English
Related papers

Related papers: Recent Results on No-Free-Lunch Theorems for Optim…

200 papers

The No Free Lunch (NFL) theorem guarantees equal average performance only under uniform sampling of a function space closed under permutation (c.u.p.). We ask when this averaging ceases to reflect what benchmarking actually reports. We…

Machine Learning · Statistics 2026-03-05 Grzegorz Sroka

The No Free Lunch (NFL) theorem for search and optimisation states that averaged across all possible objective functions on a fixed search space, all search algorithms perform equally well. Several refined versions of the theorem find a…

Neural and Evolutionary Computing · Computer Science 2019-06-11 James McDermott

According to the No Free Lunch (NFL) theorems all black-box algorithms perform equally well when compared over the entire set of optimization problems. An important problem related to NFL is finding a test problem for which a given…

Neural and Evolutionary Computing · Computer Science 2021-09-29 Mihai Oltean

Function optimisation is a major challenge in computer science. The No Free Lunch theorems state that if all functions with the same histogram are assumed to be equally probable then no algorithm outperforms any other in expectation. We…

Optimization and Control · Mathematics 2016-08-17 Tom Everitt , Tor Lattimore , Marcus Hutter

We show how the necessary and sufficient conditions for the NFL to apply can be reduced to the single requirement of the set of objective functions under consideration being closed under permutation, and quantify the extent to which a set…

Information Theory · Computer Science 2010-03-17 James A. R. Marshall , Thomas G. Hinton

The important recent book by G. Schurz appreciates that the no-free-lunch theorems (NFL) have major implications for the problem of (meta) induction. Here I review the NFL theorems, emphasizing that they do not only concern the case where…

Machine Learning · Computer Science 2022-07-28 David H. Wolpert

The ultimate limits for the quantum machine learning of quantum data are investigated by obtaining a generalisation of the celebrated No Free Lunch (NFL) theorem. We find a lower bound on the quantum risk (the probability that a trained…

Quantum Physics · Physics 2020-04-01 Kyle Poland , Kerstin Beer , Tobias J. Osborne

The no-free-lunch (NFL) theorem is a celebrated result in learning theory that limits one's ability to learn a function with a training data set. With the recent rise of quantum machine learning, it is natural to ask whether there is a…

Quantum Physics · Physics 2022-03-01 Kunal Sharma , M. Cerezo , Zoë Holmes , Lukasz Cincio , Andrew Sornborger , Patrick J. Coles

No-Free-Lunch Theorems state, roughly speaking, that the performance of all search algorithms is the same when averaged over all possible objective functions. This fact was precisely formulated for the first time in a now famous paper by…

Optimization and Control · Mathematics 2014-10-17 Aureli Alabert , Alessandro Berti , Ricard Caballero , Marco Ferrante

In a recent paper it was shown that No Free Lunch results hold for any subset F of the set of all possible functions from a finite set X to a finite set Y iff F is closed under permutation of X. In this article, we prove that the number of…

Neural and Evolutionary Computing · Computer Science 2007-05-23 Christian Igel , Marc Toussaint

The No-Free-Lunch (NFL) theorem, which quantifies problem- and data-independent generalization errors regardless of the optimization process, provides a foundational framework for comprehending diverse learning protocols' potential. Despite…

Quantum Physics · Physics 2024-05-14 Xinbiao Wang , Yuxuan Du , Kecheng Liu , Yong Luo , Bo Du , Dacheng Tao

The no-free-lunch theorems promote a skeptical conclusion that all possible machine learning algorithms equally lack justification. But how could this leave room for a learning theory, that shows that some algorithms are better than others?…

Machine Learning · Computer Science 2022-02-10 Tom F. Sterkenburg , Peter D. Grünwald

Federated learning (FL) enables participating parties to collaboratively build a global model with boosted utility without disclosing private data information. Appropriate protection mechanisms have to be adopted to fulfill the opposing…

Machine Learning · Computer Science 2023-07-24 Xiaojin Zhang , Yan Kang , Kai Chen , Lixin Fan , Qiang Yang

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…

Machine Learning · Computer Science 2020-07-22 David H. Wolpert

No free lunch theorems for supervised learning state that no learner can solve all problems or that all learners achieve exactly the same accuracy on average over a uniform distribution on learning problems. Accordingly, these theorems are…

Machine Learning · Computer Science 2024-06-11 Micah Goldblum , Marc Finzi , Keefer Rowan , Andrew Gordon Wilson

Multitask learning and related areas such as multi-source domain adaptation address modern settings where datasets from $N$ related distributions $\{P_t\}$ are to be combined towards improving performance on any single such distribution…

Machine Learning · Computer Science 2020-08-07 Steve Hanneke , Samory Kpotufe

Challenging optimization problems, which elude acceptable solution via conventional calculus methods, arise commonly in different areas of industrial design and practice. Hard optimization problems are those who manifest the following…

Machine Learning · Computer Science 2013-12-03 Loris Serafino

The No Free Lunch theorems are often used to argue that domain specific knowledge is required to design successful algorithms. We use algorithmic information theory to argue the case for a universal bias allowing an algorithm to succeed in…

Machine Learning · Computer Science 2011-11-17 Tor Lattimore , Marcus Hutter

Over the past decade, several researchers have presented various optimisation algorithms for use in truss design. The no free lunch theorem implies that no optimisation algorithm fits all problems; therefore, the interest is not only in the…

Optimization and Control · Mathematics 2020-08-06 Uche Onyekpe , Stratis Kanarachos , Michael E. Fitzpatrick

In a federated learning scenario where multiple parties jointly learn a model from their respective data, there exist two conflicting goals for the choice of appropriate algorithms. On one hand, private and sensitive training data must be…

Machine Learning · Computer Science 2022-09-07 Xiaojin Zhang , Hanlin Gu , Lixin Fan , Kai Chen , Qiang Yang
‹ Prev 1 2 3 10 Next ›