TY - CHAP
T1 - Linguistic and Gender Factors in User Engagement with Arabic LLM-Based Virtual Agents for Rehabilitation
AU - Mohamednour, Amina
AU - Alyafei, Ameera
AU - AlKatheri, Sumyah
AU - Saad, Rafeea
AU - Shafiqurrahman, Asma
AU - Zou, Zhao
AU - Mubin, Omar
AU - Mehiar, Duaa
AU - Alnajjar, Fady
N1 - Publisher Copyright:
© The Author(s), under exclusive license to Springer Nature Switzerland AG 2024.
PY - 2024
Y1 - 2024
N2 - Large Language Model (LLM) based virtual agents are transforming robotic rehabilitation by providing personalized, adaptive support. However, when using LLM for rehabilitation, we need to ensure user acceptance and understand how AI-generated language and/or virtual appearance can affect users’ responses and engagement. This study investigates the impact of word selections, voice and virtual agent gender on Arabic-speaking users’ emotions and engagement in rehabilitation using LLM-based virtual agents. A multi-factorial design will be employed, manipulating command politeness (soft vs. harsh), dialects, and voice/agent gender. Arabic-speaking participants will be exposed to commands presented by LLM-based virtual agents with the variables systematically varied. Emotions will be quantified using a face emotion recognition system, while the engagement will be assessed through user feedback. Our findings showed variance in users’ emotional responses to different stimuli, highlighting the importance of considering language style and gender when intervening with users. The results provide insights into cultural and linguistic factors influencing user interactions with LLM-based virtual agents in rehabilitation contexts. The study also contributes to the broader field of human-computer interaction, emphasizing the importance of considering linguistic and cultural factors in designing interactive rehabilitation systems.
AB - Large Language Model (LLM) based virtual agents are transforming robotic rehabilitation by providing personalized, adaptive support. However, when using LLM for rehabilitation, we need to ensure user acceptance and understand how AI-generated language and/or virtual appearance can affect users’ responses and engagement. This study investigates the impact of word selections, voice and virtual agent gender on Arabic-speaking users’ emotions and engagement in rehabilitation using LLM-based virtual agents. A multi-factorial design will be employed, manipulating command politeness (soft vs. harsh), dialects, and voice/agent gender. Arabic-speaking participants will be exposed to commands presented by LLM-based virtual agents with the variables systematically varied. Emotions will be quantified using a face emotion recognition system, while the engagement will be assessed through user feedback. Our findings showed variance in users’ emotional responses to different stimuli, highlighting the importance of considering language style and gender when intervening with users. The results provide insights into cultural and linguistic factors influencing user interactions with LLM-based virtual agents in rehabilitation contexts. The study also contributes to the broader field of human-computer interaction, emphasizing the importance of considering linguistic and cultural factors in designing interactive rehabilitation systems.
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U2 - 10.1007/978-3-031-77584-0_78
DO - 10.1007/978-3-031-77584-0_78
M3 - Chapter
AN - SCOPUS:85214019425
T3 - Biosystems and Biorobotics
SP - 402
EP - 405
BT - Biosystems and Biorobotics
PB - Springer Science and Business Media Deutschland GmbH
ER -