基于学生学习风格的课程学习对象推荐新算法

S. M. Nafea, F. Siewe, Ying He
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引用次数: 23

摘要

近年来,随着网络学习的迅猛发展,网络学习面临着寻找适合学生学习方式的学习资源的难题。在电子学习环境中,推荐系统是一项很有前途的技术,它可以提供个性化的建议,并传达符合学生倾向的适当学习对象。本文提出了一种新颖有效的基于学生学习风格的个性化学习对象推荐算法。在一项实验研究中考虑了各种相似度指标,以探讨在学习对象推荐系统中使用的最佳相似度指标。该方法基于Felder和Silverman学习风格模型,该模型用于表示学生的学习风格和学习对象的概况。研究发现,K-means聚类算法、余弦相似度度量和Pearson相关系数是实现学习对象推荐系统的有效工具。推荐的准确性使用传统的评估指标,即平均绝对误差和均方根误差来衡量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Algorithm for Course Learning Object Recommendation Based on Student Learning Styles
Explosive growth of e-learning in the recent years has faced difficulty of locating appropriate learning resources to match the students learning styles. Recommender system is a promising technology in e-learning environments to present personalised offers and convey appropriate learning objects that match student inclinations. This paper, proposes a novel and effective recommender algorithm that recommends personalised learning objects based on the student learning styles. Various similarity metrics are considered in an experimental study to investigate the best similarity metrics to use in a recommender system for learning objects. The approach is based on the Felder and Silverman learning style model which is used to represent both the student learning styles and the learning object profiles. It was found that the K-means clustering algorithm, the cosine similarity metrics and the Pearson correlation coefficient are effective tools for implementing learning object recommender systems. The accuracy of the recommendations are measured using traditional evaluation metrics, namely the Mean Absolute Error and the Root Mean Squared Error.
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