Decomposable Problems, Niching, and Scalability of Multiobjective Estimation of Distribution Algorithms

02/12/2005
by   Kumara Sastry, et al.
0

The paper analyzes the scalability of multiobjective estimation of distribution algorithms (MOEDAs) on a class of boundedly-difficult additively-separable multiobjective optimization problems. The paper illustrates that even if the linkage is correctly identified, massive multimodality of the search problems can easily overwhelm the nicher and lead to exponential scale-up. Facetwise models are subsequently used to propose a growth rate of the number of differing substructures between the two objectives to avoid the niching method from being overwhelmed and lead to polynomial scalability of MOEDAs.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/05/2021

Different Estimation Procedures For Topp Leone Exponential And Topp Leone q Exponential Distruibution

Topp Leone q Exponential Distruibution is a continuous model distributio...
research
10/17/2020

Against Scale: Provocations and Resistances to Scale Thinking

At the heart of what drives the bulk of innovation and activity in Silic...
research
05/18/2004

Let's Get Ready to Rumble: Crossover Versus Mutation Head to Head

This paper analyzes the relative advantages between crossover and mutati...
research
07/13/2022

Quantum Metropolis Solver: A Quantum Walks Approach to Optimization Problems

The efficient resolution of optimization problems is one of the key issu...
research
05/16/2019

Non-Asymptotic Inference in a Class of Optimization Problems

This paper describes a method for carrying out non-asymptotic inference ...
research
09/20/2019

From feature selection to continues optimization

Metaheuristic algorithms (MAs) have seen unprecedented growth thanks to ...
research
09/20/2019

From feature selection to continuous optimization

Metaheuristic algorithms (MAs) have seen unprecedented growth thanks to ...

Please sign up or login with your details

Forgot password? Click here to reset