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Estimate of a Probability Density Function through Neural Networks

机译:通过神经网络估计概率密度函数

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A correct estimate of the probability density function of an unknown stochatic process is a preliminary step of utmost importance for any subsequent elaboration stages, such as modelling and classification. Traditional approaches are based on the preliminary choice of a mathematical model of the function and subsequent fitting on its parameters. Therefore some a-priori knowledge and/or assumptions on the phenomenon under consideration are required. Here an alternative approach is presented, which does not require any assumption on the available data, but extracts the probability density function from the output of a neural network, that is trained with a suitable database including the original data and some ad hoc created data with known distribution. This approach has been tested on a synthetic and on an industrial dataset and the obtained results are presented and discussed.
机译:对未知随机过程的概率密度函数的正确估计对于任何后续的拟订阶段(例如建模和分类)都是至关重要的初步步骤。传统方法基于对函数的数学模型的初步选择,然后对其参数进行拟合。因此,需要对正在考虑的现象有一些先验知识和/或假设。这里提出了一种替代方法,该方法不需要对可用数据进行任何假设,而是从神经网络的输出中提取概率密度函数,并使用合适的数据库对其进行训练,该数据库包括原始数据和一些临时创建的数据,已知分布。该方法已在综合数据集和工业数据集上进行了测试,并介绍和讨论了获得的结果。

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