Hasty Briefsbeta

A Random Walk in 10 Dimensions (2021)

7 days ago
  • #high-dimensional physics
  • #machine learning
  • #random walks
  • Physics in high dimensions is increasingly important in modern dynamics, including string theory and complex systems like population dynamics.
  • High-dimensional landscapes feature more mountain ridges than peaks, impacting evolution, complex systems, and machine learning.
  • Visualizing data beyond four dimensions is challenging, leading to misconceptions about high-dimensional spaces.
  • Random walks in high dimensions are common in complex systems, such as molecular evolution, where genetic mutations create vast possibilities.
  • Ten dimensions are used as a practical example to study high-dimensional physics due to computational limits and unvisualizability.
  • Diffusion in ten dimensions behaves similarly to lower dimensions but with more complexity due to increased degrees of freedom.
  • Self-avoiding walks (SAWs) are unnecessary in high dimensions because the probability of path crossing is negligible.
  • Random walks in maximally rough landscapes show that percolation theory explains mobility in high-dimensional spaces.
  • Mountain ridges are common in high dimensions, while peaks are rare, influencing evolutionary biology and machine learning.
  • Neutral networks in high-dimensional fitness landscapes allow species to evolve without crossing low-fitness valleys.
  • Deep learning benefits from high-dimensional neutral networks, enabling escape from local minima and effective optimization.
  • The geometry of high-dimensional random walks may offer insights into human intelligence and consciousness.