Data processing: artificial intelligence – Neural network
Reexamination Certificate
2003-03-28
2008-10-28
Starks, Jr., Wilbert L (Department: 2129)
Data processing: artificial intelligence
Neural network
C706S045000
Reexamination Certificate
active
07444310
ABSTRACT:
A model maintenance method is provided. If accuracy of prediction by a current model through consultation with new data is determined to be below a predetermined threshold, a compound model is formed by supplementing the current model with a local net trained with the new data.
REFERENCES:
patent: 4193115 (1980-03-01), Albus
patent: 4215396 (1980-07-01), Henry et al.
patent: 4438497 (1984-03-01), Willis et al.
patent: 4649515 (1987-03-01), Thompson et al.
patent: 4663703 (1987-05-01), Axelby et al.
patent: 4670848 (1987-06-01), Schramm
patent: 4740886 (1988-04-01), Tanifuji et al.
patent: 4754410 (1988-06-01), Leech et al.
patent: 4858147 (1989-08-01), Conwell
patent: 4928484 (1990-05-01), Peczkowski
patent: 4972363 (1990-11-01), Nguyen et al.
patent: 4979126 (1990-12-01), Pao et al.
patent: 4994982 (1991-02-01), Duranton et al.
patent: 5023045 (1991-06-01), Watanabe et al.
patent: 5033087 (1991-07-01), Bahl et al.
patent: 5052043 (1991-09-01), Gaborski
patent: 5111531 (1992-05-01), Grayson et al.
patent: 5113483 (1992-05-01), Keeler et al.
patent: 5119468 (1992-06-01), Owens
patent: 5140523 (1992-08-01), Frankel et al.
patent: 5142612 (1992-08-01), Skeirik
patent: 5175678 (1992-12-01), Frerichs et al.
patent: 5175797 (1992-12-01), Funabashi et al.
patent: 5247445 (1993-09-01), Miyano et al.
patent: 5311421 (1994-05-01), Nomura et al.
patent: 5335291 (1994-08-01), Kramer et al.
patent: 5349541 (1994-09-01), Alexandro et al.
patent: 5485390 (1996-01-01), LeClair et al.
patent: 5734796 (1998-03-01), Pao
patent: 5835901 (1998-11-01), Duvoisin, III et al.
patent: 5848402 (1998-12-01), Pao et al.
patent: 6134537 (2000-10-01), Pao et al.
patent: 6327550 (2001-12-01), Vinberg et al.
patent: 6691045 (2004-02-01), Labute
William H. Hsu and William M. Pottenger and Michael Weige and Jie. Wu and Ting-Hao Yang, Genetic algorithms for selection and partitioning of attributes in large-scale data mining problems, Data Mining with Evolutionary Algorithms: Research Directions, pp. 1-6, AAAI Press, Jul. 18, 1999.
Ersoy, O. K. et al., “Parallel, Self-Organizing, Hierarchical Neural Networks” IEEE Transactions on Neural Networks, IEEE Inc., New York, US, vol. 1, No. 2, Jun. 1990, pp. 167-178, XP 000133516, ISSN: 1045-9227.
Surajit Chaudhuri, Usama Fayyad and Jeff Bernhardt, “Scalable Classification over SQL Databases”,Proceedings of the 15thInternational Conference on Data Engineering, Mar. 23-26, 1999,Sidney, Austalia, pp. 470-479.
Dennis T. Lee, Yoh-Han Pao and Dejan J. Sobajic “Dynamic System Control Using Neural Networks”, pp. 25-30.
Yoh-Han Pao “Neural Net Computing For Patter Recognition”Handbook of Pattern Recognition, and Computer Vision, pp. 125-162 (edited by C.H. Chen, L.F. Pau and P.S.P. Wang).
Bernard Widrow, Narendra K. Gupta, and Sidhartha Maitra (Sep. 1973) “Punish/Reward: Learning With a Critic in Adaptive Threshold Systems”,IEEE Trans. Systems, Man and Cybernetics, vol. SMC-3, No. 5, pp. 455-465.
John A. Hartigan, (1975) “Interpretation and Evaluation of Clusters”,Clustering Algorithms, pp. 12-14.
Yoh-Han Pao and Dejan J. Sobajic (1987) “Metric Synthesis and Concept Discovery With Connectionist Networks”, 1987IEEE, pp. 390-395.
Bernard Widrow and Rodney Winter (March 1988) “Neural Nets for Adaptive Filtering and Adaptive Pattern Recognition”,IEEE Computer, pp. 25-39.
Bernard Widrow, Rodney G. Winter, and Robert A. Baxter (Jul. 1988) “Layered Neural Nets for Pattern Recognition”,IEEE Trans. Acoustics, Speech, and Processing, vol. 36, No. 7, pp. 1109-1118.
Yoh-Han Pao, (1989)Adaptive Pattern Recognition and Neural Networks.
Andrew G. Barto (1990) “Connectionist Learning for Control”,Neural Networks for Control, pp. 5-58 (edited by W. Thomas Miller, III, Richard S. Sutton and Paul J. Werbos).
R.D. Coyne and A.G. Postmus (1990) “Spatial Applications of Neural Networks in Computer-aided Design”,Artifical Intelligence in Engineering, 5(1):9-22.
Kumpati S. Narendra and Kannan Parthasarathy (Mar. 1990) “Identification and Control of Dynamical Systems Using Neural Networks”,IEEE Trans. Neural Networks, vol. 1, No. 1, pp. 4-27.
Maryhelen Stevenson, Rodney Winter, and Bernard Widrow (Mar. 1990) “Sensitivity of Feedforward Neural Networks to Weight Errors”,IEEE Trans. Neural Networks, vol. 1, No. 1, pp. 71-80.
Esther Levin, Naftali Tishby, and Sara A. Solla (Oct. 1990) “A Statistical Approach to Learning and Generalization in Layered Neural Networks”,Proc. IEEE, vol. 78, No. 10, pp. 1568-1574.
Les Atlas, Jerome Connor and Mark Damborg (1991) “Comparisons of Conventional Techniques and Neural Network in Computer-aided Design”, Artifical Intelligence in Engineering, 5(1):9-22.
Miodrag Djukanov, Borivoje Babic, Dijan J. Sobajic and Yoh-Han Pao (1991) “Unsupervised/Supervised Learning Concept for 24-Hour Load Forecasting”,Artificial Intelligence in Engineering, pp. 819-827.
M.M. Gupta and J. Qi (1991) “Fusion of Fuzzy Logic and Neural Networks with Applications to Decision and Control Problems”,Proceedings of the 1991 American Control Conference, pp. 1:30-31.
Jocelyn Sietsma and Robert J. F. Dow (1991) “Creating Artificial Neural Networks That Generalize”,Neural Networks, vol. 4, pp. 67-79.
Petros A. Ioannou and Aniruddha Datta (Dec. 1991) “Robust Adaptive Control: A Unified Apporach”,Proc. IEEE, vol. 79, No. 12, pp. 1736-1768.
S.A. Billings, H.B. Jamaluddin and S. Chen (1992) “Properties of neural networks with applications to modeling non-linear dynamical systems”,Int. J. Control, pp. 55(1):193-224.
John Doleac, Jeff Getchius, Judy Franklin and Chuck Anderson (1992) “Nadaline Connectionist Learning vs. Linear Regression at a Lamp Manufacturing Plant”,Proceedings of The First Conference on Control Applications, pp. 552-558.
William Finnoff, Ferdinand Hergert, and Hans Georg Zimmerman (1993) “Improving Model Selection by Nonconvergent Methods”,Neural Networks, vol. 6, pp. 771-783.
Andreas Ikonomopoulos, Lefteri H. Tsoukalas and Robert E. Uhrig (1993) “A Hybrid Neural Networ-Fuzzy Arithmetic Methodology For Performing Virtual Measurements in a Complex System”,Proceedings of the Thirty-Sixth Power Instrumentation Symposium, pp. 205-212.
Michael Nikolaou (1993) “Neural Network Modeling of Nonlinear Dynamical Systems”,Proceeding of the 1993 American Control Conference, pp. 1460-1464.
Stevan V. Odri, Dusan P. Petrovacki, and Gorana A. Krstonosic (1993) “Evolutional Development of a Multilevel Neural Network”,Neural Networks, vol. 6, pp. 583-595.
Yoh-Han Pao and Gwang-Hoon Park (1993) “Neural-Net Computing for Machine Recognition of Handwritten English Language text”,Fundamentals of Handwriting Recognition, pp. 335-351.
Mujeeb M. Ahmed (1994) “An Integrated Approach to Distributed Intelligent Control”,Proceeding of the Thirty-Seventh Power Instrumentation Symposium, pp. 1-15.
Timothy J. Graettinger, Naveen V. Bhat and Jeffrey S. Buck (1994) Adaptive Control with NeuCOP, the Neural Control and Optimization Package,IEEE, pp. 2389-2393.
Yoh-Han Pao (1994) “Process Monitoring and Optimization for Power Systems Applications”,IEEE International Conference on Neural Networks, pp. 3697-3702.
Percy P.C. Yip and Yoh-Han Pao (1994) “A Guided Evolutionary Computation Technique as Function Optimizer”,Proceeding of First IEEE Conference on Evolutionary Computation, pp. 628-633.
Stuart J. Russell and Peter Norvig, (1995) “Learning From Observations”,Artificial Intelligence: A Modern Approach, pp. 525-562.
Mattias Nyberg and Yoh-Han Pao (1995) “Automatic Optimal Design of Fuzzy Systems Based on Universal Approximation and Evolutionary Programming”,Fuzzy Logic and Intelligent Systems, pp. 311-366 (edited by H.L. Hua and M. Gupta).
Percy P.C. Yip and Yoh-Han Pao (1995) “Combinatorial
Duan Baofu
Meng Zhuo
Pao Yoh-Han
Baker & Botts L.L.P.
Computer Associates Think Inc.
Starks, Jr. Wilbert L
LandOfFree
Automatic model maintenance through local nets does not yet have a rating. At this time, there are no reviews or comments for this patent.
If you have personal experience with Automatic model maintenance through local nets, we encourage you to share that experience with our LandOfFree.com community. Your opinion is very important and Automatic model maintenance through local nets will most certainly appreciate the feedback.
Profile ID: LFUS-PAI-O-4015533