Basic HTML version of Foils prepared 15 March 1996

Foil 75 Conclusions in Physical Optimization

From Physical Optimization and Physical Computation CPSP713 Case studies in Computational Science -- Spring Semester 1996. by Geoffrey C. Fox


1 Physical Optimization is a class of naturally parallel heuristics that solve "hard problems" quickly but approximately
2 Monte Carlo or Deterministic
3 Choice of variables is important
4 No universally "good" method even in a given problem, different methods are appropriate for different parameter values
5 Temperature controls a generalized multiscale approach
  • Clustering T 1/2 was distance resolution
  • Navigation 1/T controlled importance of obstacles
    • i.e. T is "resolution" in parameter space

in Table To:


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