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A first undergraduate course in neural networks

Published: 01 February 1990 Publication History
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References

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Anderson, J., & Rosenfeld, E. (Eds). Neurocomputing: Foundations o{ Research. Cambridge: The MIT Press.
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Caudill, M. (1987). Neural Networks Primer. A1 Expert. pp 46-52.
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Denning, P.(Chair) (1989). Computing as a discipline. Communications o} the ACM, 1, pp 9- 23.
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Gallant, S.I. (1988). Connectionist Expert Systems. Communications o} ACM, 2, 152-169.
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Hopfield, J. (1984). Neurons With Graded Response Have Collective Computational Properties. Proceedings National Academy ol Science; 81: pp 3088-3092
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Kohonen, T. (1984). Sel} Organization and Associative Memory. Springer Verlag.
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Maki, W. S., & Abunawass, A. (1988). A neural network simulator for supercomputers. Behavior Research Methods, Instruments, & Computers, 2, 225-239.
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McCtelland, J., & Rumelhart, D. (1989). Explorations in parallel distributed processing. MIT Press Cambridge, MA.
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Minsky, M., & Papert, S. (1%9). Perceptrons: An Introduction to Computional Geometry. Cambridge MA: MIT Press.
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Nevison, C. (1988). An undergraduate parallel processing laboratory. SIGCSE Bulletin, 20, 1, pp 68-77.
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Sejnowski, T., & Rosenberg, C., (1987) Para{{el networks that learn to pronounce ?English text. Complex Systems, 1, 145-t68.
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Whitson, G. M. (1988). An introduction to the parallel distributed processing model of cognition and some examples of how it is changing the teaching of artificial intelligence. SIGCSE Bulletin, 20, 1, pp 59-62.
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  • (1992)Biologically based machine learning paradigmsACM SIGCSE Bulletin10.1145/135250.13452924:1(87-91)Online publication date: 1-Mar-1992
  • (1992)Biologically based machine learning paradigmsProceedings of the twenty-third SIGCSE technical symposium on Computer science education10.1145/134510.134529(87-91)Online publication date: 1-Mar-1992

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cover image ACM Conferences
SIGCSE '90: Proceedings of the twenty-first SIGCSE technical symposium on Computer science education
February 1990
270 pages
ISBN:0897913469
DOI:10.1145/323410
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Published: 01 February 1990

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  • (1992)Biologically based machine learning paradigmsACM SIGCSE Bulletin10.1145/135250.13452924:1(87-91)Online publication date: 1-Mar-1992
  • (1992)Biologically based machine learning paradigmsProceedings of the twenty-third SIGCSE technical symposium on Computer science education10.1145/134510.134529(87-91)Online publication date: 1-Mar-1992

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