Study
[MMM] Inverse problem
Struggler J.
2018. 2. 12. 23:08
- Finding optimum in nonlinear regression (with only one global optimum)
- gradient descent method (use gradient) --- good to far away from equilibrium
- Gauss-Newton method (use intersection between y=0 and tangential line) --- good to close to equilibrium
- Levenberg-Marquardt (Combination between method 1. and 2.) --- there is a control parameter which called lambda, limiting values reproduce method 1 or 2., There are many libraries, and you can just use them not writing the code.
- Finding optimum in nonlinear regression (with only multiple optima)
- use multiple initial conditions
- Markov chain Monte Carlo method --- In general (based on experience), MCMC is faster than gradient descent method when the number of parameters greater than 5.
- Genetic algorithm
- DiRect (searching grid and increase resolution, the condition for searching is min(S/V) where S is the objective function and V is volume of parameter space) --- for bounded parameter range