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首页> 外文期刊>Central European journal of operations research: CEJOR >SEM-ANN based research of factors' impact on extended use of ERP systems
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SEM-ANN based research of factors' impact on extended use of ERP systems

机译:基于SEM的因素对ERP系统扩展使用的影响研究

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The main objective of this research is to test the hypothesis that the two-step structural equation modelling (SEM) and artificial neural network (ANN) approach enables better in-depth research results as compared to the single-step SEM approach. This approach was used to determine which factors have statistically significant influence on extended use of enterprise resource planning (ERP) systems. The research model and the hypothesized relationships are based on the technology acceptance model (TAM). Majority of research on ERP acceptance has been conducted with SEM based research approaches. The purpose of this paper is to extend basic TAM research which is traditionally based on SEM technique with ANN approach. In the first step of the present research the SEM technique was used to determine which factors have statistically significant influence on extended use of the ERP systems; in the second step, ANN models were used to rank the relative influence of significant predictors obtained from SEM. The main finding of this research is that the use of multi-analytical two step SEM-ANN approach provides two important benefits. First, it enables additional verification of the results obtained by the SEM analysis. Second, this approach enables capturing not only linear but also complex nonlinear relationships between antecedents and dependent variables and more precise measure of relative influence of each predictor.
机译:本研究的主要目的是测试两步结构方程式建模(SEM)和人工神经网络(ANN)方法的假设,与单步SEM方法相比,能够更好的深入研究结果。这种方法用于确定哪些因素对企业资源规划(ERP)系统的扩展使用有统计学意义的影响。研究模式和假设关系基于技术验收模型(TAM)。已经基于SEM的研究方法进行了ERP接受的大部分研究。本文的目的是扩展基本的TAM研究,该研究传统上基于HEM技术的ANN方法。在本研究的第一步中,SEM技术用于确定哪些因素对ERP系统的扩展使用有统计学意义的影响;在第二步中,ANN模型用于对SEM获得的显着预测器的相对影响。本研究的主要发现是,使用多分析两步的SEM-ANN方法提供了两个重要的益处。首先,它能够额外验证SEM分析所获得的结果。其次,这种方法使得不仅捕获前一种和依赖变量之间的线性而且捕获复杂的非线性关系以及每个预测器的相对影响的更精确度量。

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