Authors
Anna V Kononova, David W Corne, Philippe De Wilde, Vsevolod Shneer, Fabio Caraffini
Publication date
2015/3/20
Journal
Information Sciences
Volume
298
Pages
468-490
Publisher
Elsevier
Description
Challenging optimisation problems are abundant in all areas of science and industry. Since the 1950s, scientists have responded to this by developing ever-diversifying families of ‘black box’ optimisation algorithms. The latter are designed to be able to address any optimisation problem, requiring only that the quality of any candidate solution can be calculated via a ‘fitness function’ specific to the problem. For such algorithms to be successful, at least three properties are required: (i) an effective informed sampling strategy, that guides the generation of new candidates on the basis of the fitnesses and locations of previously visited candidates; (ii) mechanisms to ensure efficiency, so that (for example) the same candidates are not repeatedly visited; and (iii) the absence of structural bias, which, if present, would predispose the algorithm towards limiting its search to specific regions of the solution space. The first two of …
Total citations
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Scholar articles
AV Kononova, DW Corne, P De Wilde, V Shneer… - Information Sciences, 2015