Aguzzoli S, Mundici D. (2001). Weierstrass approximations by Lukasiewicz formulas with one quantified variable 31st IEEE Intl Symposium on Multiple-Valued Logic.
Alexander JA, Mozer MC. (1999). Template-based procedures for neural network interpretation. Neural networks : the official journal of the International Neural Network Society. 12 [PubMed]
Andrews R, Diederich J, Tickle AB. (1995). Survey and critique of techniques for extracting rules from trained artificial neural networks Knowledge Based Systems. 8
Benitez JM, Castro JL, Requena I. (1997). Are artificial neural networks black boxes? IEEE transactions on neural networks. 8 [PubMed]
Bishop C. (1995). Neural Networks For Pattern Recognition.
Bologna G. (2000). Symbolic rule extraction from the DIMPL neural network Hybrid neural systems.
Broda K, Gabbay DM, dAvila_Garcez AS. (2001). Symbolic knowledge extraction from trained neural networks: A sound approach Artificial Intelligence. 125
Dennis JE, Schnabel RB. (1983). Numerical Methods For Unconstrained Optimization And Nonlinear Equations.
Duch W, Adamczak R, Grabczewski K. (1998). Extraction of logical rules from neural networks Neural Processing Lett. 7
Duch W, Adamczak R, Grabczewski K. (2000). A new methodology of extraction, optimization and application of crisp and fuzzy logical rules IEEE Trans Neural Netw. 11
Finn G. (1999). Learning fuzzy rules from data Neural Computing Appl. 8
Friedman JH, Breiman L, Stone CJ, Olshen JR. (1984). Classification and regression trees.
Gad EF, Atiya AF, Shaheen S, el-Dessouki A. (2000). A new algorithm for learning in piecewise-linear neural networks. Neural networks : the official journal of the International Neural Network Society. 13 [PubMed]
Golea M, Andrews R, Diederich J, Tickle AB. (1998). The truth will come to light: Directions and challenges in extracting the knowledge embedded within mined artificial neural networks IEEE Transactions On Neural Networks. 9
Hagan MT, Demuth HB, Beale M. (1996). Neural network design.
Hagan MT, Menhaj MB. (1994). Training feedforward networks with the Marquardt algorithm. IEEE transactions on neural networks. 5 [PubMed]
Hajek P. (1998). Metamathematics of fuzzy logic.
Hajek P, Havranek T. (1978). Mechanizing hypothesis formation.
Hand D, Berthold M. (1999). Intelligent data analysis: An introduction Berthold M:Hand D.
Healy MJ, Caudell TP. (1997). Acquiring rule sets as a product of learning in a logical neural architecture. IEEE transactions on neural networks. 8 [PubMed]
Holena M. (2000). Observational logic integrates data mining based on statistics andneural networks Principles of data mining and knowledge discovery.
Holena M. (2002). Extraction of logical rules from data by means of piecewise-linear neural networks Proc 5th Intl Conf Discovery Science.
Holena M. (2002). Mining rules from empirical data with an ecological application Tech Rep Brandenburg University of Technology.
Holena M. (2005). Extraction of fuzzy logic rules from data by means of artificial neural networks Kybernetika. 41
Holena M, Baerns M. (2003). Artificial neural networks in catalyst development Experimental design for combinatorial and high through put materials development.
Holena M, Baerns M. (2003). Feedforward neural networks in catalysis. A tool for the approximation of the dependency of yield on catalyst composition, and for knowledge extraction Catalysis Today. 81
Hornik K. (1991). Approximation capabilities of multilayer neural networks Neural Netw. 4
Hornik K, White H, Stinchcombe M, Auer P. (1994). Degree of approximation results for feedforward networks approximating unknown mappings and their derivatives Neural Comput. 6
Howes P, Crook N. (1999). Using input parameter influences to support the decisions of feedforward neural networks Neurocomputing. 24
Ishikawa M. (2000). Rule extraction by successive regularization. Neural networks : the official journal of the International Neural Network Society. 13 [PubMed]
Kurkova V. (1992). Kolmogorovs theorem and multilayer neural networks Neural Netw. 5
Kurkova V. (2000). Rates of approximation by neural networks Quo vadis computational intelligence.
Loh W. (2002). Regression trees with unbiased variable selection and interaction detection Statistica Sinica. 12
Lu H, Liu H, Setiono R. (1996). Effective data mining using neural networks IEEE Trans Knowledge And Data Engineering. 8
Maass W. (1997). Bounds for the computational power and learning complexity of analog neural nets SIAM J Computing. 26
Maire F. (1999). Rule-extraction by back propagation of polyhedra Neural Netw. 12
Mcnaughton R. (1951). A theorem about infinite-valued sentential logic J Symbolic Logic. 16
Mitra S, De RK, Pal SK. (1997). Knowledge-based fuzzy MLP for classification and rule generation. IEEE transactions on neural networks. 8 [PubMed]
Mitra S, Hayashi Y. (2000). Neuro-fuzzy rule generation: survey in soft computing framework. IEEE transactions on neural networks. 11 [PubMed]
Mundici D. (1994). A constructive proof of McNaughtons theorem in infinite-valued logic J Symbolic Logic. 59
Mundici D, Cignoli L, DOttaviano I. (2000). Algebraic foundations of many valued reasoning.
Nauck D, Kruse R, Nauck U. (1996). Generating classification rules with the neuro-fuzzy system Proc Biennial Conf North American Fuzzy Information Processing Society. 96
Novak V, Perfilieva I. (1999). Some consequences of Herbrand and McNaughton theorems in fuzzy logic Discovering world with fuzzy logic: Perspectives and approaches to formalization of human-consistent logical systems.
Novak V, Perfilieva I, Mackar J. (1999). Mathematical principles of fuzzy logic.
Quinlan JR. (1993). C4.5: Programs for machine learning.
Rabuñal JR, Dorado J, Pazos A, Pereira J, Rivero D. (2004). A new approach to the extraction of ANN rules and to their generalization capacity through GP. Neural computation. 16 [PubMed]
Ripley BD. (1996). Pattern recognition and neural networks.
Rumelhart DE, Hinton GE, Williams RJ. (1986). Learning internal representations by error propagation Parallel Distributed Processing. 1
Setiono R. (1997). Extracting rules from neural networks by pruning and hidden-unit splitting. Neural computation. 9 [PubMed]
Siciliano R, Mola F. (2000). Multivariate data analysis and modeling through classification and regression trees Computational Statistics And Data Analysis. 32
Tikhonov AN, Arsenin VY. (1977). Solution of ill-posed problems.
Towell GG, Shavlik JW. (1993). The extraction of refined rules from knowledge-based neural networks Mach Learn. 13
Tsukimoto H. (2000). Extracting rules from trained neural networks IEEE Trans Neural Networks. 11
Vach V. (1995). Classification tress Comput Stat. 10
Watanabe T, Yamamoto M, Narazaki H. (1996). Reorganizing knowledge in neural networks: An exploratory mechanism for neural networks in data classification problems IEEE Trans Systems Man Cybernet. 26