A Sensitivity-Based Adaptive Architecture Pruning Algorithm for Madalines
نویسندگان
چکیده
In this paper, we proposed a new sensitivity-based adaptive architecture pruning algorithm for Madalines. The algorithm establishes a pruning measure based on the network sensitivity to its structure variation and a minimal disturbance principle. The measure can be used to evaluate the performance loss due to its structure changes more or less. And the loss can be compensated by relearning. Thus, the new adaptive pruning mechanism is developed with measuring, pruning, and compensating.
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