Machine learning driven course recommendation system

Sara Lazarevic, Tamara Zuvela, Sofija Djordjevic, S. Sladojevic, M. Arsenovic
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引用次数: 2

Abstract

This paper presents a machine learning-driven course recommendation system based on similarities between courses. The proposed system employs various data mining techniques to mentioned similarities between courses. Based on the experimental phase of this paper, Cosine metrics proved the best to calculate these parameters. The method proposed in this paper relies on rankings based on areas of study. These techniques allowed us to create an algorithm that, based on input, returns courses that satisfy various conditions. The results satisfy the demands of finding similar courses presented through cross-platform application to the students who will use it to improve their education.
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机器学习驱动的课程推荐系统
提出了一种基于课程相似性的机器学习驱动的课程推荐系统。所提出的系统采用各种数据挖掘技术来提到课程之间的相似性。基于本文的实验阶段,余弦度量被证明是计算这些参数的最佳方法。本文提出的方法依赖于基于研究领域的排名。这些技术使我们能够创建一个基于输入的算法,返回满足各种条件的课程。该结果满足了学生通过跨平台应用程序查找同类课程的需求,这些学生将使用它来提高他们的教育水平。
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