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English(EN) A Composite Activation Function for Learning Stable Binary Representations

新的HTAF激活函数可实现二值神经网络的稳定训练

研究人员开发了一种名为重尾激活函数(HTAF)的新激活函数,以应对训练具有二值化表示的神经网络所面临的挑战。HTAF是单位阶跃函数的平滑近似,旨在保持较大的梯度质量以实现稳定的优化。该新函数能够使用基于梯度的优化方法稳定地训练各种类型的神经网络,包括脉冲神经网络(Spiking Neural Networks)和二值神经网络(Binary Neural Networks)。研究人员还引入了隐式概念瓶颈模型(ICBMs),该模型利用HTAF创建具有离散特征表示的可解释图像模型,其性能可与现有模型相媲美或更优。 AI

影响 为特定应用实现更高效、更具可解释性的神经网络训练。

排序理由 该集群包含一篇详细介绍神经网络训练新方法的学术论文。

在 arXiv stat.ML 阅读 →

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新的HTAF激活函数可实现二值神经网络的稳定训练

报道来源 [2]

  1. arXiv stat.ML TIER_1 English(EN) · Seokhun Park, Choeun Kim, Kwanho Lee, Sehyun Park, Insung Kong, Yongdai Kim ·

    A Composite Activation Function for Learning Stable Binary Representations

    arXiv:2605.11558v1 Announce Type: cross Abstract: Activation functions play a central role in neural networks by shaping internal representations. Recently, learning binary activation representations has attracted significant attention due to their advantages in computational and…

  2. arXiv stat.ML TIER_1 English(EN) · Yongdai Kim ·

    A Composite Activation Function for Learning Stable Binary Representations

    Activation functions play a central role in neural networks by shaping internal representations. Recently, learning binary activation representations has attracted significant attention due to their advantages in computational and memory efficiency, as well as interpretability. H…