TY - BOOK AU - O'Brien,Jamie TI - Shaping knowledge: complex socio-spatial modelling for adaptive organizations T2 - Chandos information professional series SN - 9781843347514 (pbk) U1 - 658.4038 PY - 2014/// CY - Amsterdam, Boston PB - Chandos Pub. KW - Knowledge management KW - Knowledge representation (Information theory) N1 - DedicationList of figures and tablesFiguresTables AcknowledgementsPrefaceAbout the author1: Introduction and case studyAbstractGeneral introductionSpace and knowledgeDimensions of knowledgeKnowledge representationA case study in socio-spatial changeOverview of the book 2: Innovation, agency and technologyAbstractSpatializing knowledgeSpace and innovationKnowledge as technologyKnowledge as innovationPatterns of innovationSpace, knowledge and powerConclusion 3: The dynamics of innovationAbstractThe social life of innovationRegional dynamicsComplexity and modularityPatterns of adoptionFlowsWavesBifurcationsCriticalityConclusion 4: Modelling knowledge dynamicsAbstractInformation and knowledgeEcologies of innovationEcologies of human developmentNetwork dynamicsNetwork graphsInnovation networksThe topology of regional knowledgeSystem dynamics of innovationsConclusion 5: Modelling socio-spatial agentsAbstractAgency and actionManifolds and messElements of agent behaviourAgency and autonomyCoalitions and decisionsResource allocationSearch and decision-makingModelling with gamesConclusion 6: Case studies in socio-spatial changeAbstractMicro-level socio-spatial change: slum sanitationMicro-level change agentsMeso-level socio-spatial change: remote long-term care servicesSocio-spatial inclusion and mobile platformsMeso-level knowledge integrationExo-level socio-spatial change: Arctic urbanizationExo-level instability and infrastructureAgency and adaptationDilemmas and homophilyBidding and votingKnowledge systemsConclusion 7: Reasoning with graphsAbstractRepresenting knowledge flowVisualization as science and artVisualizations as thought experimentsDrawing relationshipsLogic, symbols and computingComputing for simulationCommunity modelsSpatial distance functionsComplex data modellingSpatial data structuresSurface-network analysisConclusion 8: Decisions and argumentsAbstractConstructing knowledgeDecisions and representationExperience and argumentsBasics of argumentationArgumentation schemesDeriving argumentsApplying argumentationConclusion 9: Directions for adaptive planningAbstractPrinciples of adaptationAdaptation in human systemsManaging knowledge complexityDirections for planningDirections for researchPlanning with implicit knowledgeCalibrating modelsGeneral summaryGeneral conclusions GlossarySources for socio-spatial argumentationBibliographyIndex ER -