Literature DB >> 18252602

An overview of statistical learning theory.

V N Vapnik1.   

Abstract

Statistical learning theory was introduced in the late 1960's. Until the 1990's it was a purely theoretical analysis of the problem of function estimation from a given collection of data. In the middle of the 1990's new types of learning algorithms (called support vector machines) based on the developed theory were proposed. This made statistical learning theory not only a tool for the theoretical analysis but also a tool for creating practical algorithms for estimating multidimensional functions. This article presents a very general overview of statistical learning theory including both theoretical and algorithmic aspects of the theory. The goal of this overview is to demonstrate how the abstract learning theory established conditions for generalization which are more general than those discussed in classical statistical paradigms and how the understanding of these conditions inspired new algorithmic approaches to function estimation problems. A more detailed overview of the theory (without proofs) can be found in Vapnik (1995). In Vapnik (1998) one can find detailed description of the theory (including proofs).

Entities:  

Year:  1999        PMID: 18252602     DOI: 10.1109/72.788640

Source DB:  PubMed          Journal:  IEEE Trans Neural Netw        ISSN: 1045-9227


  284 in total

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5.  Improvement of spike train decoder under spike detection and classification errors using support vector machine.

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Journal:  Med Biol Eng Comput       Date:  2006-03       Impact factor: 2.602

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Authors:  M Serdar Bascil
Journal:  J Med Syst       Date:  2018-08-04       Impact factor: 4.460

9.  A novel functional infrared imaging system coupled with multiparametric computerised analysis for risk assessment of breast cancer.

Authors:  Tamar Sella; Miri Sklair-Levy; Maya Cohen; Mona Rozin; Myra Shapiro-Feinberg; Tanir M Allweis; Eugene Libson; David Izhaky
Journal:  Eur Radiol       Date:  2012-12-06       Impact factor: 5.315

10.  Large-scale comparative assessment of computational predictors for lysine post-translational modification sites.

Authors:  Zhen Chen; Xuhan Liu; Fuyi Li; Chen Li; Tatiana Marquez-Lago; André Leier; Tatsuya Akutsu; Geoffrey I Webb; Dakang Xu; Alexander Ian Smith; Lei Li; Kuo-Chen Chou; Jiangning Song
Journal:  Brief Bioinform       Date:  2019-11-27       Impact factor: 11.622

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