Factors that Affect Efficiency in the Utilisation of Performance Management Data Sets at Tshwane University of Technology

M. J. Pieterse, Z. Worku, M. Muchie
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Abstract

The research explores the conflicts in the management information systems within the South African Higher Education Institutions (HEIs). Research done on the quality of data that has been assessed and evaluated is still very limited and scanty. This study aims to fill the gap by conducting an empirical study on the performance management data with a geographical demarcation by selecting a specific university of technology Tshwane University of Technology (TUT). An explanatory design was used to determine why there are so many data errors to discover and suggest solutions to the problem. The units of analysis are individuals. The reasons why individuals make mistakes and why from the on-set data is not captured accurately. This is a crosssectional study and data was collected from respondents over a period between two and seven months. Questionnaires were distributed over a period of seven months and interviews were conducted over a period of two months. The primary causes for inaccurate data are identified as data managers are not sufficiently trained; and staff members are not always aware of where he or she fits into the organization. Data capturers are not adequately trained to prevent data errors and a lack of communication also contribute to data errors. Research confirms that user resistance can cause the implementation of a new MIS system to fail. There is still a gap in understanding how users evaluate changes related to a new information system. It is further confirmed that there exists a relevance between colleques opinions, self-efficacy for change and user resistance (Kim & Kankanhalli, 2009). The following training modules are suggested to be included in the training programme: the importance of data accuracy and consequences of data errors; basic management skills, the value chain of the university as well as targeted training to address specific ITS data errors.
影响绩效管理数据集利用效率的因素在茨瓦恩科技大学
本研究探讨了南非高等教育机构(HEIs)管理信息系统中的冲突。对已评估和评价的数据质量所做的研究仍然非常有限和稀少。本研究旨在通过选择特定的理工大学茨瓦内理工大学(TUT),对地理上的绩效管理数据进行实证研究,以填补这一空白。解释设计是用来确定为什么会有这么多的数据错误,以发现并提出解决问题的建议。分析的单位是个体。个人犯错的原因以及为什么现场数据没有被准确捕获。这是一项横断面研究,数据是在两到七个月的时间里从受访者那里收集的。调查问卷的发放时间为7个月,访谈时间为2个月。数据不准确的主要原因是数据管理人员没有得到充分的培训;而且员工并不总是知道他或她在组织中的位置。数据采集人员没有经过充分的培训来防止数据错误,而且缺乏沟通也会导致数据错误。研究证实,用户抵制可能导致新的MIS系统的实施失败。在理解用户如何评估与新信息系统相关的变化方面仍然存在差距。进一步证实了同事意见、变革自我效能和用户抗拒之间存在相关性(Kim & Kankanhalli, 2009)。建议在培训方案中列入下列培训单元:数据准确性的重要性和数据错误的后果;基本的管理技能,大学的价值链,以及有针对性的培训,以解决具体的ITS数据错误。
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