Abstract
Students often hesitate to seek support during workplace onboarding. While AI systems are
increasingly used for advice and brainstorming, less is known about how conversational inter
actions can reduce support-seeking inhibition in workplace contexts. This study investigates
the challenges and needs that contribute to inhibited support-seeking among newly hired stu
dents during workplace onboarding and examines how conversational interactions with LLM
powered agents can be designed to support support-seeking in this context. A multi-agent con
versational prototype was evaluated in a within-subjects study with 30 participants. The findings
show that conversational interactions can mediate students’ support-seeking by preparing them
for human interaction in both task-related and interpersonal workplace situations. This occurs
when the system structures uncertainty into manageable steps, regulates hesitation through au
thentic empathy, provides safe rehearsal spaces, and supports reflective decision-making. The
study contributes a problem-based conversational interaction model and a design framework for
student–AI collaboration that supports support-seeking during workplace onboarding.
increasingly used for advice and brainstorming, less is known about how conversational inter
actions can reduce support-seeking inhibition in workplace contexts. This study investigates
the challenges and needs that contribute to inhibited support-seeking among newly hired stu
dents during workplace onboarding and examines how conversational interactions with LLM
powered agents can be designed to support support-seeking in this context. A multi-agent con
versational prototype was evaluated in a within-subjects study with 30 participants. The findings
show that conversational interactions can mediate students’ support-seeking by preparing them
for human interaction in both task-related and interpersonal workplace situations. This occurs
when the system structures uncertainty into manageable steps, regulates hesitation through au
thentic empathy, provides safe rehearsal spaces, and supports reflective decision-making. The
study contributes a problem-based conversational interaction model and a design framework for
student–AI collaboration that supports support-seeking during workplace onboarding.
| Original language | English |
|---|---|
| Qualification | Master of Science |
| Awarding Institution |
|
| Supervisors/Advisors |
|
| Award date | 26 Mar 2026 |
| Publication status | Published - Mar 2026 |
Research Field
- Human Digital Innovation
Keywords
- Conversational Interaction
- AI Agents
- Large Language Models
- Student–AI Collaboration
- Student Support-Seeking
- Workplace Onboarding
Fingerprint
Dive into the research topics of 'Design and Evaluation of a Multi-Agent Conversational AI for Students’ Support-Seeking during Workplace Onboarding'. Together they form a unique fingerprint.Cite this
- APA
- Author
- BIBTEX
- Harvard
- Standard
- RIS
- Vancouver