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DICOD: Distributed Convolutional Coordinate Descent for Convolutional Sparse Coding

机译:DICOD:卷积稀疏编码的分布式卷积坐标下降

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In this paper, we introduce DICOD, a convolutional sparse coding algorithm which builds shift invariant representations for long signals. This algorithm is designed to run in a distributed setting, with local message passing, making it communication efficient. It is based on coordinate descent and uses locally greedy updates which accelerate the resolution compared to greedy coordinate selection. We prove the convergence of this algorithm and highlight its computational speed-up which is super-linear in the number of cores used. We also provide empirical evidence for the acceleration properties of our algorithm compared to state-of-the-art methods.
机译:在本文中,我们介绍了DICOD,这是一种卷积稀疏编码算法,可为长信号构建移位不变表示。该算法设计为在具有本地消息传递的分布式设置中运行,从而使其通信效率更高。它基于坐标下降,并使用局部贪婪更新,与贪婪坐标选择相比,该更新可加快分辨率。我们证明了该算法的收敛性,并突出了其计算速度,该速度在所使用的内核数上是超线性的。与最新方法相比,我们还提供了算法加速特性的经验证据。

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