Privacy Concerns of Big Data in Social Network Industry

In the big data era, whether in the work, study or daily life, people are increasingly inseparable from the Internet. Among the various network sites, social networks are the most representative instance of Big Data due to its huge amounts of users and data generated. For example, the world’s larges...

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Main Author: Wang, Xinyi
Format: Dissertation (University of Nottingham only)
Language:English
English
Published: 2017
Online Access:https://eprints.nottingham.ac.uk/46108/
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author Wang, Xinyi
author_facet Wang, Xinyi
author_sort Wang, Xinyi
building Nottingham Research Data Repository
collection Online Access
description In the big data era, whether in the work, study or daily life, people are increasingly inseparable from the Internet. Among the various network sites, social networks are the most representative instance of Big Data due to its huge amounts of users and data generated. For example, the world’s largest social network platform Facebook has over 2000 million active users in 2017, and its users share 2.5 billion items per day. Big Data is valuable, and its substantial value can help companies better understand their customers, optimise their processes or make more business opportunities. Thus, companies prefer to collect and analyse their users’ data to utilise the value of the data. However, the Big Data value mining process is usually being seen as the threat of personal privacy, especially in social network platforms with a large amount of personal data. In order to understand people’s attitude about data collection by social network platforms and how people manage their privacy, this dissertation will use the Communication Privacy Management theory as the theoretical framework, and 15 respondents will be selected in this study to conduct 10 to 15 minutes face-to-face semi-structured interviews. As a result, this dissertation finds that most people have privacy awareness, and they are considerably tolerant of their data being collected by social networks. However, the users’ tolerance is because they trust the platforms they use. Once the trust is lost and their privacy is violated, people will strongly resist their sensitive data be abused, and they may do some radical behaviours to maintain their privacy rights. Thus, it is strongly recommended that social network platforms to seriously consider these user behaviours and do not abuse users’ data, in order to have harmonious interactions.
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spelling nottingham-461082018-04-24T15:28:40Z https://eprints.nottingham.ac.uk/46108/ Privacy Concerns of Big Data in Social Network Industry Wang, Xinyi In the big data era, whether in the work, study or daily life, people are increasingly inseparable from the Internet. Among the various network sites, social networks are the most representative instance of Big Data due to its huge amounts of users and data generated. For example, the world’s largest social network platform Facebook has over 2000 million active users in 2017, and its users share 2.5 billion items per day. Big Data is valuable, and its substantial value can help companies better understand their customers, optimise their processes or make more business opportunities. Thus, companies prefer to collect and analyse their users’ data to utilise the value of the data. However, the Big Data value mining process is usually being seen as the threat of personal privacy, especially in social network platforms with a large amount of personal data. In order to understand people’s attitude about data collection by social network platforms and how people manage their privacy, this dissertation will use the Communication Privacy Management theory as the theoretical framework, and 15 respondents will be selected in this study to conduct 10 to 15 minutes face-to-face semi-structured interviews. As a result, this dissertation finds that most people have privacy awareness, and they are considerably tolerant of their data being collected by social networks. However, the users’ tolerance is because they trust the platforms they use. Once the trust is lost and their privacy is violated, people will strongly resist their sensitive data be abused, and they may do some radical behaviours to maintain their privacy rights. Thus, it is strongly recommended that social network platforms to seriously consider these user behaviours and do not abuse users’ data, in order to have harmonious interactions. 2017-09-13 Dissertation (University of Nottingham only) NonPeerReviewed application/pdf en https://eprints.nottingham.ac.uk/46108/1/Xinyi%20Wang%20-%20Dissertation%20Final.docx application/pdf en https://eprints.nottingham.ac.uk/46108/2/Xinyi%20Wang%20-%20Dissertation%20Final.pdf Wang, Xinyi (2017) Privacy Concerns of Big Data in Social Network Industry. [Dissertation (University of Nottingham only)]
spellingShingle Wang, Xinyi
Privacy Concerns of Big Data in Social Network Industry
title Privacy Concerns of Big Data in Social Network Industry
title_full Privacy Concerns of Big Data in Social Network Industry
title_fullStr Privacy Concerns of Big Data in Social Network Industry
title_full_unstemmed Privacy Concerns of Big Data in Social Network Industry
title_short Privacy Concerns of Big Data in Social Network Industry
title_sort privacy concerns of big data in social network industry
url https://eprints.nottingham.ac.uk/46108/