Authors
Thé Van Luong, Éric D Taillard
Publication date
2022/7/11
Book
Metaheuristics International Conference
Pages
118-132
Publisher
Springer International Publishing
Description
An unsupervised machine learning method based on association rule is studied for the Quadratic Assignment Problem. Parallel extraction of itemsets and local search algorithms are proposed. The extraction of frequent itemsets in the context of local search is shown to produce good results for a few problem instances. Negative results of the proposed learning mechanism are reported for other instances. This result contrasts with other hard optimization problems for which efficient learning processes are known in the context of local search.
Scholar articles
TV Luong, ÉD Taillard - Metaheuristics International Conference, 2022