Measuring AI Systems Beyond Accuracy

Current test and evaluation (T&E) methods for assessing machine learning (ML) system performance often rely on incomplete metrics. Testing is additionally often siloed from the other phases of the ML system lifecycle. Research investigating cross-domain approaches to ML T&E is needed to driv...

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Veröffentlicht in:arXiv.org 2022-04
Hauptverfasser: Turri, Violet, Dzombak, Rachel, Heim, Eric, VanHoudnos, Nathan, Palat, Jay, Sinha, Anusha
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Sprache:eng
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Zusammenfassung:Current test and evaluation (T&E) methods for assessing machine learning (ML) system performance often rely on incomplete metrics. Testing is additionally often siloed from the other phases of the ML system lifecycle. Research investigating cross-domain approaches to ML T&E is needed to drive the state of the art forward and to build an Artificial Intelligence (AI) engineering discipline. This paper advocates for a robust, integrated approach to testing by outlining six key questions for guiding a holistic T&E strategy.
ISSN:2331-8422