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A New-user cold-starting recommendation algorithm based on normalization of preference

机译:一种基于偏好标准化的新用户冷启动推荐算法

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Cold-starting problem of recommender system has attracted much attention recently. In the case of cold-starting, the extreme sparsity of ratings would induce poor performance of traditional recommendation algorithms. This paper presents a new algorithm to deal with the issue of cold-starting by taking the preference of user's ratings into consideration. After normalizing historical rating matrix, two-stage weighted prediction with user similarity is proposed, then the predicted rating value can be obtained by inverse normalization. The experimental results indicate that the method can not only guarantee good recommendation performance in the condition of user cold-starting, but also keep the recommendation consistency when the rating matrix is in normal state.
机译:推荐系统的冷启动问题最近引起了很多关注。在冷启动的情况下,评级的极端稀疏性会导致传统推荐算法的性能差。本文提出了一种新的算法,通过考虑用户评级的偏好来处理冷启动问题。在归一化历史级矩阵之后,提出了对用户相似性的两阶段加权预测,然后可以通过逆标准化获得预测的额定值。实验结果表明,该方法不仅可以保证用户冷启动条件的良好推荐性能,还可以在评级矩阵处于正常状态时保持建议一致性。

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