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Autori principali: Zhang, Lichao, Yu, Jia, Zhang, Shuai, Li, Long, Zhong, Yangyang, Liang, Guanbao, Yan, Yuming, Ma, Qing, Weng, Fangsheng, Pan, Fayu, Li, Jing, Xu, Renjun, Lan, Zhenzhong
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2406.15000
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author Zhang, Lichao
Yu, Jia
Zhang, Shuai
Li, Long
Zhong, Yangyang
Liang, Guanbao
Yan, Yuming
Ma, Qing
Weng, Fangsheng
Pan, Fayu
Li, Jing
Xu, Renjun
Lan, Zhenzhong
author_facet Zhang, Lichao
Yu, Jia
Zhang, Shuai
Li, Long
Zhong, Yangyang
Liang, Guanbao
Yan, Yuming
Ma, Qing
Weng, Fangsheng
Pan, Fayu
Li, Jing
Xu, Renjun
Lan, Zhenzhong
contents Large Language Models (LLMs) have significantly advanced user-bot interactions, enabling more complex and coherent dialogues. However, the prevalent text-only modality might not fully exploit the potential for effective user engagement. This paper explores the impact of multi-modal interactions, which incorporate images and audio alongside text, on user engagement in chatbot conversations. We conduct a comprehensive analysis using a diverse set of chatbots and real-user interaction data, employing metrics such as retention rate and conversation length to evaluate user engagement. Our findings reveal a significant enhancement in user engagement with multi-modal interactions compared to text-only dialogues. Notably, the incorporation of a third modality significantly amplifies engagement beyond the benefits observed with just two modalities. These results suggest that multi-modal interactions optimize cognitive processing and facilitate richer information comprehension. This study underscores the importance of multi-modality in chatbot design, offering valuable insights for creating more engaging and immersive AI communication experiences and informing the broader AI community about the benefits of multi-modal interactions in enhancing user engagement.
format Preprint
id arxiv_https___arxiv_org_abs_2406_15000
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Unveiling the Impact of Multi-Modal Interactions on User Engagement: A Comprehensive Evaluation in AI-driven Conversations
Zhang, Lichao
Yu, Jia
Zhang, Shuai
Li, Long
Zhong, Yangyang
Liang, Guanbao
Yan, Yuming
Ma, Qing
Weng, Fangsheng
Pan, Fayu
Li, Jing
Xu, Renjun
Lan, Zhenzhong
Computation and Language
Artificial Intelligence
Large Language Models (LLMs) have significantly advanced user-bot interactions, enabling more complex and coherent dialogues. However, the prevalent text-only modality might not fully exploit the potential for effective user engagement. This paper explores the impact of multi-modal interactions, which incorporate images and audio alongside text, on user engagement in chatbot conversations. We conduct a comprehensive analysis using a diverse set of chatbots and real-user interaction data, employing metrics such as retention rate and conversation length to evaluate user engagement. Our findings reveal a significant enhancement in user engagement with multi-modal interactions compared to text-only dialogues. Notably, the incorporation of a third modality significantly amplifies engagement beyond the benefits observed with just two modalities. These results suggest that multi-modal interactions optimize cognitive processing and facilitate richer information comprehension. This study underscores the importance of multi-modality in chatbot design, offering valuable insights for creating more engaging and immersive AI communication experiences and informing the broader AI community about the benefits of multi-modal interactions in enhancing user engagement.
title Unveiling the Impact of Multi-Modal Interactions on User Engagement: A Comprehensive Evaluation in AI-driven Conversations
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2406.15000