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Assessing the Long-Term Credit Standing of Debt Issuers Using Dimensionality Reduction Techniques Based on Neural Networks An Alternative to Overfitting

机译:根据神经网络的维度减少技术评估债务发行人的长期信用身份,这是过度装备的替代品

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The purpose of this paper is twofold: first, to propose a new quantitative system to assess the long-term credit standing of debt issuers using neural networks; and second, to propose a new methodology to avoid the problem of overfitting by applying linear and non-linear dimensionality reduction techniques based on neural networks. After experimentation, we found that neural network implementations of linear Principal Component Analysis (NN-PCA) and non-linear PCA (NN-NLPCA) explain a higher proportion of variation in the original set of variables than the common Principal Component Analysis (PCA) methodology. The Principal Components (PCs) extracted from NN-PCA and NN-NLPCA are better discriminators than the PCs extracted from PCA and are easier to interpret if extracted from homogeneous groups of financial ratios. The results of this study suggest that linear and nonlinear dimensionality reduction techniques based on neural networks can be an efficient tool to assess the long-term credit standing of debt issuers and at the same time provide an alternative solution to overfitting.
机译:本文的目的是双重的:首先,提出一种新的定量制度,以评估使用神经网络的债务发行人的长期信贷站;其次,提出一种新的方法,以避免基于神经网络的线性和非线性维度减少技术来避免过度装备的问题。实验后,我们发现线性主成分分析(NN-PCA)和非线性PCA(NN-NLPCA)的神经网络实现解释了比公共主成分分析(PCA)的原始变量组中的更高比例变化方法。从NN-PCA和NN-NLPCA中提取的主要成分(PC)是比从PCA提取的PC的鉴别器更好,并且如果从均质金融比例中提取,则更容易解释。本研究的结果表明,基于神经网络的线性和非线性维度减少技术可以是评估债务发行人的长期信用站的有效工具,同时为过度装备提供替代解决方案。

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