The Boltzmann Machine as a Neural Model
نویسنده
چکیده
1. Hinton, Geo rey E., Terrence J. Sejnowski and David H. Ackley, Boltzmann Machines: Constraint Satisfaction Networks that Learn, Technical Report CMU-CS-84-119, May 1984. 2. Simpson, Patrick K., Arti cial Neural Systems: Foundations, Paradigms, Applications, and Implementations, 1990. Chapter 5: ANS Paradigms and Their Applications and Implementations, pages 120-127. 3. Hinton, Geo rey, Lecture Notes for CS2535: Neural Networks, University of Toronto, 1989. 4. Recce, Michael, Connectionist Models: Background and Emergent Properties.
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