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added link to datapoison detection, to detect anomalies
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robvanderveer authored Aug 1, 2024
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Expand Up @@ -332,6 +332,9 @@ Key Points for Consideration:
- Continuous Monitoring: Regularly update and audit data quality controls to adapt to evolving threats and maintain the robustness of AI systems.
- Collaboration and Standards: Adhere to international standards like ISO/IEC 5259 and 42001 while recognizing their limitations. Advocate for the development of more comprehensive standards that address the unique challenges of AI data quality.

References
- ['Detection of Adversarial Training Examples in Poisoning Attacks through Anomaly Detection'](https://arxiv.org/abs/1802.03041)

Useful standards include:

- ISO/IEC 5259 series on Data quality for analytics and ML. Gap: covers this control minimally. in light of the particularity - the standard does not mention approaches to detect malicious changes (including detecting statistical deviations). Nevertheless, standard data quality control helps to detect malicious changes that violate data quality rules.
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