In recent years, Massive Open Online Courses (MOOCs) have witnessed immense growth in popularity. Now, due to the recent Covid19 pandemic situation, it is important to push the limits of online education. Discussion forums are primary means of interaction among learners and instructors. However, with growing class size, students face the challenge of finding useful and informative discussion forums. This problem can be solved by matching the interest of students with thread contents. The fundamental challenge is that the student interests drift as they progress through the course, and forum contents evolve as students or instructors update them. In our paper, we propose to predict future interest trajectories of students. Our model consists of two key operations: 1) Update operation and 2) Projection operation. Update operation models the inter-dependency between the evolution of student and thread using coupled Recurrent Neural Networks when the student posts on the thread. The projection operation learns to estimate future embedding of students and threads. For students, the projection operation learns the drift in their interests caused by the change in the course topic they study. The projection operation for threads exploits how different posts induce varying interest levels in a student according to the thread structure. Extensive experimentation on three real-world MOOC datasets shows that our model significantly outperforms other baselines for thread recommendation.
翻译:近些年来,大规模开放在线课程(MOOCs)的受欢迎程度大幅提高。现在,由于最近的Covid19大流行情况,必须推动在线教育的局限性。讨论论坛是学生和教员之间互动的主要手段。然而,随着班级规模的扩大,学生面临寻找有用和内容丰富的讨论论坛的挑战。这个问题可以通过将学生的兴趣与线条内容相匹配来解决。基本挑战是学生兴趣随着课程的不断演变而漂移,论坛内容随着学生或教员的更新而演变。在我们的论文中,我们提议预测学生的未来兴趣轨迹。我们的模型由两个关键操作组成:1)更新操作和2)预测操作。更新学生和导线之间相互依存性变化的运作模型,在学生在线条上的职位上时,使用经常性神经网络同时使用。预测操作学会估计学生和导线的未来嵌入。对于学生来说,预测操作会了解他们因课程主题的变化而导致的兴趣的漂移。我们的研究模型的预测操作利用了不同职位如何在学生中产生不同的兴趣水平,从而将学生的基线结构显示为其他方向。