Authors
Mohamed El Yafrani, Marcella SR Martins, Mehdi El Krari, Markus Wagner, Myriam RBS Delgado, Belaïd Ahiod, Ricardo Lüders
Publication date
2018/7/2
Book
Proceedings of the genetic and evolutionary computation conference
Pages
277-284
Description
Local Optima Networks are models proposed to understand the structure and properties of combinatorial landscapes. The fitness landscape is explored as a graph whose nodes represent the local optima (or basins of attraction) and edges represent the connectivity between them. In this paper, we use this representation to study a combinatorial optimisation problem, with two interdepend components, named the Travelling Thief Problem (TTP). The objective is to understand the search space structure of the TTP using basic local search heuristics and to distinguish the most impactful problem features. We create a large set of enumerable TTP instances and generate a Local Optima Network for each instance using two hill climbing variants. Two problem features are investigated, namely the knapsack capacity and profit-weight correlation. Our insights can be useful not only to design landscape-aware local search …
Total citations
201820192020202120222023147686
Scholar articles
ME Yafrani, MSR Martins, ME Krari, M Wagner… - Proceedings of the genetic and evolutionary …, 2018