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Reliability Estimating By Demographic Matrix in Item-based Recommender Systems

机译:基于项目的推荐系统中的人口统计矩阵的可靠性估算

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Nowadays, with the growth of communication between both users and websites, recommender systems have gained significant essential. These systems filter information to find out the user's interests and make personalized recommendations for them. Currently, it is important to provide high-reliability recommendations, because if the recommendations are unreliable, the system may lose the user at the very beginning. In this paper, a Demographic Matrix of users is proposed, then for estimating the reliability of predictions, we combined it with similarity or entropy matrix between items. Finally, we evaluated our approach by comparing it to some other reliability estimation algorithms by MAE (Mean Absolute Error). The slope of a regression line helps to determine how quickly our MAE change by the increase of reliability values, and in this way, we calculated the impact of our method on MAE reduction. The experiments on MovieLens dataset show that the proposed reliability estimation algorithm, due to its massive impact on MAE reduction, is significantly better than other algorithms.
机译:如今,随着用户和网站之间的通信的增长,推荐系统已经获得了重要的必要性。这些系统过滤信息以找出用户的兴趣,并为它们提供个性化的建议。目前,重要的是提供高可靠性建议,因为如果建议不可靠,系统可能会在一开始就丢失用户。在本文中,提出了一种用户的人口统计矩阵,然后用于估计预测的可靠性,我们将其与项目之间的相似性或熵矩阵相结合。最后,我们通过将其与MAE(平均绝对误差)的其他可靠性估计算法进行比较来评估我们的方法。回归线的斜率有助于确定我们的MAE通过增加可靠性值的增加的速度,并且通过这种方式,我们计算了我们对MAE减少的影响。 Movielens数据集的实验表明,该拟议的可靠性估计算法由于其对MAE减少的大量影响,显着优于其他算法。

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