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arxiv: 2010.06808 · v1 · pith:Y53OUKE3 · submitted 2020-10-14 · cs.LG · cs.CV

Just Pick a Sign: Optimizing Deep Multitask Models with Gradient Sign Dropout

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classification cs.LG cs.CV
keywords gradientdeepgraddropmultiplesigndropoutlayermodels
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The vast majority of deep models use multiple gradient signals, typically corresponding to a sum of multiple loss terms, to update a shared set of trainable weights. However, these multiple updates can impede optimal training by pulling the model in conflicting directions. We present Gradient Sign Dropout (GradDrop), a probabilistic masking procedure which samples gradients at an activation layer based on their level of consistency. GradDrop is implemented as a simple deep layer that can be used in any deep net and synergizes with other gradient balancing approaches. We show that GradDrop outperforms the state-of-the-art multiloss methods within traditional multitask and transfer learning settings, and we discuss how GradDrop reveals links between optimal multiloss training and gradient stochasticity.

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