Yang Zongye
School of Music, Drama and Dance, The Herzen State Pedagogical University of Russia, St.Petersburg, Russia.
PLoS One. 2022 Jan 26;17(1):e0262697. doi: 10.1371/journal.pone.0262697. eCollection 2022.
To improve the teaching effect of western music history, the curriculum reform of history education needs to be promoted under the background of the Internet of Things (IoT). At first, a discussion is made on the characteristics of history course, which is combined with the characteristics of teaching data easy to collect under the background of IoT. An analysis is conducted on the related theory of educational data mining. Then, the concept of personalized recommendation is proposed based on deep learning (DL) algorithm. Finally, online and offline experiments are designed to verify the performance of the algorithm from review and investigation, smoothness, and participation of difficulty. The research results show that in terms of offline recommendation accuracy, the average record length in Math data set is 24.5, which is much smaller than that in range data set. The research has obvious innovation significance compared with other studies. In the process of target review and investigation, it is found that the research method here involves a wider range of knowledge and higher reliability. In terms of the difficulty of recommending questions, the Deep Reinforcement Exercise (DRE) recommendation algorithm can adaptively adjust the difficulty of recommending questions. It also allows students to set different learning goals through participation goals. But in the experiments on Math data set, Step 10's recommendation results are not very good, and the difficulty level varies greatly. If the goal setting is high, the problem recommended to students is too difficult, students may answer these questions wrongly, forcing the algorithm to adjust the difficulty adaptively. According to the above results, DRE recommendation algorithm can adapt to different learning needs and customize the recommendation results, thus opening up a new path for the teaching of western music history. Besides, the combination of DL algorithm and western music history teaching design can recommend learning materials, which is of great significance in the teaching of history courses.
为提高西方音乐史的教学效果,需要在物联网(IoT)背景下推进历史教育的课程改革。首先,对历史课程的特点进行了讨论,并结合物联网背景下易于收集的教学数据特点,对教育数据挖掘的相关理论进行了分析。然后,基于深度学习(DL)算法提出了个性化推荐的概念。最后,设计了线上和线下实验,从复习与调查、流畅性以及难度参与度等方面验证算法的性能。研究结果表明,在离线推荐准确性方面,数学数据集中的平均记录长度为24.5,远小于范围数据集中的平均记录长度。与其他研究相比,该研究具有明显的创新意义。在目标复习与调查过程中发现,这里的研究方法涉及的知识范围更广且可靠性更高。在推荐问题的难度方面,深度强化练习(DRE)推荐算法能够自适应地调整推荐问题的难度,还能让学生通过参与目标设定不同的学习目标。但在数学数据集的实验中,步骤10的推荐结果不太理想,难度水平差异很大。如果目标设定过高,推荐给学生的问题太难,学生可能答错这些问题,迫使算法自适应地调整难度。根据上述结果,DRE推荐算法能够适应不同的学习需求并定制推荐结果,从而为西方音乐史教学开辟了一条新路径。此外,DL算法与西方音乐史教学设计相结合能够推荐学习材料,这在历史课程教学中具有重要意义。