Modular Neural Networks: a state of the art

The use of \global neural networks" (as the back propagation neural network) and \clustering neural networks" (as the radial basis function neural network) leads each other to diierent advantages and inconvenients. The combination of the desirable features ot those two neural ways of computation is achieved by the use of Modular Neural Networks (MNN). In addition, a considerable advantage can emerge from the use of such a MNN: an interpreatable and relevant neural representation about the plant's behaviour. This very desirable feature for function approximation and especially for control problems, is what lake other neural models. This feature is so important that we introduce it as a way to diierenciate MNN between other local computation models. However, to enable a systematic use of MNN three steps have to be achieved. First of all, the task has to be decomposed into subtasks, then the neural modules have to be properly organised considering the subtasks and nally a way of communication inter-modules has to be integrated in the whole architecture. We achieved a study of the main modular applications according to those steps. This study leads to the main fact that a systematic use of MNN depends on the type of task considered. The clustering networks and especially the Local Model Networks can be seen as MNN in the frame of classiication or recognition problems. The Euclidean distance criterion that they apply to cluster the input space leads to a relevant decomposition according to the properties of those tasks. But, it is irrelevant to apply such a criteria in case of function approximation problems. As spatial clustering seems to be the only existing decomposing method, therefore, an \ad hoc" decomposition and organisation of the architecture is achieved in case of function approximation. So, to improve the systematic use of MNN in the framework of function approximation it is now essential to conceive a method of relevant task decomposition.

[1]  Russell Reed,et al.  Pruning algorithms-a survey , 1993, IEEE Trans. Neural Networks.

[2]  T. Johansen,et al.  A NARMAX model representation for adaptive control based on local models , 1992 .

[3]  Michael I. Jordan,et al.  A Competitive Modular Connectionist Architecture , 1990, NIPS.

[4]  Risto Miikkulainen,et al.  Natural Language Processing With Modular PDP Networks and Distributed Lexicon , 1991, Cogn. Sci..

[5]  Geoffrey E. Hinton,et al.  Evaluation of Adaptive Mixtures of Competing Experts , 1990, NIPS.

[6]  Kurt Hornik,et al.  Some new results on neural network approximation , 1993, Neural Networks.

[7]  E. Capaldi,et al.  The organization of behavior. , 1992, Journal of applied behavior analysis.

[8]  W S McCulloch,et al.  A logical calculus of the ideas immanent in nervous activity , 1990, The Philosophy of Artificial Intelligence.

[9]  F. Fogelman Soulie Multi-modular neural network-hybrid architectures: a review , 1993 .

[10]  Michael I. Jordan,et al.  Task Decomposition Through Competition in a Modular Connectionist Architecture: The What and Where Vision Tasks , 1990, Cogn. Sci..

[11]  Jacques J. Vidal,et al.  Cluster network for recognition of handwritten, cursive script characters , 1993, Neural Networks.

[12]  Kimmo Kaski,et al.  Choosing optimal network structure , 1990 .

[13]  David Haussler,et al.  What Size Net Gives Valid Generalization? , 1989, Neural Computation.

[14]  David S. Broomhead,et al.  Multivariable Functional Interpolation and Adaptive Networks , 1988, Complex Syst..

[15]  Kevin J. Lang A time delay neural network architecture for speech recognition , 1989 .

[16]  R. H. Phaf,et al.  CALM: Categorizing and learning module , 1992, Neural Networks.

[17]  Michael I. Jordan,et al.  Learning piecewise control strategies in a modular neural network architecture , 1993, IEEE Trans. Syst. Man Cybern..

[18]  G. Reeke Marvin Minsky, The Society of Mind , 1991, Artif. Intell..

[19]  Hsin-Chia Fu,et al.  A divide-and-conquer methodology for modular supervised neural network design , 1994, Proceedings of 1994 IEEE International Conference on Neural Networks (ICNN'94).

[20]  S. Kosslyn,et al.  Why are What and Where Processed by Separate Cortical Visual Systems? A Computational Investigation , 1989, Journal of Cognitive Neuroscience.

[21]  Robert E. Jenkins,et al.  A Simplified Neural-Network Solution through Problem Decomposition: The Case of the Truck Backer-Upper , 1992, Neural Computation.

[22]  Isabelle Guyon,et al.  A time delay neural network character recognizer for a touch terminal , 1990 .

[23]  Roderick Murray-Smith,et al.  Local model networks and local learning , 1994 .

[24]  Dana H. Ballard,et al.  Modular Learning in Neural Networks , 1987, AAAI.

[25]  Chong-Ho Choi,et al.  Partially trained neural networks based on partition of unity , 1992, [Proceedings 1992] IJCNN International Joint Conference on Neural Networks.

[26]  Roderick Murray-Smith,et al.  A local model network approach to nonlinear modelling , 1994 .

[27]  Robert A. Jacobs,et al.  Hierarchical Mixtures of Experts and the EM Algorithm , 1993, Neural Computation.

[28]  Jooyoung Park,et al.  Universal Approximation Using Radial-Basis-Function Networks , 1991, Neural Computation.

[29]  Patrick Gallinari,et al.  A Framework for the Cooperation of Learning Algorithms , 1990, NIPS.

[30]  Jerome A. Feldman,et al.  Neural Representation of Conceptual Knowledge. , 1986 .

[31]  Robert M. Farber,et al.  How Neural Nets Work , 1987, NIPS.

[32]  Geoffrey E. Hinton,et al.  Phoneme recognition using time-delay neural networks , 1989, IEEE Trans. Acoust. Speech Signal Process..

[33]  Simon M. Lucas,et al.  Growing adaptive neural networks with graph grammars , 1995, ESANN.

[34]  Christian Lebiere,et al.  The Cascade-Correlation Learning Architecture , 1989, NIPS.

[35]  Yann LeCun,et al.  Modeles connexionnistes de l'apprentissage , 1987 .

[36]  Dennis Connolly,et al.  Self organizing modular neural networks , 1991, IJCNN-91-Seattle International Joint Conference on Neural Networks.

[37]  J J Hopfield,et al.  Neural networks and physical systems with emergent collective computational abilities. , 1982, Proceedings of the National Academy of Sciences of the United States of America.

[38]  D. Wolf,et al.  Growing artifical neural networks based on correlation measures, task decomposition and local attention neurons , 1994, Proceedings of 1994 IEEE International Conference on Neural Networks (ICNN'94).

[39]  Stephen Grossberg,et al.  Recognition and segmentation of connected characters with selective attention , 1994, Neural Networks.

[40]  Bart L. M. Happel,et al.  Design and evolution of modular neural network architectures , 1994, Neural Networks.

[41]  M. Mesarovic,et al.  Theory of Hierarchical, Multilevel, Systems , 1970 .

[42]  C. Monrocq A probabilistic approach which provides a modular and adaptive neural network architecture for discrimination , 1993 .

[43]  Yann LeCun,et al.  Generalization and network design strategies , 1989 .