Discovering knowledge from mobile application users for usability improvement: A fuzzy association rule mining approach

M. Kabir, Omar A. M. Salem, M. U. Rehman
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引用次数: 5

Abstract

The usages of mobile application have increased rapidly in recent days. It is also becoming more popular in recent business applications where multiple users are connected through a mobile application to complete the business circle. In this aspect, the demand of quality mobile application is increasing. Usability is the main quality factor for enhancing the quality of application. For this reason, the usability improvement is getting more priority for this kind of application. So, discovering the experiences of the users can lead to improving the usability of mobile application. For this, we introduce Fuzzy Association Rule algorithm (FAR) based on fuzzy association rule mining to discover the experience from the mobile application's users. To validate our approach, we consider a supply change management system where multiple users are linked through the mobile application. In this paper, we examine twelve usability factors that are extracted from ten usability evaluation models to improve the usability. After conducting our experiment, we get knowledge from the users of the mobile application that can be used for the improvement of usability. We get several experiment outcomes and knowledge that can be implemented in practices.
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从移动应用程序用户中发现知识以提高可用性:一种模糊关联规则挖掘方法
最近几天,移动应用程序的使用迅速增加。在最近的商业应用中,通过移动应用程序连接多个用户以完成商圈,它也变得越来越流行。在这方面,对优质移动应用的需求日益增加。可用性是提高应用程序质量的主要质量因素。由于这个原因,对于这类应用程序来说,可用性改进变得越来越重要。因此,发现用户的体验可以提高移动应用的可用性。为此,我们引入基于模糊关联规则挖掘的模糊关联规则算法(FAR)来发现移动应用程序用户的体验。为了验证我们的方法,我们考虑一个供应变更管理系统,其中多个用户通过移动应用程序链接。本文从10个可用性评估模型中提取了12个可用性因素,并对其进行了检验,以提高可用性。通过我们的实验,我们从移动应用的用户那里得到了可以用来提高可用性的知识。我们得到了一些可以在实践中应用的实验结果和知识。
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