Out-of-distribution detection (OOD) deals with anomalous input to neural networks. In the past, specialized methods have been proposed to reject predictions on anomalous input. Similarly, it was shown that feature extraction models in combination with outlier detection algorithms are well suited to detect anomalous input. We use outlier detection algorithms to detect anomalous input as reliable as specialized methods from the field of OOD. No neural network adaptation is required; detection is based on the model's softmax score. Our approach works unsupervised using an Isolation Forest and can be further improved by using a supervised learning method such as Gradient Boosting.
翻译:室外分配检测(OOD)处理神经网络的异常输入,过去曾建议采用专门方法拒绝对异常输入的预测,同样地,还表明与室外检测算法相结合的特征提取模型非常适合检测异常输入。我们使用室外检测算法来检测异常输入,如同OOD领域的专门方法一样可靠。不需要对神经网络进行调整;检测基于模型的软体分数。我们的方法使用隔离森林进行不受监督的工作,并且可以通过使用诸如“梯子启动”等受监督的学习方法进一步改进。