Understanding Social Media Users via Attributes and Links

abstract: With the rise of social media, hundreds of millions of people spend countless hours all over the globe on social media to connect, interact, share, and create user-generated data. This rich environment provides tremendous opportunities for many different players to easily and effectively r...

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Other Authors: Abbasi, Mohammad Ali (Author)
Format: Doctoral Thesis
Language:English
Published: 2014
Subjects:
Online Access:http://hdl.handle.net/2286/R.I.27500
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spelling ndltd-asu.edu-item-275002018-06-22T03:05:46Z Understanding Social Media Users via Attributes and Links abstract: With the rise of social media, hundreds of millions of people spend countless hours all over the globe on social media to connect, interact, share, and create user-generated data. This rich environment provides tremendous opportunities for many different players to easily and effectively reach out to people, interact with them, influence them, or get their opinions. There are two pieces of information that attract most attention on social media sites, including user preferences and interactions. Businesses and organizations use this information to better understand and therefore provide customized services to social media users. This data can be used for different purposes such as, targeted advertisement, product recommendation, or even opinion mining. Social media sites use this information to better serve their users. Despite the importance of personal information, in many cases people do not reveal this information to the public. Predicting the hidden or missing information is a common response to this challenge. In this thesis, we address the problem of predicting user attributes and future or missing links using an egocentric approach. The current research proposes novel concepts and approaches to better understand social media users in twofold including, a) their attributes, preferences, and interests, and b) their future or missing connections and interactions. More specifically, the contributions of this dissertation are (1) proposing a framework to study social media users through their attributes and link information, (2) proposing a scalable algorithm to predict user preferences; and (3) proposing a novel approach to predict attributes and links with limited information. The proposed algorithms use an egocentric approach to improve the state of the art algorithms in two directions. First by improving the prediction accuracy, and second, by increasing the scalability of the algorithms. Dissertation/Thesis Abbasi, Mohammad Ali (Author) Liu, Huan (Advisor) Davulcu, Hasan (Committee member) Ye, Jieping (Committee member) Agarwal, Nitin (Committee member) Arizona State University (Publisher) Computer science Attribute Prediction Link Prediction Machine Learning Relational Learning Scalable Learning Social Network Analysis eng 121 pages Doctoral Dissertation Computer Science 2014 Doctoral Dissertation http://hdl.handle.net/2286/R.I.27500 http://rightsstatements.org/vocab/InC/1.0/ All Rights Reserved 2014
collection NDLTD
language English
format Doctoral Thesis
sources NDLTD
topic Computer science
Attribute Prediction
Link Prediction
Machine Learning
Relational Learning
Scalable Learning
Social Network Analysis
spellingShingle Computer science
Attribute Prediction
Link Prediction
Machine Learning
Relational Learning
Scalable Learning
Social Network Analysis
Understanding Social Media Users via Attributes and Links
description abstract: With the rise of social media, hundreds of millions of people spend countless hours all over the globe on social media to connect, interact, share, and create user-generated data. This rich environment provides tremendous opportunities for many different players to easily and effectively reach out to people, interact with them, influence them, or get their opinions. There are two pieces of information that attract most attention on social media sites, including user preferences and interactions. Businesses and organizations use this information to better understand and therefore provide customized services to social media users. This data can be used for different purposes such as, targeted advertisement, product recommendation, or even opinion mining. Social media sites use this information to better serve their users. Despite the importance of personal information, in many cases people do not reveal this information to the public. Predicting the hidden or missing information is a common response to this challenge. In this thesis, we address the problem of predicting user attributes and future or missing links using an egocentric approach. The current research proposes novel concepts and approaches to better understand social media users in twofold including, a) their attributes, preferences, and interests, and b) their future or missing connections and interactions. More specifically, the contributions of this dissertation are (1) proposing a framework to study social media users through their attributes and link information, (2) proposing a scalable algorithm to predict user preferences; and (3) proposing a novel approach to predict attributes and links with limited information. The proposed algorithms use an egocentric approach to improve the state of the art algorithms in two directions. First by improving the prediction accuracy, and second, by increasing the scalability of the algorithms. === Dissertation/Thesis === Doctoral Dissertation Computer Science 2014
author2 Abbasi, Mohammad Ali (Author)
author_facet Abbasi, Mohammad Ali (Author)
title Understanding Social Media Users via Attributes and Links
title_short Understanding Social Media Users via Attributes and Links
title_full Understanding Social Media Users via Attributes and Links
title_fullStr Understanding Social Media Users via Attributes and Links
title_full_unstemmed Understanding Social Media Users via Attributes and Links
title_sort understanding social media users via attributes and links
publishDate 2014
url http://hdl.handle.net/2286/R.I.27500
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