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1 - 5 of 5
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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...
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Dec 17 2012 |
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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...
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Dec 29 2011 |
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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...
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Oct 20 2011 |
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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 ...
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Apr 11 2011 |
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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...
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Feb 28 2006 |
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