Adaptive Processing of Sequences and Data Structures [electronic resource] :International Summer School on Neural Networks “E.R. Caianiello” Vietri sul Mare, Salerno, Italy September 6–13, 1997 Tutorial Lectures /
Contributor(s): Giles, C. Lee [editor.] | Gori, Marco [editor.] | SpringerLink (Online service).Material type: BookSeries: Lecture Notes in Computer Science: 1387Publisher: Berlin, Heidelberg : Springer Berlin Heidelberg, 1998.Description: XIV, 438 p. online resource.Content type: text Media type: computer Carrier type: online resourceISBN: 9783540697527.Subject(s): Computer science | Microprocessors | Architecture, Computer | Computer programming | Data structures (Computer science) | Computers | Artificial intelligence | Computer Science | Computer System Implementation | Programming Techniques | Artificial Intelligence (incl. Robotics) | Computation by Abstract Devices | Processor Architectures | Data StructuresOnline resources: Click here to access online
Recurrent neural network architectures: An overview -- Gradient based learning methods -- Diagrammatic methods for deriving and relating temporal neural network algorithms -- An introduction to learning structured information -- Neural networks for processing data structures -- The loading problem: Topics in complexity -- Learning dynamic Bayesian networks -- Probabilistic models of neuronal spike trains -- Temporal models in blind source separation -- Recursive neural networks and automata -- The neural network pushdown automaton: Architecture, dynamics and training -- Neural dynamics with stochasticity -- Parsing the stream of time: The value of event-based segmentation in a complex real-world control problem -- Hybrid HMM/ANN systems for speech recognition: Overview and new research directions -- Predictive models for sequence modelling, application to speech and character recognition.
This book is devoted to adaptive processing of structured information similar to flexible and intelligent information processing by humans - in contrast to merely sequential processing of predominantly symbolic information within a deterministic framework. Adaptive information processing allows for a mixture of sequential and parallel processing of symbolic as well as subsymbolic information within deterministic and probabilistic frameworks. The book originates from a summer school held in September 1997 and thus is ideally suited for advanced courses on adaptive information processing and advanced learning techniques or for self-instruction. Research and design professionals active in the area of neural information processing will find it a valuable state-of-the-art survey.