Advances and Open Problems in Federated Learning
Peter KairouzH. Brendan McMahanGoogle (United States), Mountain View, United StatesBrendan AventAurélien BelletMehdi BennisArjun Nitin BhagojiKallista BonawitzZachary CharlesGraham CormodeRachel CummingsRafael G. L. D’OliveiraHubert EichnerSalim El RouayhebDavid EvansJoshua GardnerZachary GarrettAdrià GascónBadih GhaziPhillip B. GibbonsMarco GruteserZaïd HarchaouiChaoyang HeLingxiao HeZhouyuan HuoBen HutchinsonJustin HsuMartin JaggiTara JavidiGauri JoshiMikhail KhodakJakub KonečnýAleksandra KorolovaFarinaz KoushanfarSanmi KoyejoTancrède LepointYang LiuPrateek MittalMehryar MohriRichard NockAyfer ÖzgürRasmus PaghHang QiDaniel RamageRamesh RaskarMariana RaykovaDawn SongWeikang SongSebastian U. StichZiteng SunAnanda Theertha SureshFlorian TramèrPraneeth VepakommaJianyu WangLi XiongZheng XuQiang YangFelix X. YuHan YuSen Zhao
2020en
ABI
Аннотация
Federated learning (FL) is a machine learning setting where many clients (e.g., mobile devices or whole organizations) collaboratively train a model under the orchestration of a central server (e.g., service provider), while keeping the training data decentralized. FL embodies the principles of focused data collection and minimization, and can mitigate many of the systemic privacy risks and costs resulting from traditional, centralized machine learning and data science approaches. Motivated by the explosive growth in FL research, this monograph discusses recent advances and presents an extensive collection of open problems and challenges.
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