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arxiv: 1806.03791 · v1 · pith:VZCQPYOSnew · submitted 2018-06-11 · 📊 stat.ML · cs.DC· cs.LG· math.OC· stat.CO

The Effect of Network Width on the Performance of Large-batch Training

classification 📊 stat.ML cs.DCcs.LGmath.OCstat.CO
keywords trainingbatcheslarge-batchnetworksperformanceconvergencedeepergradient
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Distributed implementations of mini-batch stochastic gradient descent (SGD) suffer from communication overheads, attributed to the high frequency of gradient updates inherent in small-batch training. Training with large batches can reduce these overheads; however, large batches can affect the convergence properties and generalization performance of SGD. In this work, we take a first step towards analyzing how the structure (width and depth) of a neural network affects the performance of large-batch training. We present new theoretical results which suggest that--for a fixed number of parameters--wider networks are more amenable to fast large-batch training compared to deeper ones. We provide extensive experiments on residual and fully-connected neural networks which suggest that wider networks can be trained using larger batches without incurring a convergence slow-down, unlike their deeper variants.

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