A Data-Based Approach to Discovering Multi-Topic Influential Leaders.

Recently, increasing numbers of users have adopted microblogging services as their main information source. However, most of them find themselves drowning in the millions of posts produced by other users every day. To cope with this, identifying a set of the most influential people is paramount. Mor...

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Main Authors: Xing Tang, Qiguang Miao, Shangshang Yu, Yining Quan
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2016-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4945019?pdf=render
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spelling doaj-61d14e615dc44cc8aa3b5d731171d9e62020-11-25T01:46:08ZengPublic Library of Science (PLoS)PLoS ONE1932-62032016-01-01117e015885510.1371/journal.pone.0158855A Data-Based Approach to Discovering Multi-Topic Influential Leaders.Xing TangQiguang MiaoShangshang YuYining QuanRecently, increasing numbers of users have adopted microblogging services as their main information source. However, most of them find themselves drowning in the millions of posts produced by other users every day. To cope with this, identifying a set of the most influential people is paramount. Moreover, finding a set of related influential users to expand the coverage of one particular topic is required in real world scenarios. Most of the existing algorithms in this area focus on topology-related methods such as PageRank. These methods mine link structures to find the expected influential rank of users. However, because they ignore the interaction data, these methods turn out to be less effective in social networks. In reality, a variety of topics exist within the information diffusing through the network. Because they have different interests, users play different roles in the diffusion of information related to different topics. As a result, distinguishing influential leaders according to different topics is also worthy of research. In this paper, we propose a multi-topic influence diffusion model (MTID) based on traces acquired from historic information. We decompose the influential scores of users into two parts: the direct influence determined by information propagation along the link structure and indirect influence that extends beyond the restrictions of direct follower relationships. To model the network from a multi-topical viewpoint, we introduce topic pools, each of which represents a particular topic information source. Then, we extract the topic distributions from the traces of tweets, determining the influence propagation probability and content generation probability. In the network, we adopt multiple ground nodes representing topic pools to connect every user through bidirectional links. Based on this multi-topical view of the network, we further introduce the topic-dependent rank (TD-Rank) algorithm to identify the multi-topic influential users. Our algorithm not only effectively overcomes the shortages of PageRank but also effectively produces a measure of topic-related rank. Extensive experiments on a Weibo dataset show that our model is both effective and robust.http://europepmc.org/articles/PMC4945019?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Xing Tang
Qiguang Miao
Shangshang Yu
Yining Quan
spellingShingle Xing Tang
Qiguang Miao
Shangshang Yu
Yining Quan
A Data-Based Approach to Discovering Multi-Topic Influential Leaders.
PLoS ONE
author_facet Xing Tang
Qiguang Miao
Shangshang Yu
Yining Quan
author_sort Xing Tang
title A Data-Based Approach to Discovering Multi-Topic Influential Leaders.
title_short A Data-Based Approach to Discovering Multi-Topic Influential Leaders.
title_full A Data-Based Approach to Discovering Multi-Topic Influential Leaders.
title_fullStr A Data-Based Approach to Discovering Multi-Topic Influential Leaders.
title_full_unstemmed A Data-Based Approach to Discovering Multi-Topic Influential Leaders.
title_sort data-based approach to discovering multi-topic influential leaders.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2016-01-01
description Recently, increasing numbers of users have adopted microblogging services as their main information source. However, most of them find themselves drowning in the millions of posts produced by other users every day. To cope with this, identifying a set of the most influential people is paramount. Moreover, finding a set of related influential users to expand the coverage of one particular topic is required in real world scenarios. Most of the existing algorithms in this area focus on topology-related methods such as PageRank. These methods mine link structures to find the expected influential rank of users. However, because they ignore the interaction data, these methods turn out to be less effective in social networks. In reality, a variety of topics exist within the information diffusing through the network. Because they have different interests, users play different roles in the diffusion of information related to different topics. As a result, distinguishing influential leaders according to different topics is also worthy of research. In this paper, we propose a multi-topic influence diffusion model (MTID) based on traces acquired from historic information. We decompose the influential scores of users into two parts: the direct influence determined by information propagation along the link structure and indirect influence that extends beyond the restrictions of direct follower relationships. To model the network from a multi-topical viewpoint, we introduce topic pools, each of which represents a particular topic information source. Then, we extract the topic distributions from the traces of tweets, determining the influence propagation probability and content generation probability. In the network, we adopt multiple ground nodes representing topic pools to connect every user through bidirectional links. Based on this multi-topical view of the network, we further introduce the topic-dependent rank (TD-Rank) algorithm to identify the multi-topic influential users. Our algorithm not only effectively overcomes the shortages of PageRank but also effectively produces a measure of topic-related rank. Extensive experiments on a Weibo dataset show that our model is both effective and robust.
url http://europepmc.org/articles/PMC4945019?pdf=render
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