TY - GEN
T1 - Advancing Affective Intelligence in Virtual Agents Using Affect Control Theory
AU - Lithoxoidou, Evdoxia Eirini
AU - Eleftherakis, George
AU - Votis, Konstantinos
AU - Prescott, Tony
N1 - Publisher Copyright:
© 2025 Copyright held by the owner/author(s).
PY - 2025/3/24
Y1 - 2025/3/24
N2 - Affective Intelligent Virtual Agents (AIVAs) has emerged as a research domain that integrates artificial intelligence, affective computing, and virtual agent technology. This fusion aims to develop interactive systems capable of perceiving, interpreting, and responding to human emotions. Affect Control Theory (ACT), a theoretical framework developed by Heise (1977) [18] and adapted for virtual agent applications by Robillard and Hoey (2018) [34] proposes that individuals unconsciously compare their own affective behavior with that of their interlocutor, forming predictions about the latter. Satisfaction and psychological stress levels are then influenced by the extent to which the interlocutor's behavior aligns with these expectations.In this paper we introduce an AIVA that employs ACT concepts to interpret user text and generate emotionally-aligned responses, facial expressions, and gestures for an animated virtual character, AvataRena, that we are developing to act as a virtual life coach. Using the DeepMoji network, user textual input is mapped to emojis and then to a three-dimensional affect space. We then use prompt engineering to create ChatGPT responses that are moderated by ACT analyses to deliver emotionally-aligned textual and non-verbal responses. This alignment adheres to the principle of deflection within ACT, positing that lower deflection values correspond to heightened positivity in elicited emotions.To validate the model we performed a controlled simulation using 1480 questions derived from counselor-patient interactions [3] to explore differences between prompt-engineered ChatGPT-generated responses with, and without, ACT moderation. Specifically, we found significantly lower deflection measures for the ACT-moderated AIVA responses, indicating that the moderated system adheres more closely to expected affective behavior than unmoderated ChatGPT. This was a large effect (t(1479)=-33.03, p<.001, Cohen's d = 0.862). Future work will investigate whether this promising result transfers to enhanced user satisfaction and response alignment during extended interactions in the life coach setting.
AB - Affective Intelligent Virtual Agents (AIVAs) has emerged as a research domain that integrates artificial intelligence, affective computing, and virtual agent technology. This fusion aims to develop interactive systems capable of perceiving, interpreting, and responding to human emotions. Affect Control Theory (ACT), a theoretical framework developed by Heise (1977) [18] and adapted for virtual agent applications by Robillard and Hoey (2018) [34] proposes that individuals unconsciously compare their own affective behavior with that of their interlocutor, forming predictions about the latter. Satisfaction and psychological stress levels are then influenced by the extent to which the interlocutor's behavior aligns with these expectations.In this paper we introduce an AIVA that employs ACT concepts to interpret user text and generate emotionally-aligned responses, facial expressions, and gestures for an animated virtual character, AvataRena, that we are developing to act as a virtual life coach. Using the DeepMoji network, user textual input is mapped to emojis and then to a three-dimensional affect space. We then use prompt engineering to create ChatGPT responses that are moderated by ACT analyses to deliver emotionally-aligned textual and non-verbal responses. This alignment adheres to the principle of deflection within ACT, positing that lower deflection values correspond to heightened positivity in elicited emotions.To validate the model we performed a controlled simulation using 1480 questions derived from counselor-patient interactions [3] to explore differences between prompt-engineered ChatGPT-generated responses with, and without, ACT moderation. Specifically, we found significantly lower deflection measures for the ACT-moderated AIVA responses, indicating that the moderated system adheres more closely to expected affective behavior than unmoderated ChatGPT. This was a large effect (t(1479)=-33.03, p<.001, Cohen's d = 0.862). Future work will investigate whether this promising result transfers to enhanced user satisfaction and response alignment during extended interactions in the life coach setting.
UR - https://www.scopus.com/pages/publications/105001921438
UR - https://www.scopus.com/pages/publications/105001921438#tab=citedBy
U2 - 10.1145/3708359.3712079
DO - 10.1145/3708359.3712079
M3 - Conference contribution
AN - SCOPUS:105001921438
T3 - International Conference on Intelligent User Interfaces, Proceedings IUI
SP - 127
EP - 136
BT - IUI 2025 - Proceedings of the 2025 International Conference on Intelligent User Interfaces
PB - Association for Computing Machinery
T2 - 30th International Conference on Intelligent User Interfaces, IUI 2025
Y2 - 24 March 2025 through 27 March 2025
ER -