Training-Free Neural Active Learning with Initialization-Robustness Guarantees

Apivich Hemachandra, Zhongxiang Dai, Jasraj Singh, See-Kiong Ng, K. H. Low
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Abstract

Existing neural active learning algorithms have aimed to optimize the predictive performance of neural networks (NNs) by selecting data for labelling. However, other than a good predictive performance, being robust against random parameter initializations is also a crucial requirement in safety-critical applications. To this end, we introduce our expected variance with Gaussian processes (EV-GP) criterion for neural active learning, which is theoretically guaranteed to select data points which lead to trained NNs with both (a) good predictive performances and (b) initialization robustness. Importantly, our EV-GP criterion is training-free, i.e., it does not require any training of the NN during data selection, which makes it computationally efficient. We empirically demonstrate that our EV-GP criterion is highly correlated with both initialization robustness and generalization performance, and show that it consistently outperforms baseline methods in terms of both desiderata, especially in situations with limited initial data or large batch sizes.
具有初始化-鲁棒性保证的无训练神经主动学习
现有的神经主动学习算法旨在通过选择数据进行标记来优化神经网络(nn)的预测性能。然而,除了良好的预测性能之外,在安全关键型应用程序中,对随机参数初始化的鲁棒性也是一个至关重要的要求。为此,我们引入了神经主动学习的高斯过程期望方差(EV-GP)准则,理论上保证选择数据点,从而使训练好的神经网络具有(a)良好的预测性能和(b)初始化鲁棒性。重要的是,我们的EV-GP准则是无训练的,即在数据选择过程中不需要对神经网络进行任何训练,这使得它的计算效率很高。我们的经验证明,我们的EV-GP标准与初始化鲁棒性和泛化性能高度相关,并表明它在两种理想情况下始终优于基线方法,特别是在初始数据有限或批量较大的情况下。
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