Finding a subset of users to statistically represent the original social network is a fundamental issue in Social Network Analysis (SNA). The problem has not been extensively studied in existing literature. In this paper, we present a formal definition of the problem of \textbf{sampling representative users} from social network. We propose two sampling models and theoretically prove their NP-hardness. To efficiently solve the two models, we present an efficient algorithm with provable approximation guarantees. Experimental results on two datasets show that the proposed models for sampling representative users significantly outperform (+6\%-23\% in terms of Precision@100) several alternative methods using authority or structure information ...
In recent years, online social networks (OSN) have emerged as a platform of sharing variety of infor...
Respondent-Driven Sampling is a method to sample hard-to-reach human populations by link-tracing ove...
Researchers are increasingly turning to network theory to describe and understand the social nature ...
Finding a subset of users to statistically represent the original social network is a fundamental is...
This article aims at summarizing existing methods for sampling social networking services and propos...
International audienceOnline social networks (OSNs) are an important source of information for scien...
The lack of a sampling frame (i.e., a complete list of users) for most Online Social Networks (OSNs)...
Sampling hidden populations is particularly challenging by using standard sampling methods mainly be...
Sampling hidden populations is particularly challenging by using standard sampling methods mainly be...
International audienceGiven a large population, it is an intensive task to gather individual prefere...
Given a large population, it is an intensive task to gather individual preferences over a set of alt...
In this paper we develop a method to estimate both individual social network size (i.e., degree) and...
Abstract—Our goal in this paper is to develop a practical framework for obtaining a uniform sample o...
Abstract—Our goal in this paper is to develop a practical framework for obtaining a uniform sample o...
Data sampling from online social networks is a pre-requisite step for several downstream application...
In recent years, online social networks (OSN) have emerged as a platform of sharing variety of infor...
Respondent-Driven Sampling is a method to sample hard-to-reach human populations by link-tracing ove...
Researchers are increasingly turning to network theory to describe and understand the social nature ...
Finding a subset of users to statistically represent the original social network is a fundamental is...
This article aims at summarizing existing methods for sampling social networking services and propos...
International audienceOnline social networks (OSNs) are an important source of information for scien...
The lack of a sampling frame (i.e., a complete list of users) for most Online Social Networks (OSNs)...
Sampling hidden populations is particularly challenging by using standard sampling methods mainly be...
Sampling hidden populations is particularly challenging by using standard sampling methods mainly be...
International audienceGiven a large population, it is an intensive task to gather individual prefere...
Given a large population, it is an intensive task to gather individual preferences over a set of alt...
In this paper we develop a method to estimate both individual social network size (i.e., degree) and...
Abstract—Our goal in this paper is to develop a practical framework for obtaining a uniform sample o...
Abstract—Our goal in this paper is to develop a practical framework for obtaining a uniform sample o...
Data sampling from online social networks is a pre-requisite step for several downstream application...
In recent years, online social networks (OSN) have emerged as a platform of sharing variety of infor...
Respondent-Driven Sampling is a method to sample hard-to-reach human populations by link-tracing ove...
Researchers are increasingly turning to network theory to describe and understand the social nature ...