ПОСТРОЕНИЕ РЕШАЮЩИХ ПРАВИЛ С ПОМОЩЬЮ НЕЙРОННОЙ СЕТИ ARTMAP
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Научный журнал Моделирование, оптимизация и информационные технологииThe scientific journal Modeling, Optimization and Information Technology
Online media
issn 2310-6018

CONSTRUCTION OF DECISION RULES USING THE ARTMAP NEURAL NETWORK

Kashirina I.L.   Fedutinov K.A.  

UDC 004.032.26
DOI: 10.26102/2310-6018/2019.26.3.029

  • Abstract
  • List of references
  • About authors

This article discusses the ARTMAP neural network architecture, compatible with a symbolic representation based on IF-THEN rules. In particular, the knowledge gained during the training of the ARTMAP network can be transformed into a compact set of decision rules for classifying the source data, which can be analyzed by domain experts, by analogy with interpreted machine learning methods, such as decision trees or linear regression. Similarly, knowledge in the a priori area presented in the form of IF-THEN rules can be transformed into the ARTMAP neural network architecture. The presence of a preliminary set of rules used in the initialization of the network increases the accuracy of classification and the effectiveness of training. The original set of rules can be supplemented using the learning algorithm ARTMAP. Each rule formed in the process of learning a network has a confidence factor that can be interpreted as its importance or usefulness. The architecture, training algorithms and functioning of the ARTMAP network for the extraction of rules are described in terms of the previously proposed generalized model of networks of the ART family proposed by the authors.

1. Molnar C. Interpretable Machine Learning [Elektronnyy resurs]: Perfectbound Paperback. – 2019. - 318 R. – Rezhim dostupa: https://christophm.github.io/interpretable-ml-book/ (data obrashcheniya: 08.09.2019)

2. Tan A.-H. Cascade ARTMAP: Integrating Neural Computation and Symbolic Knowledge Processing. // IEEE Trans.on Neural Networks, 1997, Vol. 8, n.2.

3. Carpenter, G.A., Grossberg, S. Adaptive Resonance Theory// The Handbook of Brain Theory and Neural Networks. Cambridge, MA: MIT Press. - 2003, pp. 87-90.

4. Kashirina I.L., Fedutinov K.A. Klasterizatsiya nepreryvnogo potoka dannykh na osnove obobshchennoy modeli neyronnoy seti semeystva ART//Sistemy upravleniya i informatsionnye tekhnologii. - 2018. Vol. 71. No. 1. pp. 33-39.

5. Carpenter G.A., Grossberg S., Reynolds J.H. ARTMAP: Supervised real-time learning and classification of nonstationary data by a self-organizing neural network // Neural Networks. – 1991. – № 4. – Р. 565-588.

6. Kashirina I.L., L'vovich Ya.E., Sorokin S.O. Neyrosetevoe modelirovanie formirovaniya klasternoy struktury na osnove setey ART // Informatsionnye tekhnologii. 2017. Vol. 23. No. 3. pp 228-232.

7. Kashirina I.L., Fedutinov K.A. Primenenie seti Fuzzy ARTMAP v intellektual'nykh sistemakh obnaruzheniya vtorzheniy// Modelirovanie, optimizatsiya i informatsionnye tekhnologii. 2018. Vol. 6. No. 3 (22). pp. 243- 257.

Kashirina Irina Leonidovna
Doctor of Technical Sciences
Email: kash.irina@mail.ru

Voronezh State University

Voronezh, Russian Federation

Fedutinov Konstantin Aleksandrovich

Email: fedutinovv@gmail.com

Voronezh State University

Voronezh, Russian Federation

Keywords: neural networк, machine learning, adaptive resonance theory, artmap, rule extraction

For citation: Kashirina I.L. Fedutinov K.A. CONSTRUCTION OF DECISION RULES USING THE ARTMAP NEURAL NETWORK. Modeling, Optimization and Information Technology. 2019;7(3). Available from: https://moit.vivt.ru/wp-content/uploads/2019/09/KashirinaFedutinov_3_19_1.pdf DOI: 10.26102/2310-6018/2019.26.3.029 (In Russ).

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