Carnegie Mellon University
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The Recurrent Cascade-Correlation architecture

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journal contribution
posted on 2002-08-01, 00:00 authored by Scott E. Fahlman
Abstract: "Recurrent Cascade-Correlation (RCC) is a recurrent version of the Cascade-Correlation learning architecture of Fahlman and Lebiere [Fahlman, 1990]. RCC can learn from examples to map a sequence of inputs into a desired sequence of outputs. New hidden units with recurrent connections are added to the network one at a time, as they are needed during training. In effect, the network builds up a finite-state machine tailored specifically for the current problem. RCC retains the advantages of Cascade-Correlation: fast learning, good generalization, automatic construction of a near-minimal multi-layered network, and the ability to learn complex behaviors through a sequence of simple lessons.The power of RCC is demonstrated on two tasks: learning a finite- state grammar from examples of legal strings, and learning to recognize characters in Morse code."

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2002-08-01