Improved UFHLSNN (IUFHLSNN) for Generalized Representation of Knowledge and Its CPU Parallel Implementation Using OpenMP

Autor: P. S. Dhabe, Sanman D. Sabane
Rok vydání: 2019
Předmět:
Zdroj: EAI International Conference on Big Data Innovation for Sustainable Cognitive Computing ISBN: 9783030195618
DOI: 10.1007/978-3-030-19562-5_24
Popis: Fuzzy Hyper Line Segment Neural Network (FHLSNN) (Kullarni et al., International Joint conference on 4:2918–2933, 2001) is a hybrid system that combines fuzzy logic (Zadeeh, IEEE Trans. Fuzzy Syst. 4:103, 1996) and neural networks (Zurada, Fundamental Concepts and Models of Artificial Neural Systems, 1992, pp. 30–36). It is used extensively for real-world pattern classification (Zurada, Fundamental Concepts and Models of Artificial Neural Systems, 1992, pp. 30–36). It learns patterns in terms of n-dimensional Hyper Line Segment (HLS). Modified Fuzzy Hyper Line Segment Neural Network (MFHLSNN) (Patil et al., The 12 IEEE International Conference, vol. 2, 2003) is a modified version of FHLSNN (Kullarni et al., International Joint conference on 4:2918–2933, 2001) that improves the quality of reasoning and recall time per pattern using modified fuzzy membership function. Updated Fuzzy Hyper Line Segment Neural Network (UFHLSNN) (Dhabe, 2016 International Conference on Computing, Analytics and Security Trends, 2016) for larger pattern datasets is proposed using minimum computational efforts to compute membership. In this chapter, we proposed improved version of UFHLSNN (Dhabe, 2016 International Conference on Computing, Analytics and Security Trends, 2016), called IUFHLSNN, for generalized representation of knowledge for better recognition. IUFHLSNN uses midpoints of HLSs computed for the recall phase and thus expected to provide better recognition, as suggested in Occam’s razor principle (Blumer et al., Inform. Process. Lett. 24:377–380, 1987).
Databáze: OpenAIRE