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A recommendation algorithm using positive and negative latent models

机译:使用正负模型的推荐算法

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This paper proposes an algorithm for recommender systems that uses both positive and negative latent user models. In recommending items to a user, recommender systems usually exploit item content information as well as the preferences of similar users. Various types of content information can be attached to items and these are useful for judging user preferences. For example, in movie recommendations, a movie record may include the director, the actors, and reviews. These types of information help systems calculate sophisticated user preferences. We first propose a probabilistic model that maps multi-attributed records into a low-dimensional feature space. The proposed model extends latent Dirichlet allocation to the handling of multi-attributed data. We derive an algorithm for estimating the model's parameters using the Gibbs sampling technique. Next, we propose a probabilistic model to calculate user preferences for items in the feature space. Finally, we develop a recommendation algorithm based on the probabilistic model that works efficiently for large quantities of items and user ratings. We use a publicly available movie corpus to evaluate the proposed algorithm empirically, in terms of both its recommendation accuracy and its processing efficiency.
机译:本文提出了一种使用正面和负面潜在用户模型的推荐系统算法。在向用户推荐项目时,推荐系统通常利用项目内容信息以及相似用户的偏好。各种类型的内容信息可以附加到项目,这些对于判断用户的偏好很有用。例如,在电影推荐中,电影记录可以包括导演,演员和评论。这些类型的信息帮助系统可计算复杂的用户首选项。我们首先提出一种概率模型,该模型将多属性记录映射到低维特征空间。所提出的模型将潜在的Dirichlet分配扩展到了对多属性数据的处理。我们导出一种使用Gibbs采样技术估算模型参数的算法。接下来,我们提出一个概率模型来计算用户对特征空间中项目的偏好。最后,我们基于概率模型开发了一种推荐算法,该算法可有效处理大量商品和用户评分。我们使用公开的电影语料库,从推荐精度和处理效率两方面经验性地评估所提出的算法。

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