Information Diffusion and Influence Propagation on Social Networks with Marketing Applications

Web and mobile technologies have had such profound impact that we have witnessed significant evolutionary changes in our social, economic and cultural activities. In recent years, online social networking sites such as Twitter, Facebook, Google+, and LinkedIn have gained immense popularity. Such soc...

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Bibliographic Details
Main Author: Cheng, Jiesi
Other Authors: Zeng, Daniel
Language:en_US
Published: The University of Arizona. 2013
Subjects:
Online Access:http://hdl.handle.net/10150/306134
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spelling ndltd-arizona.edu-oai-arizona.openrepository.com-10150-3061342015-10-23T05:28:42Z Information Diffusion and Influence Propagation on Social Networks with Marketing Applications Cheng, Jiesi Zeng, Daniel Zeng, Daniel Goes, Paulo Lin, Mingfeng Influence Propagation Information Diffusion Online Social Networks Recommendation Systems Management Information Systems Customer Lifetime Value Web and mobile technologies have had such profound impact that we have witnessed significant evolutionary changes in our social, economic and cultural activities. In recent years, online social networking sites such as Twitter, Facebook, Google+, and LinkedIn have gained immense popularity. Such social networks have led to an enormous explosion of network-centric data in a wide variety scenarios, posing unprecedented analytical and computational challenges to MIS researchers. At the same time, the availability of such data offers major research opportunities in various social computing and analytics areas to tackle interesting questions such as: - From a business and marketing perspective, how to mine the novel datasets of online user activities, interpersonal communications and interactions, for developing more successful marketing strategies? - From a system development perspective, how to incorporate massive amounts of available data to assist online users to find relevant, efficient, and timely information? In this dissertation, I explored these research opportunities by studying multiple analytics problems arose from the design and use of social networking services. The first two chapters (Chapter 2 and 3) are intended to study how social network can help to derive a better estimation of customer lifetime value (CLV), in the social gaming context. In Chapter 2, I first conducted an empirical study to demonstrate that friends' activities can serve as significant indicators of a player's CLV. Based on this observation, I proposed a perceptron-based online CLV prediction model considering both individual and friendship information. Preliminary results have shown that the model can be effectively used in online CLV prediction, by evaluating against other commonly-used benchmark methods. In Chapter 3, I further extended the metric of traditional CLV, by incorporating the personal influences on other customers' purchase as an integral part of the lifetime value. The proposed metric was illustrated and tested on seven social games of different genres. The results showed that the new metric can help marketing managers to achieve more successful marketing decisions in user acquisition, user retention, and cross promotion. Chapter 4 is devoted to the design of a recommendation system for micro-blogging. I studied the information diffusion pattern in a micro-blogging site (Twitter.com) and proposed diffusion-based metrics to assess the quality of micro-blogs, and leverage the new metric to implement a novel recommendation framework to help micro-blogging users to efficiently identify quality news feeds. Chapter 5 concludes this dissertation by highlighting major research contributions and future directions. 2013 text Electronic Dissertation http://hdl.handle.net/10150/306134 en_US Copyright © is held by the author. Digital access to this material is made possible by the University Libraries, University of Arizona. Further transmission, reproduction or presentation (such as public display or performance) of protected items is prohibited except with permission of the author. The University of Arizona.
collection NDLTD
language en_US
sources NDLTD
topic Influence Propagation
Information Diffusion
Online Social Networks
Recommendation Systems
Management Information Systems
Customer Lifetime Value
spellingShingle Influence Propagation
Information Diffusion
Online Social Networks
Recommendation Systems
Management Information Systems
Customer Lifetime Value
Cheng, Jiesi
Information Diffusion and Influence Propagation on Social Networks with Marketing Applications
description Web and mobile technologies have had such profound impact that we have witnessed significant evolutionary changes in our social, economic and cultural activities. In recent years, online social networking sites such as Twitter, Facebook, Google+, and LinkedIn have gained immense popularity. Such social networks have led to an enormous explosion of network-centric data in a wide variety scenarios, posing unprecedented analytical and computational challenges to MIS researchers. At the same time, the availability of such data offers major research opportunities in various social computing and analytics areas to tackle interesting questions such as: - From a business and marketing perspective, how to mine the novel datasets of online user activities, interpersonal communications and interactions, for developing more successful marketing strategies? - From a system development perspective, how to incorporate massive amounts of available data to assist online users to find relevant, efficient, and timely information? In this dissertation, I explored these research opportunities by studying multiple analytics problems arose from the design and use of social networking services. The first two chapters (Chapter 2 and 3) are intended to study how social network can help to derive a better estimation of customer lifetime value (CLV), in the social gaming context. In Chapter 2, I first conducted an empirical study to demonstrate that friends' activities can serve as significant indicators of a player's CLV. Based on this observation, I proposed a perceptron-based online CLV prediction model considering both individual and friendship information. Preliminary results have shown that the model can be effectively used in online CLV prediction, by evaluating against other commonly-used benchmark methods. In Chapter 3, I further extended the metric of traditional CLV, by incorporating the personal influences on other customers' purchase as an integral part of the lifetime value. The proposed metric was illustrated and tested on seven social games of different genres. The results showed that the new metric can help marketing managers to achieve more successful marketing decisions in user acquisition, user retention, and cross promotion. Chapter 4 is devoted to the design of a recommendation system for micro-blogging. I studied the information diffusion pattern in a micro-blogging site (Twitter.com) and proposed diffusion-based metrics to assess the quality of micro-blogs, and leverage the new metric to implement a novel recommendation framework to help micro-blogging users to efficiently identify quality news feeds. Chapter 5 concludes this dissertation by highlighting major research contributions and future directions.
author2 Zeng, Daniel
author_facet Zeng, Daniel
Cheng, Jiesi
author Cheng, Jiesi
author_sort Cheng, Jiesi
title Information Diffusion and Influence Propagation on Social Networks with Marketing Applications
title_short Information Diffusion and Influence Propagation on Social Networks with Marketing Applications
title_full Information Diffusion and Influence Propagation on Social Networks with Marketing Applications
title_fullStr Information Diffusion and Influence Propagation on Social Networks with Marketing Applications
title_full_unstemmed Information Diffusion and Influence Propagation on Social Networks with Marketing Applications
title_sort information diffusion and influence propagation on social networks with marketing applications
publisher The University of Arizona.
publishDate 2013
url http://hdl.handle.net/10150/306134
work_keys_str_mv AT chengjiesi informationdiffusionandinfluencepropagationonsocialnetworkswithmarketingapplications
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