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Sketching Techniques for Collaborative Filtering

机译:用于协同滤波的素描技术

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Recommender systems attempt to highlight items that a target user is likely to find interesting. A common technique is to use collaborative filtering (CF), where multiple users share information so as to provide each with effective recommendations. A key aspect of CF systems is finding users whose tastes accurately reflect the tastes of some target user. Typically, the system looks for other agents who have had experience with many of the items the target user has examined, and whose classification of these items has a strong correlation with the classifications of the target user. Since the universe of items may be enormous and huge data sets are involved, sophisticated methods must be used to quickly locate appropriate other agents. We present a method for quickly determining the proportional intersection between the items that each of two users has examined, by sending and maintaining extremely concise "sketches" of the list of items. These sketches enable the approximation of the proportional intersection within a distance of ∈, with a high probability of 1 - δ. Our sketching techniques are based on random min-wise independent hash functions, and use very little space and time, so they are well-suited for use in large-scale collaborative filtering systems.
机译:推荐系统尝试突出显示目标用户可能找到有趣的项目。常用技术是使用协同过滤(CF),其中多个用户共享信息,以便提供有效的建议。 CF系统的一个关键方面正在寻找味道准确反映某些目标用户的口味的用户。通常,系统查找具有目标用户已检查许多项目的其他代理商的其他代理,并且这些项目的分类与目标用户的分类具有很强的相关性。由于项目的宇宙可能是巨大的并且涉及巨大的数据集,因此必须使用复杂的方法来快速定位适当的其他代理。我们介绍了一种快速确定两个用户在检查的项目之间的比例交点,通过发送和维护项目列表的非常简洁的“草图”。这些草图使得在ν内的比例交叉点的近似,具有1 - δ的高概率。我们的素描技术基于随机最小的独立散列函数,并且使用非常小的空间和时间,因此它们非常适合在大型协同过滤系统中使用。

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