基于物品的推荐系统中个人用户预测的置信度估计

Cesare Bernardis, Maurizio Ferrari Dacrema, P. Cremonesi
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引用次数: 7

摘要

本文主要研究基于item-item协同过滤(CF)的推荐系统。虽然基于项目的方法的研究并不新鲜,但目前的文献并没有提供任何关于如何估计推荐置信度的可靠见解。本文的目标是通过研究基于项目的推荐对特定用户成功或失败的条件来填补这一空白。我们将基于项目的CF问题形式化为特征值问题,其中估计评级相当于真实(未知)评级乘以相似矩阵的用户特定特征值。我们表明,与用户相关的特征值的大小与该用户的推荐精度成正比。我们定义了一个称为特征值置信指数的置信参数,它类似于相似矩阵的特征值,但计算起来更简单。我们还展示了如何将特征值置信度指标扩展到矩阵分解算法。在五个数据集上进行的综合实验表明,特征值置信度指数可以有效地预测每个用户的推荐质量。平均而言,我们的信心指数与MAP的相关性是先前信心估计的3倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating Confidence of Individual User Predictions in Item-based Recommender Systems
This paper focuses on recommender systems based on item-item collaborative filtering (CF). Although research on item-based methods is not new, current literature does not provide any reliable insight on how to estimate confidence of recommendations. The goal of this paper is to fill this gap, by investigating the conditions under which item-based recommendations will succeed or fail for a specific user. We formalize the item-based CF problem as an eigenvalue problem, where estimated ratings are equivalent to the true (unknown) ratings multiplied by a user-specific eigenvalue of the similarity matrix. We show that the magnitude of the eigenvalue related to a user is proportional to the accuracy of recommendations for that user. We define a confidence parameter called the eigenvalue confidence index, analogous to the eigenvalue of the similarity matrix, but simpler to be computed. We also show how to extend the eigenvalue confidence index to matrix-factorization algorithms. A comprehensive set of experiments on five datasets show that the eigenvalue confidence index is effective in predicting, for each user, the quality of recommendations. On average, our confidence index is 3 times more correlated with MAP with respect to previous confidence estimates.
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