A Study of Check-in Privacy Protection in Social Networks

碩士 === 國立成功大學 === 資訊工程學系 === 107 === The rapid development of social networks such as Foursquare, Instagram, Twitter, Facebook has led to a significant increase in users of location-based services (LBS). These social networks allow users to check-in at the place they have visited and interact with o...

Full description

Bibliographic Details
Main Authors: Weng-SiangTan, 陳榮祥
Other Authors: Kun-Ta Chuang
Format: Others
Language:en_US
Published: 2019
Online Access:http://ndltd.ncl.edu.tw/handle/cejqhh
id ndltd-TW-107NCKU5392025
record_format oai_dc
spelling ndltd-TW-107NCKU53920252019-10-26T06:24:14Z http://ndltd.ncl.edu.tw/handle/cejqhh A Study of Check-in Privacy Protection in Social Networks 社群網路打卡之隱私保護研究 Weng-SiangTan 陳榮祥 碩士 國立成功大學 資訊工程學系 107 The rapid development of social networks such as Foursquare, Instagram, Twitter, Facebook has led to a significant increase in users of location-based services (LBS). These social networks allow users to check-in at the place they have visited and interact with others. However, recent researches show that the traditional check-in mechanism does not consider user’s social privacy problem, adversary can easily infer user’s social relationship with others based on their check-in history data. So that, we introduce a novel problem in social network privacy protection research, called Check-in Shielding against Acquaintance Inference (CSAI), the goal is to reduce user’s privacy risk by suggesting secure locations for user to perform check-in. To address the CSAI problem, we devise a check-in shielding framework, called Check-in Shielding Scheme (CSS), which consist of two steps: quantify the social strength between users and recommend low privacy risk check-in locations for users. We conducted experiment with two real-world datasets and the result show that CSS can effectively reduce the users’ acquaintances privacy risk and it is the best shielding method compared to other competitors under various experiment scenarios. In addition, CSS also can preserve the check-in distance of recommended place within reasonable range, such that the usability of check-in data can be preserved. Kun-Ta Chuang 莊坤達 2019 學位論文 ; thesis 32 en_US
collection NDLTD
language en_US
format Others
sources NDLTD
description 碩士 === 國立成功大學 === 資訊工程學系 === 107 === The rapid development of social networks such as Foursquare, Instagram, Twitter, Facebook has led to a significant increase in users of location-based services (LBS). These social networks allow users to check-in at the place they have visited and interact with others. However, recent researches show that the traditional check-in mechanism does not consider user’s social privacy problem, adversary can easily infer user’s social relationship with others based on their check-in history data. So that, we introduce a novel problem in social network privacy protection research, called Check-in Shielding against Acquaintance Inference (CSAI), the goal is to reduce user’s privacy risk by suggesting secure locations for user to perform check-in. To address the CSAI problem, we devise a check-in shielding framework, called Check-in Shielding Scheme (CSS), which consist of two steps: quantify the social strength between users and recommend low privacy risk check-in locations for users. We conducted experiment with two real-world datasets and the result show that CSS can effectively reduce the users’ acquaintances privacy risk and it is the best shielding method compared to other competitors under various experiment scenarios. In addition, CSS also can preserve the check-in distance of recommended place within reasonable range, such that the usability of check-in data can be preserved.
author2 Kun-Ta Chuang
author_facet Kun-Ta Chuang
Weng-SiangTan
陳榮祥
author Weng-SiangTan
陳榮祥
spellingShingle Weng-SiangTan
陳榮祥
A Study of Check-in Privacy Protection in Social Networks
author_sort Weng-SiangTan
title A Study of Check-in Privacy Protection in Social Networks
title_short A Study of Check-in Privacy Protection in Social Networks
title_full A Study of Check-in Privacy Protection in Social Networks
title_fullStr A Study of Check-in Privacy Protection in Social Networks
title_full_unstemmed A Study of Check-in Privacy Protection in Social Networks
title_sort study of check-in privacy protection in social networks
publishDate 2019
url http://ndltd.ncl.edu.tw/handle/cejqhh
work_keys_str_mv AT wengsiangtan astudyofcheckinprivacyprotectioninsocialnetworks
AT chénróngxiáng astudyofcheckinprivacyprotectioninsocialnetworks
AT wengsiangtan shèqúnwǎnglùdǎkǎzhīyǐnsībǎohùyánjiū
AT chénróngxiáng shèqúnwǎnglùdǎkǎzhīyǐnsībǎohùyánjiū
AT wengsiangtan studyofcheckinprivacyprotectioninsocialnetworks
AT chénróngxiáng studyofcheckinprivacyprotectioninsocialnetworks
_version_ 1719278522493566976