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Research on a dynamic social network recommendation approach

机译:动态社交网络推荐方法研究

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Owing to the rapid proliferation of Internet service technologies, the development of social network analysis is ever-increasingly important in recent years. As large datasets in social networks becomes available, recommendation plays a more and more important role in our daily lives. Recommendation approaches automatically prune large information to recommend the most relevant data to users by considering their preferences. Recent studies demonstrate that the efficiency of social networks could be exploited by improving the performance of recommendations. In this article, a novel recommendation approach is proposed to effectively extract dense subsets from sparse data set of micro blog social network, and cluster the whole user group into categories based on content similarity to produce better recommendation results. Through groups of reasonable experiment implementations with real data crawled from micro blog social network, the performances of this new proposed approach and other classical existing recommendation approaches are evaluated and compared by various measurable parameters. The experimental results demonstrate that the proposed approach could greatly improve the recommendation accuracy rate, recall rate and comprehensive measurable indexes when compared with other studied recommender algorithms. On the other hand, the computation overhead of the proposed approach is smaller than that of the other ones.
机译:由于互联网服务技术的迅速发展,近年来社交网络分析的发展变得越来越重要。随着社交网络中大型数据集的出现,推荐在我们的日常生活中扮演着越来越重要的角色。推荐方法会自动修剪大量信息,以通过考虑用户的偏好向用户推荐最相关的数据。最近的研究表明,可以通过改善建议的绩效来利用社交网络的效率。在本文中,提出了一种新颖的推荐方法,该方法可以从微博客社交网络的稀疏数据集中有效地提取密集子集,并基于内容相似性将整个用户群分为类别,以产生更好的推荐结果。通过使用从微博客社交网络抓取到的真实数据进行的合理实验实施,通过各种可测量参数评估并比较了该新提议方法和其他经典现有推荐方法的性能。实验结果表明,与其他推荐算法相比,该方法可以大大提高推荐准确率,召回率和综合可测指标。另一方面,所提出的方法的计算开销小于其他方法。

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