Feb. 6, 2024, 5:43 a.m. | Alfredo Fernandez Ankur Mali

cs.LG updates on arXiv.org arxiv.org

In this paper, we introduce the Hyperbolic Tangent Exponential Linear Unit (TeLU), a novel neural network activation function, represented as $f(x) = x{\cdot}tanh(e^x)$. TeLU is designed to overcome the limitations of conventional activation functions like ReLU, GELU, and Mish by addressing the vanishing and, to an extent, the exploding gradient problems. Our theoretical analysis and empirical assessments reveal that TeLU outperforms existing activation functions in stability and robustness, effectively adjusting activation outputs' mean towards zero for enhanced training stability and …

cs.lg cs.ne deep learning function functions limitations linear network neural network novel paper relu robust

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