paper
referenced-only
1969
paper:doi-10-1112-blms-1-3-442bAUTOMATON THEORY AND LEARNING SYSTEMS
ByA. Learner
Original abstract (expand)
Edited by D. J. Stewart: pp. xi, 215. 63s. (Academic Press Inc. (London) Ltd., London. 1967).
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