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Na?ve Random Neighbor Selection for memory based Collaborative Filtering

机译:基于内存的协作滤波的NA?VE随机邻居选择

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Collaborative Filtering (CF) is one challenging problem in information retrieval, with memory based become popular among other applicable methods. Memory based CF measure distance/similarity between users by calculating their rating to several items. In the next step system will predict user rating with specific algorithm e.g. Weight Sum. One similarity measurement that often used is Pearson correlation. Since CF used many (almost all) users and items, Pearson correlation suffer on time and space complexity. To overcome this problem, CF that used Pearson correlation often selects some user to be used as neighbor. The mechanism itself, never mention clearly. In this paper, we introduce Nai?ve Random Neighbor Selection mechanism. Our research show that best performance achieve at parameter combination of Pearson Correlation Threshold = 0.1 and Number of Neighbor = 21 that shows MAE = 0.791 that placed on the third position among other algorithm.
机译:协作过滤(CF)是信息检索中的一个具有挑战性的问题,内存基于其他适用方法中的流行。基于存储器的CF通过计算到几个项目的额定值来测量用户之间的距离/相似性。在下一步系统中,系统将预测具有特定算法的用户评级。重量和。通常使用的一个相似性测量是Pearson相关性。由于CF许多(几乎所有)用户和物品,因此Pearson相关性遭受时间和空间复杂性。为了克服这个问题,使用Pearson相关性的CF通常选择一些用户用作邻居。机制本身,永远不会提到清楚。在本文中,我们介绍了Nai?VE随机邻居选择机制。我们的研究表明,在Pearson相关阈值= 0.1的参数组合中实现了最佳性能= 0.1和邻居= 21,显示MAE = 0.791,其放置在其他算法中的第三位。

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