Fr. 289.20

Implementation of Machine Learning Algorithms Using Control-Flow and Dataflow Paradigms

English · Paperback / Softback

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Description

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Based on current literature and cutting-edge advances in the machine learning field, there are four algorithms whose usage in new application domains must be explored: neural networks, rule induction algorithms, tree-based algorithms, and density-based algorithms. A number of machine learning related algorithms have been derived from these four algorithms. Consequently, they represent excellent underlying methods for extracting hidden knowledge from unstructured data, as essential data mining tasks. Implementation of Machine Learning Algorithms Using Control-Flow and Dataflow Paradigms presents widely used data-mining algorithms and explains their advantages and disadvantages, their mathematical treatment, applications, energy efficient implementations, and more. It presents research of energy efficient accelerators for machine learning algorithms. Covering topics such as control-flow implementation, approximate computing, and decision tree algorithms, this book is an essential resource for computer scientists, engineers, students and educators of higher education, researchers, and academicians.

Product details

Authors Aleksandar Kartelj, Veljko Milutinovi¿, Nenad Miti¿
Publisher Engineering Science Reference
 
Languages English
Product format Paperback / Softback
Released 11.03.2022
 
EAN 9781799883517
ISBN 978-1-79988-351-7
No. of pages 312
Dimensions 178 mm x 254 mm x 17 mm
Weight 590 g
Subject Natural sciences, medicine, IT, technology > IT, data processing > Programming languages

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