Evolutionary Multitasking for Multiobjective Continuous Optimization: Benchmark Problems, Performance Metrics and Baseline Results

06/08/2017
by   Yuan Yuan, et al.
0

In this report, we suggest nine test problems for multi-task multi-objective optimization (MTMOO), each of which consists of two multiobjective optimization tasks that need to be solved simultaneously. The relationship between tasks varies between different test problems, which would be helpful to have a comprehensive evaluation of the MO-MFO algorithms. It is expected that the proposed test problems will germinate progress the field of the MTMOO research.

READ FULL TEXT

page 8

page 9

page 10

research
06/12/2017

Evolutionary Multitasking for Single-objective Continuous Optimization: Benchmark Problems, Performance Metric, and Baseline Results

In this report, we suggest nine test problems for multi-task single-obje...
research
12/15/2018

Multi-Tasking Evolutionary Algorithm (MTEA) for Single-Objective Continuous Optimization

Multi-task learning uses auxiliary data or knowledge from relevant tasks...
research
01/04/2017

PlatEMO: A MATLAB Platform for Evolutionary Multi-Objective Optimization

Over the last three decades, a large number of evolutionary algorithms h...
research
06/07/2018

Multiobjective Test Problems with Degenerate Pareto Fronts

In multiobjective optimization, a set of scalable test problems with a v...
research
12/21/2016

Difficulty Adjustable and Scalable Constrained Multi-objective Test Problem Toolkit

Multi-objective evolutionary algorithms (MOEAs) have achieved great prog...
research
05/03/2020

Multi-focus Image Fusion: A Benchmark

Multi-focus image fusion (MFIF) has attracted considerable interests due...
research
10/09/2021

Self-adaptive Multi-task Particle Swarm Optimization

Multi-task optimization (MTO) studies how to simultaneously solve multip...

Please sign up or login with your details

Forgot password? Click here to reset