资源论文C O L A: Decentralized Linear Learning

C O L A: Decentralized Linear Learning

2020-02-17 | |  49 |   43 |   0

Abstract 

Decentralized machine learning is a promising emerging paradigm in view of global challenges of data ownership and privacy. We consider learning of linear classification and regression models, in the setting where the training data is decentralized over many user devices, and the learning algorithm must run ondevice, on an arbitrary communication network, without a central coordinator. We propose C O L A, a new decentralized training algorithm with strong theoretical guarantees and superior practical performance. Our framework overcomes many limitations of existing methods, and achieves communication efficiency, scalability, elasticity as well as resilience to changes in data and allows for unreliable and heterogeneous participating devices.

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