Expected fitness gains of randomized search heuristics for the traveling salesperson problem

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Abstract

Randomized search heuristics are frequently applied to NP-hard combinatorial optimization problems. The runtime analysis of randomized search heuristics has contributed tremendously to our theoretical understanding. Recently, randomized search heuristics have been examined regarding their achievable progress within a fixed-time budget. We follow this approach and present a fixed-budget analysis for an NP-hard combinatorial optimization problem. We consider the well-known Traveling Salesperson Problem (TSP) and analyze the fitness increase that randomized search heuristics are able to achieve within a given fixed-time budget. In particular, we analyze Manhattan and Euclidean TSP instances and Randomized Local Search (RLS), (1+1) EA and (1+λ) EA algorithms for the TSP in a smoothed complexity setting, and derive the lower bounds of the expected fitness gain for a specified number of generations.

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Nallaperuma, S., Neumann, F., & Sudholt, D. (2017). Expected fitness gains of randomized search heuristics for the traveling salesperson problem. Evolutionary Computation, 25(4), 673–705. https://doi.org/10.1162/EVCO_a_00199

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