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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Approximating Gaussian Mixture Model or Radial Basis Function Network With Multilayer Perceptron
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Approximating Gaussian Mixture Model or Radial Basis Function Network With Multilayer Perceptron

机译:多层感知器的近似高斯混合模型或径向基函数网络

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摘要

Gaussian mixture models (GMMs) and multilayer perceptron (MLP) are both popular pattern classification techniques. This brief shows that a multilayer perceptron with quadratic inputs (MLPQ) can accurately approximate GMMs with diagonal covariance matrices. The mapping equations between the parameters of GMM and the weights of MLPQ are presented. A similar approach is applied to radial basis function networks (RBFNs) to show that RBFNs with Gaussian basis functions and Euclidean norm can be approximated accurately with MLPQ. The mapping equations between RBFN and MLPQ weights are presented. There are well-established training procedures for GMMs, such as the expectation maximization (EM) algorithm. The GMM parameters obtained by the EM algorithm can be used to generate a set of initial weights of MLPQ. Similarly, a trained RBFN can be used to generate a set of initial weights of MLPQ. MLPQ training can be continued further with gradient-descent based methods, which can lead to improvement in performance compared to the GMM or RBFN from which it is initialized. Thus, the MLPQ can always perform as well as or better than the GMM or RBFN.
机译:高斯混合模型(GMM)和多层感知器(MLP)都是流行的模式分类技术。此摘要表明,具有二次输入(MLPQ)的多层感知器可以精确估计具有对角协方差矩阵的GMM。提出了GMM参数与MLPQ权重之间的映射方程。将类似的方法应用于径向基函数网络(RBFN),以显示具有高斯基函数和欧几里得范数的RBFN可以使用MLPQ精确估计。给出了RBFN和MLPQ权重之间的映射方程。有完善的GMM训练程序,例如期望最大化(EM)算法。通过EM算法获得的GMM参数可用于生成一组MLPQ初始权重。类似地,受过训练的RBFN可用于生成一组MLPQ初始权重。 MLPQ训练可以使用基于梯度下降的方法继续进行,与初始化GLP或RBFN相比,可以提高性能。因此,MLPQ始终可以比GMM或RBFN表现更好或更好。

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