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  • × classification_ss:"54.72 (Künstliche Intelligenz)"
  • × classification_ss:"ST 300"
  1. Lenzen, M.: Künstliche Intelligenz : was sie kann & was uns erwartet (2018) 0.01
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    Date
    18. 6.2018 19:22:02
  2. Allman, W.F.: Menschliches Denken - Künstliche Intelligenz : von der Gehirnforschung zur nächsten Computer-Generation (1990) 0.01
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    Content
    Enthält die Kapitel: (E) Vom Neuron zur Psyche; (1) Das Rüstzeug des Geistes: die Revolution der neuen Konnektionisten: (2) Das Puzzlespiel: die Mechanismen des Denkens; (3) Die große Wasserscheide: Gehirnforschung contra Geistesforschung; (4) Wetware: die Anatomie des Erinnerungsvermögens; (5) Wodurch wird ein Neuronenbündel so schlau?: die Wissenschaft von der Komplexität; (6) Der Computer als Autodidakt: wie Neuralnetzwerke das Laufen lernen; (7) Maschinenträume: Neuralnetzwerke im Arbeitseinsatz; (8) Streitbare Denker: der Kampf um die Herzen der Wissenschaftler; (9) Der Musterschüler: NETalk lernt laut lesen
    Isbn
    3-426-26388-2
  3. Zur Konstruktion künstlicher Gehirne (2009) 0.00
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    Content
    1. Problematik der Modellierung künstlicher Gehirne - 2. Informationsverarbeitung in Netzen mit konstanten Synapsen - 3. Allgemeine Theorie der Netze mit dynamischen Synapsen - 4. Makrodynamik der Netze mit konstanten Synapsen - 5. Informationsverarbeitung mit dynamischen Synapsen - 6. Netze für die Merkmalsdetektion - 7. Netze für die Merkmalserkennung - 8. Netze für die robuste Kopfdetektion - 9. Ausblick - 10. Vor üb er legungen zur mikroelektronischen Realisierung - 11. Elementare Schaltungen für Neuronen, Synapsen und Photosensoren - 12. Simulation mikroelektronischer neuronaler Schaltungen und Systeme - 13. Architektur und Chip-Entwurf des Merkmalserkenners - 14. Architektur und Chip-Entwurf für Merkmalsdetektoren - 15. 3D-Stapeltechnik für den Sehwürfel - 16. Architektur eines Sehwürfels der ersten Generation Vgl.: https://link.springer.com/book/10.1007%2F978-3-642-00191-8.
  4. Stuart, D.: Practical ontologies for information professionals (2016) 0.00
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    Content
    C H A P T E R 1 What is an ontology?; Introduction; The data deluge and information overload; Defining terms; Knowledge organization systems and ontologies; Ontologies, metadata and linked data; What can an ontology do?; Ontologies and information professionals; Alternatives to ontologies; The aims of this book; The structure of this book; C H A P T E R 2 Ontologies and the semantic web; Introduction; The semantic web and linked data; Resource Description Framework (RDF); Classes, subclasses and properties; The semantic web stack; Embedded RDF; Alternative semantic visionsLibraries and the semantic web; Other cultural heritage institutions and the semantic web; Other organizations and the semantic web; Conclusion; C H A P T E R 3 Existing ontologies; Introduction; Ontology documentation; Ontologies for representing ontologies; Ontologies for libraries; Upper ontologies; Cultural heritage data models; Ontologies for the web; Conclusion; C H A P T E R 4 Adopting ontologies; Introduction; Reusing ontologies: application profiles and data models; Identifying ontologies; The ideal ontology discovery tool; Selection criteria; Conclusion C H A P T E R 5 Building ontologiesIntroduction; Approaches to building an ontology; The twelve steps; Ontology development example: Bibliometric Metrics Ontology element set; Conclusion; C H A P T E R 6 Interrogating ontologies; Introduction; Interrogating ontologies for reuse; Interrogating a knowledge base; Understanding ontology use; Conclusion; C H A P T E R 7 The future of ontologies and the information professional; Introduction; The future of ontologies for knowledge discovery; The future role of library and information professionals; The practical development of ontologies