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{{technical|date=January 2025}}
'''Computer user satisfaction (CUS)''' is the systematic
Evaluating [[user satisfaction]] helps gauge product stability, track industry trends, and measure overall user contentment.
Fields like [[User Interface]] (UI)
==The Problem of Defining Computer User Satisfaction==
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== The CUS and the UIS ==
Bailey and Pearson's 39-Factor Computer User Satisfaction (CUS) questionnaire and the User Information Satisfaction (UIS) were both surveys with multiple qualities; that is to say, the survey asks respondents to rank or rate multiple categories. Bailey and Pearson asked participants to judge 39 qualities, dividing them into five groups, each with different scales to rank or rate the qualities. The first four scales were for favorability ratings, and the fifth was an importance ranking. In the group asked to rank the importance for each quality, researchers found that their [[Sampling (statistics)|sample]] of users rated most important: "
|last1 = Islam
|first1 = A.K.M. Najmul
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==Grounding in Theory==
Another difficulty with most of these surveys is their lack of a foundation in
|last1 = Zhang
|first1 = Ping
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|pages = 1253–1268
|doi = 10.1002/1097-4571(2000)9999:9999%3C::AID-ASI1039%3E3.0.CO;2-O
}}</ref> and the measure of CUS with e-portals developed by Cheung and Lee.<ref>C. M. K. Cheung and M. K. O. Lee, "The Asymmetric Effect of Website Attribute Performance on Satisfaction: An Empirical Study," ''Proceedings of the 38th Annual Hawaii International Conference on System Sciences'', Big Island, HI, USA, 2005, pp. 175c-175c, doi: 10.1109/HICSS.2005.585.</ref> Both of these models drew on Herzberg's two-factor theory of
|last1 = Islam
|first1 = A.K.M. Najmul
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==Future developments==
Currently,
== References ==
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