基于大数据的社交网络用户个性化推荐模型分析

Xiaoqing Li, Xiao-Qin Yan
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引用次数: 1

摘要

针对传统社交网络用户兴趣个性化推荐模型受噪声和人为因素影响导致推荐效果不佳的问题,设计了基于大数据的社交网络用户兴趣个性化推荐模型。分析了社交网络用户兴趣构建个性化推荐模型的理论基础,分析了推荐模型与周围环境的交互作用,划分了服务器网络部署模块、网络结构、运行模型设计,通过图模型将推荐任务分配到分布式计算机集群,从而构建用户兴趣个性化推荐模型;利用大数据双关联规则和数据挖掘技术,获取用户感兴趣的网络数据,通过推荐结果判断用户对推荐的感兴趣程度,提高推荐效果,通过实验对比可以看出,采用该方法进行个性化推荐的准确率最高可达98%,实用性较强(摘要)。
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Analyzing of Personalized Recommendation Model of Social Network Users Based on Big Data
Aiming at the problem that the traditional social network user interest personalized recommendation model is affected by noise and human factors, which leads to poor recommendation effect, a social network user interest personalized recommendation model based on big data is designed. Analysis the social network users interested in constructing the theoretical basis of personalized recommendation model, analysis of the recommended model the interaction between the model and the surrounding, partitioning server network deployment module, network structure, operation model design through graphs model to recommend task allocation to the distributed computer c1uster, in order to build the user interest personalized recommendation model, using big data double association rules and data mining technology, obtain users interested in network data, through the recommendation results determine the degree of users interested in recommendations, improve recommendation effect, Through experimental comparison, it can be seen that the accuracy of personalized recommendation using this method can reach a maximum of 98%, and the practicability is strong (Abstract).
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