Difference between revisions of "BIO Machine learning"
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(Created page with "<div id="APB"> <div class="b1"> Machine Learning </div> {{dev}} Overview of "classical" and current approaches to machine learning. __TOC__ <!-- (Classification problem...") |
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==Further reading and resources== | ==Further reading and resources== | ||
{{#pmid: 16764513}} | {{#pmid: 16764513}} | ||
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{{PDF | {{PDF | ||
|authors= Lodhi, H. | |authors= Lodhi, H. | ||
|year= 2012 | |year= 2012 | ||
|title= Computational biology perspective: kernel methods and deep learning | |title= Computational biology perspective: kernel methods and deep learning | ||
− | |journal= | + | |journal= WIREs: Computational Statistics |
|volume= 4(5) | |volume= 4(5) | ||
|pages= 455-465 | |pages= 455-465 |
Revision as of 20:07, 16 November 2012
Machine Learning
This page is a placeholder, or under current development; it is here principally to establish the logical framework of the site. The material on this page is correct, but incomplete.
Overview of "classical" and current approaches to machine learning.
Contents
Introductory reading
Introduction
Paradigms
Neural Networks
Hidden Markov Models
Support Vector Machines
Introduction
Introduction
Introduction
Introduction
Introduction
Further reading and resources
Hinton et al. (2006) A fast learning algorithm for deep belief nets. Neural Comput 18:1527-54. (pmid: 16764513) |
Lodhi, H. (2012) Computational biology perspective: kernel methods and deep learning. WIREs: Computational Statistics 4(5):455-465. |
(pmid: None) [ Source URL ][ DOI ] Abstract |