Title of article :
A multi-objective hyper-heuristic based on choice function
Author/Authors :
Maashi، نويسنده , , Mashael and ضzcan، نويسنده , , Ender and Kendall، نويسنده , , Graham، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Abstract :
Hyper-heuristics are emerging methodologies that perform a search over the space of heuristics in an attempt to solve difficult computational optimization problems. We present a learning selection choice function based hyper-heuristic to solve multi-objective optimization problems. This high level approach controls and combines the strengths of three well-known multi-objective evolutionary algorithms (i.e. NSGAII, SPEA2 and MOGA), utilizing them as the low level heuristics. The performance of the proposed learning hyper-heuristic is investigated on the Walking Fish Group test suite which is a common benchmark for multi-objective optimization. Additionally, the proposed hyper-heuristic is applied to the vehicle crashworthiness design problem as a real-world multi-objective problem. The experimental results demonstrate the effectiveness of the hyper-heuristic approach when compared to the performance of each low level heuristic run on its own, as well as being compared to other approaches including an adaptive multi-method search, namely AMALGAM.
Keywords :
Hyper-heuristic , Evolutionary algorithm , Multi-Objective optimization , Metaheuristic
Journal title :
Expert Systems with Applications
Journal title :
Expert Systems with Applications