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State, Luminita
Bucharest University
Bucharest, Romania
 
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   Foundations of machine learning
Mohri M., Rostamizadeh A., Talwalkar A., The MIT Press, Cambridge, MA, 2012. 480 pp.  Type: Book (978-0-262018-25-8)

Although machine learning is one of the newer major scientific domains, a tremendous number of papers have already been published, reporting progress in both theoretical research and practical developments. We have also seen a series o...

Dec 17 2012  
   A first course in numerical methods
Ascher U., Greif C., Society for Industrial and Applied Mathematics, Philadelphia, PA, 2011. 574 pp.  Type: Book (978-0-898719-97-0)

Most engineering applications, in a wide range of domains, are based on mathematically founded methods and algorithms. This excellent introductory textbook covers numerical methods that are currently used to model and solve engineering...

Dec 29 2011  
   Bayesian artificial intelligence (2nd ed.)
Korb K., Nicholson A., CRC Press, Inc., Boca Raton, FL, 2010. 491 pp.  Type: Book (978-1-439815-91-5)

This second edition includes new information and some minor error corrections to the previous edition [1]. The content is structured into three parts devoted to probabilistic reasoning, learning causal models, and knowledge engineering...

Oct 20 2011  
   Evolutionary clustering of relational data
Horta D., Campello R. International Journal of Hybrid Intelligent Systems 7(4): 261-281, 2010.  Type: Article

A previous paper by the authors introduced the basics of fast evolutionary algorithms for relational data and proposed a new asymptotic complexity analysis of the algorithms in terms of running time. This paper is an extension of that ...

Apr 11 2011  
  Support vector machines for pattern classification (Advances in Pattern Recognition)
Abe S., Springer-Verlag New York, Inc., Secaucus, NJ, 2005. 343 pp.  Type: Book (9781852339296)

The use of support vector machines (SVMs) is a relatively new and very promising classification technique, developed by Vapnik and his group at AT&T Bell Laboratories as an alternative training technique for polynomial, radial basi...

Feb 28 2006  
 
 
   
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