This paper explores the uses’ influences on microblog. At first, according to the social network theory, we present an analysis of information transmitting network structure based on the relationship of following and...This paper explores the uses’ influences on microblog. At first, according to the social network theory, we present an analysis of information transmitting network structure based on the relationship of following and followed phenomenon of microblog users. Informed by the microblog user behavior analysis, the paper also addresses a model for calculating weights of users’ influence. It proposes a U-R model, using which we can evaluate users’ influence based on PageRank algorithms and analyzes user behaviors. In the U-R model, the effect of user behaviors is explored and PageRank is applied to evaluate the importance and the influence of every user in a microblog network by repeatedly iterating their own U-R value. The users’ influences in a microblog network can be ranked by the U-R value. Finally, the validity of U-R model is proved with a real-life numerical example.展开更多
An individual's personal network is a basic object of study in sociology. This article analyzes and compares sina-weibo users' personal network size based on over 2 billion tweets gath- ered from over 1.3 million us...An individual's personal network is a basic object of study in sociology. This article analyzes and compares sina-weibo users' personal network size based on over 2 billion tweets gath- ered from over 1.3 million users in 2012. We propose a new measure method for the analysis of user interactions based on how an individual divides his attention across contacts and how user's characteristics affect the interactions. We find that the balance of attention of user with different age and gender is quite different in weibo. It displays interesting variation in both different groups of people and different modes of interaction.展开更多
随着Web技术的发展,微博逐渐成为当下最流行的社交平台之一。微博中用户影响力计算是相关研究中的焦点问题。通过对PageRank模型的改进,提出一种新的用户影响力挖掘算法PR4WB(PageRank for Micro Blogs),解决了传统的PageRank算法由于...随着Web技术的发展,微博逐渐成为当下最流行的社交平台之一。微博中用户影响力计算是相关研究中的焦点问题。通过对PageRank模型的改进,提出一种新的用户影响力挖掘算法PR4WB(PageRank for Micro Blogs),解决了传统的PageRank算法由于页面权威值的等分传递带来的潜在误差过大的问题。PR4WB算法在考虑微博中用户关系的同时,利用社会网络概念将自身的活跃度、博文质量及可信性加以关联,形成动态的评价模型。基于Twitter数据的实验表明,PR4WB算法能更加准确、客观地反映出用户的实际影响力。展开更多
文摘This paper explores the uses’ influences on microblog. At first, according to the social network theory, we present an analysis of information transmitting network structure based on the relationship of following and followed phenomenon of microblog users. Informed by the microblog user behavior analysis, the paper also addresses a model for calculating weights of users’ influence. It proposes a U-R model, using which we can evaluate users’ influence based on PageRank algorithms and analyzes user behaviors. In the U-R model, the effect of user behaviors is explored and PageRank is applied to evaluate the importance and the influence of every user in a microblog network by repeatedly iterating their own U-R value. The users’ influences in a microblog network can be ranked by the U-R value. Finally, the validity of U-R model is proved with a real-life numerical example.
基金Supported by the National Natural Science Foundation of China(61272109)the Natural Science Foundation of Hubei Province of China(2014CFB289)
文摘An individual's personal network is a basic object of study in sociology. This article analyzes and compares sina-weibo users' personal network size based on over 2 billion tweets gath- ered from over 1.3 million users in 2012. We propose a new measure method for the analysis of user interactions based on how an individual divides his attention across contacts and how user's characteristics affect the interactions. We find that the balance of attention of user with different age and gender is quite different in weibo. It displays interesting variation in both different groups of people and different modes of interaction.
文摘随着Web技术的发展,微博逐渐成为当下最流行的社交平台之一。微博中用户影响力计算是相关研究中的焦点问题。通过对PageRank模型的改进,提出一种新的用户影响力挖掘算法PR4WB(PageRank for Micro Blogs),解决了传统的PageRank算法由于页面权威值的等分传递带来的潜在误差过大的问题。PR4WB算法在考虑微博中用户关系的同时,利用社会网络概念将自身的活跃度、博文质量及可信性加以关联,形成动态的评价模型。基于Twitter数据的实验表明,PR4WB算法能更加准确、客观地反映出用户的实际影响力。