Abstract—Our goal in this paper is to develop a practical framework for obtaining a uniform sample of users in an online social network (OSN) by crawling its social graph. Such a sample allows to estimate any user property and some topological properties as well. To this end, first, we consider and compare several candidate crawling techniques. Two approaches that can produce approximately uniform samples are the Metropolis-Hasting random walk (MHRW) and a re-weighted random walk (RWRW). Both have pros and cons, which we demonstrate through a comparison to each other as well as to the “ground truth. ” In contrast, using Breadth-First-Search (BFS) or an unad-justed Random Walk (RW) leads to substantially biased results. Second, and in additi...
In recent years, online social networks (OSN) have emerged as a platform of sharing variety of infor...
Data sampling from online social networks is a pre-requisite step for several downstream application...
The huge size of online social networks (OSNs) makes it prohibitively expensive to precisely measure...
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...
The lack of a sampling frame (i.e., a complete list of users) for most Online Social Networks (OSNs)...
In order to crawl online social network such as Facebook, many sampling techniques have been introdu...
Abstract — Unbiased sampling of online social networks (OSNs) makes it possible to get accurate stat...
Social graphs can be easily extracted from Online Social Networks (OSNs). However, as the size and e...
Abstract — Many online social networks feature restrictive web interfaces which only allow the query...
We describe our work in the collection and analysis of massive data describing the connections betwe...
We describe our work in the collection and analysis of massive data describing the connections betwe...
Sampling the content of an Online Social Network (OSN) is a major application area due to the growin...
We describe our work in the collection and analysis of mas-sive data describing the connections betw...
International audienceOnline social networks (OSNs) are an important source of information for scien...
In recent years, online social networks (OSN) have emerged as a platform of sharing variety of infor...
Data sampling from online social networks is a pre-requisite step for several downstream application...
The huge size of online social networks (OSNs) makes it prohibitively expensive to precisely measure...
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...
The lack of a sampling frame (i.e., a complete list of users) for most Online Social Networks (OSNs)...
In order to crawl online social network such as Facebook, many sampling techniques have been introdu...
Abstract — Unbiased sampling of online social networks (OSNs) makes it possible to get accurate stat...
Social graphs can be easily extracted from Online Social Networks (OSNs). However, as the size and e...
Abstract — Many online social networks feature restrictive web interfaces which only allow the query...
We describe our work in the collection and analysis of massive data describing the connections betwe...
We describe our work in the collection and analysis of massive data describing the connections betwe...
Sampling the content of an Online Social Network (OSN) is a major application area due to the growin...
We describe our work in the collection and analysis of mas-sive data describing the connections betw...
International audienceOnline social networks (OSNs) are an important source of information for scien...
In recent years, online social networks (OSN) have emerged as a platform of sharing variety of infor...
Data sampling from online social networks is a pre-requisite step for several downstream application...
The huge size of online social networks (OSNs) makes it prohibitively expensive to precisely measure...