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Parametric distance functions vs. nonparametric neural networks for estimating road travel distances

机译:用于估计行进距离的参数距离函数与非参数神经网络

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Measuring and storing actual road travel distances between the points of a region is often not feasible and it is a common practice to estimate them. The usual approach is to use distance estimators which are parameterized functions of the coordinates of the points. We propose to use nonparametric approaches using neural networks for estimating actual distances. We consider multi-layer perceptrons trained with the back-propagation rule and regression neural networks implementing nonparametric regression using Gaussian kernels. We also consider training multiple estimators and combining them using voting and stacking. On a real-world study using cities drawn from Turkey, we found out that these nonparametric approaches are more accurate than the parametric distance functions. Estimating actual distances has many applications in location and distribution theory.
机译:测量和存储一个区域的各个点之间的实际道路行驶距离通常是不可行的,并且通常估算它们。通常的方法是使用距离估计器,这些估计器是点坐标的参数化函数。我们建议使用使用神经网络的非参数方法来估计实际距离。我们考虑使用反向传播规则训练的多层感知器以及使用高斯核实现非参数回归的回归神经网络。我们还考虑训练多个估计量,并使用投票和堆叠将它们组合在一起。在使用来自土耳其的城市进行的真实世界研究中,我们发现这些非参数方法比参数距离函数更准确。估计实际距离在位置和分布理论中有许多应用。

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