Comparison of Generic Similarity Measures in E-learning Content Recommender System in Cold-Start Condition

Jeevamol Joy, Renumol V G
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引用次数: 7

Abstract

Recommender systems in the e-learning domain assist learners in finding relevant learning materials based on their preferences and goals. One of the main components of such a recommender system is a similarity measurement unit, used to determine the set of learners having the same behavior. Several similarity functions have been proposed in the e-learning domain, with different performances in terms of accuracy and quality of recommendations. Most of these similarity methods do not perform satisfactorily in the presence of cold-start users. In this paper, we present a comparative study of 4 generic similarity measures (Pearson Correlation Similarity, Cosine Vector Similarity, Euclidean Distance Similarity, Jaccard Similarity Correlation) that are widely used in e-learning recommender systems. The evaluation metrics Mean Absolute Error (MAE) and Root Mean Square Error (RMSE) are used to evaluate the performance of the recommender system with the 4 similarity measures. The results indicate better recommendation performance when using Cosine Vector Similarity in cold-start condition.
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冷启动条件下电子学习内容推荐系统通用相似度度量的比较
电子学习领域的推荐系统帮助学习者根据他们的偏好和目标找到相关的学习材料。这种推荐系统的主要组成部分之一是相似性度量单元,用于确定具有相同行为的学习器集。在电子学习领域已经提出了几种相似函数,它们在推荐的准确性和质量方面表现不同。在冷启动用户在场的情况下,大多数相似方法都不能令人满意地执行。本文对电子学习推荐系统中广泛使用的4种通用相似度量(Pearson相关相似度、余弦向量相似度、欧几里得距离相似度、Jaccard相似度相关)进行了比较研究。使用评价指标平均绝对误差(MAE)和均方根误差(RMSE)对推荐系统的4个相似度度量进行评价。结果表明,在冷启动条件下使用余弦向量相似度的推荐效果更好。
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