Generative user-experience research for developing domain-specific natural language processing applications


연구 분야: Artificial Intelligence



학회: Knowledge and Information Systems


초록

User experience (UX) is a part of human–computer interaction research and focuses on increasing intuitiveness, transparency, simplicity, and trust for the system users. Most UX research for machine learning or natural language processing (NLP) focuses on a data-driven methodology. It engages domain users mainly for usability evaluation. Moreover, more typical UX methods tailor the systems toward user usability, unlike learning about the user needs first. This paper proposes a new methodology for integrating generative UX research into developing domain NLP applications. Generative UX research employs domain users at the initial stages of prototype development, i.e., ideation and concept evaluation, and the last stage for evaluating system usefulness and user utility. The methodology emerged from and is evaluated on a case study about the full-cycle prototype development of a domain-specific semantic search for daily operations in the process industry. A key finding of our case study is that involving domain experts increases their interest and trust in the final NLP application. The combined UX+NLP research of the proposed method efficiently considers data- and user-driven opportunities and constraints, which can be crucial for developing NLP applications.


Author Profile
Anastasia Zhukova

University of Göttingen Göttingen Germany

Germany
Author Profile
Lukas von Sperl

eschbach GmbH Bad Säckingen Germany

Germany
Author Profile
Christian E. Matt

eschbach GmbH Bad Säckingen Germany

Germany

📄 논문 정보

발행 연도 2024년
인용수 0
출판 국가 Germany
사이트 Springer
좋아요 수 0

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