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Collaborative Filtering inspired from Language Modeling

机译:协作过滤灵感来自语言建模

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Recommender systems filter resources for a given user by predicting the most pertinent item given a specific context. This paper describes a new approach of generating suitable recommendations based on the active user's navigation stream. The underlying hypothesis is that the items order in the stream results from the intrinsic logic of the user's behavior. We show similarities between natural language and Internet navigation and put forward navigation specificities. We then design a new model that integrates advantages of statistical language models such as n-grams and triggers to compute recommendations. The resulting Sequence Based Recommender has been tested on Internet navigation artificial corpora.
机译:通过预测给定特定上下文的最相关的项目,推荐系统过滤给定用户的资源。本文介绍了一种基于活动用户的导航流生成合适的建议的新方法。底层假设是流中的项目顺序是由用户行为的内在逻辑产生的。我们展示了自然语言与互联网导航之间的相似之处,提出了导航特异性。然后,我们设计了一种全新的模型,它集成了统计语言模型,例如n-grams和触发器来计算推荐。基于序列的序列推荐已经在互联网导航人工组织上进行了测试。

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