This paper discusses the results of an exploratory study aimed at investigating the impact of conversational agents (CAs) and specifically their agential characteristics on collaborative decision-making processes. The study involved 29 participants divided into 8 small teams engaged in a question-and-answer trivia-style game with the support of a text-based CA, characterized by two independent binary variables: personality (gentle and cooperative vs blunt and uncooperative) and gender (female vs male). A semi-structured group interview was conducted at the end of the experimental sessions to investigate the perceived utility and level of satisfaction with the CAs. Our results show that when users interact with a gentle and cooperative CA, their user satisfaction is higher. Furthermore, female CAs are perceived as more useful and satisfying to interact with than male CAs. We show that group performance improves through interaction with the CAs, confirming that a stereotype favoring the female with a gentle and cooperative personality combination exists in regard to perceived satisfaction, even though this does not lead to greater perceived utility. Our study extends the current debate about the possible correlation between CA characteristics and human acceptance and suggests future research to investigate the role of gender bias and related biases in human-AI teaming.

Milella, F., Natali, C., Scantamburlo, T., Campagner, A., Cabitza, F. (2023). The Impact of Gender and Personality in Human-AI Teaming: The Case of Collaborative Question Answering. In Human-Computer Interaction – INTERACT 2023 19th IFIP TC13 International Conference, York, UK, August 28 – September 1, 2023, Proceedings, Part II (pp.329-349). Springer Cham [10.1007/978-3-031-42283-6_19].

The Impact of Gender and Personality in Human-AI Teaming: The Case of Collaborative Question Answering

Milella F.
Co-primo
;
Natali C.
Co-primo
;
Campagner A.
Secondo
;
Cabitza F.
Ultimo
2023

Abstract

This paper discusses the results of an exploratory study aimed at investigating the impact of conversational agents (CAs) and specifically their agential characteristics on collaborative decision-making processes. The study involved 29 participants divided into 8 small teams engaged in a question-and-answer trivia-style game with the support of a text-based CA, characterized by two independent binary variables: personality (gentle and cooperative vs blunt and uncooperative) and gender (female vs male). A semi-structured group interview was conducted at the end of the experimental sessions to investigate the perceived utility and level of satisfaction with the CAs. Our results show that when users interact with a gentle and cooperative CA, their user satisfaction is higher. Furthermore, female CAs are perceived as more useful and satisfying to interact with than male CAs. We show that group performance improves through interaction with the CAs, confirming that a stereotype favoring the female with a gentle and cooperative personality combination exists in regard to perceived satisfaction, even though this does not lead to greater perceived utility. Our study extends the current debate about the possible correlation between CA characteristics and human acceptance and suggests future research to investigate the role of gender bias and related biases in human-AI teaming.
slide + paper
chatbot; conversational agents; gender stereotypes; human-AI teaming;
English
19th IFIP TC 13 International Conference on Human-Computer Interaction, INTERACT 2023 - August 28 – September 1, 2023
2023
Human-Computer Interaction – INTERACT 2023 19th IFIP TC13 International Conference, York, UK, August 28 – September 1, 2023, Proceedings, Part II
9783031422829
2023
14143 LNCS
329
349
reserved
Milella, F., Natali, C., Scantamburlo, T., Campagner, A., Cabitza, F. (2023). The Impact of Gender and Personality in Human-AI Teaming: The Case of Collaborative Question Answering. In Human-Computer Interaction – INTERACT 2023 19th IFIP TC13 International Conference, York, UK, August 28 – September 1, 2023, Proceedings, Part II (pp.329-349). Springer Cham [10.1007/978-3-031-42283-6_19].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/444578
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