References
- J.A. Muller, A.G. Ivachnenko and F. Lemke, “GMDH algorithms for complex systems modelling”,Mathematical and Computer Modelling of Dynamical Systems, vol.4. no.4. pp.275-316, 1998.
- W.S. Sarle, “Neural networks and statistical models”, in Proceedings of the Annual SAS User Group International Conference, Dallas, pp.1538-1549, 1994.
- H. Madala, “Comparison of inductive versus deductive learning networks”, Complex Systems, vol.5, no.2, pp.239-258, 1991.
- A.G. Ivakhnenko, “The group method of data handling in prediction problems”, Soviet Automatic Control c/c of Avtomatika, vol.9, no.6, pp.21-30, 1976.
- A.G. Inakhnenko and N.L. Ivakhnenko, “Self-organization of mathematical models for creating an artificial intelligence system”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.19, no.2, pp.24-33, 1986.
- J.H. Holland, Adaptation in Natural and Artificial Systems. Ann Arbor, University of Michigan Press, MI, 1975.
- A.G. Ivakhnenko, “The group method of data handling – a rival of the method of stochastic approximation”, Soviet Automatic Control c/c of Avtomatika, vol.1, no.3, pp.43-55, 1968.
- J.A. Muller and A.G. Ivakhnenko, “Self-organizing modelling in analysis and prediction of stock market”, in Proceedings of the Second International Conference on Application of Fuzzy Systems and Soft Computing – ICAFS’96, pp.491-500, Siegen, Germany, 1996.
- A.G. Ivakhnenko, “Heuristic self-organization in problems of engineering cybernetics”, Automatica, vol.6, pp.207-219, 1970.
- A.G. Ivakhnenko, “Sorting methods for modelling and clusterization (survey of the GMDH papers for the years 1983-1988). The present stage of GMDH development”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.21, no.4, pp.1-13, 1988.
- A.G. Ivakhnenko, “Polynomial theory of complex systems”, IEEE Transactions on Systems, Man and Cybernetics, vol.SMC-1, no.4, pp.364-378, 1971.
- H.R. Madala and A.G. Ivakhnenko, “Inductive learning algorithms for complex systems modelling”, Boca Raton, Florida, USA, CRC Press, 1994.
- V.S. Stepashko and Yu.P. Yurachkovskiy, “The present state of the theory of the group method of data handling”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.19, no.4, pp.36-46, 1986.
- Yu.P. Yurachkovskiy, “Restoration of polynomial dependencies using self-organization”, Soviet Automatic Control c/c of Avtomatika, vol.15, no.4, pp.17-21, 1982.
- A.G. Ivakhnenko and Yu.L. Kocherga, “Theory of two-level GMDH algorithms for long-range quantitative prediction”, Soviet Automatic Control c/c of Avtomatika, vol.16, no.6, pp.7-12, 1983.
- A.G. Ivakhnenko, G.I. Krotov and V.S. Stepashko, “Harmonic and exponential harmonic GMDH algorithms. Part 2. Multilayer algorithms with and without calculation of remainders”, Soviet Automatic Control c/c of Avtomatika, vol.16, no.1, pp.1-9, 1983.
- A.G. Ivakhnenko, G. Petrache and M.S. Krasyts’kyy, “A GMDH algorithm with random selection of pairs”, Soviet Automatic Control c/c of Avtomatika, vol.5, no.4, pp.23-30, 1972.
- A.G. Ivakhnenko and A.A. Zholnarskiy, “Estimating the coefficients of polynomials in parametric GMDH algorithms by the improved instrumental variables method”, Journal of Automation and Information Sciences c/c of Avtomatika, vol.25, no.3, pp.25-32, 1992.
- V.S. Stepashko, “GMDH algorithms as a basis for automating the process of modelling fromempirical data”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.21, no.4, pp.42-52, 1988.
- V.D. Dimitrov, “A stochastic GMDH algorithm with successive introduction of pairs of variables”, Soviet Automatic Control c/c of Avtomatika, vol.3, no.5, pp.61-63, 1970.
- S.G. Patereu and O.I. Shelud’ko, “A probabilistic GMDH algorithm with sequential discrimination of input features”, Soviet Automatic Control c/c of Avtomatika, vol.6, no.3, pp.29-33, 1973.
- Y.P. Triseyev, “Modifications of GMDH algorithms for systemic forecasting”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.20, no.3, pp.35-38, 1987.
- A.G. Ivakhnenko, “On selecting a set of output variables and using the GMDH for passive and active design of an experiment”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.21, no.4, pp.94-95, 1988.
- V.S. Stepashko and Yu.V. Kostenko, “A GMDH algorithm for two-level modelling of multidimensional cyclic processes”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.20, no.4, pp.49-57, 1987.
- V.M. Vysotskiy, A.G. Ivakhnenko and V.I. Cheberkus, “Long-term prediction of oscillatory processes by finding a harmonic trend of optimum complexity by the balance-of-variables criterion”, Soviet Automatic Control c/c of Avtomatika, vol.8, no.1, pp.18-24, 1975.
- A.P. Sarychev, “A multilayer nonlinear harmonic GMDH algorithm for self-organization of predicting models”, Soviet Automatic Control c/c of Avtomatika, vol.17, no.4, pp.90-95, 1984.
- A.G. Ivakhnenko, G.I. Krotov and Yu.P. Yurachkovskiy, “An exponential-harmonic algorithm of the group method of data handling”, Soviet Automatic Control c/c of Avtomatika, vol.14, no.2, pp.21-27, 1981.
- V.Y. Shelekhova, “Harmonic algorithm GMDH for large data volume”, Systems Analysis Modelling Simulation, vol.20, no.1-2, pp.117-126, 1995.
- I. Hayashi and H. Tanaka, “The fuzzy GMDH algorithm by possibility models and its application”, Fuzzy Sets and Systems, vol.36, no.2, pp.245-258, 1990.
- S. Matushita, A. Kuromiya, M. Yamaoka, T. Furuhashi and Y. Uchikawa, “A study on fizzy GMDH with comprehensible fuzzy rules”, in Proceedings of the 1994 IEEE Symposium on Emerging Technologies and Factory Automation – ETFA’94, pp.192-198, 1994.
- K. Yokode, H. Tanaka and H. Ichibuchi, “Fuzzy if-then rules with certainty factors u sing multilayer model of GMDH”, Japanese Journal of Fuzzy Theory and Systems, vol.7, no.1, pp.47-63, 1995.
- A.G. Ivakhnenko, “New accents in the theory of self-organization of models”, Soviet Automatic Control c/c of Avtomatika, vol.14, no.6, pp.43-53, 1981.
- H. Ichihashi, N. Harada and K. Nagasaka, “Selection of the optimum number of hidden layers in neurofuzzy GMDH”, in Proceedings of the 1995 IEEE International Conference on Fuzzy Systems, vol.3, pp.1519-1526, 1995.
- K. Nagasaka, N. Harada, H. Ichihashi and R. Leonard, “Adaptive learning networks of multi-stage fuzzy production rules in expert system of grinding characteristics”, Computers & Industrial Engineering, vol.27, no.1-4, pp.433-436, 1994.
- K. Nagasaka, H. Ichihashi and R. Leonard, “Neuro-fuzzy GMDH and its application to modelling grinding characteristics”, International Journal of Production Research, vol.33, no.5, pp. 1229-1240, 1995.
- M. Brown and C. Harris, Neurofuzzy Adaptive Modelling and Control, Prentice Hall, New York, London, 1994.
- T. Ohtani, H. Ichihashi, T. Miyoshi and K. Nagasaka, “Orthogonal and successive projection methods for the learning of neurofuzzy GMDH”, Information-Sciences, vol.110, no.1-2, pp.5-24, 1998.
- T. Ohtani, H. Ichihashi, T. Miyoshi and K. Nagasaka, “Structural learning with M-apoptosis in neurofuzzy GMDH”, in Proceedings of the 1998 IEEE International Conference on Fuzzy Systems, vol.2, pp.1265-1270, 1998.
- H.S. Park, S.K. Oh, T.C. Ahn and W. Pedrycz, “A study on multi-layer fuzzy polynomial inference system based on extended GMDH algorithm”, in Proceedings of the 1999 IEEE International Conference on Fuzzy Systems - FUZZ-IEEE’99, vol.1, pp.354-359, 1999.
- Y.P. Zaychenko, A.G. Kebkal and V.F. Krachkovskii, “The fuzzy group method of data handling and its application to the problems of the macroeconomic indexes forecasting”, available in URL address: http://skyscraper.fortunecity.com/cray/793/articles/papers.html, 2000.
- J.A. Muller, “Self-organizing modelling present state and new problems”, Systems Analysis Modelling Simulation, vol.18-19, pp.87-92, 1995.
- A.G. Ivakhnenko, G.A. Ivakhnenko and J.A. Muller, “Self-organization of neural networks with active neurons”, Pattern Recognition and Image Analysis, vol.4, no.2, pp.185-196, 1994.
- A.G. Ivakhnenko and J.A. Muller, “Self-organization of nets of active neurons”, Systems Analysis Modelling Simulation, vol.20, no.1-2, pp.93-106, 1995.
- A.G. Ivakhnenko, “Self-organization of neuronet with active neurons for effects of nuclear tests explosions forecasting”, Systems Analysis Modelling Simulation, vol.20, no.1-2, pp.107-116, 1995.
- A.G. Ivakhnenko and G.A. Ivakhnenko, “A comparison of discrete and continuous recognition systems”, Pattern Recognition and Image Analysis, vol.6, no.3, pp.445-447, 1996.
- A.G. Ivakhnenko, D. Wunch and G.A. Ivakhnenko, “Inductive sorting-out GMDH algorithms with polynomial complexity for active neurons of neural networks”, in Proceedings of the International Joint Conference on Neural Networks, Piscataway, New Jersey, USA, IEEE, 1999.
- M. Valenca and T. Ludermir, “Self-organizing modelling in forecasting daily river flows”, in Proceedings of the 5th Brazilian Symposium on Neural Networks, pp.210-214, 1998.
- S. Beer, Decision and Control: The Management of Operational Research and Management Cybernetics, John Wiley & Sons, London, 1966.
- J.A. Muller, “Self-organization of models – present state”, available in URL address: http://www.inf.kiev.ua/GMDH-home/articles/, 1996.
- A.G. Ivakhnenko, G.A. Ivakhnenko and J.A. Muller, “Self-organization of optimum physical clustering of a data sample for a weakened description and forecasting of fuzzy objects”, Pattern Recognition and Image Analysis, vol.3, no.4, pp.417-422, 1993.
- A.G. Ivakhnenko and J.A. Muller, “Problems of an objective computer clustering of a sample of observations”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.24, no.1, pp.54-62, 1991.
- A.G. Ivakhnenko, S.A. Petukhova and N.A. Ivakhnenko, “Objective computerized clustering. Part 1. Theoretical questions”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.19, no.3, pp.1-9, 1986.
- A.G. Ivakhnenko, “Objective clusterization on the basis of the theory of self-organization of models”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.20, no.5, pp.1-9, 1987.
- N.A. Ivakhnenko, L.P. Semina and T.A. Chikhradze, “A modified algorithm for objective clustering of data”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.19, no.2, pp.9-18, 1986.
- N.A. Ivakhnenko, I. Lu, L.P. Semina and G.A. Ivakhnenko, “Objective computer clusterization. Part 2. Use of information about the goal function to reduce the amount of search”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.20, no.1, pp. 1-13, 1987.
- A.G. Ivachnenko and J.A. Muller, “Selection procedures and their application in economy and ecology”, in Proceedings of the 4th International Symposium on Systems Analysis and Simulation, Berlin, Amsterdam, Elsevier, 1992.
- A.G. Ivakhnenko, Ye.N. Fateyeva and N.A. Ivakhnenko, “Nonparametric GMDH forecasting models. Part 1. Sorting the Bayes or Wald formulas”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.22, no.1, pp.1-8, 1989.
- A.G. Ivakhnenko, S.A. Petukhova, G.A. Ivakhnenko, V.M. Yudin and S.A. Kovbasyuk, “Obje ctive selection of optimal clusterizing of a data sample during compensation of non-robust random interference”, Journal of Automation and Information Sciences c/c of Avtomatika, vol.26, no.3, pp.45-58, 1993.
- A.G. Ivakhnenko and J.A. Muller, “Parametric and non parametric selection procedures in experimental systems analysis”, Systems Analysis Modelling Simulation, vol.9, no.2, pp.157-175, 1992.
- A.G. Ivakhnenko, A.P. Sarychev, P.I. Zalevskiy and N.A. Ivakhnenko, “Experience of solving solar activity forecasting problems with precise and robust approaches”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.21, no.3, pp.31-42, 1988.
- A.G. Ivakhnenko, I.K. Timchenko and D.A. Ivakhnenko, “Nonparametric forecasting models. Part 4. Combining forecasts of multidimensional processes”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.23, no.1, pp.19-30, 1990.
- A.G. Ivakhnenko, “An inductive sorting method for the forecasting of multidimensional random processes and events, with the help of analogue forecast complexing”, Pattern Recognition and Image Analysis, vol.1, no.1, pp.99-108, 1991.
- A.G. Ivakhnenko, V.A. Chainskaya and N.A. Ivakhnenko, “A non-parametric combinatorial GMDH algorithm for analogue search operators”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.23, no.5, pp.11-23, 1990.
- F. Lemke and J.A. Muller, “Self-organizing data mining for a portfolio trading system”, Journal of Computational Intelligence in Finance, vol.5, no.3, pp.12-26, 1997.
- A.G. Ivakhnenko, N.N. Bogachenko and L.T. Min, “Model-free forecasting of random processes by complexing their analogues”, Pattern Recognition and Image Analysis, vol.7, no.3, pp.309-314, 1997.
- J.A. Muller, “Self-organization of models – present state”, in Proceedings of the 1995 EUROSIM Conference. EUROSIM ’95 Simulation Congress, Amsterdam, Netherlands, Elsevier Science B.V., 1995.
- F. Lemke, “Knowledge extraction from data using self-organizing modelling technologies”, paper published on eSEAM’97 Conference, available in URL address: http://www.knowledgeminer.net/index3.htm, 1997.
- D.T. Pham and X. Liu, “Modelling and prediction using GMDH networks of Adalines with nolinear preprocessors”, International Journal of Systems Science, vol.25, no.11, pp.1743-1759, 1994.
- R.G.J. Parker and M. Tummala, “Identification of volterra systems with a polynomial neural network”, in Proceedings of the 1992 IEEE International Conference on Acoustics, Speech and Signal Processing – ICASSP’92, vol.4, pp.561-564, 1992.
- S.J. Farlow, Self-organizing methods in modelling. GMDH type algorithms, New York and Basel, Marcel Dekker, Inc., 1984.
- A.G. Ivakhnenko and G.A. Ivakhnenko, “The review of problems solvable by algorithms of the group method of data handling (GMDH)”, Pattern Recognition and Image Analysis, vol.5, no.4, pp.527-535, 1995.
- H. Tamura and T. Kondo, “Heuristics free group method of data handling algorithm of generating optimal partial polynomials with application to air pollution prediction”, International Journal of Systems Science, vol.11, no.9, pp.1095-1011, 1980.
- Y. Sawaragi, T. Soeda, H. Tamura, T. Yoshimura, S. Ohe, Y. Chujo and H. Ishihara, “Statistical prediction of air pollution levels using non-physical models”, Automatica, vol.15, no.4, pp.441-451, 1979.
- T. Yoshimura, U.S. Pandey, T. Takagi and T. Soeda, “Prediction of the peak flood using revised GMDH algorithms”, International Journal of Systems Science, vol.13, no.5, pp.547-557, 1982.
- X.F. Wang and D. Liu, “A recursive algorithm for GMDH”, Systems Analysis Modelling Simulation, vol.7, no.7, pp.533-542, 1990.
- H. Mori and S. Tsuzuki, “Comparison between backpropagation and revised GMDH techniques for predicting voltage harmonics”, in Proceedings of the 1990 IEEE International Symposium on Circuits and Systems, vol.2, pp.1102-1105, 1990.
- A. Vicino, R. Tempo, R. Genesio and M. Milanese, “Optimal Error and GMDH predictors. A comparison with some statistical techniques”, International Journal of Forecasting, vol.3, no.2, pp.313-328, 1987.
- T. Kondo, “The learning algorithm of the GMDH neural network and their application to the medical image recognition”, in Proceedings of the 37th SICE Annual Conference - SICE’98, pp.1109- 1114, 1998.
- T. Kondo, “GMDH neural network algorithm using the heuristic self-organization method and its application to the pattern identification problem”, in Proceedings of the 37th SICE Annual Conference - SICE’98, pp.1143-1148, 1998.
- A.S. Pandya, T. Kondo, T.U. Shah and V.R. Gandhi, “Prediction of stock market characteristics using neural networks”, in Proceedings of the SPIE. The International Society for Optical Engineering, vol.3722, pp.189-197, 1999.
- T. Kondo, A.S. Pandya and J.M. Zurada, “GMDH-type neural networks with a feedback loop and their application to nonlinear system identification”, in Proceedings of the ANNIE’99 Conference, International Session Paper, St. Louis, Missouri, 1999.
- T. Kondo, A.S. Pandya and J.M. Zurada, “GMDH-type neural networks and their application to the medical image recognition of the lungs”, in Proceedings of the 38th SICE Annual Conference - SICE’99, pp.1181-1186, 1999.
- J.G. Van Zyl and D.C.J. De Jongh, “Experiments in socio-economic forecasting using Ivakhnenko’s approach”, Applied Mathematical Modelling, vol.2, no.1, pp.49-56, 1978.
- Y.P. Yurachkovskiy, “Improved GMDH algorithms for process prediction”, Soviet Automatic Control c/c of Avtomatika, vol.10, no.5, pp.61-71, 1977.
- J.J. Duffy and M.A. Franklin, “A learning identification algorithm and its application to an environmental system”, IEEE Transactions on Systems, Man and Cybernetics, vol.SMC-5, no.2, pp.226-240, 1975.
- S.F. Kozubovskiy, “Determination of the optimal set of lagging arguments for a difference predicting model by correlation analysis”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.19, no.2, pp.77-79, 1986.
- G.I. Krotov and S.F. Kozubovskiy, “Verification of dendroscale forecasting by a multiplicative GMDH algorithm”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.20, no.3, pp.1-7, 1987.
- M. Kendall and J.D. Gibbons, Rank Correlation Methods, Edward Arnold, London, 1990.
- P.A. Karnazes and R.D. Bonnell, “Systems identification techniques using the group method of data handling”, in Proceedings of the 6th Symposium on Identification and System Parameter Estimation, vol.1, pp.713-718, Washington DC, Oxford, International Federation of Automatic Control, Pergamon, 1982.
- M. Ryoubu, S. Ikeda and Y. Sawaragi, “A prediction model for regional economic system by selforganization method”, in Proceedings of the International Conference on Cybernetics and Society, pp.619-622, 1978.
- A. Bastian and J. Gasos, “A type I structure identification approach using feedforward neural networks”, in Proceedings of the 1994 IEEE International Conference on Neural Networks, vol.5, pp.3256-3260, 1994.
- A. Bastian and J. Gasos, “Modeling using regularity criterion based constructed neural networks”, Computers & Industrial Engineering, vol.27, no1-4, pp.441-444, 1994.
- D. Van Welden, G. Vasteenkiste and M. Abo-Elela, “Symbiosis of data analysis techniques for non-linear ill-defined systems”, in Proceedings of the 1991 Summer Computer Simulation Problem. Twenty-Third Annual Summer Computer Simulation Conference, San Diego, Ca, USA, pp.32-38, 1991.
- S. Ikeda, S. Fujishige and Y. Sawaragi, “Non-linear prediction model of river flow by selforganization method”, International Journal of Systems Science, vol.7, no.2, pp.165-176, 1976.
- S.A. Billings and Q.M. Zhu, “Nonlinear model validation using correlation tests”, International Journal of Control, vol.60, no.6, pp.1107-1120, 1994.
- A.G. Yaremenko, “Synthesis of regression equation for gross product of South Carolina using GMDH algorithms”, Soviet Automatic Control c/c of Avtomatika, vol.7, no.4, pp.70-73, 1974.
- N.V. Tumanov, “A GMDH algorithm with mutually orthogonal partial descriptions for synthesis of polynomial models of complex objects”, Soviet Automatic Control c/c of Avtomatika, vol.11, no.3, pp.82-84, 1978.
- A.P. Sarychev, “Stable estimation of the coefficients in multilayer GMDH algorithms”, Soviet Automatic Control c/c of Avtomatika, vol.17, no.5, pp.1-5, 1984.
- V.N. Ivanchenko, N.N. Lyabakh and A.N. Guda, “An algorithm of harmonic rebinarization of a data sample”, Journal of Automation and Information Sciences c/c of Avtomatika, vol.25, no.3, pp.77-82, 1992.
- B.K. Svetal’skiy and P.I. Koval’chuk, “A multilayer algorithm of the group method of data handling with selection of primary arguments”, Soviet Automatic Control c/c of Avtomatika, vol.12, no.4, pp.24-27, 1979.
- M.I. Mamedov, “An iterative polynomial GMDH algorithm with limitation of complexity of models being selected”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.19, no.1, pp.99-100, 1986.
- T. Nishikawa and S. Shimizu, “Identification and forecasting in management systems using the GMDH method”, Applied Mathematical Modelling, vol.6, no.1, pp.7-15, 1982.
- T. Nishikawa and S. Shimizu, “The characteristics of a biased estimator applied to the adaptive GMDH”, Mathematical and Computer Modelling, vol.17, no.1, pp.37-48, 1993.
- M. Jirina, “The modified GMDH sigmoidal and polynomial neural net”, in Proceedings of the Conference in System Identification - SYSID’94, vol.2, pp.611-613, 1995.
- S. Ikeda, M. Ochiai and Y. Sawaragi, “Sequential GMDH algorithm and its application to river flow prediction”, IEEE Transactions on Systems, Man and Cybernetics, vol.SMC-6, no.7, pp.473-479, 1976.
- Y.P. Triseyev, “GMDH algorithm with variable freedom of choice in selection layers based on criterion of diversity of variables”, Soviet Automatic Control c/c of Avtomatika, vol.10, no.4, pp.30-33, 1977.
- S.A. Dolenko, Yu.V. Orlov and I.G. Persiantsev, “Practical implementation and use of group method of data handling (GMDH): prospects and problems”, in Proceedings of the 2nd International Conference on Adaptive Computing in Engineering Design and Control - ACEDC’96, pp.291-293, PEDC, University of Plymouth, UK, 1996.
- M.A. Styblinski and S. Aftab, “Combination of interpolation and self-organizing approximation techniques – a new approach to circuit performance modeling”, IEEE Transactions on Computer Aided Design of Integrated Circuits and Systems, vol.12, no.11, pp.1775-1785, 1993.
- A.G. Ivakhnenko and G.I. Krotov, “A multiplicative-additive non-linear GMDH with optimization of the power of factors”, Soviet Automatic Control c/c of Avtomatika, vol.17, no.3, pp.10- 13, 1984.
- A.G. Ivakhnenko, Ye.G. Deleur, A.G. Yaremenko, S.G. Patereu and M.M. Todua, “GMDH algorithm for synthesis of multiplicative models of complex systems”, Soviet Automatic Control c/c of Avtomatika, vol.6, no.6, pp.52-57, 1973.
- A.G. Ivakhnenko, “Developing and applying the group method of data handling for modelling and long-range prediction – Part II causes of inaccurate predictions”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.18, no.6, pp.47-54, 1985.
- G.I. Krotov and Yu.V. Kostenko, “An algorithm for self-organization of additive-multiplicative models of complex systems”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.20, no.6, pp.73-78, 1987.
- K. Hara, T. Yamamoto and K. Terada, “Improved dual mode GMDH with automatic switch”, International Journal of Systems Science, vol.21, no.8, pp.1553-1565, 1990.
- R.K. Mehra, “Group method of data handling (GMDH): review and experience”, in Proceedings of the IEEE Conference on Decision and Control, pp.29-34, 1977.
- K. Hara, T. Yamamoto and K. Noguchi, “GMDH utilizing BDS with insufficient modelling data”, International Journal of Systems Science, vol.17, no.12, pp.1677-1692, 1986.
- K. Hara, T. Yamamoto and K. Terada, “Prediction by dual mode GMDH”, International Journal of Systems Science, vol.19, no.12, pp.2673-2681, 1988.
- A.G. Ivakhnenko, “Sorting methods in self-organization of models and clusterizations (review of new basic ideas). Iterative (multirow) polynomial GMDH algorithms”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.22, no.4, pp.88-99, 1989.
- A.G. Ivakhnenko, “Development and application of the group method of data handling for modelling and long-range prediction”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.18, no.3, pp.26-38, 1985.
- D.O. Molnar, “Modelling accuracy improvements for the group method of data handling”, in Proceedings of the 1st International Conference on Neural Networks, vol.4, pp.839-846, 1987.
- M.A. Styblinski, S.A. Aftab and L.J. Opalski, “Modelling circuit performance functions by a combination of physical models and black-box approximation”, in Proceedings of the 1992 IEEE International Symposium on Circuits and Systems, vol.2, pp.867-870, 1992.
- A.G. Ivakhnenko, A.A. Zholnarskiy and J.A. Muller, “An algorithm of harmonic rebinarization of a data sample”, Journal of Automation and information Sciences c/c of Avtomatika, vol.25, no.6, pp.34-38, 1992.
- A.G. Ivakhnenko and J.A. Muller, “Present state and new problems of further GMDH development”, Systems Analysis Modelling Simulation, vol.20, no.1-2, pp.3-16, 1995.
- J.A. Muller and G.A. Ivakhnenko, “Recent developments of self-organising modeling in prediction and analysis of stock market”, available in URL address: http://www.inf.kiev.ua/GMDHhome/articles/, 1996.
- A.G. Ivakhnenko and G.A. Ivakhnenko, “Problems of further development of the group method of data handling algorithms. Part I”, Pattern Recognition and Image Analysis, vol.10, no.2, pp.187-194, 2000.
- C. Robinson, “Multi-objective optimisation of polynomial models for time series prediction using genetic algorithms and neural networks”, PhD Thesis in the Dept. of Automatic Control & Systems Engineering, University of Sheffield, UK, 1998.
- D.E. Scott and C.E. Hutchinson, “The GMDH algorithm – a technique for economic modelling”, Modelling and Simulation, vol.7, pp.729-733, 1976.
- P.C. Parks, A.G. Ivakhnenko, L.M. Boichuk and B.K. Svetalsky, “A self-organizing model of the british economy for control with optimal prediction using the balance of variables criterion”, International Journal of Computer and Information Sciences, vol.4, no.4, pp.349-379, 1975.
- A.G. Ivakhnenko and Yu.V. Kostenko, “Systems analysis and long-range quantitative prediction of quasi-static systems on the basis of self-organization of models. Part 1. Systems analysis at the level of trends”, Soviet Automatic Control c/c of Avtomatika, vol.15, no.3, pp.9-17, 1982.
- A.G. Ivakhnenko, Yu.V. Kostenko and I.V. Goleusov, “Systems analysis and long-term quantitative prediction of quasi-static systems on the basis of self-organization of models. Part 2. Objective systems analysis without a priori specification of external influences”, Soviet Automatic Control c/c of Avtomatika, vol.16, no.3, pp.1-8, 1983.
- B.Y. Brusilovskiy, N.A. Ivakhnenko, I.V. Shabalina and Yu.P. Yurachkovskiy, “Prediction of economic indices”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vo.18, no.4, pp.42-45, 1985.
- I.V. Goleusov and S.A. Kondrasheva, “Comparative analysis of the interdependence structure of the macro-economic indices of COMECON member-countries by the group method of data handling”, Soviet Journal of Automation and information Sciences c/c of Avtomatika, vol.20, no.3, pp.39-43, 1987.
- A.G. Ivakhnenko, A.N. Ivakhnenko, Yu.V. Kostenko, J.A. Muller, A.P. Sarychev and Yu.P. Yurachkovskiy, “Nonparametric forecasting GMDH models. Part 3. Models in the pattern- and clusteranalysis language, for forecasting processes in economic macrosystems”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.22, no.3, pp.1-14, 1989.
- J.A. Muller and F. Lemke, Self-Organising Data Mining. An Intelligent Approach to Extract Knowledge from Data, Dresden, Berlin, 1999.
- P.R. Water, S. Wibier, E.J.H. Kerckhoffs and H. Koppelaar, “GMDH-based stock price prediction”, Neural Network World, vol.7, no.4-5, pp.552-563, 1997.
- V.I. Dolgopolov, “A model of the dynamics of the magnetic field of active solar regions with determination of the source function by the group method of data handling”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.19, no.2, pp.68-71, 1986.
- F-J. Chang and Y-Y. Yuan, “A self-organization algorithm for real-time flood forecast”, Hydrological Processes, vol.13, pp. 123-138, 1999.
- D.E. Catlin, Estimation Control and the Discrete Kalman Filter, Springer-Verlag, New York, 1989.
- S.F. Kozubovskiy and V.V. Kupriyanov, “Design of automatic systems for the control and protection of the air environment on the basis of GMDH”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.20, no.3, pp.63-66, 1987.
- A.G. Ivakhnenko and G.A. Ivakhnenko, “Simplified linear programming algorithm as basic tool for open-loop control”, Systems Analysis Modelling Simulation, vol.18-19, pp.315-319, 1995.
- A.G. Ivakhnenko and G.A. Ivakhnenko, “Simplified linear programming algorithm as basic tool for open-loop control”, Systems Analysis Modelling Simulation, vol.22, no.3-4, pp.177-184, 1996.
- A.G. Ivakhnenko and G.A. Ivakhnenko, “Normative prediction and optimal control of multivariate objects by simplified linear programming”, Pattern Recognition and Image Analysis, vol.7, no.2, pp.218-221, 1997.
- A.G. Ivakhnenko and G.A. Ivakhnenko, “Normative forecasting and optimal control for multidimensional objects using a self-organization of a system of non-physical models”, Journal of Automation and Information Sciences c/c of Avtomatika, vol.29, no.4-5, pp.162-168, 1997.
- J. Kus and Z. Banaszak, “Group method of data handling in technical diagnostic tasks”, Applied Mathematics and Computer Science, vol.3, no.3, pp.573-593, 1993.
- J. Korbicz and J. Kus, “Neural networks of the GMDH type and their applications in technical diagnosis”, in Proceedings of the Fourth International Symposium on Methods and Models in Automation and Robotics, vol.3, pp.995-1000, Tech. Univ. Szczecin, Szczecin, Poland, 1997.
- J. Kus and J. Korbicz, “Self-organization of the GMDH-type neural networks in analysis of dynamical systems”, in Proceedings of the Fifth International Symposium on Methods and Models in Automation and Robotics, vol.2, pp.639-644, Tech. Univ. Szczecin, Szczecin, Poland, 1998.
- A.G. Ivakhnenko and V.V. Osipenko, “Prediction of rare events on the basis of a GMDH algorithm”, Soviet Automatic Control c/c of Avtomatika, vol.17, no.5, pp.6-10, 1984.
- V.V. Khubayev, “Logarithmic base functions with superimposed biological relationships for productivity models of agricultural systems”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.19, no.2, pp.99-103, 1986.
- A.G. Ivakhnenko and V.S. Stepashko, “Use of the group method of data handling in predicting random processes”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.19, no.5, pp.1-10, 1986.
- T. Buttner, J.A. Muller and S.F. Kozubovskiy, “Application of self-organization theory to analysis and prediction of demographic processes”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.19, no.2, pp.47-50, 1986.
- A.P. Sarychev, “A GMDH iteration algorithm for modelling random fields in a certain class of superposition of two-dimensional beta distributions”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.20, no.2, pp.25-29, 1987.
- Z.S. Lin, J. Liu and X.D. He, “The self-organizing methods of long-term forecasting (I) – GMDH and GMPSC model”, Meteorology and Atmospheric Physics, vol.53, no.3-4, pp.155-160, 1994.
- E.M. Bielinska and J.E. Nabaglo, “Comparison of different method of bilinear time series prediction”, in Proceedings of the Third IEEE Conference on Control Applications, vol.3, pp.1835-1839, 1994.
- M. Iwasaki, T. Shibata and N. Matsui, “GMDH-based autonomous modeling and compensation for nonlinear friction”, in Proceedings of the 1999 IEEE/ASME International Conference on Advanced Intelligent Mechatronics, pp.860-865, Atlanta, USA, IEEE, 1999.
- Y. Xue and J. Watton, “A self-organizing neural network approach to data-based modelling of fluid power systems dynamics using the GMDH algorithm”, in Proceedings of the Institution of Mechanical Engineers. Part I (Journal of Systems and Control Engineering), vol.209, no.I4, pp.229-240, 1995.
- N.A. Semenov and Ye.V. Malinovskaya, “Structural-parametric identification of polynomial models based on GMDH algorithms and Brandon’s method”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.20, no.3, pp.17-19, 1987.
- I.V. Tetko, T.I. Aksenova, V.V. Volkovich, T.N. Kasheva, D.V. Filipov, W.J. Welsh, D.J. Livingstone and A.E.P. Villa, “Polynomial neural network for linear and non-linear model selection in quantitative-structure activity relationship studies on the internet”, available in URL address: http://skyscraper.fortunecity.com/cray/793/articles/application.html, 2000.
- G.I. Krotov, Yu.V. Koppa and V.S. Stepashko, “Interactive modelling of complex objects based on GMDH algorithms”, Cybernetics and Computing Technology c/c of Kibernetika-I-Vychislitel’naya-Tekhnika, vol.104, pp.49-53, 1994.
- F. Lemke, “SelfOrganize?! – a software tool for modelling and prediction of complex systems”, Systems Analysis Modelling Simulation, vol.20, no.1-2, pp.17-27, 1995.
- F. Lemke and J.A. Muller, “Self-organising modelling in financial risk control”, Proceedings o f the 15th IMACS World Congress on Scientific Computation, Modelling and Applied Mathematics, vol.6 (Application on Modelling and Simulation), pp.733-738, 1997.
- J.A. Muller and F. Lemke, “Self-organizing modelling and decision support in economics”, Systems Analysis Modelling Simulation, vol.18-19, pp.135-138, 1995.
- A.G. Ivakhnenko, “The problem of regularization and unimodality of the consistency criterion and its solution in the algorithms for objective system analysis and objective computer clustering”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.21, no.3, pp.11-15, 1988.
- A.G. Ivakhnenko and N.A. Ivakhnenko, “Nonparametric GMDH predicting models. Part 2. Indicative systems for selective modelling, clustering and pattern recognition”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.22, no.2, pp.1-10, 1989.
- A.P. Sarychev, “Solution of the GMDH partitioning problem when calculating the regularity criterion in an active experiment”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.22, no.4, pp.18-26, 1989.
- A.P. Sarychev, “An averaged regularity criterion for the group method of data handling in the problem of searching for the best regression”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.23, no.5, pp.24-29, 1990.
- A.P. Sarychev, “The J-optimal set of regressors determination by the repeated samples of observations in the group method of data handling”, Systems Analysis Modelling Simulation, vol.20, no.1-2, pp.59-67, 1995.
- A.P. Sarychev, “Using repeated observation samples to determine a J-optimal set of regressors”, Journal of Automation and Information Sciences c/c of Avtomatika, vol.26, no.3, pp.57-64, 1993.
- T.I. Aksenova and Yu.P. Yurachkovskiy, “A characterisation of unbiased structures and conditions for their J-optimality”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.21, no.4, pp.36-41, 1988.
- V.S. Stepashko, “Selective properties of the consistency criterion of models”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.19, no.2, pp.38-46, 1986.
- V.S. Stepashko, “Asymptotic properties of external criteria for model selection”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.21, no.6, pp.84-92, 1988.
- T.I. Aksenova, “Sufficient conditions and convergence rate using different criteria for model selection”, Systems Analysis Modelling Simulation, vol.20, no.1-2, pp.69-78, 1995.
- A.G. Ivachnenko and J.A. Muller, “Parametric and non parametric selection procedures in experimental systems analysis”, Systems Analysis Modelling Simulation, vol.9, no.2, pp.157-175, 1992.
- V.Y. Braverman and O.O. Fomychov, “Some aspects of the use of the group method of data handling in the case of small samples”, Soviet Automatic Control c/c of Avtomatika, vol.7, no.2, pp.26- 32, 1974.
- V.B. Silov and D.V. Vilenchic, “Linguistic decision-making methods in multicriterial selection of models”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.18, no.4, pp.92-94, 1985.
- V.P. Belogurov, “A criterion of model suitability for forecasting quantitative processes”, Soviet Journal of Automation and Information Sciences c/c of Avtomatika, vol.23, no.3, pp.21-25, 1990.
- C. Hild and H. Bozdogan, “The use of information-based model evaluation criteria in the GMDH algorithm”, Systems Analysis Modelling Simulation, vol.20, no.1-2, pp.29-50, 1995.
- T. Lange, “Structure criteria for automatic model selection in multilayered GMDH algorithms in case of uncertainty of data”, Systems Analysis Modelling Simulation, vol.20, no.1-2, pp.79-91, 1995.
Last modified by Oleksiy on 10/09/07 17:12:56 (4 years ago)
