Sndcnn: Self-Normalizing Deep Cnns With Scaled Exponential Linear Units For Speech Recognition

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Sndcnn: Self-Normalizing Deep Cnns With Scaled Exponential Linear Units For Speech Recognition


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Sndcnn: Self-Normalizing Deep Cnns With Scaled Exponential Linear Units For Speech Recognition

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Very deep CNNs achieve state-of-the-art results in both computer vision and speech recognition, but are difficult to train. The most popular way to train very deep CNNs is to use shortcut connec- tions (SC) together with batch normalization (BN). Inspired
Very deep CNNs achieve state-of-the-art results in both computer vision and speech recognition, but are difficult to train. The most popular way to train very deep CNNs is to use shortcut connec- tions (SC) together with batch normalization (BN). Inspired