Competing with wild prediction rules

Vovk, Vladimir

(2005)

Vovk, Vladimir (2005) Competing with wild prediction rules.

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Abstract

We consider the problem of on-line prediction competitive with a benchmarkclass of continuous but highly irregular prediction rules. It is known that if the benchmark class is a reproducing kernel Hilbert space, there exists a prediction algorithm whose average loss over the first N examples does not exceed the average loss of any prediction rule in the class plus a "regret term" of O(N^(-1/2)). The elements of some natural benchmark classes, however, are so irregular that these classes are not Hilbert spaces. In this paper we develop Banach-space methods to construct a prediction algorithm with a regret term of O(N^(-1/p)), where p is in [2,infty) and p-2 reflects the degree to which the benchmark class fails to be a Hilbert space.

Information about this Version

This is a Submitted version
This version's date is: 14/12/2005
This item is not peer reviewed

Link to this Version

https://repository.royalholloway.ac.uk/items/9ce94366-2fbe-87cb-3995-afea82b135dd/7/

Item TypeMonograph (Working Paper)
TitleCompeting with wild prediction rules
AuthorsVovk, Vladimir
Uncontrolled Keywordscs.LG, I.2.6
DepartmentsFaculty of Science\Computer Science

Identifiers

Deposited by Research Information System (atira) on 22-Jul-2014 in Royal Holloway Research Online.Last modified on 22-Jul-2014

Notes

28 pages, 3 figures


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