利用KNN和SVD算法构建推荐系统

M. Erritali, Badr Hssina, Abdelkader Grota
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引用次数: 2

摘要

推荐系统被成功地用于提供适合用户偏好的项目(例如:电影、音乐、书籍、新闻、图像)。在提出的方法中,我们使用协同过滤方法,通过使用其他用户的意见来查找用户满意的信息。这些评级被存储在矩阵中,它们的大小呈指数增长,以预测一个项目是否有趣。问题是,这些系统忽略了评估可能受到其他因素的影响,我们称之为冷启动因素。我们的目标是应用推荐系统的混合方法来提高推荐的质量。这种方法的优点是它不需要新的算法来计算预测。我们将应用基于奇异值分解方法的两种最近邻算法和协同过滤的矩阵分解算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Building Recommendation Systems Using the Algorithms KNN and SVD
Recommendation systems are used successfully to provide items (example:movies, music, books, news, images) tailored to user preferences.Among the approaches proposed, we use the collaborative filtering approachof finding the information that satisfies the user by using thereviews of other users. These ratings are stored in matrices that theirsizes increase exponentially to predict whether an item is interestingor not. The problem is that these systems overlook that an assessmentmay have been influenced by other factors which we call the cold startfactor. Our objective is to apply a hybrid approach of recommendationsystems to improve the quality of the recommendation. The advantageof this approach is the fact that it does not require a new algorithmfor calculating the predictions. We we are going to apply the two Kclosestneighbor algorithms and the matrix factorization algorithm ofcollaborative filtering which are based on the method of (singular valuedecomposition).
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