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Fine-grained Secure Attribute-based Encryption
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https://www.youtube.com/watch?v=m-Fg-QmIikM Paper by Yuyu Wang, Jiaxin Pan, Yu Chen presented at Crypto 2021 See https://iacr.org/cryptodb/data/paper.php?pubkey=31236
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