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

Chen Zhao, Jiquan Ngiam, Yanping Huang, Thang Luong, Henrik Kretzschmar, Yuning Chai, Dragomir Anguelov

2020Neural Information Processing Systems10 citations

Abstract

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.

Topics & Concepts

Dropout (neural networks)Computer scienceSign (mathematics)Artificial intelligenceDeep learningGradient descentMasking (illustration)Probabilistic logicSet (abstract data type)Consistency (knowledge bases)Transfer of learningArtificial neural networkMachine learningMathematicsVisual artsMathematical analysisArtProgramming languageDomain Adaptation and Few-Shot LearningSpeech Recognition and SynthesisGenerative Adversarial Networks and Image Synthesis