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H(infinity)-learning of layered neural networks.

H(infinity)-learning of layered neural networks. Research Abstract Details 

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  • H(infinity)-learning of layered neural networks. Abstract Text:

    k nishiyamaK Nishiyama,k suzukiK Suzuki,

    Although the backpropagation (BP) scheme is widely used as a learning algorithm for multilayered neural networks, the learning speed of the BP algorithm to obtain acceptable errors is unsatisfactory in spite of some improvements such as introduction of a momentum factor and an adaptive learning rate in the weight adjustment. To solve this problem, a fast learning algorithm based on the extended Kalman filter (EKF) is presented and fortunately its computational complexity has been reduced by some simplifications. In general, however, the Kalman filtering algorithm is well known to be sensitive to the nature of noises which is generally assumed to be Gaussian. In addition, the H(infinity) theory suggests that the maximum energy gain of the Kalman algorithm from disturbances to the estimation error has no upper bound. Therefore, the EKF-based learning algorithms should be improved to enhance the robustness to variations in the initial values of link weights and thresholds as well as to the nature of noises. The paper proposes H(infinity)-learning as a novel learning rule and to derive new globally and locally optimized learning algorithms based on H (infinity)-learning. Their learning behavior is analyzed from various points of view using computer simulations. The derived algorithms are also compared, in performance and computational cost, with the conventional BP and EKF learning algorithms.

    H(infinity)-learning of layered neural networks. Publishing Authors By Initials

    k nishiyamaK Nishiyama,k suzukiK Suzuki,

    For similar abstracts research abstracts see: abstracts research

    PUBMED ID PMID:

    MEDLINE DATE:

    H(infinity)-learning of layered neural networks. Journal Published:

    PUBLICATION TYPE: Journal Article

    Journal: IEEE transactions on neural networks / a publicati

    VOLUME: 12

    Page Numbers: 1265-77

    Journal Abbreviation:

    ISSN: 1045-9227

    DAY: 5

    MONTH: 02

    YEAR: 2001

    H(infinity)-learning of layered neural networks. Information

    Number of References:

    LANGUAGE: eng

    NlmUniqueID: 101211035

    H(infinity)-learning of layered neural networks. Keywords Mesh Terms:

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    Grant and Affiliation Information for H(infinity)-learning of layered neural networks.

    AFFILIATION: Dept. of Comput. and Inf. Sci., Iwate Univ., Morioka.

    Country: United States

    United States Research PublicationUnited States Research Publication

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    MEDLINETA: IEEE Trans Neural Netw

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