Understanding Communication Preferences of Information Workers in Engagement with Text-Based Conversational Agents
Communication traits in text-based human-AI conversations play pivotal roles in shaping user experiences and perceptions of systems. With the advancement of large language models (LLMs), it is now feasible to analyze these traits at a more granular level. In this study, we explore the preferences of...
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Zusammenfassung: | Communication traits in text-based human-AI conversations play pivotal roles
in shaping user experiences and perceptions of systems. With the advancement of
large language models (LLMs), it is now feasible to analyze these traits at a
more granular level. In this study, we explore the preferences of information
workers regarding chatbot communication traits across seven applications.
Participants were invited to participate in an interactive survey, which
featured adjustable sliders, allowing them to adjust and express their
preferences for five key communication traits: formality, personification,
empathy, sociability, and humor. Our findings reveal distinct communication
preferences across different applications; for instance, there was a preference
for relatively high empathy in wellbeing contexts and relatively low
personification in coding. Similarities in preferences were also noted between
applications such as chatbots for customer service and scheduling. These
insights offer crucial design guidelines for future chatbots, emphasizing the
need for nuanced trait adjustments for each application. |
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DOI: | 10.48550/arxiv.2410.20468 |