Hedging predictions in machine learning

Gammerman, Alexander and Vovk, Vladimir

(2006)

Gammerman, Alexander and Vovk, Vladimir (2006) Hedging predictions in machine learning.

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Abstract

Recent advances in machine learning make it possible to design efficient prediction algorithms for data sets with huge numbers of parameters. This paper describes a new technique for "hedging" the predictions output by many such algorithms, including support vector machines, kernel ridge regression, kernel nearest neighbours, and by many other state-of-the-art methods. The hedged predictions for the labels of new objects include quantitative measures of their own accuracy and reliability. These measures are provably valid under the assumption of randomness, traditional in machine learning: the objects and their labels are assumed to be generated independently from the same probability distribution. In particular, it becomes possible to control (up to statistical fluctuations) the number of erroneous predictions by selecting a suitable confidence level. Validity being achieved automatically, the remaining goal of hedged prediction is efficiency: taking full account of the new objects' features and other available information to produce as accurate predictions as possible. This can be done successfully using the powerful machinery of modern machine learning.

Information about this Version

This is a Submitted version
This version's date is: 2/11/2006
This item is not peer reviewed

Link to this Version

https://repository.royalholloway.ac.uk/items/5274694f-1f3f-ca7d-5514-36acdd40887d/1/

Item TypeMonograph (Working Paper)
TitleHedging predictions in machine learning
AuthorsGammerman, Alexander
Vovk, Vladimir
Uncontrolled Keywordscs.LG
DepartmentsFaculty of Science\Computer Science

Identifiers

Deposited by Research Information System (atira) on 24-May-2012 in Royal Holloway Research Online.Last modified on 24-May-2012

Notes

24 pages; 9 figures; 2 tables; a version of this paper (with discussion and rejoinder) publiseshed in "Computer Journal"


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