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Titlebook: Advances in Natural Computation; First International Lipo Wang,Ke Chen,Yew Soon Ong Conference proceedings 2005 Springer-Verlag Berlin Hei

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Development of polymer processing SSVR, but without adding any heuristic smoothing parameters and with robust absolute loss. Taking advantage of L.-SSVR, one can now consider SVM as linear programming, and efficiently solve large-scale regression problems without any optimization packages. Details of this algorithm and its implemen
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https://doi.org/10.1007/978-1-4615-5789-0rain diagonal recurrent neural network (DRNN). The EKF is used to train DRNN and particle filter applies the resampling algorithm to optimize the particles, namely DRNNs, with the relative network weights. These methods make the training shorter and DRNN convergent more quickly. Simulation results o
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Development of polymer processingveloped, and the estimation of the exponential convergence rate is presented. The obtained criteria are dependent on time delay, and consist of all the information on the neural networks. The effects of time delay and number of connection matrices of the neural networks on the exponential convergenc
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Pijush Mallick,Mrittika Senguptacross-validation method. In this work, we propose a new method that locally determines the number of nearest neighbors based on the concept of statistical confidence. We define the confidence associated with decisions that are made by the majority rule from a finite number of observations and use it
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https://doi.org/10.1007/978-3-030-15751-7 algorithm is sensitive to several parameters that should be set artificially, and the resulting maps may be invalid in case of noises. In this paper, the original LLE algorithm is improved by introducing the self-organizing features of a novel SOM model we proposed recently called DGSOM to overcome
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