Authors
Francisco Chicano, Darrell Whitley, Andrew M Sutton
Publication date
2014/7/12
Conference
Proceedings of the 2014 Annual Conference on Genetic and Evolutionary Computation
Pages
437-444
Publisher
ACM
Description
Hill climbing algorithms are at the core of many approaches to solve optimization problems. Such algorithms usually require the complete enumeration of a neighborhood of the current solution. In the case of problems defined over binary strings of length n, we define the r-ball neighborhood as the set of solutions at Hamming distance r or less from the current solution. For r ll n this neighborhood contains Θ(nr) solutions. In this paper efficient methods areintroduced to locate improving moves in the r-ball neighborhood for problems that can be written as a sum of a linear number of subfunctions depending on a bounded number of variables. NK-landscapes and MAX-kSAT are examples of these problems. If the number of subfunctions depending on any given variable is also bounded, then we prove that the method can explore the neighborhood in constant time, despite the fact that the number of solutions in the …
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Scholar articles
F Chicano, D Whitley, AM Sutton - Proceedings of the 2014 annual conference on genetic …, 2014