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Empirical approach to machine learning

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dc.contributor.author Angelov, Plamen P.
dc.contributor.author Gu, Xiaowei
dc.date.accessioned 2019-03-27T20:17:27Z
dc.date.available 2019-03-27T20:17:27Z
dc.date.issued 2019
dc.identifier.isbn 978-3-030-02383-6
dc.identifier.uri http://hdl.handle.net/123456789/11481
dc.description.abstract This book provides a 'one-stop source' for all readers who are interested in a new, empirical approach to machine learning that, unlike traditional methods, successfully addresses the demands of today’s data-driven world. After an introduction to the fundamentals, the book discusses in depth anomaly detection, data partitioning and clustering, as well as classification and predictors. It describes classifiers of zero and first order, and the new, highly efficient and transparent deep rule-based classifiers, particularly highlighting their applications to image processing. Local optimality and stability conditions for the methods presented are formally derived and stated, while the software is also provided as supplemental, open-source material. The book will greatly benefit postgraduate students, researchers and practitioners dealing with advanced data processing, applied mathematicians, software developers of agent-oriented systems, and developers of embedded and real-time systems. It can also be used as a textbook for postgraduate coursework; for this purpose, a standalone set of lecture notes and corresponding lab session notes are available on the same website as the code. Dimitar Filev, Henry Ford Technical Fellow, Ford Motor Company, USA: “The book Empirical Approach to Machine Learning opens new horizons to automated and efficient data processing.” Paul J. Werbos, Inventor of the back-propagation method, USA: “I owe great thanks to Professor Plamen Angelov for making this important material available to the community just as I see great practical needs for it, in the new area of making real sense of high-speed data from the brain.” Chin-Teng Lin, Distinguished Professor at University of Technology Sydney, Australia: “This new book will set up a milestone for the modern intelligent systems.” Edward Tunstel, President of IEEE Systems, Man, Cybernetics Society, USA: “Empirical Approach to Machine Learning provides an insightful and visionary boost of progress in the evolution of computational learning capabilities yielding interpretable and transparent implementations.. es
dc.language.iso en es
dc.publisher Springer es
dc.relation.ispartofseries Studies in Computational Intelligence;Vol. 800
dc.rights Este documento es reproducido por la biblioteca universitaria de la UCLV bajo el amparo de la legislación cubana vigente sobre derecho de autor. Los usuarios podrán utilizar este material bajo la siguiente licencia: Reconociendo a los autores de la obra mediante las citas y referencias bibliográficas correspondientes, utilizar solo para fines No Comerciales y No realizar reproducciones u obras derivadas. es
dc.subject Ingeniería es
dc.subject Reconocimiento Óptico de Patrones es
dc.subject Big Data es
dc.subject Minería de Datos es
dc.subject Inteligencia Computacional es
dc.subject Aprendizaje Automático es
dc.subject Engineering es
dc.subject Reconocimiento Óptico de Patrones es
dc.subject Big Data es
dc.subject Data Mining es
dc.subject Inteligencia Computacional es
dc.subject Machine Learning es
dc.title Empirical approach to machine learning es
dc.type Book es


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