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Towards a more analytical training of neural networks and neuro-fuzzy systems

机译:进行神经网络和神经模糊系统的更多分析培训

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When used for function approximation purposes, neural networks belong to a class of models whose parameters can be separated into linear and nonlinear, according to their influence in the model output. In this work we extend this concept to the case where the training problem is formulated as the minimization of the integral of the squared error, along the input domain. With this approach, the gradient-based non-linear optimization algorithms require the computation of terms that are either dependent only on the model and the input domain, and terms which are the projection of the target function on the basis functions and on their derivatives with respect to the nonlinear parameters. These latter terms can be numerically computed with the data provided. The use of this functional approach brings at least two advantages in comparison with the standard training formulation: firstly, computational complexity savings, as some terms are independent on the size of the data and matrices inverses or pseudo-inverses are avoided; secondly, as the performance surface using this approach is closer to the one obtained with the true (typically unknown) function, the use of gradient-based training algorithms has more chance to find models that produce a better fit to the underlying function.
机译:当用于函数逼近时,神经网络属于一类模型,根据其对模型输出的影响,其参数可以分为线性和非线性。在这项工作中,我们将这个概念扩展到训练问题被公式化为沿着输入域最小化平方误差积分的情况。使用这种方法,基于梯度的非线性优化算法需要计算仅依赖于模型和输入域的项,以及作为目标函数在基函数及其导数上的投影的项。相对于非线性参数。可以使用提供的数据在数值上计算这些后一项。与标准训练公式相比,此功能方法的使用至少带来了两个优点:首先,节省了计算复杂度,因为某些术语与数据的大小无关,并且避免了矩阵逆或伪逆。其次,由于使用这种方法的性能表面更接近于使用真实(通常是未知的)函数获得的表面,因此基于梯度的训练算法的使用有更多的机会来找到能够更好地拟合基础函数的模型。

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