Detecting unusual input to neural networks

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Abstract

Evaluating a neural network on an input that differs markedly from the training data might cause erratic and flawed predictions. We study a method that judges the unusualness of an input by evaluating its informative content compared to the learned parameters. This technique can be used to judge whether a network is suitable for processing a certain input and to raise a red flag that unexpected behavior might lie ahead. We compare our approach to various methods for uncertainty evaluation from the literature for various datasets and scenarios. Specifically, we introduce a simple, effective method that allows to directly compare the output of such metrics for single input points even if these metrics live on different scales.

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APA

Martin, J., & Elster, C. (2021). Detecting unusual input to neural networks. Applied Intelligence, 51(4), 2198–2209. https://doi.org/10.1007/s10489-020-01925-8

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