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Towards an Intuitionistic Fuzzy Agglomerative Hierarchical Clustering Algorithm for Music Recommendation in Folksonomy

机译:Folksonomy音乐推荐中的直觉模糊聚集层次聚类算法

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Folksonomy, a system for social tagging or collaborative tagging, is popular in Semantic Web research. Folksonomy is applied to items, such as music pieces, which their personalized tags can be annotated by users. Recommendation systems can use these tags to produce meaningful information. Clustering methods, such as the Agglomerative Hierarchical Clustering (AHC) method, can be applied in the context of recommendation system. This paper proposes the Intuitionistic Fuzzy Agglomerative Hierarchical Clustering (IFAHC) algorithm for recommendation using social tagging. The Intuitionistic Fuzzy Set (IFS) concept is used to represent tag values which are vague and uncertain. IFAHC can cluster items represented by using IFS into different groups. The application of IFAHC to music recommendation is used to demonstrate the usability of the proposed method.
机译:Folksonomy是一种用于社会标记或协作标记的系统,在语义Web研究中很受欢迎。 Folksonomy应用于诸如音乐作品之类的项目,用户可以对其个性化标签进行注释。推荐系统可以使用这些标签来产生有意义的信息。可以在推荐系统的上下文中应用聚类方法,例如聚集层次聚类(AHC)。提出了一种基于社会标签的直觉模糊聚集层次聚类算法(IFAHC)。直觉模糊集(IFS)概念用于表示模糊和不确定的标签值。 IFAHC可以将使用IFS表示的项目分为不同的组。 IFAHC在音乐推荐中的应用被用来证明所提出方法的可用性。

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