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首页> 外文期刊>IEEE Transactions on Signal Processing >A dynamic regularized radial basis function network for nonlinear, nonstationary time series prediction
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A dynamic regularized radial basis function network for nonlinear, nonstationary time series prediction

机译:用于非线性非平稳时间序列预测的动态正则径向基函数网络

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In this paper, constructive approximation theorems are given which show that under certain conditions, the standard Nadaraya-Watson (1964) regression estimate (NWRE) can be considered a specially regularized form of radial basis function networks (RBFNs). From this and another related result, we deduce that regularized RBFNs are m.s., consistent, like the NWRE for the one-step-ahead prediction of Markovian nonstationary, nonlinear autoregressive time series generated by an i.i.d. noise processes. Additionally, choosing the regularization parameter to be asymptotically optimal gives regularized RBFNs the advantage of asymptotically realizing minimum m.s. prediction error. Two update algorithms (one with augmented networks/infinite memory and the other with fixed-size networks/finite memory) are then proposed to deal with nonstationarity induced by time-varying regression functions. For the latter algorithm, tests on several phonetically balanced male and female speech samples show an average 2.2-dB improvement in the predicted signaloise (error) ratio over corresponding adaptive linear predictors using the exponentially-weighted RLS algorithm. Further RLS filtering of the predictions from an ensemble of three such RBFNs combined with the usual autoregressive inputs increases the improvement to 4.2 dB, on average, over the linear predictors.
机译:本文给出了构造近似定理,表明在某些条件下,标准的Nadaraya-Watson(1964)回归估计(NWRE)可以被视为径向基函数网络(RBFN)的特殊正则形式。根据此结果以及另一个相关结果,我们推断出正则化RBFN是m.s.一致的,就像NWRE用于i.i.d生成的马尔可夫非平稳,非线性自回归时间序列的一步一步预测。噪音过程。另外,将正则化参数选择为渐近最优可为正则化RBFN提供渐近实现最小m.s的优势。预测误差。然后提出了两种更新算法(一种具有增强网络/无限内存,另一种具有固定大小网络/有限内存),以应对随时间变化的回归函数引起的非平稳性。对于后一种算法,在几个语音平衡的男性和女性语音样本上进行的测试表明,使用指数加权RLS算法比相应的自适应线性预测变量的预测信噪比(误差)平均提高了2.2 dB。通过将三个这样的RBFN与通常的自回归输入相结合,对预测进行进一步的RLS滤波,与线性预测变量相比,平均提高了4.2 dB。

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