基本信息
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职业迁徙
个人简介
I mostly remember stuff based on time, place, and event. I program my phone (in python) to tag all content I generate based on these attributes. I also try to get these attributes into human terms. So, time is "working", "relaxing" and so on. Location may be "home", "work", "library", "Boston", "shopping" and so on. These are my labels but my system actually learns them from my calendar and blog entries. (my daily activities are automatically included into my blog or diary). I can find things using a query such as: "who called me when I was listening to the Beatles on my way home from work last week?"
Now that I have a model of my daily travels, I can lie about my location. It is mostly correct, but no guarantees. Since I control the distribution of my personal information, I can choose what to reveal and what to hide. This is a very powerful way of controlling one's personal information.
Now that I have a model of my daily travels, I can lie about my location. It is mostly correct, but no guarantees. Since I control the distribution of my personal information, I can choose what to reveal and what to hide. This is a very powerful way of controlling one's personal information.
研究兴趣
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Evelyne Bischof,Jantine A C Broek,Charles R Cantor,Ashley J Duits,Alfredo Ferro,Hillary W Gao,Zilong Li, Stella Luna de Maria,Naomi I Maria,Bud Mishra, Kimberly I Mishra, Lex van der Ploeg,
PROCEEDINGS OF THE 2019 USENIX ANNUAL TECHNICAL CONFERENCE (2019): 587-602
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