Publications

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M. G. Epitropakis, Yoo, S., Harman, M., and Burke, E. K., Pareto Efficient Multi-Objective Regression Test Suite Prioritisation, Department of Computer Science, University College London, Gower Street, London, 2014.
M. G. Epitropakis, Plagianakos, V. P., and Vrahatis, M. N., Multimodal Optimization Using Niching Differential Evolution with Index-based Neighborhoods, in IEEE Congress on Evolutionary Computation, 2012. CEC 2012. (IEEE World Congress on Computational Intelligence), Brisbane, Australia, 2012. (479.12 KB)
M. G. Epitropakis, Plagianakos, V. P., and Vrahatis, M. N., Evolving cognitive and social experience in Particle Swarm Optimization through Differential Evolution, in IEEE Congress on Evolutionary Computation, 2010. CEC 2010. (IEEE World Congress on Computational Intelligence), Barcelona, Spain, 2010. (1.19 MB)
M. G. Epitropakis, Plagianakos, V. P., and Vrahatis, M. N., Non-Monotone Differential Evolution, in Proceedings of the 10th annual inproceedings on Genetic evolutionary computation, GECCO 2008, New York, NY, USA, 2008. (69.4 KB)
M. G. Epitropakis and Vrahatis, M. N., Studying the basin of convergence of methods for computing periodic orbits, International Journal of Bifurcation and Chaos (IJBC), vol. 21, pp. 1-28, 2011. (3.34 MB)
M. G. Epitropakis and Vrahatis, M. N., Root finding and approximation approaches through neural networks, ACM SIGSAM Bulleting, vol. 39, pp. 118-121, 2005. (123 KB)
M. G. Epitropakis, Plagianakos, V. P., and Vrahatis, M. N., Evolutionary Algorithm Training of Higher-Order Neural Networks, in Artificial Higher Order Neural Networks for Computer Science and Engineering: Tends for Emerging Applications, M. Zhang, Ed. IGI Global, 2009.

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