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Relationships between Gaussian processes, Support Vector machines and Smoothing Splines (2000)  (Make Corrections)  
Matthias Seeger



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Abstract: Bayesian Gaussian processes and Support Vector machines are powerful kernel-based methods to attack the pattern recognition problem. Probably due to the very different philosophies of the fields they have been originally proposed in, techniques for these two models have been developed somewhat in isolation from each other. This tutorial paper reviews relationships between Bayesian Gaussian processes and Support Vector machines. We show how in a certain welldefined sense both emerge as special... (Update)

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BibTeX entry:   (Update)

@misc{ seeger-relationships,
  author = "Matthias Seeger",
  title = "Relationships between Gaussian processes, Support Vector machines and Smoothing
    Splines",
  url = "citeseer.ist.psu.edu/seeger00relationships.html" }
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