李艳芬, 赵宁宁, 周铁民. (2017). 不同内隐学习任务在不同认知风格个体上的成绩差异. 心理与行为研究, 15(5), 606–612 吕馨, 刘景瑶, 魏柳青, 张学民. (2019). 目标数量与运动框架旋转角度对不同场认知风格个体多目标追踪表现的影响. 心理学报, 51(1), 24–35 宋合义. (1988). 认知方式图形测验的编制与修订说明. 见 谢斯骏, 张厚粲 (编), 认知方式 一个人格维度的实验研究 (pp. 261–276). 北京: 北京师范大学出版社. 宋淑娟, 刘华山. (2015). 数学-性别刻板印象对女生的威胁效应: 场认知风格的调节作用. 心理与行为研究, 13(3), 302–305, 319 王福兴, 李文静, 谢和平, 刘华山. (2017). 多媒体学习中教学代理有利于学习吗?——一项元分析研究. 心理科学进展, 25(1), 12–28 Almeida, L. M. C. G., Münzer, S., & Kühl, T. (2024). More personal, but not better: The personalization effect in learning neutral and aversive health information. Journal of Computer Assisted Learning, 40(5), 2248–2260 Bai, J., Cheng, X. L., Zhang, H., Qin, Y. H., Xu, T., & Zhou, Y. (2025). Can AI-generated pedagogical agents (AIPA) replace human teacher in picture book videos? The effects of appearance and voice of AIPA on children’s learning. Education and Information Technologies, 30(9), 12267–12287 Castro-Alonso, J. C., Wong, R. M., Adesope, O. O., & Paas, F. (2021). Effectiveness of multimedia pedagogical agents predicted by diverse theories: A meta-analysis. Educational Psychology Review, 33(3), 989–1015 Chen, C. M., Li, M. C., & Chen, Y. T. (2022). The effects of web-based inquiry learning mode with the support of collaborative digital reading annotation system on information literacy instruction. Computers & Education, 179, 104428 Du, X. J., Chen, C., & Lin, H. X. (2022). The impact of working memory capacity on collaborative learning in elementary school students. Frontiers in Psychology, 13, 1027523 Evans, C., Richardson, J. T. E., & Waring, M. (2013). Field independence: Reviewing the evidence. British Journal of Educational Psychology, 83(2), 210–224 Fynes-Clinton, S., Marstaller, L., & Burianová, H. (2019). Differentiation of functional networks during long-term memory retrieval in children and adolescents. NeuroImage, 191, 93–103 Ginns, P., Martin, A. J., & Marsh, H. W. (2013). Designing instructional text in a conversational style: A meta-analysis. Educational Psychology Review, 25(4), 445–472 Kühl, T., & Münzer, S. (2021). Learning about a serious disease: When a personalized message is harmful unless you are happy. Journal of Computer Assisted Learning, 37(5), 1312–1323 Li, H. Y., & Graesser, A. C. (2021). The impact of conversational agents’ language on summary writing. Journal of Research on Technology in Education, 53(1), 44–66 Li, J., Kizilcec, R., Bailenson, J., & Ju, W. (2016). Social robots and virtual agents as lecturers for video instruction. Computers in Human Behavior, 55, 1222–1230 Li, W. J., Wang, F. X., & Mayer, R. E. (2024). Increasing the realism of on-screen embodied instructors creates more looking but less learning. British Journal of Educational Psychology, 94(3), 759–776 Lin, L. J., Ginns, P., Wang, T. H., & Zhang, P. L. (2020). Using a pedagogical agent to deliver conversational style instruction: What benefits can you obtain? Computers & Education, 143, 103658 Lin, L. J., Lin, X., Zhang, X. F., & Ginns, P. (2024). The personalized learning by interest effect on interest, cognitive load, retention, and transfer: A meta-analysis. Educational Psychology Review, 36(3), 88 Moreno, R., & Mayer, R. E. (2000). Engaging students in active learning: The case for personalized multimedia messages. Journal of Educational Psychology, 92(4), 724–733 Netland, T., von Dzengelevski, O., Tesch, K., & Kwasnitschka, D. (2025). Comparing human-made and AI-generated teaching videos: An experimental study on learning effects. Computers & Education, 224, 105164 Nightingale, S. J., & Farid, H. (2022). AI-synthesized faces are indistinguishable from real faces and more trustworthy. Proceedings of the National Academy of Sciences of the United States of America, 119(8), e2120481119 Paas, F. G. (1992). Training strategies for attaining transfer of problem-solving skill in statistics: A cognitive-load approach. Journal of Educational Psychology, 84(4), 429–434 Pataranutaporn, P., Danry, V., Leong, J., Punpongsanon, P., Novy, D., Maes, P. & Sra, M. (2021). AI-generated characters for supporting personalized learning and well-being. Nature Machine Intelligence, 3(12), 1013–1022 Pi, Z. L., Deng, L. X., Wang, X., Guo, P. R., Xu, T., & Zhou, Y. (2022). The influences of a virtual instructor’s voice and appearance on learning from video lectures. Journal of Computer Assisted Learning, 38(6), 1703–1713 Piaget, J. (1952). The origins of intelligence in children (M. Cook, Trans.). New York: W. W. Norton & Company. Polat, H., Taş, N., Kaban, A., Kayaduman, H., & Battal, A. (2025). Human or humanoid animated pedagogical avatars in video lectures: The impact of the knowledge type on learning outcomes. International Journal of Human-Computer Interaction, 41(14), 8912–8927 Reichelt, M., Kämmerer, F., Niegemann, H. M., & Zander, S. (2014). Talk to me personally: Personalization of language style in computer-based learning. Computers in Human Behavior, 35, 199–210 Sikström, P., Valentini, C., Sivunen, A., & Kärkkäinen, T. (2022). How pedagogical agents communicate with students: A two-phase systematic review. Computers & Education, 188, 104564 Stiller, K. D., & Jedlicka, R. (2010). A kind of expertise reversal effect: Personalisation effect can depend on domain-specific prior knowledge. Australasian Journal of Educational Technology, 26(1), 133–149 Tinajero, C., Castelo, A. M., Guisande, M. A., & Páramo, M. F. (2010). Self-regulated learning in female students with different cognitive styles: An exploratory study. Perceptual and Motor Skills, 111(1), 31–44 Xu, T., Liu, Y., Jin, Y. R., Qu, Y. Y., Bai, J., Zhang, W. L., & Zhou, Y. (2025). From recorded to AI-generated instructional videos: A comparison of learning performance and experience. British Journal of Educational Technology, 56(4), 1463–1487 Zhao, F. Z. & Mayer, R. E. (2025). Improving multimedia learning with emotional design: Depicting key elements with positive features. Journal of Computer Assisted Learning, 41(3), e70028
|