Evolutionary Neural Architecture Search Based on Variational Inference Bayesian Convolutional Neural Network

Jialiang Yu, Song Gao, Jie Tian, H. Bian, Hui Liu, Junqing Li
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Abstract

In past decades, Bayesian neural networks have attracted much attention due to their advantages of being less prone to over-fitting and being able to generate uncertain measurements with discriminant results. However, Compared with traditional neural networks, Bayesian neural network has too many hyper-parameters to be optimized, so that its performance in classification or regression problems on large-scale datasets is not much superior to ordinary neural networks. Therefore, in order to design a Bayesian network with superior performance, we propose VIBCNN-EvoNAS, a Bayesian convolutional neural network architecture search framework based on variational inference, which constructs a search space through a fixed length integer encoding scheme, and uses evolutionary algorithm as a search strategy to deeply explore the influence of convolution kernel size and other related parameters on the network architecture. In addition, in order to reduce the time loss caused by individual evaluation, we adopt the early stop mechanism in the performance evaluation stage. The proposed method is evaluated on CIFAR10 and CIFAR100 datasets, and the experimental results show the effectiveness of the proposed method.
基于变分推理贝叶斯卷积神经网络的进化神经结构搜索
在过去的几十年里,贝叶斯神经网络因其不易过度拟合和能够产生具有判别结果的不确定测量的优点而备受关注。然而,与传统神经网络相比,贝叶斯神经网络有太多的超参数需要优化,因此在处理大规模数据集上的分类或回归问题时,贝叶斯神经网络的性能并不比普通神经网络优越多少。因此,为了设计性能优越的贝叶斯网络,我们提出了基于变分推理的贝叶斯卷积神经网络架构搜索框架VIBCNN-EvoNAS,该框架通过定长整数编码方案构建搜索空间,并采用进化算法作为搜索策略,深入探索卷积核大小等相关参数对网络架构的影响。此外,为了减少个人评价造成的时间损失,我们在绩效评价阶段采用了提前停止机制。在CIFAR10和CIFAR100数据集上对所提方法进行了评估,实验结果表明了所提方法的有效性。
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