TY - GEN
T1 - Don't Take it Personally
T2 - 10th Conference on Human-Agent Interaction, HAI 2022
AU - Laban, Guy
AU - Araujo, Theo
N1 - Publisher Copyright:
© 2022 ACM.
PY - 2022/12/5
Y1 - 2022/12/5
N2 - Conversational recommender agents are artificially intelligent recommender systems that provide users with individually-tailored recommendations by targeting individual needs and communicating in a flowing dialogue. These are widely available online, communicating with users while demonstrating human-like (anthropomorphic) social cues. Nevertheless, little is known about the effect of their anthropomorphic cues on users' resistance to the system and recommendations. Accordingly, this study examined the extent to which conversational recommender agents' anthropomorphic cues and the type of recommendations provided (user-initiated and system-initiated) influenced users' perceptions of control, trustworthiness, and the risk of using the platform. The study assessed how these perceptions, in turn, influence users' adherence to the recommendations. An online experiment was conducted among users with conversational recommender agents and web recommender platforms that provided user-initiated or system-initiated restaurant recommendations. The results entail that user-initiated recommendations, compared to system-initiated, are less likely to affect users' resistance to the system and are more likely to affect their adherence to the recommendations provided. Furthermore, the study's findings suggest that these effects are amplified for conversational recommender agents, demonstrating anthropomorphic cues, in contrast to traditional systems as web recommender platforms.
AB - Conversational recommender agents are artificially intelligent recommender systems that provide users with individually-tailored recommendations by targeting individual needs and communicating in a flowing dialogue. These are widely available online, communicating with users while demonstrating human-like (anthropomorphic) social cues. Nevertheless, little is known about the effect of their anthropomorphic cues on users' resistance to the system and recommendations. Accordingly, this study examined the extent to which conversational recommender agents' anthropomorphic cues and the type of recommendations provided (user-initiated and system-initiated) influenced users' perceptions of control, trustworthiness, and the risk of using the platform. The study assessed how these perceptions, in turn, influence users' adherence to the recommendations. An online experiment was conducted among users with conversational recommender agents and web recommender platforms that provided user-initiated or system-initiated restaurant recommendations. The results entail that user-initiated recommendations, compared to system-initiated, are less likely to affect users' resistance to the system and are more likely to affect their adherence to the recommendations provided. Furthermore, the study's findings suggest that these effects are amplified for conversational recommender agents, demonstrating anthropomorphic cues, in contrast to traditional systems as web recommender platforms.
KW - Anthropomorphism
KW - Chatbots
KW - Conversational Agents
KW - E-commerce
KW - Personalization
KW - Privacy
KW - Recommender Systems
KW - Trust
UR - https://www.scopus.com/pages/publications/85144608660
U2 - 10.1145/3527188.3561929
DO - 10.1145/3527188.3561929
M3 - Conference contribution
AN - SCOPUS:85144608660
T3 - HAI 2022 - Proceedings of the 10th Conference on Human-Agent Interaction
SP - 57
EP - 66
BT - HAI 2022 - Proceedings of the 10th Conference on Human-Agent Interaction
PB - Association for Computing Machinery, Inc
Y2 - 5 December 2022 through 8 December 2022
ER -