Difference between revisions of "Documentation:Monte Carlo Equilibration"
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pyalps.checkNonSteadyState(outfile, observables, confidenceInterval=0.63, simplified=False, includeLog=False) | pyalps.checkNonSteadyState(outfile, observables, confidenceInterval=0.63, simplified=False, includeLog=False) |
Revision as of 14:18, 10 September 2013
Contents
Monte Carlo equilibration
Theory
We have a timeseries of N measurements obtained from a Monte Carlo simulation, i.e. .
Suppose (s.t.
) is the least-squares best fitted line, we attempt to minimize
w.r.t.
and
.
,
:
Slope of best-fitted line
Error in slope of best-fitted line
Denoting , we have:
Hypothesis testing
Using the standard z-test, we reject at confidence interval
if
Practice
Synposis
pyalps.checkNonSteadyState(outfile, observables, confidenceInterval=0.63, simplified=False, includeLog=False)