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首页> 外文期刊>IEEE Transactions on Signal Processing >On the optimal weight vector of a perceptron with Gaussian data and arbitrary nonlinearity
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On the optimal weight vector of a perceptron with Gaussian data and arbitrary nonlinearity

机译:具有高斯数据和任意非线性的感知器的最佳权向量

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The authors investigate the solution to the following problem: find the optimal weighted sum of given signals when the optimality criterion is the expected value of a function of this sum and a given 'training' signal. The optimality criterion can be a nonlinear function from a very large family of possible functions. A number of interesting cases fall under this general framework, such as a single layer perceptron with any of the commonly used nonlinearities, the least-mean-square (LMS), the LMF or higher moments, or the various sign algorithms. Assuming the signals to be jointly Gaussian, it is shown that the optimal solution, when it exits, is always collinear with the well-known Wiener solution, and only its scaling factor depends on the particular functions chosen. Necessary constructive conditions for the existence of the optimal solution are also presented.
机译:作者研究了以下问题的解决方案:当最优标准是该和信号与给定“训练”信号的函数的期望值时,找到给定信号的最优加权和。最佳标准可以是来自很大可能函数族的非线性函数。许多有趣的情况都属于这种通用框架,例如具有任何常用非线性的单层感知器,最小均方(LMS),LMF或更高矩或各种符号算法。假设信号为联合高斯信号,则表明最优解在退出时始终与众所周知的维纳解共线,并且仅其缩放因子取决于所选的特定函数。还提出了最优解存在的必要构造条件。

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