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| 차분 프라이버시× | 연합 학습× | |
|---|---|---|
| 분야 | 프라이버시 | 프라이버시 |
| 계열 | Machine learning | Machine learning |
| 기원 연도≠ | 2006 | 2017 |
| 창시자≠ | Cynthia Dwork | McMahan et al. |
| 유형≠ | Privacy-preserving randomized mechanism | Distributed privacy-preserving machine learning |
| 원전≠ | Dwork, C. (2006). Differential privacy. International Colloquium on Automata, Languages and Programming (ICALP), 1–12. DOI ↗ | McMahan, B., Moore, E., Ramage, D., Hampson, S., & Arcas, B. A. (2017). Communication-efficient learning of deep networks from decentralized data. Artificial Intelligence and Statistics, 1273–1282. link ↗ |
| 별칭 | DP, epsilon-differential privacy, randomized privacy, Diferansiyel Gizlilik | Collaborative Learning, Decentralized Learning, FedAvg, Federe Öğrenme |
| 관련 | 3 | 3 |
| 요약≠ | Differential privacy is a mathematical framework for releasing statistical information about a dataset while providing rigorous guarantees that individual records cannot be identified or inferred. Introduced by Cynthia Dwork in 2006, it formalizes privacy as a probabilistic bound: any single individual's presence or absence in the dataset changes the output distribution by at most a multiplicative factor of e^ε, where ε is the privacy budget controlling the privacy–utility tradeoff. | Federated Learning is a distributed machine learning paradigm introduced by McMahan et al. in 2017 in which a global model is trained collaboratively across multiple decentralized clients — such as mobile devices or hospital systems — without ever transferring raw data to a central server. Each participant computes model updates locally using its private data; only those updates, not the underlying data, are communicated and aggregated by the server to improve the shared model. |
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