Discovering the optimal set of ratios to use in accounting-based models

D. Trigueiros, C. Sam
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引用次数: 1

Abstract

Ratios are the prime tool of financial analysis. In predictive modelling tasks, however, the use of ratios raises difficulties, the most obvious being that, in a multivariate setting, there is no guarantee that the collection of ratios eventually selected as predictors will be optimal in any sense. Using, as starting-point, a formal characterisation of cross-sectional accounting numbers, the paper shows how the multilayer perceptron can be trained to create internal representations which are an optimal set of ratios for a given modelling task. Experiments suggest that, when such ratios are utilised as predictors in well-known modelling tasks, performance improves on that reported by the extant literature.
发现在基于会计的模型中使用的最佳比率集
比率是财务分析的主要工具。然而,在预测建模任务中,比率的使用会带来困难,最明显的是,在多变量设置中,无法保证最终选择作为预测因子的比率集合在任何意义上都是最佳的。作为起点,使用截面会计数字的正式特征,本文展示了如何训练多层感知器来创建内部表示,这是给定建模任务的最佳比率集。实验表明,当这些比率被用作众所周知的建模任务的预测因子时,性能比现有文献报道的要好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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