblems having inconsistently large preference regions. When pp is set to a small value, some middle subproblems have very small preference regions so that their direction vectors cannot pass through their corresponding preference regions. Therefore, we propose a generalized LpL_p (GLpL_p) scalarization to ensure that the subproblem's direction vector passes through its preference region. Our theoretical analysis shows that GR can always avoid mismatches when using the GLpL_p scalarization for any p1p\geq 1. The experimental studies on various MOPs conform to the theoretical analysis.

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