A Quantitative Method for Localizing User Interface Problems : The D-Teo Method
Lamminen, J., Leppänen, M., Heikkinen, R., Kämäräinen, A. & Jokisuu, E. (2009). A Quantitative Method for Localizing User Interface Problems: The D-TEO Method. Human Technology, Volume 5 (2), pp. 121-145. URN:NBN:fi:jyu-200911234467. Retrieved from http://www.humantechnology.jyu.fi
Julkaistu sarjassa
Human Technology: An Interdisciplinary Journal on Humans in ICT EnvironmentsPäivämäärä
2009Tekijänoikeudet
© 2009 Juha Lamminen, Mauri Leppänen, Risto Heikkinen, Anna Kämäräinen, and Elina Jokisuu, and the
Agora Center, University of Jyväskylä
A large array of evaluation methods have been proposed to identify Website usability problems. In log-based evaluation, information about the performance of users is collected and stored into log files, and used to find problems and deficiencies in Web page designs. Most methods require the programming and modeling of large task models, which are cumbersome processes for evaluators. Also, because much statistical data is collected onto log files, recognizing which Web pages require deeper usability analysis is difficult. This paper suggests a novel quantitative method, called the D-TEO, for locating problematic Web pages. This semiautomated method explores the decomposition of interaction tasks of directed information search into elementary operations, deploying two quantitative usability criteria, search success and search time, to reveal how a user navigates within a web of hypertext.
Julkaisija
University of Jyväskylä, Agora CenterISSN Hae Julkaisufoorumista
1795-6889
Alkuperäislähde
http://www.humantechnology.jyu.fiMetadata
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- Human technology [245]
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