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Improving memory-based collaborative filtering via similarity updating and prediction modulation

机译:通过相似性更新和预测调制改善基于内存的协作过滤

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Memory-based collaborative filtering (CF) makes recommendations based on a collection of user preferences for items. The idea underlying this approach is that the interests of an active user will more likely coincide with those of users who share similar preferences to the active user. Hence, the choice and computation of a similarity measure between users is critical to rating items. This work proposes a similarity update method that uses an iterative message passing procedure. Additionally, this work deals with a drawback of using the popular mean absolute error (MAE) for performance evaluation, namely that ignores ratings distribution. A novel modulation method and an accuracy metric are presented in order to minimize the predictive accuracy error and to evenly distribute predicted ratings over true rating scales. Preliminary results show that the proposed similarity update and prediction modulation techniques significantly improve the predicted rankings.
机译:基于内存的协作过滤(CF)根据用户对项目的偏好集合提出建议。这种方法的基本思想是,活跃用户的兴趣将很可能与那些与活跃用户具有相似偏好的用户的兴趣一致。因此,用户之间相似性度量的选择和计算对于评定项目至关重要。这项工作提出了一种使用迭代消息传递过程的相似性更新方法。此外,这项工作还解决了使用流行的平均绝对误差(MAE)进行性能评估的缺点,即忽略了评级分布。提出了一种新颖的调制方法和精度度量,以最小化预测精度误差并在真实评级范围内平均分配预测评级。初步结果表明,所提出的相似度更新和预测调制技术可显着改善预测排名。

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