When and Why Test Generators for Deep Learning Produce Invalid Inputs: an Empirical Study
December 21, 2022 ยท Declared Dead ยท ๐ International Conference on Software Engineering
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Authors
Vincenzo Riccio, Paolo Tonella
arXiv ID
2212.11368
Category
cs.SE: Software Engineering
Cross-listed
cs.LG
Citations
38
Venue
International Conference on Software Engineering
Last Checked
3 months ago
Abstract
Testing Deep Learning (DL) based systems inherently requires large and representative test sets to evaluate whether DL systems generalise beyond their training datasets. Diverse Test Input Generators (TIGs) have been proposed to produce artificial inputs that expose issues of the DL systems by triggering misbehaviours. Unfortunately, such generated inputs may be invalid, i.e., not recognisable as part of the input domain, thus providing an unreliable quality assessment. Automated validators can ease the burden of manually checking the validity of inputs for human testers, although input validity is a concept difficult to formalise and, thus, automate. In this paper, we investigate to what extent TIGs can generate valid inputs, according to both automated and human validators. We conduct a large empirical study, involving 2 different automated validators, 220 human assessors, 5 different TIGs and 3 classification tasks. Our results show that 84% artificially generated inputs are valid, according to automated validators, but their expected label is not always preserved. Automated validators reach a good consensus with humans (78% accuracy), but still have limitations when dealing with feature-rich datasets.
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