https://nova.newcastle.edu.au/vital/access/ /manager/Index ${session.getAttribute("locale")} 5 An improved ejection chain method and its hybrid versions for solving the traveling salesman problem https://nova.newcastle.edu.au/vital/access/ /manager/Repository/uon:27852 TSPLib to investigate the performance of these algorithms. Our study is different from previous work along this line of research in that we consider the entire runtime behavior of the algorithms rather than just their end results. This leads to one of the most comprehensive comparisons of these algorithms using the TSP instances. We then introduce an improved S&C-ECM (named FSM**) that can outperform LK, TS, and MNS. In order to further boost the performance, we develop new hybrid versions of our ECM implementations by combining them with Evolutionary Algorithms and Population-based Ant Colony Optimization. We compare them to similar hybrids of LK, TS, and MNS. Our results show that hybrid algorithms of S&C-ECM, LK, TS and MNS are all very efficient for solving the TSP. We also find that the full runtime behavior comparison provides deeper and clearer insights, while focusing on end results only could have led to a misleading conclusion.]]> Tue 06 Jun 2017 12:36:12 AEST ]]> An investigation of hybrid Tabu search for the traveling salesman problem https://nova.newcastle.edu.au/vital/access/ /manager/Repository/uon:23348 NP-hardness, research has focused on approximate methods like metaheuristics. Tabu Search (TS) is a very efficient metaheuristic for combinatorial problems. We investigate four different versions of TS with different tabu objects and compare them to the Lin-Kernighan (LK) heuristic as well as the recently developed Multi-Neighborhood Search (MNS). LK is currently considered to be the best approach for solving the TSP, while MNS has shown to be highly competitive. We then propose new hybrid algorithms by hybridizing TS with Evolutionary Algorithms and Ant Colony Optimization. These hybrids are compared to similar hybrids based on LK and MNS. This paper presents the first statistically sound and comprehensive comparison taking the entire optimization processes of (hybrid) TS, LK, and MNS into consideration based on a large-scale experimental study. We show that our new hybrid TS algorithms are highly efficient and comparable to the state-of-the-art algorithms along this line of research.]]> Sat 24 Mar 2018 07:13:33 AEDT ]]>