A Survey on Data Quality Dimensions and Tools for Machine Learning
Machine learning (ML) technologies have become substantial in practically all aspects of our society, and data quality (DQ) is critical for the performance, fairness, robustness, safety, and scalability of ML models. With the large and complex data in data-centric AI, traditional methods like explor...
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Zusammenfassung: | Machine learning (ML) technologies have become substantial in practically all
aspects of our society, and data quality (DQ) is critical for the performance,
fairness, robustness, safety, and scalability of ML models. With the large and
complex data in data-centric AI, traditional methods like exploratory data
analysis (EDA) and cross-validation (CV) face challenges, highlighting the
importance of mastering DQ tools. In this survey, we review 17 DQ evaluation
and improvement tools in the last 5 years. By introducing the DQ dimensions,
metrics, and main functions embedded in these tools, we compare their strengths
and limitations and propose a roadmap for developing open-source DQ tools for
ML. Based on the discussions on the challenges and emerging trends, we further
highlight the potential applications of large language models (LLMs) and
generative AI in DQ evaluation and improvement for ML. We believe this
comprehensive survey can enhance understanding of DQ in ML and could drive
progress in data-centric AI. A complete list of the literature investigated in
this survey is available on GitHub at:
https://github.com/haihua0913/awesome-dq4ml. |
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DOI: | 10.48550/arxiv.2406.19614 |