06780nam 22009255 450 991043782310332120200706141359.01-283-74213-694-007-3852-810.1007/978-94-007-3852-2(CKB)2670000000280522(EBL)971837(OCoLC)817917018(SSID)ssj0000790471(PQKBManifestationID)11428975(PQKBTitleCode)TC0000790471(PQKBWorkID)10745752(PQKB)10798384(DE-He213)978-94-007-3852-2(MiAaPQ)EBC971837(PPN)258864923(PPN)168336421(EXLCZ)99267000000028052220121030d2013 u| 0engur|n|---|||||txtccrCognitive Agent-based Computing-I A Unified Framework for Modeling Complex Adaptive Systems using Agent-based & Complex Network-based Methods /by Muaz A Niazi, Amir Hussain1st ed. 2013.Dordrecht :Springer Netherlands :Imprint: Springer,2013.1 online resource (65 p.)SpringerBriefs in Cognitive Computation,2212-6023Description based upon print version of record.94-007-3851-X Includes bibliographical references and index.Cognitive Agent-basedComputing-I; Acknowledgments; Contents; Acronyms; Abstract; 1 Introduction; 1.1...About the AgentAgent Concept; 1.2...A Framework for Complex Adaptive Systems; 1.3...Modeling CASCAS; 1.4...Motivation; 1.5...Aims and Objectives; 1.6...Overview of the Briefs; References; 2 A Unified Framework; 2.1...Overview of the Proposed Framework; 2.2...Proposed Framework Levels Formulated in Terms of CASCAS Study Objectives; 2.3...Proposed Framework Levels Formulated in Relation to Available Data Types; 2.4...Overview of the Rest of the Parts; 2.4.1 Overview of Case Studies; 2.4.2 Outline of the BriefsReferences3 Complex Adaptive Systems; 3.1...Overview; 3.2...Complex Adaptive Systems (CASCAS); 3.2.1 The Seven Basics of CASCAS; 3.2.2 Emergence; 3.3...Examples of CASCAS; 3.3.1 Natural CASCAS Example 1: CAS in Plants; 3.3.2 Natural CASCAS Example 2: CAS in Social Systems; 3.3.3 Artificial CASCAS Example 1: Complex Adaptive Communication Networks; 3.3.4 Artificial CASCAS Example 2: Simulation of Flocking Boids; References; 4 Modeling CASCAS; 4.1...AgentAgent-based Modeling and Agent-based Computing; 4.1.1 AgentAgent-oriented ProgrammingAgentAgent-Oriented Programming4.1.2 Multi-agentagent Oriented Programming4.1.3 AgentAgent-based or Massively Multiagent Modeling; 4.1.4 Benefits of AgentAgent-based Thinking; 4.2...A Review of an AgentAgent-based Tool; 4.2.1 NetLogo Simulation: An Overview; 4.2.1.1 Overview of NetLogo for Modeling Complex Interaction ProtocolsOverview of NetLogo for Modeling Complex Interaction Protocols; 4.2.1.2 Capabilities in Handling a Range of Input Values; 4.2.1.3 Range of Statistics and Complex Metrics; 4.3...Verification and Validation of SimulationSimulation Models; 4.3.1 Overview; 4.3.2 Verification and Validation of ABMs4.3.3 Related Work on V&V of ABMABM4.4...Overview of Communication Network Simulators; 4.4.1 Simulation of WSNs; 4.4.2 Simulation of P2P Networks; 4.4.3 Simulation of Robotic Swarms; 4.4.4 ABMABM for Complex Communication Networks SimulationSimulation; 4.5...Complex Network Modeling; 4.5.1 Complex Network Methods; 4.5.2 Theoretical Basis; 4.5.3 Centralities and Other Quantitative Measures; 4.5.3.1 Clustering Coefficient; 4.5.3.2 Matching Index; 4.5.4 Centrality Measures; 4.5.4.1 Degree Centrality; 4.5.4.2 Eccentricity Centrality; 4.5.4.3 Closeness Centrality4.5.4.4 Shortest Path Betweenness Centrality4.5.5 Software Tools for Complex NetworksComplex Networks; 4.6...Conclusions; References; IndexComplex Systems are made up of numerous interacting sub-components. Non-linear interactions of these components or agents give rise to emergent behavior observable at the global scale. Agent-based modeling and simulation is a proven paradigm which has previously been used for effective computational modeling of complex systems in various domains. Because of its popular use across different scientific domains, research in agent-based modeling has primarily been vertical in nature. The goal of this book is to provide a single hands-on guide to developing cognitive agent-based models for the exploration of emergence across various types of complex systems. We present practical ideas and examples for researchers and practitioners for the building of agent-based models using a horizontal approach - applications are demonstrated in a number of exciting domains as diverse as wireless sensors networks, peer-to-peer networks, complex social systems, research networks and epidemiological HIV.SpringerBriefs in Cognitive Computation,2212-6023NeurosciencesComputer scienceMathematicsCognitive psychologyBiophysicsBiological physicsNeuroscienceshttps://scigraph.springernature.com/ontologies/product-market-codes/B18006Computer Science, generalhttps://scigraph.springernature.com/ontologies/product-market-codes/I00001Mathematics, generalhttps://scigraph.springernature.com/ontologies/product-market-codes/M00009Cognitive Psychologyhttps://scigraph.springernature.com/ontologies/product-market-codes/Y20060Biological and Medical Physics, Biophysicshttps://scigraph.springernature.com/ontologies/product-market-codes/P27008Medicine.Neurosciences.Computer science.Mathematics.Biomedicine.Cognitive Psychology.Biophysics and Biological Physics.Neurosciences.Computer science.Mathematics.Cognitive psychology.Biophysics.Biological physics.Neurosciences.Computer Science, general.Mathematics, general.Cognitive Psychology.Biological and Medical Physics, Biophysics.006.3Niazi Muaz Aauthttp://id.loc.gov/vocabulary/relators/aut1058427Hussain Amirauthttp://id.loc.gov/vocabulary/relators/autBOOK9910437823103321Cognitive Agent-based Computing-I2499812UNINA