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    Abstract:

    A field theory based adaptive resonance neural network model, FTART2, is proposed in this paper. FTART2 combines the advantages of the adaptive resonance theory and the field theory, and achieves fast learning, strong generality and high efficiency. Moreover, FTART2 can adaptively adjust its network topology so that the disadvantage of manually configuring hidden neurons of traditional feed-forward networks is avoided. Benchmark tests show that FTART2 achieves higher accuracy and faster speed than standard BP.

    Reference
    1  Carpenter G A, Grossberg S. The ART of adaptive pattern recognition by a self-organizing neural network. Computer, 1988,21(3):77~88 2  Wasserman P D. Advanced Methods in Neural Computing. New York: Van Nostrand Reinhold, 1993 3  Zhou Zhi-hua, Chen Zhao-qian, Chen Shi-fu. Review of adaptive resonance theory. Computer Science, 1999,26(4):54~56 (周志华,陈兆乾,陈世福.自适应谐振理论综述.计算机科学,1999,26(4):54~56) 4  Carpenter G, Grossberg S, Markuzon N et al. Fuzzy ARTMAP: a neural network architecture for incremental supervised learning of analog multidimensional maps. IEEE Transactions on Neural Networks, 1992,3(5):698~713 5  Rumelhart D, Hinton G, Williams R. Learning representations by backpropagating errors. Nature, 1986,323(9):318~362 6  Lang K J, Witbrock M J. Learning to tell two spirals apart. In: Touretzky D, Hinton G, Sejnowski T eds. Proceedings of the 1988 Connectionist Models Summer School. San Mateo, CA: Morgan Kaufmann Publishers, Inc., 1989. 52~59
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周志华,陈兆乾,陈世福.基于域理论的自适应谐振神经网络分类器.软件学报,2000,11(5):667-672

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History
  • Received:January 11,1999
  • Revised:May 24,1999
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