What is important about the No Free Lunch theorems?
July 21, 2020 ยท Declared Dead ยท ๐ Black Box Optimization, Machine Learning, and No-Free Lunch Theorems
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Authors
David H. Wolpert
arXiv ID
2007.10928
Category
cs.LG: Machine Learning
Cross-listed
cs.NE,
stat.ML
Citations
29
Venue
Black Box Optimization, Machine Learning, and No-Free Lunch Theorems
Last Checked
4 months ago
Abstract
The No Free Lunch theorems prove that under a uniform distribution over induction problems (search problems or learning problems), all induction algorithms perform equally. As I discuss in this chapter, the importance of the theorems arises by using them to analyze scenarios involving {non-uniform} distributions, and to compare different algorithms, without any assumption about the distribution over problems at all. In particular, the theorems prove that {anti}-cross-validation (choosing among a set of candidate algorithms based on which has {worst} out-of-sample behavior) performs as well as cross-validation, unless one makes an assumption -- which has never been formalized -- about how the distribution over induction problems, on the one hand, is related to the set of algorithms one is choosing among using (anti-)cross validation, on the other. In addition, they establish strong caveats concerning the significance of the many results in the literature which establish the strength of a particular algorithm without assuming a particular distribution. They also motivate a ``dictionary'' between supervised learning and improve blackbox optimization, which allows one to ``translate'' techniques from supervised learning into the domain of blackbox optimization, thereby strengthening blackbox optimization algorithms. In addition to these topics, I also briefly discuss their implications for philosophy of science.
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