Monetizing potential of user information

Information is being shared at an unprecedented rate today and has become the most valuable resource for any organization to help them make better profits. But the lack of a pricing structure or framework affects the users because they don't realize the true value of their information and thus...

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Main Author: Rao Divya Shivkumar
Other Authors: Ng Wee Keong
Format: Theses and Dissertations
Language:English
Published: 2017
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Online Access:http://hdl.handle.net/10356/70537
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-705372023-03-04T00:52:54Z Monetizing potential of user information Rao Divya Shivkumar Ng Wee Keong School of Computer Science and Engineering DRNTU::Engineering::Computer science and engineering Information is being shared at an unprecedented rate today and has become the most valuable resource for any organization to help them make better profits. But the lack of a pricing structure or framework affects the users because they don't realize the true value of their information and thus lose out on the monetizing potential of their data. The research problem before us is, if information is to be treated as a tradeable commodity in the market, how can one put a price tag or value to it? One of the easiest way to communicate value is to put it in terms of price. There is need for models to make users aware of the revenue-generation capacity of their information. But these models also need to be fair and transparent so that the buyers would also be willing to participate in the information market. In this thesis, we have proposed techniques that borrow from different disciplines to develop pricing models aimed at pricing user information. The idea behind calculating the value of the actual information is based on Shannon's information theory that is utilized to calculate the value of the information attribute. This has been adapted into models from a privacy conscious user's scenario where we supplement it by testing the utility of the user's information using statistical comparison techniques as well as using techniques from finance. For the scenario of a buyer we have complemented this with the Markov process and on the investment optimization approach. We then tested these approaches on datasets and simulation techniques and surveys which have culminated in realizing the value of a user's information. This shows us the potential for revenue generation for a user and also demonstrates reduced prices from the buyer's point of view. Our exploratory models exhibit the capacity to monetize on an internet user's digital footprint. Big data is already a major source of income for organizations. It is high time that it becomes a source of income for the users who ultimately are the generators of this big data. Doctor of Philosophy (SCE) 2017-04-27T04:42:09Z 2017-04-27T04:42:09Z 2017 Thesis Rao Divya Shivkumar. (2017). Monetizing potential of user information. Doctoral thesis, Nanyang Technological University, Singapore. http://hdl.handle.net/10356/70537 10.32657/10356/70537 en 138 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Computer science and engineering
spellingShingle DRNTU::Engineering::Computer science and engineering
Rao Divya Shivkumar
Monetizing potential of user information
description Information is being shared at an unprecedented rate today and has become the most valuable resource for any organization to help them make better profits. But the lack of a pricing structure or framework affects the users because they don't realize the true value of their information and thus lose out on the monetizing potential of their data. The research problem before us is, if information is to be treated as a tradeable commodity in the market, how can one put a price tag or value to it? One of the easiest way to communicate value is to put it in terms of price. There is need for models to make users aware of the revenue-generation capacity of their information. But these models also need to be fair and transparent so that the buyers would also be willing to participate in the information market. In this thesis, we have proposed techniques that borrow from different disciplines to develop pricing models aimed at pricing user information. The idea behind calculating the value of the actual information is based on Shannon's information theory that is utilized to calculate the value of the information attribute. This has been adapted into models from a privacy conscious user's scenario where we supplement it by testing the utility of the user's information using statistical comparison techniques as well as using techniques from finance. For the scenario of a buyer we have complemented this with the Markov process and on the investment optimization approach. We then tested these approaches on datasets and simulation techniques and surveys which have culminated in realizing the value of a user's information. This shows us the potential for revenue generation for a user and also demonstrates reduced prices from the buyer's point of view. Our exploratory models exhibit the capacity to monetize on an internet user's digital footprint. Big data is already a major source of income for organizations. It is high time that it becomes a source of income for the users who ultimately are the generators of this big data.
author2 Ng Wee Keong
author_facet Ng Wee Keong
Rao Divya Shivkumar
format Theses and Dissertations
author Rao Divya Shivkumar
author_sort Rao Divya Shivkumar
title Monetizing potential of user information
title_short Monetizing potential of user information
title_full Monetizing potential of user information
title_fullStr Monetizing potential of user information
title_full_unstemmed Monetizing potential of user information
title_sort monetizing potential of user information
publishDate 2017
url http://hdl.handle.net/10356/70537
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