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PRIVACY-PRESERVING NORMALIZED RATINGS-BASED WEIGHTED SLOPE ONE PREDICTOR

机译:基于隐私保护的归一化评级的加权边坡一预测器

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摘要

Weighted Slope One predictor is proposed as a model-based collaborative filtering algorithm based on user ratings. The predictor is able to efficiently provide accurate predictions. The scheme utilizes user's true ratings. In this paper, we propose to utilize normalized user ratings like z-scores for the weighted Slope One predictor. Also, in order to protect privacy, we propose a privacy-preserving weighted Slope One predictor based on z-scores using randomization. Moreover, we utilize masked deviations to show how it affects accuracy of the proposed scheme. We perform various real data-based experiments to evaluate the overall performance of the proposed method. Empirical outcomes show that the algorithm is able to provide accurate predictions.
机译:提出了一种加权斜率预测器,作为基于用户评分的基于模型的协同过滤算法。预测器能够有效地提供准确的预测。该方案利用了用户的真实评级。在本文中,我们建议将标准化的用户评分(例如z得分)用于加权的“坡度一”预测因子。此外,为了保护隐私,我们提出了使用随机化的基于z分数的隐私保护加权Slope One预测变量。此外,我们利用掩盖偏差来显示它如何影响所提出方案的准确性。我们执行各种基于实际数据的实验,以评估所提出方法的整体性能。实验结果表明,该算法能够提供准确的预测。

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