Ortega-Ochoa Elvis, Sabaté Josep-Maria, Arguedas Marta, Conesa Jordi, Daradoumis Thanasis, Caballé Santi
Doctoral School, Universitat Oberta de Catalunya, Barcelona, Spain.
Computer Science, Multimedia, and Telecommunication Faculty, Universitat Oberta de Catalunya, Barcelona, Spain.
Front Artif Intell. 2024 Nov 11;7:1493566. doi: 10.3389/frai.2024.1493566. eCollection 2024.
Despite advances in educational technology, the specific ways in which Generative Artificial Intelligence (GAI) and Large Language Models cater to learners' nuanced cognitive and emotional needs are not fully understood. This mini-review methodically describes GAI's practical implementations and limitations in meeting these needs. It included journal and conference papers from 2019 to 2024, focusing on empirical studies that employ GAI tools in educational contexts while addressing their practical utility and ethical considerations. The selection criteria excluded non-English studies, non-empirical research, and works published before 2019. From the dataset obtained from Scopus and Web of Science as of June 18, 2024, four significant studies were reviewed. These studies involved tools like ChatGPT and emphasized their effectiveness in boosting student engagement and emotional regulation through interactive learning environments with instant feedback. Nonetheless, the review reveals substantial deficiencies in GAI's capacity to promote critical thinking and maintain response accuracy, potentially leading to learner confusion. Moreover, the ability of these tools to tailor learning experiences and offer emotional support remains limited, often not satisfying individual learner requirements. The findings from the included studies suggest limited generalizability beyond specific GAI versions, with studies being cross-sectional and involving small participant pools. Practical implications underscore the need to develop teaching strategies leveraging GAI to enhance critical thinking. There is also a need to improve the accuracy of GAI tools' responses. Lastly, deep analysis of intervention approval is needed in cases where GAI does not meet acceptable error margins to mitigate potential negative impacts on learning experiences.
尽管教育技术取得了进步,但生成式人工智能(GAI)和大语言模型满足学习者细微认知和情感需求的具体方式仍未得到充分理解。本小型综述系统地描述了GAI在满足这些需求方面的实际应用和局限性。它纳入了2019年至2024年的期刊和会议论文,重点关注在教育背景下使用GAI工具的实证研究,同时探讨其实际效用和伦理考量。选择标准排除了非英语研究、非实证研究以及2019年之前发表的作品。从截至2024年6月18日从Scopus和Web of Science获得的数据集中,对四项重要研究进行了综述。这些研究涉及ChatGPT等工具,并强调了它们通过具有即时反馈的交互式学习环境提高学生参与度和情绪调节的有效性。尽管如此,该综述揭示了GAI在促进批判性思维和保持回答准确性方面存在重大缺陷,这可能导致学习者困惑。此外,这些工具在定制学习体验和提供情感支持方面的能力仍然有限,往往无法满足个体学习者的需求。纳入研究的结果表明,除了特定的GAI版本之外,普遍适用性有限,这些研究多为横断面研究,且参与样本量较小。实际意义强调了开发利用GAI增强批判性思维的教学策略的必要性。还需要提高GAI工具回答的准确性。最后,在GAI不符合可接受误差范围的情况下,需要对干预批准进行深入分析,以减轻对学习体验的潜在负面影响。