This handbook presents some of the most recent topics in neural information processing, covering both theoretical concepts and practical applications. The contributions include: 
- Deep architectures 
- Recurrent, recursive, and graph neural networks 
- Cellular neural networks 
- Bayesian networks 
- Approximation capabilities of neural networks 
- Semi-supervised learning 
- Statistical relational learning 
-  Kernel methods for structured data 
-  Multiple classifier systems 
-  Self organisation and modal learning 
-  Applications to content-based image retrieval, text mining in large document collections, and bioinformatics 
 
This book is thought particularly for graduate students, researchers and practitioners, willing to deepen their knowledge on more advanced connectionist models and related learning paradigms.
This handbook presents some of the most recent topics in neural information processing, covering both theoretical concepts and practical applications. The contributions include: 
 Deep architectures 
 Recurrent, recursive, and graph neural networks 
 Cellular neural networks 
 Bayesian networks 
 Approximation capabilities of neural networks 
 Semi-supervised learning 
 Statistical relational learning 
 Kernel methods for structured data 
 Multiple classifier systems 
 Self organisation and modal learning 
 Applications to content-based image retrieval, text mining in large document collections, and bioinformatics 
 
This book is thought particularly for graduate students, researchers and practitioners, willing to deepen their knowledge on more advanced connectionist models and related learning paradigms.