A Neural Network Classifier for the I100 OCR Chip
Platt, John C., Allen, Timothy P.
–Neural Information Processing Systems
Therefore, we want c to be less than 0.5. In order to get a 2:1 margin, we choose c 0.25. The classifier is trained only on individual partial characters instead of all possible combinations of partial characters. Therefore, we can specify the classifier using only 1523 constraints, instead of creating a training set of approximately 128,000 possible combinations of partial characters. Applying these constraints is therefore much faster than back-propagation on the entire data set.
Neural Information Processing Systems
Dec-31-1996
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