Tutorials on Testing Neural Networks
Deep learning achieves remarkable performance on pattern recognition, but can be vulnerable to defects of some important properties such as robustness and security. This tutorial is based on a stream of research conducted since the summer of 2018 at a few UK universities, including the University of...
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Zusammenfassung: | Deep learning achieves remarkable performance on pattern recognition, but can
be vulnerable to defects of some important properties such as robustness and
security. This tutorial is based on a stream of research conducted since the
summer of 2018 at a few UK universities, including the University of Liverpool,
University of Oxford, Queen's University Belfast, University of Lancaster,
University of Loughborough, and University of Exeter.
The research aims to adapt software engineering methods, in particular
software testing methods, to work with machine learning models. Software
testing techniques have been successful in identifying software bugs, and
helping software developers in validating the software they design and
implement. It is for this reason that a few software testing techniques -- such
as the MC/DC coverage metric -- have been mandated in industrial standards for
safety critical systems, including the ISO26262 for automotive systems and the
RTCA DO-178B/C for avionics systems. However, these techniques cannot be
directly applied to machine learning models, because the latter are drastically
different from traditional software, and their design follows a completely
different development life-cycle.
As the outcome of this thread of research, the team has developed a series of
methods that adapt the software testing techniques to work with a few classes
of machine learning models. The latter notably include convolutional neural
networks, recurrent neural networks, and random forest. The tools developed
from this research are now collected, and publicly released, in a GitHub
repository: \url{https://github.com/TrustAI/DeepConcolic}, with the BSD
3-Clause licence.
This tutorial is to go through the major functionalities of the tools with a
few running examples, to exhibit how the developed techniques work, what the
results are, and how to interpret them. |
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DOI: | 10.48550/arxiv.2108.01734 |