Chatbots for Robotic Process Automation: Investigating Perceived Trust and User Satisfaction
February 01, 2023 Β· Declared Dead Β· π International Conferences on Human-Machine Systems
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Authors
Alessandro Casadei, Stephan SchlΓΆgl, Markus Bergmann
arXiv ID
2302.00397
Category
cs.HC: Human-Computer Interaction
Citations
9
Venue
International Conferences on Human-Machine Systems
Last Checked
4 months ago
Abstract
Driven by ongoing improvements in machine learning, chatbots have increasingly grown from experimental interface prototypes to reliable and robust tools for process automation. Building on these advances, companies have identified various application scenarios, where the automated processing of human language can help foster task efficiency. To this end, the use of chatbots may not only decrease costs, but it is also said to boost user satisfaction. People's intention to use and/or reuse said technology, however, is often dependent on less utilitarian factors. Particularly trust and respective task satisfaction count as relevant usage predictors. In this paper, we thus present work that aims to shed some light on these two variable constructs. We report on an experimental study ($n=277$), investigating four different human-chatbot interaction tasks. After each task, participants were asked to complete survey items on perceived trust, perceived task complexity and perceived task satisfaction. Results show that task complexity impacts negatively on both trust and satisfaction. To this end, higher complexity was associated particularly with those conversations that relied on broad, descriptive chatbot answers, while conversations that span over several short steps were perceived less complex, even when the overall conversation was eventually longer.
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