Publication | Closed Access
Noisy Softmax: Improving the Generalization Ability of DCNN via Postponing the Early Softmax Saturation
137
Citations
51
References
2017
Year
Unknown Venue
Artificial IntelligenceEarly Softmax SaturationConvolutional Neural NetworkEngineeringMachine LearningAutoencodersRecurrent Neural NetworkSpeech RecognitionData ScienceSparse Neural NetworkData AugmentationEarly SaturationSaturation BehaviorComputer ScienceMedical Image ComputingDeep LearningNeural Architecture SearchGeneralization AbilityModel CompressionSpeech ProcessingNoisy SoftmaxEarly Saturation Behavior
Over the past few years, softmax and SGD have become a commonly used component and the default training strategy in CNN frameworks, respectively. However, when optimizing CNNs with SGD, the saturation behavior behind softmax always gives us an illusion of training well and then is omitted. In this paper, we first emphasize that the early saturation behavior of softmax will impede the exploration of SGD, which sometimes is a reason for model converging at a bad local-minima, then propose Noisy Softmax to mitigating this early saturation issue by injecting annealed noise in softmax during each iteration. This operation based on noise injection aims at postponing the early saturation and further bringing continuous gradients propagation so as to significantly encourage SGD solver to be more exploratory and help to find a better local-minima. This paper empirically verifies the superiority of the early softmax desaturation, and our method indeed improves the generalization ability of CNN model by regularization. We experimentally find that this early desaturation helps optimization in many tasks, yielding state-of-the-art or competitive results on several popular benchmark datasets.
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