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Nearest Neighbour with Priority Based Recommendation Approach to Group Recommender System

机译:最近的邻居是基于优先级的建议方法来组推荐系统

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Group Recommender System is one of the categories of recommender system, where the recommendation of things is for a group of users rather than for any individual. These system combines the preferences of each user present in the group and then predicts things which are suitable for the users of the group. Various grouping strategies are available, which are used to generate to group recommendations, but most of them are suitable when used for specific purpose only. In this paper we have proposed a novel approach to group recommender system using collaborative filtering technique, which can be applicable to all the real world scenarios where the data set uses rating system to distinguish among users' preferences. We have made use of nearest neighbor algorithm to create a group of users with similar likeness. We have also applied the priority among users of the group as there are some members whose preferences might affect the whole group. We have validated our results with the movie lens data set which is the standard data set for recommender system testing.
机译:组推荐系统是推荐系统的类别之一,其中建议是一组用户而不是任何个人。这些系统结合了本组中存在的每个用户的偏好,然后预测适合于该组的用户的内容。有各种分组策略可用,用于生成组建议,但大多数是仅用于特定目的时合适的。在本文中,我们已经提出了一种使用协作过滤技术组合推荐系统的新方法,这可以适用于数据集使用评级系统以区分用户偏好的所有现实情景。我们已经利用了最近的邻居算法创建了一组具有相似相似性的用户。我们还在本集团的用户之间应用了优先级,因为有些成员可能会影响整个组。我们通过电影镜数据集验证了我们的结果,它是用于推荐系统测试的标准数据集。

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