A tutorial on conformal prediction

Shafer, Glenn and Vovk, Vladimir

(2007)

Shafer, Glenn and Vovk, Vladimir (2007) A tutorial on conformal prediction.

Our Full Text Deposits

Full text access: Open

Full text file - 616.21 KB

Abstract

Conformal prediction uses past experience to determine precise levels ofconfidence in new predictions. Given an error probability $\epsilon$, togetherwith a method that makes a prediction $\hat{y}$ of a label $y$, it produces aset of labels, typically containing $\hat{y}$, that also contains $y$ with probability $1-\epsilon$. Conformal prediction can be applied to any method for producing $\hat{y}$: a nearest-neighbor method, a support-vector machine, ridge regression, etc. Conformal prediction is designed for an on-line setting in which labels are predicted successively, each one being revealed before the next is predicted.The most novel and valuable feature of conformal prediction is that if the successive examples are sampled independently from the same distribution, then the successive predictions will be right $1-\epsilon$ of the time, even though they are based on an accumulating dataset rather than on independent datasets. In addition to the model under which successive examples are sampled independently, other on-line compression models can also use conformalprediction. The widely used Gaussian linear model is one of these. This tutorial presents a self-contained account of the theory of conformal prediction and works through several numerical examples. A more comprehensive treatment of the topic is provided in "Algorithmic Learning in a Random World", by Vladimir Vovk, Alex Gammerman, and Glenn Shafer (Springer, 2005).

Information about this Version

This is a Submitted version
This version's date is: 21/6/2007
This item is not peer reviewed

Link to this Version

https://repository.royalholloway.ac.uk/items/a1589d23-8398-35ad-8728-717bc3b4039d/1/

Item TypeMonograph (Working Paper)
TitleA tutorial on conformal prediction
AuthorsShafer, Glenn
Vovk, Vladimir
Uncontrolled Keywordscs.LG, stat.ML
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

58 pages, 9 figures


Details