Computational Intelligence and Modern Heuristics
by Al-Dahoud Ali
Publisher: InTech 2010
Number of pages: 356
This book will take its readers on a stunning voyage of computational intelligence heuristics research and applications. Computational intelligence techniques, ranging from neural networks, fuzzy logic, via genetic algorithms to support vector machines, case based, neighborhood search techniques, ant colonies, and particle swarm optimization are effective approaches with applications where problem domain knowledge exists.
Home page url
Download or read it online for free here:
by Yoav Shoham, Kevin Leyton-Brown - Cambridge University Press
Multiagent systems consist of multiple autonomous entities having different information and diverging interests. This comprehensive introduction to the field offers a computer science perspective, but also draws on ideas from game theory.
by Ahmed Rebai (ed.) - InTech
Bayesian networks are a general tool that can be used for a large number of problems involving uncertainty: reasoning, learning, planning and perception. This is a collection of contributions to the methodology and applications of Bayesian networks.
by Bill Hibbard - arXiv
This book analyzes the issues of ethical artificial intelligence. The behavior of future AI systems can be described by mathematical equations, which are adapted to analyze possible unintended AI behaviors and ways that AI designs can avoid them.
by George K Matsopoulos - InTech
Contents: Learning the Number of Clusters in Self Organizing Map; Neural-Network Enhanced Visualization of High-Dimensional Data; SOM-based Applications in Remote Sensing; Segmentation of Satellite Images Using SOM; Face Recognition Using SOM; etc.