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Cooperative learning: Decentralized data neural network

机译:合作学习:分散数据神经网络

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Researchers often wish to study data stored in separate locations, such as when several research entities wish to make inferences from their combined data. The most common solution is to centralize the data in one location. However, certain types of data can be difficult to transfer between entities due to legal or practical reasons. This makes centralizing these types of data problematic. A possible solution is the use of methods that learn from data without moving them to a central location: decentralized algorithms. Only a few algorithms emphasizing that property are known to us, and even fewer are used in the biomedical domain. In this paper, we propose a decentralized neural network that allows data analysis without transferring the data from the sites that host them. Instead, this method only transfers the gradients (or their parts) calculated via back-propagation. Our approach allows us to learn a classifier even when class examples are located at different sites, enabling privacy-aware collaboration across groups with specific research interests. We validate the method in several experiments to test stability, compare performance to a network trained on the centralized data, and investigate the ability to reduce size of data transfer. Our experiments on simulated, benchmark, and neuroimaging addiction data provide strong evidence that the proposed model works as effectively as a pooled centralized model.
机译:研究人员通常希望研究存储在不同位置的数据,例如,当几个研究实体希望从其组合数据中进行推断时。最常见的解决方案是将数据集中在一个位置。但是,由于法律或实际原因,某些类型的数据可能难以在实体之间传输。这使得集中这些类型的数据成为问题。一种可能的解决方案是使用从数据中学习而不将数据移动到中心位置的方法:分散算法。我们只知道几种强调该特性的算法,而在生物医学领域则使用的算法甚至更少。在本文中,我们提出了一种分散式神经网络,该网络可以进行数据分析,而无需从托管它们的站点传输数据。取而代之的是,此方法仅传输通过反向传播计算出的梯度(或其梯度)。即使班级示例位于不同的站点,我们的方法也使我们能够学习分类器,从而可以在具有特定研究兴趣的组之间实现隐私感知协作。我们在多个实验中验证了该方法的有效性,以测试稳定性,将性能与在集中式数据上训练的网络进行比较,并研究减少数据传输大小的能力。我们对模拟,基准和神经影像成瘾数据进行的实验提供了有力的证据,表明所提出的模型与集中式集中模型一样有效。

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