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Neural network fields

机译:神经网络领域

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In this paper, a neural network field over a subset Ξ of a metric space and a corresponding stochastic learning algorithm are introduced. A neural network field is a neural network, the parameters of which are functions of other variables, being valued in Ξ. Neural network fields are mostly dedicated to the problem of approximating a parametrized function or, more generally, to the problem of approximating a function field. Typical examples of this kind of problem may be found in the context of geophysical sciences, where the observed data depends on two or three angular variables characterizing the data acquisition process. Neural network fields also offers interesting perspectives within the field of parametric nonlinear modeling techniques.
机译:本文介绍了度量空间子集over上的神经网络场和相应的随机学习算法。神经网络字段是一个神经网络,其参数是其他变量的函数,用value表示。神经网络领域主要致力于参数化函数的近似问题,或更一般而言,致力于函数域的近似问题。这类问题的典型示例可以在地球物理科学的背景下找到,其中观测到的数据取决于表征数据采集过程的两个或三个角度变量。神经网络领域在参数非线性建模技术领域也提供了有趣的观点。

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