Abstract

Microblogging networks have gained popularity in recent years as a platform enabling expressions of human emotions, through which users can conveniently produce contents on public events, breaking news, and/or products. Subsequently, microblogging networks generate massive amounts of data that carry opinions and mass sentiment on various topics. Herein, microblogging is regarded as a useful platform for detecting and propagating new hot events. It is also a useful channel for identifying high-quality posts, popular topics, key interests, and high-influence users. The existence of noisy data in the traditional social media data streams enforces to focus on human-centric computing. This paper proposes a human-centric social computing (HCSC) model for hot-event detection and propagation in microblogging networks. In the proposed HCSC model, all posts and users are preprocessed through hypertext induced topic search (HITS) for determining high-quality subsets of the users, topics, and posts. Then, a latent Dirichlet allocation (LDA)-based multiprototype user topic detection method is used for identifying users with high influence in the network. Furthermore, an influence maximization is used for final determination of influential users based on the user subsets. Finally, the users mined by influence maximization process are generated as the influential user sets for specific topics. Experimental results prove the superiority of our HCSC model against similar models of hot-event detection and information propagation.

Highlights

  • C YBER technology with its wide range of computing and communication devices has a significant impact on our daily life

  • We evaluate the efficiency of our proposed Human-centric Social Computing (HCSC) model against four existing topic models including PLSA [28], Latent Dirichlet Allocation (LDA) [8], BEE [23], and EVE [10] to compare the efficiency of HCSC model

  • This paper proposed an efficient human-centric soft computing model (HCSC) model for hot event detection and propagation

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Summary

Introduction

C YBER technology with its wide range of computing and communication devices has a significant impact on our daily life. Microblogging is one of the popular cyber-enabled online services which aid sharing and disseminating information any time and anywhere [8], [9], [10], [11]. Being an information sharing platform [9], [12], [13], [14], microblogging attracts many users on social media to establish friendships [15], exchange ideas, and to promote products. As a consequence, such activities in microblogging generate an enormous amount of data [16] with rich semantic content and structure. Hot event detection can be utilised in a wide range of applications such as product promotion [3], friend recommendation [19], and rumor control [20] etc

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