Hybrid Generalised Additive Type-2 Fuzzy-Wavelet-Neural Network in Dynamic Data Mining
Bodyanskiy Yevgeniy (),
Vynokurova Olena (),
Pliss Iryna () and
Tatarinova Yuliia ()
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Tatarinova Yuliia: Kharkiv National University of Radio Electronics
Information Technology and Management Science, 2015, vol. 18, issue 1, 70-77
Abstract:
In the paper, a new hybrid system of computational intelligence is proposed. This system combines the advantages of neuro-fuzzy system of Takagi-Sugeno-Kang, type-2 fuzzy logic, wavelet neural networks and generalised additive models of Hastie-Tibshirani. The proposed system has universal approximation properties and learning capability based on the experimental data sets which pertain to the neural networks and neuro-fuzzy systems; interpretability and transparency of the obtained results due to the soft computing systems and, first of all, due to type-2 fuzzy systems; possibility of effective description of local signal and process features due to the application of systems based on wavelet transform; simplicity and speed of learning process due to generalised additive models. The proposed system can be used for solving a wide class of dynamic data mining tasks, which are connected with non-stationary, nonlinear stochastic and chaotic signals. Such a system is sufficiently simple in numerical implementation and is characterised by a high speed of learning and information processing.
Date: 2015
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Persistent link: https://EconPapers.repec.org/RePEc:vrs:itmasc:v:18:y:2015:i:1:p:70-77:n:11
DOI: 10.1515/itms-2015-0011
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