Methodological Triangulation Using Neural Networks for Business Research

S. Walczak
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引用次数: 17

Abstract

Artificial neural network (ANN) modeling methods are becoming more widely used as both a research and application paradigm across a much wider variety of business, medical, engineering, and social science disciplines. The combination or triangulation of ANN methods with more traditional methods can facilitate the development of high-quality research models and also improve output performance for real world applications. Prior methodological triangulation that utilizes ANNs is reviewed and a new triangulation of ANNs with structural equation modeling and cluster analysis for predicting an individual's computer self-efficacy (CSE) is shown to empirically analyze the effect of methodological triangulation, at least for this specific information systems research case. A new construct, engagement, is identified as a necessary component of CSE models and the subsequent triangulated ANN models are able to achieve an 84% CSE group prediction accuracy.
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利用神经网络进行商业研究的方法学三角测量
人工神经网络(ANN)建模方法作为一种研究和应用范例越来越广泛地应用于商业、医学、工程和社会科学领域。将人工神经网络方法与更传统的方法相结合或三角化,可以促进高质量研究模型的开发,并提高现实世界应用的输出性能。回顾了先前利用人工神经网络的方法学三角测量,并展示了一种新的基于结构方程建模和聚类分析的人工神经网络三角测量,用于预测个体的计算机自我效能(CSE),以实证分析方法学三角测量的效果,至少对于这个特定的信息系统研究案例。一个新的结构,engagement,被确定为CSE模型的必要组成部分,随后的三角化ANN模型能够达到84%的CSE群体预测精度。
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