Using Curves of Permanence to Study the Contribution of Input Variables in Artificial Neural Network Models: A New Proposed Methodology

H. Alves, M. Valença
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Abstract

Understanding the influence of some factors on a particular phenomenon can be very relevant in many cases of decision-making. An example would be the identification of the level of influence that factors such as smoking, stress and lack of exercise have on the predisposition to heart disease. Knowing which of these inputs are relevant for a person to become a cardiac patient, it is possible to take some preventive measures. This article presents a new method to assist the not so simple task of feature selection, using the statistical function called curve of permanence. In this work we show parmanence curves applied on result data from the executions of some existing algorithms of feature selection, all of them based on Artificial Neural Networks (ANN). The objective of this study is to propose a technique that provides robustness to the process of determine the values of contributions of the inputs of an ANNs.
用持久曲线研究人工神经网络模型中输入变量的贡献:一种新方法
了解某些因素对某一特定现象的影响在许多决策情况下可能非常相关。一个例子是确定吸烟、压力和缺乏锻炼等因素对心脏病易感性的影响程度。了解这些因素中哪些与一个人成为心脏病患者有关,就有可能采取一些预防措施。本文提出了一种新的方法来辅助不那么简单的特征选择任务,即使用一种称为永久曲线的统计函数。在这项工作中,我们展示了一些基于人工神经网络(ANN)的现有特征选择算法在执行结果数据上应用的持久曲线。本研究的目的是提出一种技术,为确定人工神经网络输入的贡献值的过程提供鲁棒性。
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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