Comparison between Neural Networks and Binary logistic Regression for Classification Observation (Case Study: risk factors for cardiovascular disease)

Ebtehag Mustafa Mohammed, Eyas G. Osman
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Abstract

the distinction between the artificial neural network method and the logistic regression method was discussed in this study as one of the methods suggested to be used in dual-data response. That is for preference between the two used methods, we used the proportion of misclassified observations, model accuracy and the area under the curved ROC as a criterion to compare between the two methods. Accordingly, This hospital-based case-control study involved 750 cardiovascular disease cases and 50 controls all recruited from Madani Heart Centre in Sudan, in 2019, The study aimed at knowing the most important risk factors for cardiovascular disease, and comparison between the Binary Logistic model and the Neural Networks models, also recognition of the best statistical approaches between the two methodologies for processing such data. To process the data, the study used the (SPSS) version 25. The main results that the study reached that the two used methods are similar regarding the significance of both the effect and the importance of the independent variables considered in the analysis, but the method of artificial neural networks gained a better classification proportion than the Binary Logistic Regression model. The most important recommendations of the study that making use of the statistical methods and generalizing the application of both Neural Networks and Logistic model in all fields of knowledge.
神经网络与二元logistic回归分类观察的比较(以心血管疾病危险因素为例)
本文讨论了人工神经网络方法与逻辑回归方法的区别,作为双数据响应中建议使用的方法之一。也就是说,为了两种方法之间的偏好,我们以错误分类的观测值比例、模型精度和曲线ROC下的面积作为标准来比较两种方法。因此,这项基于医院的病例对照研究涉及2019年从苏丹马达尼心脏中心招募的750例心血管疾病病例和50例对照,该研究旨在了解心血管疾病最重要的危险因素,并比较二元Logistic模型和神经网络模型,并识别处理此类数据的两种方法之间的最佳统计方法。本研究使用SPSS第25版对数据进行处理。研究得出的主要结果是,两种方法在效应的显著性和分析中所考虑的自变量的重要性上是相似的,但人工神经网络方法比二元Logistic回归模型获得了更好的分类比例。该研究最重要的建议是利用统计方法,推广神经网络和逻辑模型在所有知识领域的应用。
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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