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Distributed Networked Real-Time Learning

机译:分布式网络实时学习

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摘要

Many machine learning algorithms have been developed under the assumption that datasets are already available in batch form. Yet, in many application domains, data are only available sequentially overtime via compute nodes in different geographic locations. In this article, we consider the problem of learning a model when streaming data cannot be transferred to a single location in a timely fashion. In such cases, a distributed architecture for learning which relies on a network of interconnected "local" nodes is required. We propose a distributed scheme in which every local node implements stochastic gradient updates based upon a local data stream. To ensure robust estimation, a network regularization penalty is used to maintain a measure of cohesion in the ensemble of models. We show that the ensemble average approximates a stationary point and characterizes the degree to which individual models differ from the ensemble average. We compare the results with federated learning to conclude that the proposed approach is more robust to heterogeneity in data streams (data rates and estimation quality). We illustrate the results with an application to image classification with a deep learning model based upon convolutional neural networks.
机译:许多机器学习算法已经在假设数据集以批液中提供。然而,在许多应用程序域中,数据仅通过不同地理位置中的计算节点顺序加班。在本文中,我们考虑当流数据无法以及时转移到单个位置时学习模型的问题。在这种情况下,需要用于依赖于互联的“本地”节点网络的分布式架构。我们提出了一种分布式方案,其中每个本地节点都基于本地数据流实现随机梯度更新。为了确保鲁棒估计,网络正则化惩罚用于维持模型集合中的凝聚力。我们表明集合平均值近似静止点,并表征各个模型与集合平均值不同的程度。我们将联合学习的结果进行比较得出结论,所提出的方法对数据流中的异质性更加强大(数据速率和估计质量)。我们用基于卷积神经网络的深度学习模型来说明与图像分类的应用程序的结果。

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