Researcher Proposes Mathematical Framework to Measure AI's Impact on Human Autonomy
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Summary
A researcher has submitted a white paper titled "The Judgment Transparency Principle (JTP)" to the EU AI Office, proposing a mathematical framework called State Discrepancy (D) to measure how AI systems might hijack human intent. The paper aims to establish a formal control algorithm to protect human autonomy in the age of black-box AI, advocating for a neutral stance that enables technological progress while preventing societal rupture and Luddite reactions.
Key quotes
· 4 pulledThis paper, 'The Judgment Transparency Principle (JTP),' is my attempt to provide a mathematical foundation for the right to human autonomy in the age of black-box AI.
I side with neither corporations nor regulators. I advocate for the healthy coexistence of technology and humanity.
History shows that perceiving new tech as a 'controllable threat' often triggers violent Luddite movements.
If AI continues to be perceived as a threat that must be controlled, we risk repeating historical patterns of technological backlash.
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