0
Your cart

Your cart is empty

Browse All Departments
  • All Departments
Price
  • R1,000 - R2,500 (2)
  • R2,500 - R5,000 (3)
  • R5,000 - R10,000 (2)
  • -
Status
Brand

Showing 1 - 7 of 7 matches in All Departments

Estimation of Distribution Algorithms - A New Tool for Evolutionary Computation (Hardcover, 2002 ed.): Pedro Larranaga, Jose A.... Estimation of Distribution Algorithms - A New Tool for Evolutionary Computation (Hardcover, 2002 ed.)
Pedro Larranaga, Jose A. Lozano
R5,949 Discovery Miles 59 490 Ships in 10 - 15 working days

Estimation of Distribution Algorithms: A New Tool for Evolutionary Computation is devoted to a new paradigm for evolutionary computation, named estimation of distribution algorithms (EDAs). This new class of algorithms generalizes genetic algorithms by replacing the crossover and mutation operators with learning and sampling from the probability distribution of the best individuals of the population at each iteration of the algorithm. Working in such a way, the relationships between the variables involved in the problem domain are explicitly and effectively captured and exploited. This text constitutes the first compilation and review of the techniques and applications of this new tool for performing evolutionary computation. Estimation of Distribution Algorithms: A New Tool for Evolutionary Computation is clearly divided into three parts. Part I is dedicated to the foundations of EDAs. In this part, after introducing some probabilistic graphical models - Bayesian and Gaussian networks - a review of existing EDA approaches is presented, as well as some new methods based on more flexible probabilistic graphical models. A mathematical modeling of discrete EDAs is also presented. Part II covers several applications of EDAs in some classical optimization problems: the travelling salesman problem, the job scheduling problem, and the knapsack problem. EDAs are also applied to the optimization of some well-known combinatorial and continuous functions. Part III presents the application of EDAs to solve some problems that arise in the machine learning field: feature subset selection, feature weighting in K-NN classifiers, rule induction, partial abductive inference in Bayesian networks, partitional clustering, and the search for optimal weights in artificial neural networks. Estimation of Distribution Algorithms: A New Tool for Evolutionary Computation is a useful and interesting tool for researchers working in the field of evolutionary computation and for engineers who face real-world optimization problems. This book may also be used by graduate students and researchers in computer science. ... I urge those who are interested in EDAs to study this well-crafted book today.' David E. Goldberg, University of Illinois Champaign-Urbana.

Towards a New Evolutionary Computation - Advances on Estimation of Distribution Algorithms (Hardcover, 2006 ed.): Jose A.... Towards a New Evolutionary Computation - Advances on Estimation of Distribution Algorithms (Hardcover, 2006 ed.)
Jose A. Lozano, Pedro Larranaga, Inaki Inza, Endika Bengoetxea
R4,535 Discovery Miles 45 350 Ships in 12 - 17 working days

Estimation of Distribution Algorithms (EDAs) are a set of algorithms in the Evolutionary Computation (EC) field characterized by the use of explicit probability distributions in optimization. Contrarily to other EC techniques such as the broadly known Genetic Algorithms (GAs) in EDAs, the crossover and mutation operators are substituted by the sampling of a distribution previously learnt from the selected individuals. EDAs have experienced a high development that has transformed them into an established discipline within the EC field.

This book attracts the interest of new researchers in the EC field as well as in other optimization disciplines, and that it becomes a reference for all of us working on this topic. The twelve chapters of this book can be divided into those that endeavor to set a sound theoretical basis for EDAs, those that broaden the methodology of EDAs and finally those that have an applied objective.

Industrial Applications of Machine Learning (Paperback): Pedro Larranaga, David Atienza, Javier Diaz-Rozo, Alberto Ogbechie,... Industrial Applications of Machine Learning (Paperback)
Pedro Larranaga, David Atienza, Javier Diaz-Rozo, Alberto Ogbechie, Concha Bielza, …
R1,419 Discovery Miles 14 190 Ships in 12 - 17 working days

Industrial Applications of Machine Learning shows how machine learning can be applied to address real-world problems in the fourth industrial revolution, and provides the required knowledge and tools to empower readers to build their own solutions based on theory and practice. The book introduces the fourth industrial revolution and its current impact on organizations and society. It explores machine learning fundamentals, and includes four case studies that address a real-world problem in the manufacturing or logistics domains, and approaches machine learning solutions from an application-oriented point of view. The book should be of special interest to researchers interested in real-world industrial problems. Features Describes the opportunities, challenges, issues, and trends offered by the fourth industrial revolution Provides a user-friendly introduction to machine learning with examples of cutting-edge applications in different industrial sectors Includes four case studies addressing real-world industrial problems solved with machine learning techniques A dedicated website for the book contains the datasets of the case studies for the reader's reproduction, enabling the groundwork for future problem-solving Uses of three of the most widespread software and programming languages within the engineering and data science communities, namely R, Python, and Weka

Industrial Applications of Machine Learning (Hardcover): Pedro Larranaga, David Atienza, Javier Diaz-Rozo, Alberto Ogbechie,... Industrial Applications of Machine Learning (Hardcover)
Pedro Larranaga, David Atienza, Javier Diaz-Rozo, Alberto Ogbechie, Concha Bielza, …
R3,645 Discovery Miles 36 450 Ships in 12 - 17 working days

Industrial Applications of Machine Learning shows how machine learning can be applied to address real-world problems in the fourth industrial revolution, and provides the required knowledge and tools to empower readers to build their own solutions based on theory and practice. The book introduces the fourth industrial revolution and its current impact on organizations and society. It explores machine learning fundamentals, and includes four case studies that address a real-world problem in the manufacturing or logistics domains, and approaches machine learning solutions from an application-oriented point of view. The book should be of special interest to researchers interested in real-world industrial problems. Features Describes the opportunities, challenges, issues, and trends offered by the fourth industrial revolution Provides a user-friendly introduction to machine learning with examples of cutting-edge applications in different industrial sectors Includes four case studies addressing real-world industrial problems solved with machine learning techniques A dedicated website for the book contains the datasets of the case studies for the reader's reproduction, enabling the groundwork for future problem-solving Uses of three of the most widespread software and programming languages within the engineering and data science communities, namely R, Python, and Weka

Estimation of Distribution Algorithms - A New Tool for Evolutionary Computation (Paperback, Softcover reprint of the original... Estimation of Distribution Algorithms - A New Tool for Evolutionary Computation (Paperback, Softcover reprint of the original 1st ed. 2002)
Pedro Larranaga, Jose A. Lozano
R5,739 Discovery Miles 57 390 Ships in 10 - 15 working days

Estimation of Distribution Algorithms: A New Tool for Evolutionary Computation is devoted to a new paradigm for evolutionary computation, named estimation of distribution algorithms (EDAs). This new class of algorithms generalizes genetic algorithms by replacing the crossover and mutation operators with learning and sampling from the probability distribution of the best individuals of the population at each iteration of the algorithm. Working in such a way, the relationships between the variables involved in the problem domain are explicitly and effectively captured and exploited. This text constitutes the first compilation and review of the techniques and applications of this new tool for performing evolutionary computation. Estimation of Distribution Algorithms: A New Tool for Evolutionary Computation is clearly divided into three parts. Part I is dedicated to the foundations of EDAs. In this part, after introducing some probabilistic graphical models - Bayesian and Gaussian networks - a review of existing EDA approaches is presented, as well as some new methods based on more flexible probabilistic graphical models. A mathematical modeling of discrete EDAs is also presented. Part II covers several applications of EDAs in some classical optimization problems: the travelling salesman problem, the job scheduling problem, and the knapsack problem. EDAs are also applied to the optimization of some well-known combinatorial and continuous functions. Part III presents the application of EDAs to solve some problems that arise in the machine learning field: feature subset selection, feature weighting in K-NN classifiers, rule induction, partial abductive inference in Bayesian networks, partitional clustering, and the search for optimal weights in artificial neural networks. Estimation of Distribution Algorithms: A New Tool for Evolutionary Computation is a useful and interesting tool for researchers working in the field of evolutionary computation and for engineers who face real-world optimization problems. This book may also be used by graduate students and researchers in computer science. ... I urge those who are interested in EDAs to study this well-crafted book today.' David E. Goldberg, University of Illinois Champaign-Urbana.

Towards a New Evolutionary Computation - Advances on Estimation of Distribution Algorithms (Paperback, Softcover reprint of... Towards a New Evolutionary Computation - Advances on Estimation of Distribution Algorithms (Paperback, Softcover reprint of hardcover 1st ed. 2006)
Jose A. Lozano, Pedro Larranaga, Inaki Inza, Endika Bengoetxea
R4,515 Discovery Miles 45 150 Ships in 10 - 15 working days

Estimation of Distribution Algorithms (EDAs) are a set of algorithms in the Evolutionary Computation (EC) field characterized by the use of explicit probability distributions in optimization. Contrarily to other EC techniques such as the broadly known Genetic Algorithms (GAs) in EDAs, the crossover and mutation operators are substituted by the sampling of a distribution previously learnt from the selected individuals. EDAs have experienced a high development that has transformed them into an established discipline within the EC field.

This book attracts the interest of new researchers in the EC field as well as in other optimization disciplines, and that it becomes a reference for all of us working on this topic. The twelve chapters of this book can be divided into those that endeavor to set a sound theoretical basis for EDAs, those that broaden the methodology of EDAs and finally those that have an applied objective.

Data-Driven Computational Neuroscience - Machine Learning and Statistical Models (Hardcover): Concha Bielza, Pedro Larranaga Data-Driven Computational Neuroscience - Machine Learning and Statistical Models (Hardcover)
Concha Bielza, Pedro Larranaga
R2,370 Discovery Miles 23 700 Ships in 12 - 17 working days

Data-driven computational neuroscience facilitates the transformation of data into insights into the structure and functions of the brain. This introduction for researchers and graduate students is the first in-depth, comprehensive treatment of statistical and machine learning methods for neuroscience. The methods are demonstrated through case studies of real problems to empower readers to build their own solutions. The book covers a wide variety of methods, including supervised classification with non-probabilistic models (nearest-neighbors, classification trees, rule induction, artificial neural networks and support vector machines) and probabilistic models (discriminant analysis, logistic regression and Bayesian network classifiers), meta-classifiers, multi-dimensional classifiers and feature subset selection methods. Other parts of the book are devoted to association discovery with probabilistic graphical models (Bayesian networks and Markov networks) and spatial statistics with point processes (complete spatial randomness and cluster, regular and Gibbs processes). Cellular, structural, functional, medical and behavioral neuroscience levels are considered.

Free Delivery
Pinterest Twitter Facebook Google+
You may like...
Switched Dual Socket 3Pin Surge…
R199 R189 Discovery Miles 1 890
1 Recce: Volume 3 - Onsigbaarheid Is Ons…
Alexander Strachan Paperback R360 R309 Discovery Miles 3 090
Sylvanian Families - Walnut Squirrel…
R616 Discovery Miles 6 160
Mellerware Swiss - Plastic Floor Fan…
 (1)
R349 Discovery Miles 3 490
Die Wonder Van Die Skepping - Nog 100…
Louie Giglio Hardcover R279 R235 Discovery Miles 2 350
Microsoft Xbox Series X Console (1TB)
 (21)
R14,999 Discovery Miles 149 990
LG 20MK400H 19.5" WXGA LED Monitor…
R2,199 R1,699 Discovery Miles 16 990
Loot
Nadine Gordimer Paperback  (2)
R205 R168 Discovery Miles 1 680
Home Classix Travel Mug (670ml…
R139 R110 Discovery Miles 1 100
Aerolatte Cappuccino Art Stencils (Set…
R110 R95 Discovery Miles 950

 

Partners