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Autori principali: Loop, Sandra, Bertram, Erik, Juhl, Sebastian, Schrepp, Martin
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2601.23018
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author Loop, Sandra
Bertram, Erik
Juhl, Sebastian
Schrepp, Martin
author_facet Loop, Sandra
Bertram, Erik
Juhl, Sebastian
Schrepp, Martin
contents In highly competitive software markets, user experience (UX) evaluation is crucial for ensuring software quality and fostering long-term product success. Such UX evaluations typically combine quantitative metrics from standardized questionnaires with qualitative feedback collected through open-ended questions. While open-ended feedback offers valuable insights for improvement and helps explain quantitative results, analyzing large volumes of user comments is challenging and time-consuming. In this paper, we present techniques developed during a long-term UX measurement project at a major software company to efficiently process and interpret extensive volumes of user comments. To provide a high-level overview of the collected comments, we employ a supervised machine learning approach that assigns meaningful, pre-defined topic labels to each comment. Additionally, we demonstrate how generative AI (GenAI) can be leveraged to create concise and informative summaries of user feedback, facilitating effective communication of findings to the organization and especially upper management. Finally, we investigate whether the sentiment expressed in user comments can serve as an indicator for overall product satisfaction. Our results show that sentiment analysis alone does not reliably reflect user satisfaction. Instead, product satisfaction needs to be assessed explicitly in surveys to measure the user's perception of the product.
format Preprint
id arxiv_https___arxiv_org_abs_2601_23018
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Integrating Multi-Label Classification and Generative AI for Scalable Analysis of User Feedback
Loop, Sandra
Bertram, Erik
Juhl, Sebastian
Schrepp, Martin
Human-Computer Interaction
In highly competitive software markets, user experience (UX) evaluation is crucial for ensuring software quality and fostering long-term product success. Such UX evaluations typically combine quantitative metrics from standardized questionnaires with qualitative feedback collected through open-ended questions. While open-ended feedback offers valuable insights for improvement and helps explain quantitative results, analyzing large volumes of user comments is challenging and time-consuming. In this paper, we present techniques developed during a long-term UX measurement project at a major software company to efficiently process and interpret extensive volumes of user comments. To provide a high-level overview of the collected comments, we employ a supervised machine learning approach that assigns meaningful, pre-defined topic labels to each comment. Additionally, we demonstrate how generative AI (GenAI) can be leveraged to create concise and informative summaries of user feedback, facilitating effective communication of findings to the organization and especially upper management. Finally, we investigate whether the sentiment expressed in user comments can serve as an indicator for overall product satisfaction. Our results show that sentiment analysis alone does not reliably reflect user satisfaction. Instead, product satisfaction needs to be assessed explicitly in surveys to measure the user's perception of the product.
title Integrating Multi-Label Classification and Generative AI for Scalable Analysis of User Feedback
topic Human-Computer Interaction
url https://arxiv.org/abs/2601.23018