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Development of a Job Stress Evaluation Methodology Using Data Mining and RSM

机译:使用数据挖掘和RSM开发工作压力评估方法

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Data mining (DM) has emerged as one of the key features of many applications on information system. While a number of data computing and analyzing method to conduct a survey analysis for a job stress evaluation represent a significant advance in the type of analytical tools currently available, there are limitations to its capability such as dimensionality associated with many survey questions and quality of information. In order to address these limitations on the capabilities of data computing and analyzing methods, we propose an advanced survey analysis procedure incorporating DM into a statistical analysis, which can reduce dimensionality of the large data set, and which may provide detailed statistical relationships among the factors and interesting responses by utilizing response surface methodology (RSM). The primary objective of this paper is to show how DM techniques can be effectively applied into a survey analysis related to a job stress evaluation by applying a correlation-based feature selection (CBFS) method. This CBFS method can evaluate the worth of a subset including input factors by considering the individual predictive ability of each factor along with the degree of redundancy between pairs of input factors. Our numerical example clearly shows that the proposed procedure can efficiently find significant factors related to the interesting response by reducing dimensionality.
机译:数据挖掘(DM)已成为信息系统上许多应用程序的关键功能之一。虽然许多用于进行工作压力评估的调查分析的数据计算和分析方法代表了当前可用分析工具类型的重大进步,但其功能存在局限性,例如与许多调查问题相关的维度和信息质量。为了解决这些对数据计算和分析方法功能的限制,我们提出了一种将DM纳入统计分析的高级调查分析程序,它可以减少大数据集的维数,并且可以提供因素之间的详细统计关系利用响应面方法(RSM)获得有趣的响应。本文的主要目的是展示如何通过应用基于相关的特征选择(CBFS)方法将DM技术有效地应用于与工作压力评估相关的调查分析中。此CBFS方法可以通过考虑每个因素的个体预测能力以及输入因素对之间的冗余程度,来评估包括输入因素的子集的价值。我们的数值示例清楚地表明,所提出的过程可以通过减小维数来有效地找到与有趣响应相关的重要因素。

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