We present a Model Uncertainty-aware Differentiable ARchiTecture Search ($\mu$DARTS) that optimizes neural networks to simultaneously achieve high accuracy and low uncertainty. We introduce concrete dropout within DARTS cells and include a Monte-Carlo regularizer within the training loss to optimize the concrete dropout probabilities. A predictive variance term is introduced in the validation loss to enable searching for architecture with minimal model uncertainty. The experiments on CIFAR10, CIFAR100, SVHN, and ImageNet verify the effectiveness of $\mu$DARTS in improving accuracy and reducing uncertainty compared to existing DARTS methods. Moreover, the final architecture obtained from $\mu$DARTS shows higher robustness to noise at the input image and model parameters compared to the architecture obtained from existing DARTS methods.
翻译:我们展示了一种模型的不确定性和可辨别的可辨别的ARchi Testure Search (mu$DARTS),优化神经网络,同时实现高度准确性和低不确定性;我们在DARTS细胞中引入混凝土辍学,并在培训损失中引入蒙特卡洛常规化器,以优化混凝土辍学概率;在验证损失中引入了预测性差异术语,以便能够在模型不确定性最小的情况下搜索建筑;在CIFAR10、CIFAR100、SVHN和图像Net上进行的实验核实了$mu$DARTS在提高准确性和减少现有DARTS方法不确定性方面的有效性;此外,从$mu$DARTS获得的最后结构显示,与现有DARTS方法获得的结构相比,输入图像和模型参数上的噪音的强度更高。