Computed Decision Weights and a New Learning Algorithm for Neural Classifiers

09/17/2022
by   Eugene Wong, et al.
13

In this paper we consider the possibility of computing rather than training the decision layer weights of a neural classifier. Such a possibility arises in two way, from making an appropriate choice of loss function and by solving a problem of constrained optimization. The latter formulation leads to a promising new learning process for pre-decision weights with both simplicity and efficacy.

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