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Improving Dynamic Recommender System Based on Item Clustering for Preference Drifts

机译:基于项目聚类的偏好漂移动态推荐系统

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The recommender system is an efficient tool for online application, which exploits historical user rating on item to make recommendations on items to users. This paper aims to enhance dynamic recommender systems under volatile user preference drifts. It proposed an algorithm to solve sparse data by using Gaussian mixture model to fill in data matrix for sparsity reduction and improve more completely ratings prediction. Subsequently, it utilizes item clustering and linear regression technique to predict the future interests of users in category based and additionally uses the nearest neighbor method to prevent over-fitting. The experimental results show that the proposed approach provides the better performance on rating prediction when compared with the state-of-the-art dynamic recommendation algorithms.
机译:推荐器系统是用于在线应用程序的有效工具,它利用对项目的历史用户评分来向用户推荐项目。本文旨在增强在用户偏好波动时的动态推荐系统。提出了一种利用高斯混合模型填充数据矩阵来解决稀疏数据的算法,以减少稀疏性并更全面地改善评级预测。随后,它利用项目聚类和线性回归技术来预测基于类别的用户的未来兴趣,并另外使用最近邻方法来防止过度拟合。实验结果表明,与最新的动态推荐算法相比,该方法在评分预测上提供了更好的性能。

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