Hybridization of the SGTM Neural-Like Structure Through Inputs Polynomial Extension

In this paper, a new approach for increasing the approximation accuracy with the use of computational intelligence tools is described. It is based on the compatible use of the neural-like structure of the Successive Geometric Transformations Model and the inputs polynomial extension. To implement such an extension, second degree Wiener polynomial is used. This combination improves the method accuracy for solving various tasks, such as classification and regression, including short-term and long-term prediction, dynamic pricing, as well as image recognition and image scaling, e-commerce. Due to the use of SGTM neural-like structure, the high speed of the system is maintained in both training and using modes. The simulation of the described approach is carried out on real data, the time results of the neural-like structure work and the accuracy results (MAPE, RMSE, R) are given. A comparison of the operation of the method with existing ones, such as Support vector regression, Classic linear SGTM neural-like structure, Linear regression (using Stochastic Gradient Descent), Random Forest, Multilayer Perceptron, AdaBoost are made. The advantages of the developed approach, in particular with regard to the highest accuracy among existing ones were experimentally established.

[1]  Jacques Wainer,et al.  Comparison of 14 different families of classification algorithms on 115 binary datasets , 2016, ArXiv.

[2]  Oleg Riznyk,et al.  Synthesis of optimal recovery systems in distributed computing using ideal ring bundles , 2016, 2016 XII International Conference on Perspective Technologies and Methods in MEMS Design (MEMSTECH).

[3]  Yevgeniy Bodyanskiy,et al.  Hybrid Adaptive Systems of Computational Intelligence and Their On-line Learning for Green IT in Energy Management Tasks , 2017 .

[4]  Anatoliy Batyuk,et al.  Development of Combined Information Technology for Time Series Prediction , 2017 .

[5]  Vasyl Teslyuk,et al.  Basic Components of Neuronetworks with Parallel Vertical Group Data Real-Time Processing , 2017 .

[6]  Yevgeniy Bodyanskiy,et al.  Fast learning algorithm for deep evolving GMDH-SVM neural network in data stream mining tasks , 2016, 2016 IEEE First International Conference on Data Stream Mining & Processing (DSMP).

[7]  Olena Vynokurova,et al.  Deep evolving GMDH-SVM-neural network and its learning for Data Mining tasks , 2016, 2016 Federated Conference on Computer Science and Information Systems (FedCSIS).

[8]  Ivan Izonin,et al.  Development of machine learning method of titanium alloy properties identification in additive technologies , 2018, Eastern-European Journal of Enterprise Technologies.

[9]  Dmytro Peleshko,et al.  Hybrid generalized additive neuro-fuzzy system and its adaptive learning algorithms , 2015, 2015 IEEE 8th International Conference on Intelligent Data Acquisition and Advanced Computing Systems: Technology and Applications (IDAACS).

[10]  Vasyl Teslyuk,et al.  Development and Implementation of the Technical Accident Prevention Subsystem for the Smart Home System , 2018 .

[11]  Oleksii K. Tyshchenko,et al.  An Evolving Cascade System Based on A Set Of Neo Fuzzy Nodes , 2016, ArXiv.

[12]  Ivanna Dronyuk,et al.  Traffic Flows Ateb-Prediction Method with Fluctuation Modeling Using Dirac Functions , 2017, CN.

[13]  Ivan Izonin,et al.  Model and Principles for the Implementation of Neural-Like Structures Based on Geometric Data Transformations , 2018 .

[14]  Pavlo Tkachenko,et al.  Features of the auto-associative neurolike structures of the geometrical transformation machine (GTM) , 2009, 2009 5th International Conference on Perspective Technologies and Methods in MEMS Design.

[15]  Anatoliy Batyuk,et al.  Synthesis of Time Series Forecasting Scheme Based on Forecasting Models System , 2015, ICTERI.

[16]  Iryna Perova,et al.  Diagnostic Neuro-Fuzzy System and Its Learning in Medical Data Mining Tasks in Conditions of Uncertainty about Numbers of Attributes and Diagnoses , 2017, Automatic Control and Computer Sciences.

[17]  Mariya Nazarkevych,et al.  Data protection based on encryption using Ateb-functions , 2016, 2016 XIth International Scientific and Technical Conference Computer Sciences and Information Technologies (CSIT).

[18]  Ayad Almryad,et al.  Modeling of solar energy potential in Libya using an artificial neural network model , 2016, 2016 IEEE First International Conference on Data Stream Mining & Processing (DSMP).

[19]  Natalya Shakhovska,et al.  The structure of information systems for environmental monitoring , 2016, 2016 XIth International Scientific and Technical Conference Computer Sciences and Information Technologies (CSIT).

[20]  Oleksii K. Tyshchenko,et al.  A deep cascade neural network based on extended neo-fuzzy neurons and its adaptive learning algorithm , 2017, 2017 IEEE First Ukraine Conference on Electrical and Computer Engineering (UKRCON).

[21]  Oleksii K. Tyshchenko,et al.  Adaptive learning of an evolving cascade neo-fuzzy system in data stream mining tasks , 2016, Evol. Syst..

[22]  Ivan Izonin,et al.  Learning-Based Image Scaling Using Neural-Like Structure of Geometric Transformation Paradigm , 2018 .

[23]  Iryna Yurchak,et al.  Model of stegosystem images on the basis of pseudonoise codes , 2010, 2010 Proceedings of VIth International Conference on Perspective Technologies and Methods in MEMS Design.

[24]  Iryna Perova,et al.  FAST MEDICAL DIAGNOSTICS USING AUTOASSOCIATIVE NEURO-FUZZY MEMORY , 2017 .