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Informationen zum Autor Michael R. W. Dawson is a member of the Department of Psychology and the Biological Computation Project at the University of Alberta, Canada. His primary research interests concern the foundations of cognitive science, learning and representation in connectionist networks, and computational models of motion perception. He is the author of Understanding Cognitive Science (Blackwell Publishers, 1998). Klappentext Models are important tools in psychology used to generate predictions to test the validity of theories. Minds and Machines: Connectionism and Psychological Modeling examines three different kinds of models (models of data, mathematical models, and computer simulations) and discusses a synthetic approach to modeling. Connectionist models are introduced as tools that are both synthetic and representational and that can be used as the basis for conducting synthetic psychology. The book investigates some of the basic properties of connectionism in the context of synthetic psychology, including detailed accounts of how the internal structure of connectionist networks can be interpreted. A website of supplementary material is available at www.bcp.psych.ualberta.ca/ mike/Book2/ and includes free software for conducting the connectionist simulations described in the book as well as instructions for building simple robots to illustrate some of the principles of the synthetic approach. Zusammenfassung Examines different kinds of models and investigates some of the basic properties of connectionism in the context of synthetic psychology! including accounts of how the internal structure of connectionist networks can be interpreted. This title investigates basic properties of connectionism in the context of synthetic psychology. Inhaltsverzeichnis List of Figures. List of Tables. 1. The Kids in the Hall. Synthetic Versus Analytic Traditions. . 2. Advantages and Disadvantages of Modeling. What Is A Model?. Advantages and Disadvantages of Models. . 3. Models of Data. An Example of a Model of Data. Properties of Models of Data. . 4. Mathematical Models. An Example Mathematical Model. Mathematical Models vs. Models of Data. . 5. Computer Simulations. A Sample Computer Simulation. Connectionist Models. Properties of Computer Simulations. . 6. First Steps Toward Synthetic Psychology. Introduction. Building a Thoughtless Walker. Step 1: Synthesis. Step 2: Emergence. Step 3: Analysis. Issues Concerning Synthetic Psychology. . 7. Uphill Analysis, Downhill Synthesis. Introduction. From Homeostats to Tortoises. Ashby's Homeostat. Vehicles. Synthesis and Emergence: Some Modern Examples. The Law of Uphill Analysis and Downhill Synthesis. . 8. Connectionism As Synthetic Psychology. Introduction. Beyond Sensory Reflexes. Connectionism, Synthesis, and Representation. Summary and Conclusions. . 9. Building Associations. From Associationism To Connectionism. Building An Associative Memory. Beyond the Limitations of Hebb Learning. Associative Memory and Synthetic Psychology. . 10. Making Decisions. The Limits of Linearity. A Fundamental Nonlinearity. Building a Perceptron: A Nonlinear Associative Memory. The Psychology of Perceptrons. The Need for Layers. . 11. Sequences of Decisions. The Logic of Layers. Training Multilayered Networks. A Simple Case Study: Exclusive Or. A Second Case Study: Classifying Musical Chords. A Third Case Stud...