Modular neuro-fuzzy networks: sollutions for explicit and implicit knowledge integration
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2000Autor
Neagu, Ciprian-Daniel
Abstract
In this paper we propose a unified approach for integrating implicit and
explicit knowledge in neurosymbolic systems as a combination of neural and neurofuzzy
modules. In the developed hybrid system, training data set is used for building
neuro-fuzzy modules, and represents implicit domain knowledge. The explicit domain
knowledge on the other hand is represented by fuzzy rules, which are directly mapped
into equivalent neural structures. The aim of this approach is to improve the abilities of
modular neural structures, which are based on incomplete learning data sets, since the
knowledge acquired from human experts is taken into account for adapting the general
neural architecture. Three methods to combine the explicit and implicit knowledge
modules are proposed.