Grant Dick Department of Information Science, School of Business, University of Otago, Dunedin, NZ 21/11/2009Australasian.

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Presentation transcript:

Grant Dick Department of Information Science, School of Business, University of Otago, Dunedin, NZ 21/11/2009Australasian Computational Intelligence Summer School, 2009

21/11/20092Australasian Computational Intelligence Summer School, 2009

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BenefitsChallenges 21/11/200922Australasian Computational Intelligence Summer School, 2009

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Raw fixation time After subtracting “panmictic” fixation time 21/11/200941Australasian Computational Intelligence Summer School, 2009

Raw fixation time After subtracting “panmictic” fixation time 21/11/200942Australasian Computational Intelligence Summer School, 2009

21/11/200943Australasian Computational Intelligence Summer School, 2009

21/11/200944Australasian Computational Intelligence Summer School, 2009 Source: Dick & Whigham (2005), 2005 IEEE Congress on Evolutionary Computation, pp

21/11/200945Australasian Computational Intelligence Summer School, 2009 Source: Dick & Whigham (2005), 2005 IEEE Congress on Evolutionary Computation, pp

21/11/200946Australasian Computational Intelligence Summer School, 2009 Source: Dick & Whigham (2005), 2005 IEEE Congress on Evolutionary Computation, pp

21/11/200947Australasian Computational Intelligence Summer School, 2009 Source: Giaocobini et al. (2005), IEEE Transactions on Evolutionary Computation 9(5), pp

21/11/200948Australasian Computational Intelligence Summer School, 2009

21/11/200949Australasian Computational Intelligence Summer School, 2009   a b Source: Moran (1962), The Statistical Processes of Evolutionary Theory. Oxford, Clarendon Press

21/11/200950Australasian Computational Intelligence Summer School, 2009 b a Source: Whigham and Dick (2008), Genetic Programming and Evolvable Machines 9(2), pp

21/11/200951Australasian Computational Intelligence Summer School, 2009 Source: Komarova (2006), Bulletin of Mathematical Biology 68, pp

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Source: Mühlenbein et al. (1991), Proc. 4 th Intl. Conf. Genetic Algorithms, pp /11/200954Australasian Computational Intelligence Summer School, 2009

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21/11/200957Australasian Computational Intelligence Summer School, 2009 Unequal Peaks Equal Peaks

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21/11/200959Australasian Computational Intelligence Summer School, 2009 Source: Dick & Whigham (2006), 6 th Intl. Conf. Simulated Evolution and Learning, pp

21/11/200960Australasian Computational Intelligence Summer School, 2009 Source: Dick & Whigham (2006), 6 th Intl. Conf. Simulated Evolution and Learning, pp

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21/11/200963Australasian Computational Intelligence Summer School, 2009 Source: Dick & Whigham (2008), 7 th Intl. Conf. Simulated Evolution and Learning, pp

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21/11/200966Australasian Computational Intelligence Summer School, 2009 Source: Kirley (2001), 2001 IEEE Congress on Evolutionary Computation, pp

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21/11/200970Australasian Computational Intelligence Summer School, 2009 Source: Whigham and Dick. (TBA), IEEE Transactions on Evolutionary Computation (in press)

21/11/200971Australasian Computational Intelligence Summer School, 2009 Source: Whigham and Dick. (TBA), IEEE Transactions on Evolutionary Computation (in press)

21/11/200972Australasian Computational Intelligence Summer School, 2009 Source: Gordon et al. (1999), Proceedings of the Genetic and Evolutionary Computation Conference (GECCO 1999), pp

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21/11/200974Australasian Computational Intelligence Summer School, 2009 Source: Li & Sutherland (2002), 4 th Intl. Conf. Simulated Evolution and Learning, pp.76-80

21/11/200975Australasian Computational Intelligence Summer School, 2009 Source: Li (2003), Evolutionary Multi-Criterion Optimization, Second International Conference (EMO 2003), pp

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