The lack of a sampling frame (i.e., a complete list of users) for most Online Social Networks (OSNs) makes sampling methods especially difficult. Thus, reliable and efficient sampling methods are essential for practical estimation of OSN properties. Recent work in this area has thus focused on sampling methods that allow precise inference from a relatively large-scale social networks such as Facebook. We propose a sampling method on OSNs, based on a Metropolis-Hastings Random Walk (MHRW) algorithm. In this regard, we have developed a social explorer in order to collect random samples from Facebook. In addition, we address the question whether different probability distributions may be able to alter the behavior of the MHRW and enhance the e...
In this paper, we introduce a novel, general purpose, technique for faster sampling of nodes over an...
The huge size of online social networks (OSNs) makes it prohibitively expensive to precisely measure...
We develop a methodology with which to calculate typical network statistics by sampling a network th...
Abstract—Our goal in this paper is to develop a practical framework for obtaining a uniform sample o...
Abstract—With more than 250 million active users [1], Face-book (FB) is currently one of the most im...
Abstract — Unbiased sampling of online social networks (OSNs) makes it possible to get accurate stat...
Sampling the content of an Online Social Network (OSN) is a major application area due to the growin...
Social graphs can be easily extracted from Online Social Networks (OSNs). However, as the size and e...
In recent years, online social networks (OSN) have emerged as a platform of sharing variety of infor...
International audienceOnline social networks (OSNs) are an important source of information for scien...
Graph sampling provides an efficient way by selecting a representative subset of the original graph ...
Nowadays, Online Social Networks (OSNs) have become dramatically popular and the study of social gra...
Abstract — Many online social networks feature restrictive web interfaces which only allow the query...
This article aims at summarizing existing methods for sampling social networking services and propos...
Nowadays, Online Social Networks (OSNs) have become dra-matically popular and the study of social gr...
In this paper, we introduce a novel, general purpose, technique for faster sampling of nodes over an...
The huge size of online social networks (OSNs) makes it prohibitively expensive to precisely measure...
We develop a methodology with which to calculate typical network statistics by sampling a network th...
Abstract—Our goal in this paper is to develop a practical framework for obtaining a uniform sample o...
Abstract—With more than 250 million active users [1], Face-book (FB) is currently one of the most im...
Abstract — Unbiased sampling of online social networks (OSNs) makes it possible to get accurate stat...
Sampling the content of an Online Social Network (OSN) is a major application area due to the growin...
Social graphs can be easily extracted from Online Social Networks (OSNs). However, as the size and e...
In recent years, online social networks (OSN) have emerged as a platform of sharing variety of infor...
International audienceOnline social networks (OSNs) are an important source of information for scien...
Graph sampling provides an efficient way by selecting a representative subset of the original graph ...
Nowadays, Online Social Networks (OSNs) have become dramatically popular and the study of social gra...
Abstract — Many online social networks feature restrictive web interfaces which only allow the query...
This article aims at summarizing existing methods for sampling social networking services and propos...
Nowadays, Online Social Networks (OSNs) have become dra-matically popular and the study of social gr...
In this paper, we introduce a novel, general purpose, technique for faster sampling of nodes over an...
The huge size of online social networks (OSNs) makes it prohibitively expensive to precisely measure...
We develop a methodology with which to calculate typical network statistics by sampling a network th...