Dies ist eine Übersichtsseite mit Metadaten zu dieser wissenschaftlichen Arbeit. Der vollständige Artikel ist beim Verlag verfügbar.
Beyond writing machines: A Kano model analysis of researchers’ hierarchical needs for AIGC services across the research lifecycle
0
Zitationen
5
Autoren
2026
Jahr
Abstract
The proliferation of AI-Generated Content (AIGC) tools presents both opportunities and challenges for the academic service ecosystem. However, a systematic understanding of researchers' multifaceted demands for AIGC functionalities remains underdeveloped, hindering the strategic design and optimization of these services. This study addresses this gap by investigating three core questions: (1) What specific AIGC service functions do researchers desire across the research lifecycle? (2) How can these needs be categorized hierarchically? (3) What is their relative importance in influencing user satisfaction? Employing an exploratory sequential mixed-methods design, this research first identified a comprehensive list of 15 service demands through semi-structured interviews with 45 expert researchers (N = 45). Subsequently, these demands were prioritized through a large-scale questionnaire survey involving 412 researchers (N = 412), utilizing the Kano model and Importance-Performance Analysis. The results reveal a clear hierarchy of needs: we identified three must-be attributes (e.g., data security, citation accuracy), seven one-dimensional attributes (e.g., automated literature summarization, language polishing), and five attractive attributes (e.g., generating novel research hypotheses, smart journal recommendation). These findings provide a detailed framework for AIGC service development and offer an evidence-based model for academic institutions to prioritize resource allocation, thereby enhancing the value and adoption of AIGC in scholarly research.
Ähnliche Arbeiten
The REDCap consortium: Building an international community of software platform partners
2019 · 23.254 Zit.
Welcome to the Tidyverse
2019 · 20.790 Zit.
The FAIR Guiding Principles for scientific data management and stewardship
2016 · 17.221 Zit.
Nextflow enables reproducible computational workflows
2017 · 4.134 Zit.
Generic Mapping Tools: Improved Version Released
2013 · 4.036 Zit.