TPRPF: a preserving framework of privacy relations based on adversarial training for texts in big data
Yuhan CHAI, Zhe SUN, Jing QIU, Lihua YIN, Zhihong TIAN
TPRPF: a preserving framework of privacy relations based on adversarial training for texts in big data
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