2022
DOI: 10.48550/arxiv.2203.10384
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Data Smells: Categories, Causes and Consequences, and Detection of Suspicious Data in AI-based Systems

Abstract: High data quality is fundamental for today's AI-based systems. However, although data quality has been an object of research for decades, there is a clear lack of research on potential data quality issues (e.g., ambiguous, extraneous values). These kinds of issues are latent in nature and thus often not obvious. Nevertheless, they can be associated with an increased risk of future problems in AI-based systems (e.g., technical debt, data-induced faults). As a counterpart to code smells in software engineering, … Show more

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