Jun-bum Shin
Samsung
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Publication
Featured researches published by Jun-bum Shin.
ACM Transactions on Privacy and Security (TOPS) archive | 2018
Jinsu Kim; Dongyoung Koo; Yuna Kim; Hyunsoo Yoon; Jun-bum Shin; Sung-Wook Kim
There are recommendation systems everywhere in our daily life. The collection of personal data of users by a recommender in the system may cause serious privacy issues. In this article, we propose the first privacy-preserving matrix factorization for recommendation using fully homomorphic encryption. Our protocol performs matrix factorization over encrypted users’ rating data and returns encrypted outputs so that the recommendation system learns nothing on rating values and resulting user/item profiles. Furthermore, the protocol provides a privacy-preserving method to optimize the tuning parameters that can be a business benefit for the recommendation service providers. To overcome the performance degradation caused by the use of fully homomorphic encryption, we introduce a novel data structure to perform computations over encrypted vectors, which are essential for matrix factorization, through secure two-party computation in part. Our experiments demonstrate the efficiency of our protocol.
Archive | 2009
Choong-Hoon Lee; Jun-bum Shin; So-Young Lee; Eun-Hwa Hong
Archive | 2007
Chang-Sup Ahn; Jun-bum Shin; Bong-seon Kim
Archive | 2007
Jun-bum Shin; Ji-soon Park
Archive | 2012
Jun-bum Shin; Byung-Ho Cha
Archive | 2007
Ji-Young Moon; Il-jun Lee; Jun-bum Shin; Sun-nam Lee; Sang-Hong Lee
Archive | 2008
Hyung-jick Lee; Jae-Min Lee; Jun-bum Shin
usenix annual technical conference | 2016
Yeongpil Cho; Jun-bum Shin; Donghyun Kwon; MyungJoo Ham; Yuna Kim; Yunheung Paek
arXiv: Databases | 2016
Thông T. Nguyên; Xiaokui Xiao; Yin Yang; Siu Cheung Hui; Hye-Jin Shin; Jun-bum Shin
Archive | 2008
Jun-bum Shin; Choong-Hoon Lee; Su-hyun Nam; Yang-lim Choi; Ji-soon Park