PaperBased


Logical Genetics » Research » Paperbased
Formatting options:
  • %A: Authors list
  • %T: Title
  • %P: Publication
  • %U: Publisher
  • %Y: Year
  • %R: Reference Code

Search:

Group:  

Format:

Author name style: Joe W Bloggs Bloggs Joe W Bloggs

126 papers match your search query

References

A Blanco, M Delgado, M C Pegalajar, "A genetic algorithm to obtain the optimal recurrent neural network", International Journal of Approximate Reasoning, (2000)

A Blanco, M Delgado, M C Pegalajar, "A real-coded genetic algorithm for training recurrent neural networks", IEEE Transactions on Neural Networks, Vol. 14 No. 1 pp. 93-105, (2001)

A H Sung, "Ranking Importance of Input Parameters Of Neural Networks", Expert Systems with Applications, Vol. 15 pp. 405–411, (1998)

A P Wieland, "Evolving neural network controllers for unstable systems", IJCNN-91, International Joint Conference on Neural Networks, (1991)

A T C Goh, "Backpropagation Neural Networks for Modeling Complex Systems", Artificial Intelligence in Engineering, Vol. 9 No. 3 pp. 143–151, (1995)

Adrian Agogino, Joydeep Ghosh, Cheryl Martin, "Visualization of Radial Basis Function Networks", IJCNN '99. International Joint Conference on Neural Networks, (1999)

Ajith Abraham, "Artificial Neural Networks", Handbook of Measuring System Design, (2005)

Alex A Freitas, "A Survey of Evolutionary Algorithms for Data Mining and Knowledge Discovery", Advances In Evolutionary Computation, (2002)

Alex A Freitas, Jon Timmis, "Revisiting the Foundations of Artificial Immune Systems: A Problem Oriented Perspective", Proceedings of the 2nd International Conference on Artificial Immune Systems, Lecture Notes in Computer Science, Vol. 2787, pp. 229-241, (2003)

Andrew Secker, Alex A Freitas, Jon Timmis, "A Danger Theory Approach to Web Mining", ICARIS 2003, Proceedings, (2003)

Andrew Secker, Alex A Freitas, Jon Timmis, "AISEC: an Artificial Immune System for E-mail Classification", CEC 2003, Proceedings, (2003)

Andrew Watkins, Jon Timmis, "Artificial Immune Recognition System (AIRS): Revisions and Refinements", ICARIS 2002, Proceedings, (2002)

Andrew Watkins, Jon Timmis, "Exploiting the Parallelism Inherent in AIRS, an Artificial Immune Classifier", ICARIS 2004, Proceedings, (2004)

B Efron, "Bootstrap Methods: Another Look at the Jackknife", The Annals of Statistics, (1979)

Babak Hassibi, David G Stork, "Second Order Derivatives for Network Pruning: Optimal Brain Surgeon", Advances in Neural Information Processing Systems 5, (1992)

C B Miller, C Lee Giles, I Guyon, P S P Wang, "Experimental comparison of the effect of order in recurrent neural networks", International journal of pattern recognition and artificial intelligence, Vol. 7 No. 4 pp. 849-872, (1993)

C Lee Giles, C W Omlin, "Pruning recurrent neural networks for improved generalization performance", IEEE Transactions on Neural Networks, Vol. 5 No. 5 pp. 848-851, (1994)

C Lee Giles, D G Chen, C B Miller, Hsing-Hen Chen, Guo-Zheng Sun, Yee-Chung Lee, "Second-order recurrent neural networks for grammatical inference", IJCNN-91, International Joint Conference on Neural Networks, (1991)

C Lee Giles, D G Chen, Guo-Zheng Sun, Hsing-Hen Chen, Yee-Chung Lee, M W Goudreau, "Constructive learning of recurrent neural networks: limitations of recurrent cascade correlation and a simple solution", IEEE Transactions on Neural Networks, Vol. 6 No. 4 pp. 829-836, (1995)

C Lee Giles, Steve Lawrence, Ah Chung Tsoi, "Noisy Time Series Prediction Using a Recurrent Neural Network and Grammatical Inference", Machine Learning, Vol. 44 No. 1/2 pp. 161-183, (2001)

C Lee Giles, Steve Lawrence, Ah Chung Tsoi, "Noisy Time Series Prediction using recurrent Neural Networks and Grammatical Inference", Machine Learning, (2001)

D Datta, S A Tassou, "Defrost control of evaporator coils using artificial intelligence techniques", 20th International Conference on Refrigeration IIR/IIF, (1999)

D Datta, S A Tassou, "Frost formation and demand defrost of display cabinet evaporators", IIF-IIR Commission B2 and C2 with C1 and D2/3, (1998)

D Datta, S A Tassou, D Marriott, "Experimental investigation into frost formation on display cabinet evaporators in order to implement defrost on demand", 7th International Refrigeration Conference, Purdue, (1998)

D G Chen, D M Ware, "A neural network model for forecasting fish stock recruitment", Canadian Journal of Fisheries and Aquatic Sciences, Vol. 56 No. 12 pp. 2385-2396, (1999)

D Stribling, S A Tassou, D Marriott, "Optimisation of design of refrigerated display cases using computational fluid dynamics", Australia Institute of Refrigeration, Air Conditioning and Heating (AIRAH) Journal, (1997)

Dan W Taylor, David Corne, "An Investigation of the Negative Selection Algorithm for Fault Detection in Refrigeration Systems", ICARIS 2003, Proceedings, (2003)

Dan W Taylor, David Corne, "Innate and Acquired Immunity in Real Time Systems", International Conference on Hybrid Intelligent Systems 2004, (HIS'04) Proceedings, (2004)

Dan W Taylor, David Corne, "Refrigerant Leak Prediction in Supermarkets Using Evolved Neural Networks", 4th Asia Pacific Conference on Simulated Evolution and Learning (SEAL), Proceedings, (2002)

Dan W Taylor, David Corne, David Taylor, Jack Harkness, "Predicting Alarms in Supermarket Refrigeration Systems Using Evolved Neural Networks and Evolved Rulesets", World Congress on Computational Intelligence (WCCI-2002), Proceedings, (2002)

David B Fogel, "Foundations of Evolutionary Computation", Modeling and Simulation for Military Applications, M. Blowers (chair), SPIE, Orlando, FL, pp. 1-13, (2006)

David B Fogel, "Selecting an Optimal Neural Network", IECON '90, 16th Annual Conf. of the IEEE Industrial Electronics Society, (1990)

David B Fogel, A V Sebald, "Use of Evolutionary Programming in the Design of Neural Networks for Artifact Detection", Proceedings of IEEE EMBS, (1990)

David B Fogel, Lawrence J Fogel, V William Porto, "Evolutionary Programming for Training Neural Networks", Proceedings of the International Joint Conference on Neural Networks (IJCNN'90), (1990)

David H Wolpert, "Stacked generalization", Neural Networks, (1992)

David J Montana, Lawrence Davis, "Training feedforward neural networks using genetic algorithms", Proceedings of the International Joint Conference on Artificial Intelligence, (1989)

Dipankar Dasgupta, "Advances in Artificial Immune Systems", IEEE Computational Intelligence Magazine, November 2006, Vol. 1 No. 4, pp. 40-49, (2006)

Dipankar Dasgupta, "An Overview of Artificial Immune Systems and Their Applications", In Artificial Immune Systems and Their Applications, Springer, ISBN: 3540643907, (1999)

Dipankar Dasgupta, K Krishna Kumar, D Wong, M Berry, "Immunity-Based Aircraft Fault Detection System", AIAA 1st Intelligent Systems Technical Conference. pp. 1-14, (2004)

Dipankar Dasgupta, K Krishna Kumar, D Wong, M Berry, "Negative Selection Algorithm for Aircraft Fault Detection", Proceedings ICARIS 2004, pp. 1-13, (2004)

Dipankar Dasgupta, Nivedita Sumi Majumdar, "Anomaly Detection in Multidimensional Data Using Negative Selection Algorithm", Proceedings CEC 2002, Vol. 2, pp. 1039-1044, (2002)

Dipankar Dasgupta, Nivedita Sumi Majumdar, "MILA – multilevel immune learning algorithm and its application to anomaly detection", Soft Computing - A Fusion of Foundations, Methodologies and Applications, Vol. 9, No. 3, pp. 172-184, (2005)

Dipankar Dasgupta, Senhua Yu, Nivedita Sumi Majumdar, "MILA - Multilevel Immune Learning Algorithm", Proceedings of Genetic and Evolutiuonary Computation (GECCO) 2003, pp. 183-194, (2003)

Dipankar Dasgupta, Stephanie Forrest, "Novelty Detection in Time Series Data Using Ideas from Immunology", Proceedings of the 5th International Conference on Intelligent Systems, pp. 82--87, (1996)

Dipankar Dasgupta, Zhou Ji, Fabio Gonzalez, "Artificial immune system (AIS) research in the last five years", Proceedings of the 2003 Congress on Evolutionary Computation, (CEC '03) Vol. 1 pp. 123- 130, (2003)

Donald E Goodman, Lois Boggess, Andrew Watkins, "An Investigation into the Source of Power for AIRS, an Artificial Immune Classification System", Proceedings of the International Joint Conference on Neural Networks (IJCNN'03), (2003)

Emma Hart, Jon Timmis, "Application Areas of AIS: Past, Present and Future", International Conference on Artificial Immune Systems (ICARIS), LNCS Vol. 3627, pp. 483-497, (2005)

Eugene S Edgington, "Randomization tests", Statistics, Textbooks And Monographs; Vol. 77 ISBN:0-824-77656-9, (1986)

F Herrera, M Lozano, J L Verdegay, "Tackling Real-Coded Genetic Algorithms: Operators and Tools for Behavioural Analysis", Artificial Intelligence Review, Vol. 12 No. 4 pp. 265-319, (1998)

Fabio Gonzalez, Dipankar Dasgupta, "Anomaly Detection Using Real-Valued Negative Selection", Genetic Programming and Evolvable Machines, Vol. 4, No. 4, pp. 383-403, (2003)

Fabio Gonzalez, Dipankar Dasgupta, Jonatan Gomez, "The Effect of Binary Matching Rules in Negative Selection", Proceedings of Genetic and Evolutiuonary Computation (GECCO) 2003, pp. 195-206, (2003)

Fabio Gonzalez, Dipankar Dasgupta, R Kozma, "Combining negative selection and classification techniques for anomaly detection", Proceedings of the 2002 Congress on Evolutionary Computation (CEC '02), pp. 705–710, (2002)

Fan Yin Tzeng, Kwan Liu Ma, "Opening the Black Box - Data Driven Visualization of Neural Networks", Visualization, 2005, pp. 383-390, (2005)

Fernando Esponda, Elena S Ackley, Stephanie Forrest, Paul Helman, "Online Negative Databases", ICARIS 2004, Proceedings, (2004)

G E Hinton, J L McClelland, D E Rumelhart, "Distributed Representations", In Rumelhart, D. E. and McClelland, J. L., editors, Parallel Distributed Processing: Explorations in the Microstructure of Cognition. Volume 1: Foundations, (1986)

G. David Garson, "Interpreting neural-network connection weights", AI Expert, Vol. 6 No. 4 pp. 46-51, (1991)

Geoffrey F Miller, Peter M Todd, Shailesh U Hegde, "Designing neural networks using genetic algorithms", Proceedings of the third international conference on Genetic algorithms, (1989)

Georg Dorffner, "Neural Networks for Time Series Processing", Neural Network World, Vol. 6 No. 4 pp. 447-468, (1996)

H R Maier, G C Dandy, M D Burch, "Use of artificial neural networks for modelling cyanobacteria Anabaena spp. in the River Murray, South Australia", Ecological Modelling, Vol. 105 No. 2-3 pp. 257-272, (1998)

Ioannis Dimopoulos, J Chronopoulos, A Chronopoulou-Sereli, Sovan Lek, "Neural network models to study relationships between lead concentration in grasses and permanent urban descriptors in Athens city (Greece)", Ecological Modelling, Vol. 120 No. 2-3 pp. 157-165, (1999)

Ioannis Dimopoulos, Paul Bourret, Sovan Lek, "Use of some sensitivity criteria for choosing networks with good generalization ability", Neural Processing Letters, (1995)

J D Knowles, David Corne, "Evolving Neural Networks for Cancer Radiotherapy", Practical Handbook of Genetic Algorithms: Applications, 2nd Edition, (2000)

J D Olden, Donald A Jackson, "Illuminating the ‘‘black box’’: a randomization approach for understanding variable contributions in artificial neural networks", Ecological Modelling, Vol. 154 No. 1-2 pp. 135-150, (2002)

J D Olden, Donald A Jackson, "Torturing the data for the sake of generality: how valid are our regression models", Ecoscience, (2000)

J D Schaffer, D Whitley, L J Eshelman, "Combinations of genetic algorithms and neural networks: A survey of the state of the art", COGANN-92 International Workshop on Combinations of Genetic Algorithms and Neural Networks, (1992)

Jakub Wejchert, Gerald Tesauro, "Neural Network Visualization", Advances in neural information processing systems 2 pp. 465-472, (1989)

Jeffrey L Elman, "Finding Structure in Time", Cognitive Science, Vol. 14, No. 2, pp. 179-211, (1990)

Jerome T Connor, R. Douglas Martin, L E Atlas, "Recurrent Neural Networks and Robust Time Series Prediction", IEEE Transactions on Neural Networks, Vol. 5 No. 2 pp. 240-254, (1994)

Jim Antonisse, "A new interpretation of schema notation that overturns the binary encoding constraint", Third international conference on genetic algorithms, 1989, (1989)

John Hawkins, Mikael Boden, "The Applicability of Recurrent Neural Networks for Biological Sequence Analysis", Transactions on Computational Biology and Bioinformatics (TCBB), (2005)

Jon Timmis, "aiVIS - Artificial Immune Network Visualisation", EuroGraphics UK 2001 Conference Proceedings, (2001)

Julie Greensmith, Steve Cayzer, "An Artificial Immune System Approach to Semantic Document Classification", ICARIS 2003, Proceedings, (2003)

K Hornik, M Stinchcombe, H White, "Multilayer feedforward networks are universal approximators", Neural Networks, (1989)

Leandro N de Castro, Jon Timmis, "Artificial Immune Systems: A Novel Paradigm to Pattern Recognition", Artificial Neural Networks in Pattern Recognition, (2002)

Lori Pratt, Steve Nicodemus, "Case Studies in the Use of a Hyperplane Animator for Neural Network Research", World Congress on Computational Intelligence (WCCI 1994), (1994)

M Axell, P Fahlen, "Climatic influence on display cabinet performance", New technologies in commercial refrigeration, Urbana, IL, International Institute of Refrigeration Commissions B1 and D1, (2002)

M Frean, "The upstart algorithm: A method for constructing and training feedforward neural networks", Neural Computation, Vol. 2 No. 2 pp. 198-209, (1990)

M Mandischer, "Evolving recurrent neural networks with non-binary encoding", IEEE International Conference on Evolutionary Computation, 1995, (1995)

M R Azimi-Sadjadi, S Sheedvash, F O Trujillo, "Recursive dynamic node creation in multilayer neural networks", IEEE Transactions on Neural Networks, Vol. 4 No. 2 pp. 242-256, (1993)

Mark W Craven, Jude W Shavlik, "Extracting Comprehensible Concept Representations from Trained Neural Networks", IJCAI Workshop on Comprehensibility in Machine Learning, (1995)

Matthew J Streeter, Matthew O Ward, Sergio A Alvarez, "NVIS: An interactive visualization tool for neural networks", Proc. SPIE Vol. 4302 pp. 234-241, Visual Data Exploration and Analysis VIII, Robert F. Erbacher; Philip C. Chen; Jonathan C. Roberts; Craig M. Wittenbrink; Matti Groehn; Eds., (2001)

Matthew N Dailey, Garrison W Cottrell, Curtis Padgett, Ralph Adolphs, "EMPATH: A Neural Network that Categorizes Facial Expressions", Journal of Cognitive Neuroscience, Vol. 14 No. 8, (2002)

Michael Husken, Peter Stagge, "Recurrent Neural Networks for Time Series Classification", Neurocomputing, (2003)

Michele Scardi, Lawrence W Harding, "Developing an empirical model of phytoplankton primary production: a neural network case study", Ecological Modelling, Vol. 120 No. 2-3 pp. 213-223, (1999)

Modupe Ayara, Jon Timmis, Rogerio de Lemos, Leandro N de Castro, Ross Duncan, "Negative Selection: How to Generate Detectors", ICARIS 2002, Proceedings, (2002)

P Andrews, Jon Timmis, "Inspiration for the Next Generation of Artificial Immune Systems", International Conference on Artificial Immune Systems (ICARIS), LNCS Vol. 3627, pp. 126-138, (2005)

P Andrews, Jon Timmis, "On Diversity and Artificial Immune Systems: Incorporating a Diversity Operator into aiNET", Proceedings of WIRN/NAIS, LNCS Vol. 391, pp. 293-306, (2005)

Peter J Angeline, Gregory M Saunders, Jordan B Pollack, "An Evolutionary Algorithm that Constructs Recurrent Neural Networks", IEEE Transactions on Neural Networks, Vol. 5 No. 1 pp. 54-65, (1994)

Peter May, Keith Mander, Jon Timmis, "Software Vaccination: An Artificial Immune System Approach to Mutation Testing", ICARIS 2003, Proceedings, (2003)

Philipp H Mohr, Nick Ryan, Jon Timmis, "Exploiting Immunological Properties for Ubiquitous Computing Systems", ICARIS 2004, Proceedings, (2004)

R H Howell, L Rosario, M Bondoc, "Potential savings in display case energy with reduced supermarket relative humidity", 20th International Conference on Refrigeration IIR/IIF, (1999)

Randall D Beer, John C Gallagher, "Evolving dynamical neural networks for adaptive behavior", Adaptive Behavior, Vol. 1 No. 1 pp. 91-122, (1992)

Richard K Belew, John McInerney, Nicol N Schraudolph, "Evolving Networks: Using the Genetic Algorithm with Connectionist Learning", CSE Technical Report CS90-174, University of California, San Diego, (1990)

S A Tassou, D Datta, D Marriott, "Frost formation and defrost control parameters for open multideck refrigerated food display cabinets", Proceedings of the Institute of Mechanical Engineering, Part A: Journal of Power and Energy, Volume 215, Number 2 pp. 213-222, (2001)

S L Ozesmi, U Ozesmi, "An artificial neural network approach to spatial habitat modelling with interspecific interaction", Ecological Modelling, Vol.116 No. 1 pp. 15-31, (1999)

Sankalp Balachandran, Dipankar Dasgupta, Fernando Nino, Deon Garrett, "A General Framework for Evolving Multi-Shaped Detectors in Negative Selection", NOT YET PUBLISHED!, (2006)

Sara A Solla, "Capacity control in classifiers for pattern recognition", Neural Networks for Signal Processing II, Proceedings of the 1992 IEEE-SP Workshop, (1992)

Shantanu Singh, "Anomaly Detection Using Negative Selection Based on the R-Contiguous Matching Rule", ICARIS 2002, Proceedings, (2002)

Simon M Garrett, "How Do We Evaluate Artificial Immune Systems?", Evolutionary Computation, Vol. 13, pp. 145-177, (2005)

Sovan Lek, A Belaud, Ioannis Dimopoulos, J Lauga, J Moreau, "Improved estimation, using neural networks, of the food consumption of fish populations", Marine & Freshwater Research, (1995)

Stephen José Hanson, "Meiosis networks", Advances in neural information processing systems 2, pp. 533-541, (1990)

Susan Stepney, R Smith, Jon Timmis, A Tyrrell, "Towards a Conceptual Framework for Artificial Immune Systems", Third International Conference on Artificial Immune Systems, number 3239 in LNCS, pp. 53-64, (2004)

T Ash, "Dynamic node creation in backpropagation networks", IJCNN 89, International Joint Conference on Neural Networks, (1989)

Terri Oda, Tony White, "Increasing the Accuracy of a Spam-Detecting Artificial Immune System", CEC 2003, Proceedings, (2003)

Thomas Knight, Jon Timmis, "A Multi-Layered Immune Approach to Data Mining", 4th International Conference on Recent Advances in Soft Computing, Proceedings, (2002)

Thomas Stibor, Jon Timmis, C Eckert, "A Comparative Study of Real-Valued Negative Selection to Statistical Anomaly Detection Techniques", International Conference on Artificial Immune Systems (ICARIS), LNCS Vol. 3627, pp. 262-275, (2005)

Thomas Stibor, Jon Timmis, C Eckert, "On the Appropriateness of Negative Selection defined over Hamming Shape Space As a Network Intrustion Detection System", Proceedings of the Congress on Evolutionary Computation (CEC), (2005)

Thomas Stibor, Jon Timmis, C Eckert, "On the Use of Hyperspheres in Artificial Immune Systems as Antibody Recognition Regions", Proceedings of the 5th International Conference on Artificial Immune Systems (ICARIS-2006), LNCS Vol.4163, pp. 215-228, (2006)

Thomas Stibor, Philipp H Mohr, Jon Timmis, C Eckert, "Is negative selection appropriate for anomaly detection?", Proceedings of Genetic and Evolutionary Computation Conference (GECCO), pp.321-328, (2005)

Timo Koskela, Mikko Lehtokangas, Jukka Saarinen, Kimmo Kaski, "Time Series Prediction with Multilayer Perceptron, FIR and Elman Neural Networks", World Congress on Neural Networks 1996, Proceedings, (1996)

Tomasz J Cholewo, Jacek M Zurada, "Sequential Network Construction for Time Series Prediction", Proceedings International Conference on Neural Networks, Vol. 4 pp. 2034-2038, (1997)

Uwe Aickelin, Steve Cayzer, "On the Effects of Idiotypic Interactions for Recommendation Communities in Artificial Immune Systems", ICARIS 2002, Proceedings, (2002)

Uwe Aickelin, Steve Cayzer, "The Danger Theory and its Application to Artificial Immune Systems", ICARIS 2002, Proceedings, (2002)

Wlodzislaw Duch, "Visualization of Hidden Node Activity in Neural Networks: I. Visualization Methods", Proceedings ICAISC 2004 Artificial Intelligence and Soft Computing, pp. 38-43, (2004)

Wlodzislaw Duch, "Visualization of Hidden Node Activity in Neural Networks: II. Application to RBF Networks", Proceedings ICAISC 2004 Artificial Intelligence and Soft Computing, pp. 44-49, (2004)

Xin Yao, "A Review of Evolutionary Artificial Neural Networks", International Journal of Intelligent Systems, (1997)

Xin Yao, "Evolving Artificial Neural Networks", Proceedings of the IEEE, Vol. 87 No. 9 pp. 1423-1447, (1999)

Xin Yao, Yong Liu, "A New Evolutionary System For Evolving Artificial Neural Networks", IEEE Transactions on Neural Networks, Vol. 8 No. 3 pp. 694-713, (1995)

Yann Le Cun, John S Denker, Sara A Solla, "Optimal brain damage", Advances in neural information processing systems 2, pages 598--605, (1990)

Yong Liu, Xin Yao, "A Population-Based Learning Algorithm Which Learns Both Architectures and Weights of Neural Networks", Chinese Journal of Advanced Software Research, Vol. 3 No. 1 pp. 54-65, (1996)

Yoshua Bengio, Patrice Simard, Paolo Frasconi, "Learning Long Term Dependencies with Gradient Descent is Difficult", IEEE Transactions on Neural Networks, Vol. 5 No. 2 pp. 157-166, (1994)

Zheng Zeng, R M Goodman, P Smyth, "Discrete recurrent neural networks for grammatical inference", IEEE Transactions on Neural Networks, Vol. 5 No. 2 pp. 320-330, (1994)

Zhou Ji, Dipankar Dasgupta, "Applicability issues of the real-valued negative selection algorithms", Proceedings of the 8th annual conference on Genetic and evolutionary computation (GECCO), pp. 111-118, (2006)

Zhou Ji, Dipankar Dasgupta, "Augmented negative selection algorithm with variable-coverage detectors", Proceedings of the 2004 Congress on Evolutionary Computation (CEC '04), Vol. 1, pp. 1081-1088, (2004)

Zhou Ji, Dipankar Dasgupta, "Estimating the detector coverage in a negative selection algorithm", Proceedings of the 2005 conference on Genetic and evolutionary computation (CEC '05) pp. 281 - 288, (2005)

Zhou Ji, Dipankar Dasgupta, "Real valued negative selection algorithm with variable-sized detectors", LNCS 3102, Proceedings of GECCO '04, pp. 287-298, (2004)