在教育研究中使用基于目标导向的自适应人工智能对话代理进行双盲真实社会实验

IF 2.6 3区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH
Ilker Cingillioglu , Uri Gal , Artem Prokhorov
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引用次数: 0

摘要

本研究介绍了一种创新的人工智能辅助访谈式调查系统,该系统可为高等教育研究提供定性和定量数据。我们采用了一个目标导向的自适应人工智能对话代理(AICA),它直接从全球 1223 名参与者那里收集数据,并在线进行了一次双盲真实社会实验。在访谈过程中,人工智能与参与者建立了良好的关系,为他们提供个性化指导,同时培养他们的舒适感、主人翁意识和对研究的承诺。在这个完全自动化的实验中,我们实证检验了与学生大学选择相关的 8 个假设。结果证实了其中的 5 个假设,同时反驳了之前在文献中发现的 3 个因素。这项研究展示了 AICAs 从大量样本中实时有效地收集和分析数据的潜力,促进了研究过程的简化与和谐,其结果不仅在统计上可靠、无偏见,而且具有广泛的普适性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Running a double-blind true social experiment with a goal oriented adaptive AI-based conversational agent in educational research

This study introduces an innovative AI-facilitated interview-like survey system generating a combination of qualitative and quantitative data insights for higher education research. We employed a goal oriented adaptive AI-based Conversational Agent (AICA) which collected data directly from 1223 participants globally and ran a double-blind true social experiment online. During interviews, the AI established strong rapport with the participants, offering them personalized guidance while fostering comfort, ownership, and commitment to the study. In this entirely automated experiment, we empirically tested 8 hypotheses related to students' university selection. The results confirmed 5 of these hypotheses while refuting 3 factors previously identified in the literature. The study showcases the potential of AICAs to efficiently collect and analyse data from substantial sample sizes in real-time, fostering a streamlined and harmonious research process producing results that are not only statistically reliable and bias-free but also broadly generalizable.

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来源期刊
International Journal of Educational Research
International Journal of Educational Research EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
6.20
自引率
3.10%
发文量
141
审稿时长
21 days
期刊介绍: The International Journal of Educational Research publishes regular papers and special issues on specific topics of interest to international audiences of educational researchers. Examples of recent Special Issues published in the journal illustrate the breadth of topics that have be included in the journal: Students Perspectives on Learning Environments, Social, Motivational and Emotional Aspects of Learning Disabilities, Epistemological Beliefs and Domain, Analyzing Mathematics Classroom Cultures and Practices, and Music Education: A site for collaborative creativity.
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