社交网络中多媒体内容视图用户行为模式的可视化与分析

Amjad Jumaah Frhan
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引用次数: 1

摘要

由于可访问性选项的大幅增加,在线社交网络已成为数百万用户获取信息和娱乐的主要来源。移动互联网彻底改变了用户访问社交网站的便利性,也允许用户随时随地以任何身份访问各种社交多媒体内容。这使得对用户交互和行为的分析变得更加复杂。为了更好地分析社交用户行为,特别是多媒体访问行为,本文重点开发了一个可视化模型——社交模式聚类WebClickviz (SPC-WebClickviz)。该模型将基于用户活动的社交网络数据可视化,然后将其聚类到指定的组中。在对多媒体内容视图进行聚类的基础上,引入关联聚类方法对多媒体访问的用户活动进行分组。采用Spearman等级相关系数作为聚类的相关因子。组织利用聚类结果来生产与客户意图密切相关的产品。它还帮助多媒体开发人员提供序列化用户意图的内容,以便他们可以通过常见的社会网络站点为自己的网站产生更多的流量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visualization and analysis of user behaviour patterns for multimedia content view in social networks
Online social networks have become the major source of information and entertainment for millions of users due to the tremendous increase of the accessibility options. Mobile internet has revolutionized the users to access social networking sites with ease and also allows to various social multimedia content anytime, anywhere and on behalf of any identity. This makes the analysis of user interactions and behaviours more complicated. This paper focuses on developing a visualization model named as Social Pattern Clustering WebClickviz (SPC-WebClickviz) for better analysis of the social user behaviour especially the multimedia access. This proposed model visualizes the social networking data based on user activities and then clusters them into specified groups. As the clustering is done for the multimedia content view, the Correlation clustering method has been introduced to group the user activities of multimedia access. Spearman's rank correlation coefficient is utilized as the correlation factor for the clustering. The clustering results are utilized by the organizations to produce the closely related products for the customer's intentions. It also aids in the multimedia developers to provide with content that serializes the users' intentions so that they can generate more traffic to their own websites through the common social networking sites.
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