A novel efficient two-phase algorithm for training interpolation radial basis function networks
nterpolation radial basis function (RBF) networks have been widely used
in various applications. The output layer weights are usually determined
by minimizing the sum-of-squares error or by directly solving
interpolation equations. When the number of interpolation nodes is
large, these methods are time consuming, difficult to control the
balance between the convergence rate and the generality, and difficult
to reach a high accuracy. In this paper, we propose a two-phase
algorithm for training interpolation RBF networks with bell-shaped basis
functions. In the first phase, the width parameters of basis functions
are determined by taking into account the tradeoff between the error and
the convergence rate. Then, the output layer weights are determined by
finding the fixed point of a given contraction transformation. The
running time of this new algorithm is relatively short and the balance
between the convergence rate and the generality is easily controlled by
adjusting the involved parameters, while the error is made as small as
desired. Also, its running time can be further enhanced thanks to the
possibility to parallelize the proposed algorithm. Finally, its
efficiency is illustrated by simulations. (c) 2007 Elsevier B.V. All
rights reserved. Mời bạn đọc xem tại đây: http://repository.vnu.edu.vn/handle/VNU_123/31018
Không có nhận xét nào:
Đăng nhận xét