Abstract

Abstract Purpose Online social networks (OSNs) are now among the most popular applications on the web offering platforms for people to interact, communicate and collaborate with others. The rapid development of OSNs provides opportunities for people’s daily communication, but also brings problems such as burst network traffic and overload of servers. Studying the population growth pattern in online social networks helps service providers to understand the people communication manners in OSNs and facilitate the management of network resources. In this paper, we propose a population growth model for OSNs based on the study of population distribution and growth in spatiotemporal scale-space. Methods We investigate the population growth in three data sets which are randomly sampled from the popular OSN web sites including Renren, Twitter and Gowalla. We find out that the number of population follows the power-law distribution over different geographic locations, and the population growth of a location fits a power function of time. An aggregated population growth model is conducted by integrating the population growth over geographic locations and time. Results We use the data sets to validate our population growth model. Extensive experiments also show that the proposed model fits the population growth of Facebook and Sina Weibo well. As an application, we use the model to predict the monthly population in three data sets. By comparing the predicted population with ground-truth values, the results show that our model can achieve a prediction accuracy between 86.14% and 99.89%. Conclusions With our proposed population growth model, people can estimate the population size of an online social network in a certain time period and it can also be used for population prediction for a future time.

Highlights

  • Nowadays online social networks (OSNs) are considered as the most popular applications on the web, which offer platforms for people to interact, communicate and collaborate with others

  • By comparing the predicted population with ground-truth values, the results show that our model can achieve a prediction accuracy between 86.14% and 99.89%

  • With our proposed population growth model, people can estimate the population size of an online social network in a certain time period and it can be used for population prediction for a future time

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Summary

Introduction

Nowadays online social networks (OSNs) are considered as the most popular applications on the web, which offer platforms for people to interact, communicate and collaborate with others. The user population of online social networks is growing expeditiously. It is reported that Facebook (2013) has reached 900 million users in April 2012. Twitter (2013) has surpassed 500 million users in July 2012. The rapid development of OSNs facilitates people’s daily communications. The growth of user population causes problems to service providers, such as overload of servers. One example is the “fail whale” phenomenon in Twitter, where the requested page returns a “fail whale” image when too many burst requests occur

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