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Learning from Sets of Items in Recommender Systems

机译:从推荐系统中的项目组学习

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Most of the existing recommender systems use the ratings provided by users on individual items. An additional source of preference information is to use the ratings that users provide on sets of items. The advantages of using preferences on sets are twofold. First, a rating provided on a set conveys some preference information about each of the set's items, which allows us to acquire a user's preferences for more items than the number of ratings that the user provided. Second, due to privacy concerns, users may not be willing to reveal their preferences on individual items explicitly but may be willing to provide a single rating to a set of items, since it provides some level of information hiding. This article investigates two questions related to using set-level ratings in recommender systems. First, how users' item-level ratings relate to their set-level ratings. Second, how collaborative filtering-based models for item-level rating prediction can take advantage of such set-level ratings. We have collected set-level ratings from active users of Movielens on sets of movies that they have rated in the past. Our analysis of these ratings shows that though the majority of the users provide the average of the ratings on a set's constituent items as the rating on the set, there exists a significant number of users that tend to consistently either under- or over-rate the sets. We have developed collaborative filtering-based methods to explicitly model these user behaviors that can be used to recommend items to users. Experiments on real data and on synthetic data that resembles the under- or over-rating behavior in the real data demonstrate that these models can recover the overall characteristics of the underlying data and predict the user's ratings on individual items.
机译:大多数现有推荐系统使用用户在各个项目上提供的额定值。另一个偏好信息来源是使用用户提供商品集的额定值。在套装上使用偏好的优点是双重。首先,在集合上提供的评级传送了关于每个集合项目的一些偏好信息,这允许我们为更多项目获取用户的偏好而不是用户提供的额定值。其次,由于隐私问题,用户可能不愿意明确揭示他们对个别物品的偏好,但可能愿意为一组项目提供单一的评级,因为它提供了一些级别的信息隐藏。本文调查了两个与推荐系统中使用Set-Level评级相关的问题。首先,用户的项目级别评级如何涉及其集合级别等级。其次,用于物品级评级预测的基于协作滤波的模型可以利用这种设定级别的额定值。我们在过去的电影中收集了来自Movielens的活跃用户的集合级别评级。我们对这些评级的分析表明,虽然大多数用户在集合的组成项目上提供了额定值的平均值作为集合的评级,但存在大量用户倾向于持续或过度率的用户套。我们开发了基于合作的过滤的方法,以显式模拟这些用户行为,可用于向用户推荐项目。实际数据和类似于实际数据中的综合性数据的实验证明这些模型可以恢复底层数据的整体特征,并预测用户对单个项目的评级。

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