Publication: Topic-based influential user detection: a survey
Type:
Article
Date
2022-07-05
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Springer, Cham
Abstract
Online Social networks have become an easy means of communication for users to share their opinion on various topics,
including breaking news, public events, and products. The content posted by a user can influence or affect other users,
and the users who could influence or affect a high number of users are called influential users. Identifying such influential
users has a wide range of applications in the field of marketing, including product advertisement, recommendation, and
brand evaluation. However, the users’ influence varies in different topics, and hence a tremendous interest has been shown
towards identifying topic-based influential users over the past few years. Topic-level information in the content posted by
the users can be used in various stages of the topic-based influential user detection (IUD) problem, including data gathering,
construction of influence network, quantifying the influence between two users, and analyzing the impact of the detected
influential user. This has opened up a wide range of opportunities to utilize the existing techniques to model and analyze
the topic-level influence in online social networks. In this paper, we perform a comprehensive study of existing techniques
used to infer the topic-based influential users in online social networks. We present a detailed review of these approaches
in a taxonomy while highlighting the challenges and limitations associated with each technique. Moreover, we perform a
detailed study of different evaluation techniques used in the literature to overcome the challenges that arise in evaluating
topic-based IUD approaches. Furthermore, closely related research topics and open research questions in topic-based IUD are discussed to provide a deep understanding of the literature and future directions.
Description
Keywords
Topic-based influential user detection, Topic modeling, Influence mining, · Online social network
Citation
Panchendrarajan, R., Saxena, A. Topic-based influential user detection: a survey. Appl Intell (2022). https://doi.org/10.1007/s10489-022-03831-7
