Characterizing Online Social Media: Topic Inference and Information Propagation
Word-of-mouth (WOM) communication is a well studied phenomenon in the literature and content propagation in Online Social Networks (OSNs) is one of the forms of WOM mechanism that have been prevalent in recent years specially with the widespread surge of online communities and online social networks...
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ndltd-uoregon.edu-oai-scholarsbank.uoregon.edu-1794-239042018-12-20T05:48:45Z Characterizing Online Social Media: Topic Inference and Information Propagation Rezayidemne, Seyedsaed Rejaie, Reza Content propagation Data mining Natural language processing Online social networks Social network analysis Word-of-mouth (WOM) communication is a well studied phenomenon in the literature and content propagation in Online Social Networks (OSNs) is one of the forms of WOM mechanism that have been prevalent in recent years specially with the widespread surge of online communities and online social networks. The basic piece of information in most OSNs is a post (e.g., a tweet in Twitter or a post in Facebook). A post can contain different types of content such as text, photo, video, etc, or a mixture of two or more them. There are also various ways to enrich the text by mentioning other users, using hashtags, and adding URLs to external contents. The goal of this study is to investigate what factors contribute into the propagation of messages in Google+. To answer to this question a multidimensional study will be conducted. On one hand this question could be viewed as a natural language processing problem where topic or sentiment of posts cause message dissemination. On the other hand the propagation can be effect of graph properties i.e., popularity of message originators (node degree) or activities of communities. Other aspects of this problem are time, external contents, and external events. All of these factors are studied carefully to find the most highly correlated attribute(s) in the propagation of posts. 2018-10-31T22:33:31Z 2018-10-31T22:33:31Z 2018-10-31 Electronic Thesis or Dissertation http://hdl.handle.net/1794/23904 en_US All Rights Reserved. University of Oregon |
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Content propagation Data mining Natural language processing Online social networks Social network analysis |
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Content propagation Data mining Natural language processing Online social networks Social network analysis Rezayidemne, Seyedsaed Characterizing Online Social Media: Topic Inference and Information Propagation |
description |
Word-of-mouth (WOM) communication is a well studied phenomenon in the literature and content propagation in Online Social Networks (OSNs) is one of the forms of WOM mechanism that have been prevalent in recent years specially with the widespread surge of online communities and online social networks. The basic piece of information in most OSNs is a post (e.g., a tweet in Twitter or a post in Facebook). A post can contain different types of content such as text, photo, video, etc, or a mixture of two or more them. There are also various ways to enrich the text by mentioning other users, using hashtags, and adding URLs to external contents. The goal of this study is to investigate what factors contribute into the propagation of messages in Google+. To answer to this question a multidimensional study will be conducted. On one hand this question could be viewed as a natural language processing problem where topic or sentiment of posts cause message dissemination. On the other hand the propagation can be effect of graph properties i.e., popularity of message originators (node degree) or activities of communities. Other aspects of this problem are time, external contents, and external events. All of these factors are studied carefully to find the most highly correlated attribute(s) in the propagation of posts. |
author2 |
Rejaie, Reza |
author_facet |
Rejaie, Reza Rezayidemne, Seyedsaed |
author |
Rezayidemne, Seyedsaed |
author_sort |
Rezayidemne, Seyedsaed |
title |
Characterizing Online Social Media: Topic Inference and Information Propagation |
title_short |
Characterizing Online Social Media: Topic Inference and Information Propagation |
title_full |
Characterizing Online Social Media: Topic Inference and Information Propagation |
title_fullStr |
Characterizing Online Social Media: Topic Inference and Information Propagation |
title_full_unstemmed |
Characterizing Online Social Media: Topic Inference and Information Propagation |
title_sort |
characterizing online social media: topic inference and information propagation |
publisher |
University of Oregon |
publishDate |
2018 |
url |
http://hdl.handle.net/1794/23904 |
work_keys_str_mv |
AT rezayidemneseyedsaed characterizingonlinesocialmediatopicinferenceandinformationpropagation |
_version_ |
1718804485184159744 |