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Ranking item features by mining online user-item interactions

机译:通过挖掘在线用户项交互来排名项目功能

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We assume a database of items in which each item is described by a set of attributes, some of which could be multi-valued. We refer to each of the distinct attribute values as a feature. We also assume that we have information about the interactions (such as visits or likes) between a set of users and those items. In our paper, we would like to rank the features of an item using user-item interactions. For instance, if the items are movies, features could be actors, directors or genres, and user-item interaction could be user liking the movie. These information could be used to identify the most important actors for each movie. While users are drawn to an item due to a subset of its features, a user-item interaction only provides an expression of user preference over the entire item, and not its component features. We design algorithms to rank the features of an item depending on whether interaction information is available at aggregated or individual level granularity and extend them to rank composite features (set of features). Our algorithms are based on constrained least squares, network flow and non-trivial adaptations to non-negative matrix factorization. We evaluate our algorithms using both real-world and synthetic datasets.
机译:我们假设一个项目数据库,其中每个项目由一组属性描述,其中一些属性可以是多值的。我们将每个不同的属性值称为特征。我们还假设我们有关于一组用户和这些项目之间的交互(例如访问或喜欢)的信息。在我们的论文中,我们希望使用用户项交互对项目的功能进行排序。例如,如果物品是电影,则功能可能是演员,导向或类型,并且用户项目交互可能是用户喜欢电影。这些信息可用于识别每部电影中最重要的演员。虽然由于其特征的子集,用户被绘制到项目,但用户项交互仅提供了对整个项目的用户首选项的表达式,而不是其组件功能。我们设计算法,以根据聚合或单个级别粒度可用的交互信息对项目的特征进行排序,并将其扩展为排列复合功能(集功能集)。我们的算法基于约束最小二乘,网络流和非琐碎的适应对非负矩阵分解。我们使用真实世界和合成数据集评估我们的算法。

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