The Evaluation of GUI Design using Questionnaire and Multivariate Testing

Chiranun Kamolsin, Fuangfar Pensiri, K. Ryu, P. Visutsak
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引用次数: 1

Abstract

To design a graphical user interface (GUI) in a computer system, the UI designer should understand all components of system, procedures, and user’s experience. Therefore, the UI designer must transform the user’s requirements into system story, procedures, and functions which will be fitted to the user’s needs. A good GUI design must be easy to see by the user e.g., “left-to-right” and “top-to-bottom” directions and the omitted usage of scroll bar for exploring the hiding part of a GUI. There are many tools used to collect the feedback and evaluate the best GUI design such as the questionnaire, the interview, the A/B testing, and the multivariate testing. In this paper, we propose the user testing method for the designing of Thai traditional weaving dashboard originated by the Royal Thai Silk Conservation Village Project, the Office of Sericulture Conservation and Standard Conformity Assessment, the Queen Sirikit Department of Sericulture, Ministry of Agriculture and Cooperatives. There are 5 variables used for the design evaluation: utility, functionality, ease of use, consistency, and satisfaction. The experimental results yield 3.927, 3.890, 4.027, 3.981, and 3.945, respectively.
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用问卷调查和多变量检验评价GUI设计
为了在计算机系统中设计图形用户界面(GUI), UI设计者应该了解系统、程序和用户体验的所有组成部分。因此,UI设计师必须将用户的需求转化为符合用户需求的系统故事、过程和功能。一个好的GUI设计必须很容易被用户看到,例如,“从左到右”和“从上到下”的方向,并且省略了使用滚动条来探索GUI的隐藏部分。有许多工具可用于收集反馈和评估最佳GUI设计,如问卷调查、访谈、A/B测试和多变量测试。本文提出了由泰国皇家丝绸保护村项目、蚕桑保护与标准合格评定办公室、诗丽吉王后蚕桑司、农业与合作部发起的泰国传统编织仪表盘设计的用户测试方法。设计评估有5个变量:实用性、功能性、易用性、一致性和满意度。实验结果分别为3.927、3.890、4.027、3.981、3.945。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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