基于学习路径可变性和蚁群优化的学习路径规划方法

Jing Zhao , Haitao Mao , Panpan Mao , Junyong Hao
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引用次数: 0

摘要

随着教育信息化的发展,在线教育的规模不断扩大,这给学生的学习路径规划,即课程和学习方法规划带来了挑战。针对学习路径规划个性化不足等局限性,本研究提出了一种基于学习路径可变性和蚁群优化的学习路径规划方法。首先,利用动态时间正则化获得学习路径可变性,并利用 K-means 算法对学生的学习类型进行分类。随后,使用蚁群优化算法生成学习路径。最后,测试了该方法的有效性。结果表明,蚁群优化算法的损失值收敛到最小值 0.1,与其他算法相比,损失函数曲线的稳定性最好,收敛速度最快。在相同的实验环境下,该算法的精度高达 0.9,有利于寻找最优解。研究设计的路径规划方法能有效把握学生的学习特点和习惯,分类准确率可达 96.6%。采用这种学习路径规划方法,学生的平均视频学习时间最多可达 80 分钟,学生课程目标的平均完成率稳定在 90%,比基于 GA 的学习路径规划方法高出约 20%。该方法能明显提高学习成绩和教学效果。该方法把握了学生的学习类型,激发了学生的学习兴趣,提高了在线学习的效果,有助于推进教育信息化,为深化教育改革提供助力。
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Learning path planning methods based on learning path variability and ant colony optimization

With the advancement of education information, the scale of online education has been expanding, which brings challenges to students' learning path planning, i.e., course and learning method planning. To address the limitations of learning path planning such as insufficient personalization, the study proposes a learning path planning method based on learning path variability and ant colony optimization. First, dynamic time regularization is used to obtain learning path variability, and the K-means algorithm is used to classify students' learning types. Subsequently, an ant colony optimization algorithm is used to generate learning paths. Finally, the effectiveness of the method is tested. The results show that the loss value of the ant colony optimization algorithm converges to a minimum value of 0.1, which has the best stability of the loss function curve and the fastest convergence speed compared to other algorithms. Under the same experimental environment, the accuracy of the algorithm is as high as 0.9, which is conducive to the search for the optimal solution. The path planning method designed by the research can effectively grasp the learning characteristics and habits of students, and the accurate classification degree can reach 96.6%. With this learning path planning method, the average video learning time of students reaches a maximum of 80 min, while the average completion rate of students' course objectives is stable at 90%, which is about 20% higher than that of the GA-based learning path planning method. The method can significantly improve academic performance and educational outcomes. The method thus grasps the type of student learning, stimulates students' interest in learning, improves the effect of online learning, helps to promote education informatization and provides a boost to the deep reform of education.

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