科技工作者工作满意度量表:全球背景下的开发与验证

IF 4.3 Q1 PSYCHOLOGY, MULTIDISCIPLINARY
Amenawon Imuwahen Ehigbochie, Godspower Osaretin Ekuobase
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引用次数: 0

摘要

人类现在生活和工作在两个世界--物理世界和网络世界。科技工作者是指在这两个世界中工作的员工,不一定是信息技术(IT)专业人员,他们可以无缝利用这两个世界中的可用资源来实现组织目标。这类员工有独特的工作经历,管理起来比传统员工更复杂。工作满意度--员工幸福感的可衡量结果--仍然是衡量员工工作体验的重要指标。通常使用工作满意度量表来衡量员工的心理健康状况。然而,现有的科技工作者工作满意度量表缺乏测量的针对性或文化包容性。因此,本研究旨在开发并验证全球范围内科技工作者的工作满意度量表。本研究采用了系统性和范围性文献综述方法来进行初始因素和项目提取。在全球范围内分别进行了两次在线调查,随机征求科技工作者对提取因子的接受度评分,并在因子选择后对提取的相关项目进行评分。受访者的接受度分别为 261 分和 223 分。数据充分性分析、因子分析和 Cronbach's α 系数检验均采用社会科学统计软件包 22 版。最终建立了一个包含 25 个项目的七因素模型。使用矩结构分析软件对七因素模型进行了确认性因素分析(CFA)。对该模型进一步进行了组织效能分析。一个值得注意的发现是,仅仅成功验证还不足以将心理测量量表推向市场--还需要完善的社会效益分析结果。针对科技行业开发并验证了一个实用的科技工作者工作满意度七因素量表。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Job Satisfaction Scale for Tech Workers: Development and Validation in the Global Context

A Job Satisfaction Scale for Tech Workers: Development and Validation in the Global Context

Humanity now lives and works in two worlds—the physical world and the cyber world. Tech workers are employees, not necessarily information technology (IT) professionals, who work in both worlds and seamlessly harness accessible resources in the worlds to meet organizational goals. This category of employees has unique job experiences and is more complicated to manage than the traditional workforce. Job satisfaction—a measurable outcome of employee wellbeing—remains a crucial indicator of an employee’s job experience. This psychological health of employees is usually measured using a job satisfaction scale. However, existing job satisfaction scales for tech workers lack specificity of measurement or cultural inclusivity. This study is, therefore, aimed at developing and validating a job satisfaction scale for tech workers in the global context. The systematic and scoping literature review methods were adopted for initial factors and item extraction. Two separate online surveys were conducted across the globe to randomly solicit tech workers’ acceptance rating of extracted factors and, after the factor selection, the rating of extracted associated items. The accepted numbers of respondents’ responses were 261 and 223, respectively. The Statistical Package for Social Sciences version 22 was used for data adequacy analysis, factor analysis, and Cronbach’s alpha coefficient test. A seven-factor model with 25 items was realized. Confirmatory factor analysis (CFA) using the Analysis of Moment Structure software has been performed on the seven-factor model. The model was further analyzed for organizational effectiveness. A notable finding was that successful validation is not enough to ship psychometric scales to the market—a sound social effectiveness analysis outcome is required. A practical seven-factor job satisfaction scale for tech workers has been developed and validated for the tech industry.

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来源期刊
Human Behavior and Emerging Technologies
Human Behavior and Emerging Technologies Social Sciences-Social Sciences (all)
CiteScore
17.20
自引率
8.70%
发文量
73
期刊介绍: Human Behavior and Emerging Technologies is an interdisciplinary journal dedicated to publishing high-impact research that enhances understanding of the complex interactions between diverse human behavior and emerging digital technologies.
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