Recent Progress of MOEA/D


Multi-objective Optimization Evolutionary Algorithms (MOEA/D) have been a widely used and studied Evolutionary Multi-objective Optimization (EMO) algorithmic framework over the last few years. MOEA/D borrows ideas from traditional optimization. It decomposes a multi-objective problem into a number of sub-tasks, and then solves them in a collaborative manner. MOEA/D provides a very natural bridge between multi-objective evolutionary algorithms and traditional decomposition methods. In this talk, Professor Zhang will explain the basic ideas behind MOEA/D and some recent developments. He will also outline some possible research issues in multi-objective evolutionary computation.

Document Details

Reference

W_Dec_17_OWG_2

Authors

Zhang. Q

Language

English

Type

Presentation

Date

2017-12-05

Organisations

City University

Region

Global

 Free Download



This site uses cookies that enable us to make improvements, provide relevant content, and for analytics purposes. For more details, see our Cookie Policy. By clicking Accept, you consent to our use of cookies.