# Information and Self-Organization : A Macroscopic Approach to Complex Systems /

##### By: Haken, Hermann [author.].

##### Contributor(s): SpringerLink (Online service)0.

Material type: BookSeries: Springer Series in Synergetics: Publisher: Berlin, Heidelberg : Springer Berlin Heidelberg, 2006.Edition: Third Enlarged Edition.Description: XIV, 258 p. online resource.Content type: text Media type: computer Carrier type: online resourceISBN: 9783540330233.Subject(s): Physics | Neurosciences | Data structures (Computer science) | System theory | Condensed matter | Biophysics | Biological physics | Statistical physics | Dynamical systems.1 | Physics.2 | Statistical Physics, Dynamical Systems and Complexity.2 | Systems Theory, Control.2 | Condensed Matter Physics.2 | Neurosciences.2 | Biophysics and Biological Physics.2 | Data Structures, Cryptology and Information Theory.2DDC classification: 621 Online resources: Click here to access onlineItem type | Current location | Call number | Status | Date due | Barcode | Item holds |
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PK Kelkar Library, IIT Kanpur | Available | EBK6886 |

The Challenge of Complex Systems -- From the Microscopic to the Macroscopic World ... -- ... and Back Again: The Maximum Information Principle (MIP) -- An Example from Physics: Thermodynamics -- Application of the Maximum Information Principle to Self-Organizing Systems -- The Maximum Information Principle for Nonequilibrium Phase Transitions: Determination of Order Parameters, Enslaved Modes, and Emerging Patterns -- Information, Information Gain, and Efficiency of Self-Organizing Systems Close to Their Instability Points -- Direct Determination of Lagrange Multipliers -- Unbiased Modeling of Stochastic Processes: How to Guess Path Integrals, Fokker-Planck Equations and Langevin-�to Equations -- Application to Some Physical Systems -- Transitions Between Behavioral Patterns in Biology. An Example: Hand Movements -- Pattern Recognition. Unbiased Guesses of Processes: Explicit Determination of Lagrange Multipliers -- Information Compression in Cognition: The Interplay between Shannon and Semantic Information -- Quantum Systems -- Quantum Information -- Quantum Computation -- Concluding Remarks and Outlook.

This book presents the concepts needed to deal with self-organizing complex systems from a unifying point of view that uses macroscopic data. The various meanings of the concept "information" are discussed and a general formulation of the maximum information (entropy) principle is used. With the aid of results from synergetics, adequate objective constraints for a large class of self-organizing systems are formulated and examples are given from physics, life and computer science. The relationship to chaos theory is examined and it is further shown that, based on possibly scarce and noisy data, unbiased guesses about processes of complex systems can be made and the underlying deterministic and random forces determined. This allows for probabilistic predictions of processes, with applications to numerous fields in science, technology, medicine and economics. The extensions of the third edition are essentially devoted to an introduction to the meaning of information in the quantum context. Indeed, quantum information science and technology is presently one of the most active fields of research at the interface of physics, technology and information sciences and has already established itself as one of the major future technologies for processing and communicating information on any scale. This book addresses graduate students and nonspecialist researchers wishing to get acquainted with the concept of information from a scientific perspective in more depth. It is suitable as a textbook for advanced courses or for self-study.

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