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Useful Diversity via Multiploidy.

, , and . International Conference on Evolutionary Computation, page 810-813. IEEE, (1996)

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The MAX Problem for Genetic Programming - Highlighting an Adverse Interaction between the Crossover Operator and a Restriction on Tree Depth, and . Department of Artificial Intelligence, University of Edinburgh, 80 South Bridge, Edinburgh, EH1 1HN, UK, (1995)Design of Edinburgh logo., and . Microprocess. Microsystems, 8 (3): 119-123 (1984)An Adaptive Agent Based Economic Model., and . Learning Classifier Systems, volume 1813 of Lecture Notes in Computer Science, page 263-282. Springer, (1999)Some Combinatorial Landscapes on which a Genetic Algorithm Outperforms Other Stochastic Iterative Methods., and . Evolutionary Computing, AISB Workshop, volume 993 of Lecture Notes in Computer Science, page 1-13. Springer, (1995)Fast Practical Evolutionary Timetabling., , and . Evolutionary Computing, AISB Workshop, volume 865 of Lecture Notes in Computer Science, page 250-263. Springer, (1994)Using Hyper-heuristics for the Dynamic Variable Ordering in Binary Constraint Satisfaction Problems., , , and . MICAI, volume 5317 of Lecture Notes in Computer Science, page 407-417. Springer, (2008)Application of the hardness theory when solving the timetabling problem with genetic algorithms., , and . CEC, page 604-611. IEEE, (1999)A neuro-evolutionary approach to produce general hyper-heuristics for the dynamic variable ordering in hard binary constraint satisfaction problems., , , , and . GECCO, page 1811-1812. ACM, (2009)A hyper-heuristic for solving one and two-dimensional bin packing problems., , and . GECCO (Companion), page 257-258. ACM, (2011)Two-Phase GA-Based Model to Learn Generalized Hyper-heuristics for the 2D-Cutting Stock Problem., , , and . IBERAMIA-SBIA, volume 4140 of Lecture Notes in Computer Science, page 198-207. Springer, (2006)