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Autori principali: Zheng, Yue, Yu, Lei, Chen, Junmian, Xia, Tianyu, Yin, Yuanyuan, Wang, Shan, Liu, Haiming
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2403.19899
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author Zheng, Yue
Yu, Lei
Chen, Junmian
Xia, Tianyu
Yin, Yuanyuan
Wang, Shan
Liu, Haiming
author_facet Zheng, Yue
Yu, Lei
Chen, Junmian
Xia, Tianyu
Yin, Yuanyuan
Wang, Shan
Liu, Haiming
contents The digital realm has witnessed the rise of various search modalities, among which the Image-Based Conversational Search System stands out. This research delves into the design, implementation, and evaluation of this specific system, juxtaposing it against its text-based and mixed counterparts. A diverse participant cohort ensures a broad evaluation spectrum. Advanced tools facilitate emotion analysis, capturing user sentiments during interactions, while structured feedback sessions offer qualitative insights. Results indicate that while the text-based system minimizes user confusion, the image-based system presents challenges in direct information interpretation. However, the mixed system achieves the highest engagement, suggesting an optimal blend of visual and textual information. Notably, the potential of these systems, especially the image-based modality, to assist individuals with intellectual disabilities is highlighted. The study concludes that the Image-Based Conversational Search System, though challenging in some aspects, holds promise, especially when integrated into a mixed system, offering both clarity and engagement.
format Preprint
id arxiv_https___arxiv_org_abs_2403_19899
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Inclusive Design Insights from a Preliminary Image-Based Conversational Search Systems Evaluation
Zheng, Yue
Yu, Lei
Chen, Junmian
Xia, Tianyu
Yin, Yuanyuan
Wang, Shan
Liu, Haiming
Information Retrieval
The digital realm has witnessed the rise of various search modalities, among which the Image-Based Conversational Search System stands out. This research delves into the design, implementation, and evaluation of this specific system, juxtaposing it against its text-based and mixed counterparts. A diverse participant cohort ensures a broad evaluation spectrum. Advanced tools facilitate emotion analysis, capturing user sentiments during interactions, while structured feedback sessions offer qualitative insights. Results indicate that while the text-based system minimizes user confusion, the image-based system presents challenges in direct information interpretation. However, the mixed system achieves the highest engagement, suggesting an optimal blend of visual and textual information. Notably, the potential of these systems, especially the image-based modality, to assist individuals with intellectual disabilities is highlighted. The study concludes that the Image-Based Conversational Search System, though challenging in some aspects, holds promise, especially when integrated into a mixed system, offering both clarity and engagement.
title Inclusive Design Insights from a Preliminary Image-Based Conversational Search Systems Evaluation
topic Information Retrieval
url https://arxiv.org/abs/2403.19899