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Schmidt, Thomas ; Schlindwein, Miriam ; Lichtner, Katharina ; Wolff, Christian

Investigating the Relationship Between Emotion Recognition Software and Usability Metrics

Schmidt, Thomas, Schlindwein, Miriam, Lichtner, Katharina and Wolff, Christian (2020) Investigating the Relationship Between Emotion Recognition Software and Usability Metrics. i-com 19 (2), pp. 139-151.

Date of publication of this fulltext: 30 Apr 2021 07:33
Article
DOI to cite this document: 10.5283/epub.45624


Abstract

Due to progress in affective computing, various forms of general purpose sentiment/emotion recognition software have become available. However, the application of such tools in usability engineering (UE) for measuring the emotional state of participants is rarely employed. We investigate if the application of sentiment/emotion recognition software is beneficial for gathering objective and ...

Due to progress in affective computing, various forms of general purpose sentiment/emotion recognition software have become available. However, the application of such tools in usability engineering (UE) for measuring the emotional state of participants is rarely employed. We investigate if the application of sentiment/emotion recognition software is beneficial for gathering objective and intuitive data that can predict usability similar to traditional usability metrics. We present the results of a UE project examining this question for the three modalities text, speech and face. We perform a large scale usability test (N = 125) with a counterbalanced within-subject design with two websites of varying usability. We have identified a weak but significant correlation between text-based sentiment analysis on the text acquired via thinking aloud and SUS scores as well as a weak positive correlation between the proportion of neutrality in users’ voice and SUS scores. However, for the majority of the output of emotion recognition software, we could not find any significant results. Emotion metrics could not be used to successfully differentiate between two websites of varying usability. Regression models, either unimodal or multimodal could not predict usability metrics. We discuss reasons for these results and how to continue research with more sophisticated methods.



Involved Institutions


Details

Item typeArticle
Journal or Publication Titlei-com
Publisher:De Gruyter Oldenbourg
Volume:19
Number of Issue or Book Chapter:2
Page Range:pp. 139-151
Date2020
InstitutionsLanguages and Literatures > Institut für Information und Medien, Sprache und Kultur (I:IMSK) > Lehrstuhl für Medieninformatik (Prof. Dr. Christian Wolff)
Informatics and Data Science > Department Human-Centered Computing > Lehrstuhl für Medieninformatik (Prof. Dr. Christian Wolff)
Identification Number
ValueType
https://doi.org/10.1515/icom-2020-0009DOI
KeywordsAffective computing; usability engineering; usability; sentiment analysis; emotion analysis; usability test; system usability scale
Dewey Decimal Classification000 Computer science, information & general works > 004 Computer science
100 Philosophy & psychology > 150 Psychology
StatusPublished
RefereedYes, this version has been refereed
Created at the University of RegensburgYes
URN of the UB Regensburgurn:nbn:de:bvb:355-epub-456244
Item ID45624

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