基于Siamese神经网络的mooc推荐系统

A. Faroughi, P. Moradi
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引用次数: 2

摘要

大规模在线开放课程(MOOCs)正成为一种流行的教育方式,因为它们为学生提供了大规模的学习机会。然而,MOOC课程的多样性和频繁的变化使得学生很难识别相关的新信息。为了吸引学生的注意力,使用推荐系统(RS)为学习者匹配最佳的学习资源。大多数关于推荐系统的研究主要依赖于显式反馈的存在,而这些信息在mooc中通常是稀缺的或不可用的。因此,在本文中,我们使用内隐反馈,通过跟踪不同类型的学生的行为被动收集来模拟用户的积极和消极偏好。我们建议使用暹罗神经网络(snn)来提取基于损失函数的学生和课程的潜在表征,该损失函数使观察到的课程比未观察到的课程具有更高的偏好。然后,根据新的表示确定用户和课程的相似度。此外,另一个挑战是向几乎没有可用交互数据的学生推荐课程(冷启动)。为了解决这个问题,我们使用用户和课程内容信息,这也有助于创建更准确的表示。我们在中国最大的mooc之一——学堂的真实数据集上分析了所提出的模型。实验结果表明,该算法优于许多基准算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MOOCs Recommender System with Siamese Neural Network
Massive open online courses (MOOCs) are becoming a popular method of education, as they offer students a large-scale learning opportunity. However, the variety of MOOC courses and their frequent changes make it more difficult for students to identify relevant new information. To pique students' attention, a recommendation system (RS) is used to match the learner with the best learning resources. Most research on recommender system relies mainly on the presence of explicit feedback, while this information is commonly scarce or unavailable in MOOCs. Therefore, in this paper we use implicit feedback which is gathered passively by tracking different sorts of students' behavior to model user positive and negative preferences. We propose using Siamese Neural Networks (SNNs) to extract latent representations of students and courses based on a loss function that gives observed courses a higher preference than unobserved courses. Then, users and courses similarity are determined based on new representations. Furthermore, the other challenge is recommending courses to students with little available interaction data (cold start). To solve this problem, we employ user and course content information, which aids in the creation of more accurate representations as well. We analyze the proposed model on a real dataset obtained from XuetangX-one of China's largest MOOCs-. Experiment results show that the proposed algorithm outperforms numerous baseline algorithms.
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