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Cover's Theorem is a statement in [[computational learning theory]] and is one of the primary theoretical motivations for the use of non-linear [[kernel methods]] in [[machine learning]] applications. The theorem states that given a set of training data that is not [[linearly separable]], one can with high probability transform it into a training set that is linearly separable by projecting it into a higher dimensional space via some non-linear transformation.
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The [[mathematical proof|proof]] is easy. A [[map (mathematics)|deterministic mapping]] may be used. Indeed, suppose there are <math>n</math> samples. Lift them onto the vertices of the [[simplex]] in the <math>n-1</math> dimensional real space. Every [[partition of a set|partition]] of the samples into two sets is separable by a [[linear separability|linear separator]]. QED.
 
{{Quotation|A complex pattern-classification problem, cast in a high-dimensional space nonlinearly, is more likely to be linearly separable than in a low-dimensional space, provided that the space is not densely populated.|Cover, T.M. |Geometrical and Statistical properties of systems of linear inequalities with applications in pattern recognition.|1965}}
 
==References==
 
{{Reflist}}
*{{cite book |title= Neural Networks and Learning Machines Third Edition |last= Haykin |first= Simon |year= 2009 |publisher= Pearson Education Inc |location=Upper Saddle River, New Jersey |isbn= 978-0-13-147139-9 |pages= 232–236}}
 
*{{cite journal |last=Cover |first=T.M. | year=1965 |title=Geometrical and Statistical properties of systems of linear inequalities with applications in pattern recognition |journal=IEEE Transactions on Electronic Computers |volume=EC-14 |pages=326–334}}
 
* Mehrotra, K., Mohan, C.K., Ranka, S. (1997) ''Elements of artificial neural networks'', 2nd edition. MIT Press. (Section 3.5) ISBN 0-262-13328-8 [http://books.google.co.uk/books?id=6d68Y4Wq_R4C&pg=PA88&lpg=PA88&dq=Cover's+theorem&source=bl&ots=6pEdU0CYz4&sig=V2FqwVwkYaDQgmUNk22XEjnQFpw&hl=en&ei=mYdFTNqTMpHQjAfJw5j1Bg&sa=X&oi=book_result&ct=result&resnum=7&ved=0CDAQ6AEwBg#v=onepage&q=Cover's%20theorem&f=false Google books]
 
{{DEFAULTSORT:Cover's Theorem}}
[[Category:Computational learning theory]]
[[Category:Statistical classification]]
[[Category:Neural networks]]
 
{{statistics-stub}}

Latest revision as of 13:17, 26 March 2014

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