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Optimization with randomized search heuristics—the (A)NFL theorem, realistic scenarios, and difficult functions

✍ Scribed by Stefan Droste; Thomas Jansen; Ingo Wegener


Book ID
104325394
Publisher
Elsevier Science
Year
2002
Tongue
English
Weight
151 KB
Volume
287
Category
Article
ISSN
0304-3975

No coin nor oath required. For personal study only.

✦ Synopsis


The No Free Lunch (NFL) theorem due to Wolpert and Macready (IEEE Trans. Evol. Comput. 1(1) (1997) 67) has led to controversial discussions on the usefulness of randomized search heuristics, in particular, evolutionary algorithms. Here a short and simple proof of the NFL theorem is given to show its elementary character. Moreover, the proof method leads to a generalization of the NFL theorem. Afterwards, realistic complexity theoretical-based scenarios for black box optimization are presented and it is argued why NFL theorems are not possible in such situations. However, an Almost No Free Lunch (ANFL) theorem shows that for each function which can be optimized e ciently by a search heuristic there can be constructed many related functions where the same heuristic is bad. As a consequence, search heuristics use some idea how to look for good points and can be successful only for functions "giving the right hints". The consequences of these theoretical considerations for some well-known classes of functions are discussed.