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Rocchio Algorithm to Enhance Semantically Collaborative Filtering

机译:增强语义协同过滤的Rocchio算法

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Recommender system provides relevant items to users from huge catalogue. Collaborative filtering and content-based filtering are the most widely used techniques in personalized recommender systems. Collaborative filtering uses only the user-ratings data to make predictions, while content-based filtering relies on semantic information of items for recommendation. Hybrid recommendation system combines the two techniques. In this paper, we present another hybridization approach: User Semantic Collaborative Filtering. The aim of our approach is to predict users preferences for items based on their inferred preferences for semantic information of items. In this aim, we design a new user semantic model to describe the user preferences by using Rocchio algorithm. Due to the high dimension of item content, we apply a latent semantic analysis to reduce the dimension of data. User semantic model is then used in a user-based collaborative filtering to compute prediction ratings and to provide recommendations. Applying our approach to real data set, the MoviesLens 1M data set, significant improvement can be noticed compared to usage only approach, content based only approach.
机译:推荐系统从庞大的目录中为用户提供相关项目。协作过滤和基于内容的过滤是个性化推荐器系统中使用最广泛的技术。协作过滤仅使用用户评分数据进行预测,而基于内容的过滤则依赖于项目的语义信息进行推荐。混合推荐系统结合了两种技术。在本文中,我们提出了另一种混合方法:用户语义协作过滤。我们方法的目的是根据用户对商品语义信息的推断偏好来预测用户对商品的偏好。为此,我们设计了一个新的用户语义模型来描述使用Rocchio算法的用户偏好。由于项目内容的维度高,我们应用了潜在的语义分析来减少数据的维度。然后,在基于用户的协作过滤中使用用户语义模型来计算预测等级并提供建议。将我们的方法应用于真实数据集MoviesLens 1M数据集,与仅使用方法,仅基于内容的方法相比,可以看到显着的改进。

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