基于关联规则挖掘的社交网络社区属性混合推荐模型

Xinghua Lu, Hao-Hong Huang, Hong Wu, Wen-Lin Liu
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引用次数: 3

摘要

为了提高社交网络服务的面向对象特性,定制个性化的社交网络服务系统,需要设计混合型社交网络社区属性推荐模型。提出了一种基于关联规则挖掘的社交网络社区属性混合推荐模型。基于社交网络中社区的分布式属性特征,进行关联规则数据挖掘,构建基于用户行为、社区属性和场景信息的社交网络信息传递模型。挖掘社交网络社区属性的关联规则特征量,采用模糊指向性约束控制方法对社交网络社区属性进行特征聚类处理,采用模糊C均值算法对聚类输出的特征量进行融合。改进了发现团体属性的能力。根据社交网络社区属性挖掘的结果,进行社交群体混合推荐,获得用户的需求偏好,改进基于关联规则挖掘的社交网络社区属性混合推荐算法。仿真结果表明,该方法具有更好的准确率、更高的个性化匹配程度和更高的社区属性置信度,提高了社区的发现能力。
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A Hybrid Recommendation Model for Community Attributes of Social Networks Based on Association Rule Mining
In order to improve the object-oriented nature of social network services and customize the personalized social network service system, it needs to design a hybrid social network community attribute recommendation model. A hybrid recommendation model for social network community attributes is proposed based on association rule mining. Based on the distributed attribute features of the community in the social network, the association rules data mining is carried out, and the information transfer model of the social network is constructed based on user behavior, community attribute and scene information. The association rules characteristic quantity of social network community attribute is mined, fuzzy directivity constraint control method is adopted to carry on the social network community attribute characteristic clustering processing, the fuzzy C mean algorithm is used to fuse the characteristic quantity of the cluster output. The ability to discover community attributes is improved. According to the result of community attribute mining of social network, the mixed recommendation of social group is carried out, and the demand preference of users is obtained, and the hybrid recommendation algorithm of community attribute of social network based on association rule mining is improved. The simulation results show that the proposed method has better accuracy, higher degree of personalized matching, and higher confidence level of community attributes, which improves the community's discovery ability.
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