A Matlab Tool for Analyzing and Improving Fault Tolerance of Artificial Neural Networks

作者: Rui Borralho , Pedro Fontes , Ana Antunes , Fernando Morgado Dias

DOI: 10.3182/20090921-3-TR-3005.00029

关键词:

摘要: Abstract FTSET is a software tool that deals with fault tolerance of Artificial Neural Networks. This capable evaluating the degree previously trained Network given its inputs ranges, weights and architecture. The also improving by applying technique splitting connections network are more important to form output. improves without changing network's paper concluded two examples show application different Networks improvement obtained.

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