2019 Design, Automation & Test in Europe Conference & Exhibition (DATE) | 2019

Runtime Monitoring Neuron Activation Patterns

 
 
 

Abstract


For using neural networks in safety critical domains, it is important to know if a decision made by a neural network is supported by prior similarities in training. We propose runtime neuron activation pattern monitoring - after the standard training process, one creates a monitor by feeding the training data to the network again in order to store the neuron activation patterns in abstract form. In operation, a classification decision over an input is further supplemented by examining if a pattern similar (measured by Hamming distance) to the generated pattern is contained in the monitor. If the monitor does not contain any pattern similar to the generated pattern, it raises a warning that the decision is not based on the training data. Our experiments show that, by adjusting the similarity-threshold for activation patterns, the monitors can report a significant portion of misclassfications to be not supported by training with a small false-positive rate, when evaluated on a test set.

Volume None
Pages 300-303
DOI 10.23919/DATE.2019.8714971
Language English
Journal 2019 Design, Automation & Test in Europe Conference & Exhibition (DATE)

Full Text