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Knowledge Collapse – Michael Harris in Boston Review

19 hours ago
  • #mathematical understanding
  • #ethics of AI
  • #AI in mathematics
  • Mathematical research is described as a free creative art and a form of unalienated labor, driven by the pleasure of understanding.
  • AI has long targeted mathematics as a challenge, with recent advances leading to predictions that human mathematical power will be outstripped.
  • The mathematical community is divided between boomers (who embrace AI's potential) and doomers (who fear human obsolescence).
  • Formalization and proof-checking technologies, such as Lean, have gained traction, but they raise concerns about separating proof from human understanding.
  • Mathematical understanding is a core value, often described as intuitive and not reducible to formal reasoning, yet AI prioritizes mechanized reasoning.
  • Historical examples, like the Four Color Theorem and Kepler's conjecture, illustrate tensions between computer-assisted proofs and human comprehension.
  • The Riemann Hypothesis symbolizes both a milestone for AI and a potential loss for human understanding if solved by machines without insight.
  • Industry-driven AI projects risk alienating labor, commodifying expertise, and collapsing knowledge by prioritizing commercial goals over shared culture.
  • Initiatives like the Leiden Declaration advocate for ethical AI use in mathematics, emphasizing autonomy, understanding, and resistance to harmful applications.
  • Small-scale, non-commercial AI projects show potential to enhance human understanding while preserving mathematics as a gift economy.