Wang Yu-Min, Chiou Chei-Chang, Wang Wen-Chang, Chen Chun-Jung
Department of Information Management, National Chi Nan University, Puli, Taiwan.
Department of Accounting, National Changhua University of Education, Changhua City, Taiwan.
Front Psychol. 2021 Jan 15;11:614460. doi: 10.3389/fpsyg.2020.614460. eCollection 2020.
With the continuous progress and penetration of automated data collection technology, enterprises and organizations are facing the problem of information overload. The demand for expertise in data mining and analysis is increasing. Self-efficacy is a pivotal construct that is significantly related to willingness and ability to perform a particular task. Thus, the objective of this study is to develop an instrument for assessing self-efficacy in data mining and analysis. An initial measurement list was developed based on the skills and abilities about executing data mining and analysis, and expert recommendations. A useful sample of 103 university students completed the online survey questionnaire. A 19-item four-factor model was extracted by exploratory factor analysis. Using the partial least squares-structural equation modeling technique (PLS-SEM), the model was cross-examined. The instrument showed satisfactory reliability and validity. The proposed instrument will be of value to researchers and practitioners in evaluating an individual's abilities and readiness in executing data mining and analysis.
随着自动化数据收集技术的不断进步和渗透,企业和组织正面临信息过载问题。对数据挖掘和分析专业知识的需求日益增加。自我效能感是一个关键概念,与执行特定任务的意愿和能力密切相关。因此,本研究的目的是开发一种评估数据挖掘和分析中自我效能感的工具。基于执行数据挖掘和分析的技能与能力以及专家建议,制定了初始测量清单。103名大学生的有效样本完成了在线调查问卷。通过探索性因素分析提取了一个包含19个项目的四因素模型。使用偏最小二乘结构方程建模技术(PLS-SEM)对该模型进行了交叉检验。该工具显示出令人满意的信度和效度。所提出的工具对于研究人员和从业者评估个人执行数据挖掘和分析的能力及准备情况具有价值。