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Auteurs principaux: Sayeedi, Md. Faiyaz Abdullah, Haque, Md. Sadman, Razzaque, Zobaer Ibn, Robin, Robiul Awoul, Nawshin, Sabila
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2510.17726
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author Sayeedi, Md. Faiyaz Abdullah
Haque, Md. Sadman
Razzaque, Zobaer Ibn
Robin, Robiul Awoul
Nawshin, Sabila
author_facet Sayeedi, Md. Faiyaz Abdullah
Haque, Md. Sadman
Razzaque, Zobaer Ibn
Robin, Robiul Awoul
Nawshin, Sabila
contents With the increasing integration of Artificial Intelligence (AI) in academic problem solving, university students frequently alternate between traditional search engines like Google and large language models (LLMs) for information retrieval. This study explores students' perceptions of both tools, emphasizing usability, efficiency, and their integration into academic workflows. Employing a mixed-methods approach, we surveyed 109 students from diverse disciplines and conducted in-depth interviews with 12 participants. Quantitative analyses, including ANOVA and chi-square tests, were used to assess differences in efficiency, satisfaction, and tool preference. Qualitative insights revealed that students commonly switch between GPT and Google: using Google for credible, multi-source information and GPT for summarization, explanation, and drafting. While neither tool proved sufficient on its own, there was a strong demand for a hybrid solution. In response, we developed a prototype, a chatbot embedded within the search interface, that combines GPT's conversational capabilities with Google's reliability to enhance academic research and reduce cognitive load.
format Preprint
id arxiv_https___arxiv_org_abs_2510_17726
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Rethinking Search: A Study of University Students' Perspectives on Using LLMs and Traditional Search Engines in Academic Problem Solving
Sayeedi, Md. Faiyaz Abdullah
Haque, Md. Sadman
Razzaque, Zobaer Ibn
Robin, Robiul Awoul
Nawshin, Sabila
Human-Computer Interaction
With the increasing integration of Artificial Intelligence (AI) in academic problem solving, university students frequently alternate between traditional search engines like Google and large language models (LLMs) for information retrieval. This study explores students' perceptions of both tools, emphasizing usability, efficiency, and their integration into academic workflows. Employing a mixed-methods approach, we surveyed 109 students from diverse disciplines and conducted in-depth interviews with 12 participants. Quantitative analyses, including ANOVA and chi-square tests, were used to assess differences in efficiency, satisfaction, and tool preference. Qualitative insights revealed that students commonly switch between GPT and Google: using Google for credible, multi-source information and GPT for summarization, explanation, and drafting. While neither tool proved sufficient on its own, there was a strong demand for a hybrid solution. In response, we developed a prototype, a chatbot embedded within the search interface, that combines GPT's conversational capabilities with Google's reliability to enhance academic research and reduce cognitive load.
title Rethinking Search: A Study of University Students' Perspectives on Using LLMs and Traditional Search Engines in Academic Problem Solving
topic Human-Computer Interaction
url https://arxiv.org/abs/2510.17726