CAAI Transactions on Intelligence Technology (Jun 2023)

Deep learning's fitness for purpose: A transformation problem frame's perspective

  • Hemanth Gudaparthi,
  • Nan Niu,
  • Yilong Yang,
  • Matthew VanDoren,
  • Reese Johnson

DOI
https://doi.org/10.1049/cit2.12237
Journal volume & issue
Vol. 8, no. 2
pp. 343 – 354

Abstract

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Abstract Combined sewer overflows represent significant risks to human health as untreated water is discharged to the environment. Municipalities, such as the Metropolitan Sewer District of Greater Cincinnati (MSDGC), recently began collecting large amounts of water‐related data and considering the adoption of deep learning (DL) solutions like recurrent neural network (RNN) for predicting overflow events. Clearly, assessing the DL's fitness for the purpose requires a systematic understanding of the problem context. In this study, we propose a requirements engineering framework that uses the problem frames to identify and structure the stakeholder concerns, analyses the physical situations in which the high‐quality data assumptions may not hold, and derives the software testing criteria in the form of metamorphic relations that incorporate both input transformations and output comparisons. Applying our framework to MSDGC's overflow prediction problem enables a principled way to evaluate different RNN solutions in meeting the requirements.

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