T. Bartz-beielstein, M. Chiarandini, L. Paquete, and M. Preuss, Experimental methods for the analysis of optimization algorithms, 2010.

N. Belkhir, J. Dreo, P. Savéant, and M. Schoenauer, Feature Based Algorithm Configuration: a Case Study with Differential Evolution, 14th International Conference on Parallel Problem Solving from Nature, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01359539

K. Edmund, M. Burke, M. Gendreau, G. Hyde, G. Kendall et al., Hyper-heuristics: a survey of the state of the art, Journal of the Operational Research Society, 2013.

. Nichael-lynn-cramer, A representation for the Adaptive Generation of Simple Sequential Programs, Proceedings of an International Conference on Genetic Algorithms and the Applications, pp.183-187, 1985.

D. Dickmanns, J. Schmidhuber, and A. Winklhofer, Der genetische algorithmus: Eine implementierung in prolog. Fortgeschrittenenpraktikum, 1987.

L. Dixon, The choice of step length, a crucial factor in the performance of variable metric algorithms. Numerical methods for non-linear optimization, pp.149-170, 1972.

L. J. Fogel, A. J. Owens, and M. J. Walsh, Artificial intelligence through simulated evolution, 1966.

J. John and . Grefenstette, Optimization of control parameters for genetic algorithms, IEEE Transactions on systems, man, and cybernetics, vol.16, pp.122-128, 1986.

N. Hansen, A. Auger, R. Ros, S. Finck, and P. Po?ík, Comparing results of 31 algorithms from the black-box optimization benchmarking BBOB-2009, Proc. of the 12th GECCO, pp.1689-1696, 2010.
URL : https://hal.archives-ouvertes.fr/hal-00545727

F. Hutter, H. Holger, K. Hoos, T. Leyton-brown, and . Stützle, ParamILS: An Automatic Algorithm Configuration Framework, J. Artif. Int. Res, vol.36, pp.267-306, 2009.

P. Kerschke, H. Holger, F. Hoos, H. Neumann, and . Trautmann, Automated Algorithm Selection: Survey and Perspectives, Evol. Comp, vol.27, pp.3-45, 2019.

P. Merz and B. Freisleben, New ideas in optimization. McGraw-Hill Ltd., Chapter Fitness landscapes and memetic algorithm design, pp.245-260, 1999.

M. A. Muñoz and K. A. Smith-miles, Performance Analysis of Continuous Black-Box Optimization Algorithms via Footprints in Instance Space, Evolutionary Computation, vol.25, pp.529-554, 2017.

A. Mario, Y. Muñoz, M. Sun, . Kirley, K. Saman et al., Algorithm selection for black-box continuous optimization problems: A survey on methods and challenges, Information Sciences, vol.317, pp.224-245, 2015.

C. Sander-van-rijn, T. Doerr, and . Bäck, Towards an Adaptive CMA-ES Configurator, International Conference on Parallel Problem Solving from Nature, pp.54-65, 2018.