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Open AccessJournal ArticleDOI

Sparse bayesian learning and the relevance vector machine

Michael E. Tipping
- 01 Sep 2001 - 
- Vol. 1, pp 211-244
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TLDR
It is demonstrated that by exploiting a probabilistic Bayesian learning framework, the 'relevance vector machine' (RVM) can derive accurate prediction models which typically utilise dramatically fewer basis functions than a comparable SVM while offering a number of additional advantages.
Abstract
This paper introduces a general Bayesian framework for obtaining sparse solutions to regression and classification tasks utilising models linear in the parameters Although this framework is fully general, we illustrate our approach with a particular specialisation that we denote the 'relevance vector machine' (RVM), a model of identical functional form to the popular and state-of-the-art 'support vector machine' (SVM) We demonstrate that by exploiting a probabilistic Bayesian learning framework, we can derive accurate prediction models which typically utilise dramatically fewer basis functions than a comparable SVM while offering a number of additional advantages These include the benefits of probabilistic predictions, automatic estimation of 'nuisance' parameters, and the facility to utilise arbitrary basis functions (eg non-'Mercer' kernels) We detail the Bayesian framework and associated learning algorithm for the RVM, and give some illustrative examples of its application along with some comparative benchmarks We offer some explanation for the exceptional degree of sparsity obtained, and discuss and demonstrate some of the advantageous features, and potential extensions, of Bayesian relevance learning

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Variational Bayesian Inference of Line Spectra

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Multifractal Analysis and Relevance Vector Machine-Based Automatic Seizure Detection in Intracranial EEG

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Application of support vector machines and relevance vector machines in predicting uniaxial compressive strength of volcanic rocks

TL;DR: The primary purpose of this study is to examine the applicability and capability of RVM and SVM models for predicting the UCS of volcanic rocks from NE Turkey and comparing its performance with ANN models.
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A comprehensive review of feature based methods for drug target interaction prediction.

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Prediction of illness severity in patients with major depression using structural MR brain scans.

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References
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