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Clustering Methods for Collaborative Filterin

机译:用于协同过滤的聚类方法

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Grouping people into clusters based on the items they have purchased allows accurate recommendations of new items for purchase: if you and I have liked many of the same movies, then I will probably enjoy other movies that you like. Recommending items based on similarity of interest (a.k.a. collaborative filtering) is attractive for many domains: books, CDs, movies, etc., but does not always work well. Because data are always sparse - any given person has seen only a small fraction of all movies - much more accurate predictions can be made by grouping people into clusters with similar movies and grouping movies into clusters which tend to be liked by the same people. Finding optimal clusters is tricky because the movie groups should be used to help determine the people groups and visa versa. We present a formal statistical model of collaborative filtering, and compare different algorithms for estimating the model parameters including variations of K-means clustering and Gibbs Sampling. This formal model is easily extended to handle clustering of objects with multiple attributes.
机译:将人们分组到基于所购买的物品的集群允许准确的购买项目建议:如果您和我喜欢许多同一部电影,那么我可能会喜欢您喜欢的其他电影。推荐基于兴趣相似性的项目(A.K.A.协作过滤)对许多域具有吸引力:书籍,CD,电影等,但并不总是很好地工作。因为数据总是稀疏 - 任何给定的人都只看到了所有电影的一小部分 - 可以通过将人们分组与类似电影的集群进行分组,将电影分组到群体中的集群中,更准确的预测。找到最佳群集是棘手的,因为电影团体应该用于帮助确定人群团体和Visa Versa。我们介绍了协作滤波的正式统计模型,并比较了用于估计模型参数的不同算法,包括K-means聚类和Gibbs采样的变体。这种正式模型很容易扩展以处理具有多个属性的对象的聚类。

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