Evolutionary Multitasking for Multiobjective Continuous Optimization: Benchmark Problems, Performance Metrics and Baseline Results
This provides a standardized benchmark for researchers in evolutionary computation to test and compare MTMOO algorithms, though it is incremental as it builds on existing optimization frameworks.
The authors proposed nine benchmark test problems for multi-task multi-objective optimization (MTMOO) to evaluate algorithms, with tasks varying in relationships to enable comprehensive assessment.
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.