In this paper, a robust optimization framework is developed to train shallow neural networks based on reachability analysis of neural networks. To characterize noises of input data, the input training data is disturbed in the description of interval sets. Interval-based reachability analysis is then performed for the hidden layer. With the reachability analysis results, a robust optimization training method is developed in the framework of robust least-square problems. Then, the developed robust least-square problem is relaxed to a semidefinite programming problem. It has been shown that the developed robust learning method can provide better robustness against perturbations at the price of loss of training accuracy to some extent. At last, the proposed method is evaluated on a robot arm model learning example.
翻译:在本文中,根据对神经网络的可达性分析,开发了一个强力优化框架,以培训浅神经网络。为了描述输入数据的噪音,输入培训数据在间隔数据集描述中受到干扰。然后对隐藏层进行基于间联的可达性分析。有了可达性分析结果,在强力最小问题的框架内开发了一个强力优化培训方法。然后,发达强力最不发达区域的问题被放松到半无穷的编程问题。已经证明,发达强力学习方法可以提供更好的强力,防止以培训准确性损失的价格在某种程度上受到干扰。最后,在机器人手臂模型学习实例中评估了拟议方法。