Assuring the Machine Learning Lifecycle: Desiderata, Methods, and Challenges
May 10, 2019 ยท Declared Dead ยท ๐ ACM Computing Surveys
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Authors
Rob Ashmore, Radu Calinescu, Colin Paterson
arXiv ID
1905.04223
Category
cs.LG: Machine Learning
Cross-listed
cs.SE,
stat.ML
Citations
133
Venue
ACM Computing Surveys
Last Checked
4 months ago
Abstract
Machine learning has evolved into an enabling technology for a wide range of highly successful applications. The potential for this success to continue and accelerate has placed machine learning (ML) at the top of research, economic and political agendas. Such unprecedented interest is fuelled by a vision of ML applicability extending to healthcare, transportation, defence and other domains of great societal importance. Achieving this vision requires the use of ML in safety-critical applications that demand levels of assurance beyond those needed for current ML applications. Our paper provides a comprehensive survey of the state-of-the-art in the assurance of ML, i.e. in the generation of evidence that ML is sufficiently safe for its intended use. The survey covers the methods capable of providing such evidence at different stages of the machine learning lifecycle, i.e. of the complex, iterative process that starts with the collection of the data used to train an ML component for a system, and ends with the deployment of that component within the system. The paper begins with a systematic presentation of the ML lifecycle and its stages. We then define assurance desiderata for each stage, review existing methods that contribute to achieving these desiderata, and identify open challenges that require further research.
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