大数据管理对组织绩效的影响:电子档案管理系统潜力的作用

Burkan Hawash, Muaadh Mukred, Umi Asma 'mokhtar, Mohammed Islam Nofal
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引用次数: 3

摘要

目的/目的:电子记录管理系统(ERMS)等数字技术的使用,促使各组织发生了广泛的变化。组织需要用自动化系统来支持其运作,以提高生产绩效。本研究探讨了ERMS在提高油气行业组织绩效方面的潜力。背景:石油和天然气组织产生了大量的电子记录,如果没有任何系统或数字化程序,就会导致管理困难。使用系统来管理大数据和记录的需求影响了信息安全,并产生了几个问题。本研究为油气企业决策者利用ERMS提高组织绩效提供了支持。研究方法:采用典型的偏最小二乘(SEM-PLS)方法进行定量分析,包括测量项目、调查对象的人口统计、数据的抽样和收集以及数据分析。SEM-PLS方法使用测量和结构模型评估来分析数据。贡献:本研究通过在大数据管理和电子档案管理背景下提供身份理论的进步,对理论和实践有重要贡献。本研究为进一步研究ERMS在运营绩效和大数据管理(BDM)中的作用奠定了基础。本研究通过研究一个理论驱动的框架做出了理论贡献,该框架可以作为评估ERMS在绩效中的作用并增加其未来潜力的基本视角。本研究还评估了通用技术接受理论要素和认同理论在ERMS背景下对支持数据管理的综合影响。研究结果:本研究提供了一个经实证检验的模型,帮助组织采用基于大数据管理影响的ERMS。目前的研究结果着眼于石油和天然气组织对整合新技术以支持组织绩效的关注。结果表明,油气组织用户的个人特征与管理特征相结合,是ERMS的可靠预测指标。结果表明,ERMS潜力对油气组织绩效有显著影响。研究结果符合大数据管理和ERMS如何影响受访者采用新技术的大思路。对从业者的建议:本研究通过开发和验证采用ERMS的新框架来支持石油和天然气组织的绩效和生产,为ERMS潜力和BDM的理论和实践做出了重大贡献。本研究为ERMS和BDM背景下的认同理论提供了一个新的框架。它增加了使用ERMS在保护石油和天然气组织电子记录的可信度和真实性方面的感知效益。对研究人员的建议:本研究为未来研究大数据管理对支持组织绩效的ERMS的作用和影响奠定了基础。研究人员可以在未来在其他国家检查这项研究的框架,他们将能够分析这个研究框架来比较其他国家的各种结果,扩大ERMS的普遍性和有效性。对社会的影响:ERMS及其对BDM的影响仍然是一个发展中的领域,本文的读者可以帮助更好地理解有关石油和天然气行业采用ERMS的文献传播。本研究提出了一个经过实验验证的模型,即在油气行业中采用具有BDM效应的ERMS。未来研究:在未来,研究人员可能能够通过使用不同的理论或地点来检查BDM和用户技术适合度作为采用ERMS的关键因素的影响。此外,研究人员可能会将年龄、性别、财富和经验等人口参数的调节影响纳入该研究模型,使其更加稳健和全面。此外,未来的研究可能会检验人类特征、组织特征和个人对BDM的感知之间的显著直接相关性,这些感知与未来的ERMS潜力和运营绩效直接相关。
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The Influence of Big Data Management on Organizational Performance in Organizations: The Role of Electronic Records Management System Potentiality
Aim/Purpose: The use of digital technology, such as an electronic records management system (ERMS), has prompted widespread changes across organizations. The organization needs to support its operations with an automation system to improve production performance. This study investigates ERMS’s potentiality to enhance organizational performance in the oil and gas industry. Background: Oil and gas organizations generate enormous electronic records that lead to difficulties in managing them without any system or digitalization procedure. The need to use a system to manage big data and records affects information security and creates several problems. This study supports decision-makers in oil and gas organizations to use ERMS to enhance organizational performance. Methodology: We used a quantitative method by integrating the typical partial least squares (SEM-PLS) approach, including measurement items, respondents’ demographics, sampling and collection of data, and data analysis. The SEM-PLS approach uses a measurement and structural model assessment to analyze data. Contribution: This study contributes significantly to theory and practice by providing advancements in identity theory in the context of big data management and electronic records management. This study is a foundation for further research on the role of ERMS in operations performance and Big Data Management (BDM). This research makes a theoretical contribution by studying a theory-driven framework that may serve as an essential lens to evaluate the role of ERMS in performance and increase its potentiality in the future. This research also evaluated the combined impacts of general technology acceptance theory elements and identity theory in the context of ERMS to support data management. Findings: This study provides an empirically tested model that helps organizations to adopt ERMS based on the influence of big data management. The current study’s findings looked at the concerns of oil and gas organizations about integrating new technologies to support organizational performance. The results demonstrated that individual characteristics of users in oil and gas organizations, in conjunction with administrative features, are robust predictors of ERMS. The results show that ERMS potentiality significantly influences the organizational performance of oil and gas organizations. The research results fit the big ideas about how big data management and ERMS affect respondents to adopt new technologies. Recommendations for Practitioners: This study contributes significantly to the theory and practice of ERMS potentiality and BDM by developing and validating a new framework for adopting ERMS to support the performance and production of oil and gas organizations. The current study adds a new framework to identity theory in the context of ERMS and BDM. It increases the perceived benefits of using ERMS in protecting the credibility and authenticity of electronic records in oil and gas organizations. Recommendation for Researchers: This study serves as a foundation for future research into the function and influence of big data management on ERMS that support the organizational performance. Researchers can examine the framework of this study in other nations in the future, and they will be able to analyze this research framework to compare various results in other countries and expand ERMS generalizability and efficacy. Impact on Society: ERMS and its impact on BDM is still a developing field, and readers of this article can assist in gaining a better understanding of the literature’s dissemination of ERMS adoption in the oil and gas industry. This study presents an experimentally validated model of ERMS adoption with the effect of BDM in the oil and gas industry. Future Research: In the future, researchers may be able to examine the impact of BDM and user technology fit as critical factors in adopting ERMS by using different theories or locations. Furthermore, researchers may include the moderating impact of demographical parameters such as age, gender, wealth, and experience into this study model to make it even more robust and comprehensive. In addition, future research may examine the significant direct correlations between human traits, organizational features, and individual perceptions of BDM that are directly related to ERMS potentiality and operational performance in the future.
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来源期刊
CiteScore
2.30
自引率
0.00%
发文量
14
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