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      Recursive Neural Network Rule Extraction for Data With Mixed Attributes

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          Multilayer feedforward networks are universal approximators

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            Survey and critique of techniques for extracting rules from trained artificial neural networks

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              Neuro-fuzzy rule generation: survey in soft computing framework.

              The present article is a novel attempt in providing an exhaustive survey of neuro-fuzzy rule generation algorithms. Rule generation from artificial neural networks is gaining in popularity in recent times due to its capability of providing some insight to the user about the symbolic knowledge embedded within the network. Fuzzy sets are an aid in providing this information in a more human comprehensible or natural form, and can handle uncertainties at various levels. The neuro-fuzzy approach, symbiotically combining the merits of connectionist and fuzzy approaches, constitutes a key component of soft computing at this stage. To date, there has been no detailed and integrated categorization of the various neuro-fuzzy models used for rule generation. We propose to bring these together under a unified soft computing framework. Moreover, we include both rule extraction and rule refinement in the broader perspective of rule generation. Rules learned and generated for fuzzy reasoning and fuzzy control are also considered from this wider viewpoint. Models are grouped on the basis of their level of neuro-fuzzy synthesis. Use of other soft computing tools like genetic algorithms and rough sets are emphasized. Rule generation from fuzzy knowledge-based networks, which initially encode some crude domain knowledge, are found to result in more refined rules. Finally, real-life application to medical diagnosis is provided.
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                Author and article information

                Journal
                IEEE Transactions on Neural Networks
                IEEE Trans. Neural Netw.
                Institute of Electrical and Electronics Engineers (IEEE)
                1045-9227
                1941-0093
                February 2008
                February 2008
                : 19
                : 2
                : 299-307
                Article
                10.1109/TNN.2007.908641
                9bf3fe3b-ddbd-4b14-b061-5d69ccc4b1ac
                © 2008
                History

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