Archibald Audon, Hudson Cassie, Heap Tania, Thompson Ruthanne Rudi, Lin Lin, DeMeritt Jaqueline, Lucke Heather
University of North Texas, Denton, TX USA.
Present Address: Global Giving, Washington, DC USA.
TechTrends. 2023;67(2):285-293. doi: 10.1007/s11528-022-00825-7. Epub 2023 Jan 21.
Asynchronous discussions are a popular feature in online higher education as they enable instructor-student and student-student interactions at the users' own time and pace. AI-driven discussion platforms are designed to relieve instructors of automatable tasks, e.g., low-stakes grading and post moderation. Our study investigated the validity of an AI-generated score compared to human-driven methods of evaluating student effort and the impact of instructor interaction on students' discussion post quality. A series of within-subjects MANOVAs was conducted on 14,599 discussion posts among over 800 students across four classes to measure post 'curiosity score' (i.e., an AI-generated metric of post quality) and word count. After checking assumptions, one MANOVA was run for each type of instructor interaction: private coaching, public praising, and public featuring. Instructor coaching appears to impact curiosity scores and word count, with later posts being an average of 40 words longer and scoring an average of 15 points higher than the original post that received instructor coaching. AI-driven tools appear to free up time for more creative human interventions, particularly among instructors teaching high-enrollment classes, where a traditional discussion forum is less scalable.
异步讨论是在线高等教育中的一项热门功能,因为它能让教师与学生以及学生与学生之间按照用户自己的时间和节奏进行互动。人工智能驱动的讨论平台旨在将教师从可自动化的任务中解放出来,例如低风险评分和帖子审核。我们的研究调查了与人工驱动的评估学生努力程度的方法相比,人工智能生成的分数的有效性,以及教师互动对学生讨论帖子质量的影响。对四个班级中800多名学生的14599条讨论帖子进行了一系列的组内多变量方差分析,以测量帖子的“好奇心分数”(即人工智能生成的帖子质量指标)和字数。在检查了假设条件后,针对每种教师互动类型进行了一次多变量方差分析:私下辅导、公开表扬和公开展示。教师辅导似乎会影响好奇心分数和字数,后续帖子平均比接受教师辅导的原始帖子长40个单词,得分平均高15分。人工智能驱动的工具似乎为更具创造性的人工干预腾出了时间,尤其是在教授大班课程的教师中,在这种情况下,传统的讨论论坛扩展性较差。