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A Review: Methods of Acceptance Testing

Ryan Then Ye Tong, Yeow Kai Yuan, Ng Wen Dong and R. Kanesaraj Ramasamy ()
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Ryan Then Ye Tong: Multimedia University, Faculty of Computing and Informatics
Yeow Kai Yuan: Multimedia University, Faculty of Computing and Informatics
Ng Wen Dong: Multimedia University, Faculty of Computing and Informatics
R. Kanesaraj Ramasamy: Multimedia University, Faculty of Computing and Informatics

A chapter in Proceedings of the International Conference on Technology and Innovation Management (ICTIM 2022), 2022, pp 76-86 from Springer

Abstract: Abstract This study article seeks to establish promising research areas by identifying the acceptance testing method with the best performance in the literature. Accuracy and correctness, which are the most important metrics in acceptance testing, are used to evaluate performance. Acceptance testing is a method of evaluating a system to see if it meets the requirements. In other words, it is a process for determining whether or not software fits the client's requirements. There are various types of acceptance testing, including User Acceptance Testing, Alpha Testing, Beta Testing, and Business Acceptance Testing. The acceptance testing tasks are carried out in stages so that if the present conclusion is satisfactory, it can be used for the more difficult testing activities. One sort of acceptance testing, namely User Acceptance Testing, will be covered in this study. As a result, it is critical to employ these testing procedures in order to assist prevent software failures and needless losses. In the literature review section, a variety of reviews on the topics of acceptance testing using various approaches have been studied and addressed. Recommendations would be made based on the research study of the many testing techniques, with the goal of proposing one specific suitable testing method among the many that have been examined.

Keywords: User Acceptance Testing; Diabetes Mobile Health system; Acceptance Test Generation; Natural Language Processing; Object Constraint Language; Test case prioritization (search for similar items in EconPapers)
Date: 2022
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DOI: 10.2991/978-94-6463-080-0_7

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