This work was done during one weekend by research workshop participants and does not represent the work of Apart Research.
ApartSprints
Howard University AI Safety Summit & Policy Hackathon
67240c8fb0416a4520d2b4b6
Howard University AI Safety Summit & Policy Hackathon
November 21, 2024
Accepted at the 
67240c8fb0416a4520d2b4b6
 research sprint on 

Grandfather Paradox in AI – Bias Mitigation & Ethical AI1

The Grandfather Paradox in Artificial Intelligence (AI) describes a self-perpetuating cycle where outputs from flawed AI models re- enter the training process, leading to recursive degradation of model performance, ethical inconsistencies, and amplified biases. This issue poses significant risks, particularly in high-stakes domains such as healthcare, criminal justice, and finance. This memorandum analyzes the paradox’s origins, implications, and potential solutions. It emphasizes the need for iterative data verification, dynamic feedback control systems, and cross-system audits to maintain model integrity and ensure compliance with ethical standards. By implementing these measures, organizations can mitigate risks, enhance public trust, and foster sustainable AI development.

By 
Maha Vishnu Sura
🏆 
4th place
3rd place
2nd place
1st place
 by peer review
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