Difference between revisions of "Parameter error analysis"
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== Relax-fit script mode - error analysis for parameters == | == Relax-fit script mode - error analysis for parameters == | ||
[http://www.nmr-relax.com/manual/Relax_fit_script_mode_error_analysis.html See manual] | [http://www.nmr-relax.com/manual/Relax_fit_script_mode_error_analysis.html See manual] |
Revision as of 13:33, 15 October 2015
Relax-fit script mode - error analysis for parameters
Only one technique adequately estimates parameter errors when the parameter values where found by optimisation - Monte Carlo simulations.
In relax this can be implemented by using a series of functions from the monte_carlo user function class.
Firstly the number of simulations needs to be set
monte_carlo.setup(number=500)
For each simulation, randomised relaxation curves will be fit using exactly the same methodology as the original exponential curves.
These randomised curves are created by back calculation from the fitted model parameter values and then each point on the curve randomised using the error values set earlier in the script
monte_carlo.create_data()
As a grid search for each simulation would be too computationally expensive, the starting point for optimisation for each simulation can be set to the position of the optimised parameter values of the model
monte_carlo.initial_values()
Then exactly the same optimisation as was used for the model can be performed
minimise(`simplex', constraints=False)
The parameter errors are then determined as the standard deviation of the optimised parameter values of the simulations
monte_carlo.error_analysis()