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On the Use of Feed-Forward Neural Networks to Discriminate between Models in Financial and Insurance Risk Frameworks

机译:关于使用前馈神经网络区分金融和保险风险框架中的模型

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The problem of assessing if a sample is coming from one of two probability distributions is most likely one of the oldest problems in the field of testing statistical hypotheses and a number of papers has been produced over the years without finding a most powerful test for this goal. In financial and insurance risk modeling, this problem is often addressed to identify the best extreme values model in a battery of alternatives or to design the heaviness of the tail of the underlying distribution. Taking advantage of the well known performance in classificatory problems of neural networks, the use of feedforward neural networks for discrimination between two distributions is herein proposed and the power of a neural goodness-of-fit test is estimated for small, moderate and large sample sizes in a wide range of symmetric and skewed alternatives. The empirical power of the procedure described is compared to the power of eight classic and well known normality tests for a sample to come from a normal distribution against each of twelve close-to normal alternatives. The neural test resulted to be the most powerful in the whole battery and its behavior was consistent with the expected statistical properties.
机译:评估样本是否来自两个概率分布之一的问题很可能是检验统计假设领域中最古老的问题之一,并且多年来已经发表了许多论文,而没有找到针对该目标的最有力的检验。在金融和保险风险建模中,通常会解决此问题,以找出一系列替代方案中的最佳极值模型或设计基础分布的尾部的沉重程度。利用神经网络分类问题中的众所周知的性能,本文提出了使用前馈神经网络来区分两个分布的方法,并估计了小样本,中样本和大样本的神经拟合优度检验的能力在各种各样的对称和偏斜的替代方案中。将所描述程序的经验功效与八个经典和众所周知的正态性检验的功效进行比较,以证明样本来自正态分布,而不是十二种接近正态的替代品。神经测试是整个电池中功能最强大的,其行为与预期的统计特性一致。

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