[#1] INFO:Fitting -- RooAbsPdf::fitTo(mvg_over_mvg_Int[x0,x1,x2,x3]) fixing normalization set for coefficient determination to observables in data [#1] INFO:Fitting -- using generic CPU library compiled with no vectorizations [#1] INFO:Fitting -- Creation of NLL object took 6.4056 ms [#1] INFO:Fitting -- RooAddition::defaultErrorLevel(nll_mvg_over_mvg_Int[x0,x1,x2,x3]_mvgData) Summation contains a RooNLLVar, using its error level [#1] INFO:Minimization -- [fitFCN] No discrete parameters, performing continuous minimization only Minuit2Minimizer: Minimize with max-calls 2000 convergence for edm < 1 strategy 1 Minuit2Minimizer : Valid minimum - status = 0 FVAL = 706.560063684865781 Edm = 9.79361268420962158e-06 Nfcn = 68 mu_x0 = 0.180728 +/- 0.17298 (limited) mu_x1 = 0.207351 +/- 0.172978 (limited) mu_x2 = -0.0159412 +/- 0.172984 (limited) mu_x3 = 0.12343 +/- 0.172982 (limited) [#1] INFO:Fitting -- RooAbsPdf::fitTo(mvg_over_mvg_Int[x0,x1,x2,x3]) fixing normalization set for coefficient determination to observables in data [#1] INFO:Fitting -- Creation of NLL object took 94.68 μs Metropolis-Hastings progress: .................................................................................................... [#1] INFO:Eval -- Proposal acceptance rate: 37.1% [#1] INFO:Eval -- Number of steps in chain: 3710 [#1] INFO:InputArguments -- The deprecated RooFit::CloneData(1) option passed to createNLL() is ignored. [#1] INFO:Fitting -- RooAbsPdf::fitTo(mvg_over_mvg_Int[x0,x1,x2,x3]) fixing normalization set for coefficient determination to observables in data [#1] INFO:Fitting -- Creation of NLL object took 107.931 μs [#0] PROGRESS:Minimization -- ProfileLikelihoodCalcultor::DoGLobalFit - find MLE [#1] INFO:Fitting -- RooAddition::defaultErrorLevel(nll_mvg_over_mvg_Int[x0,x1,x2,x3]_mvgData) Summation contains a RooNLLVar, using its error level [#0] PROGRESS:Minimization -- ProfileLikelihoodCalcultor::DoMinimizeNLL - using Minuit2 / Migrad with strategy 1 [#1] INFO:Minimization -- [fitFCN] No discrete parameters, performing continuous minimization only [#1] INFO:Minimization -- RooFitResult: minimized FCN value: 706.56, estimated distance to minimum: 2.41067e-06 covariance matrix quality: Full, accurate covariance matrix Status : MINIMIZE=0 Floating Parameter FinalValue +/- Error -------------------- -------------------------- mu_x0 1.8134e-01 +/- 1.73e-01 mu_x1 2.0772e-01 +/- 1.73e-01 mu_x2 -1.5923e-02 +/- 1.73e-01 mu_x3 1.2360e-01 +/- 1.73e-01 [#1] INFO:Minimization -- RooProfileLL::evaluate(RooEvaluatorWrapper_Profile[mu_x0,mu_x1]) Creating instance of MINUIT [#1] INFO:Fitting -- RooAddition::defaultErrorLevel(nll_mvg_over_mvg_Int[x0,x1,x2,x3]_mvgData) Summation contains a RooNLLVar, using its error level [#1] INFO:Minimization -- RooProfileLL::evaluate(RooEvaluatorWrapper_Profile[mu_x0,mu_x1]) determining minimum likelihood for current configurations w.r.t all observable [#1] INFO:Minimization -- [fitFCN] No discrete parameters, performing continuous minimization only [#1] INFO:Minimization -- RooProfileLL::evaluate(RooEvaluatorWrapper_Profile[mu_x0,mu_x1]) minimum found at (mu_x0=0.181185, mu_x1=0.207918) .[#1] INFO:Minimization -- [fitFCN] No discrete parameters, performing continuous minimization only .[#1] INFO:Minimization -- [fitFCN] No discrete parameters, performing continuous minimization only [#1] INFO:Minimization -- LikelihoodInterval - Finding the contour of mu_x0 ( 0 ) and mu_x1 ( 1 ) MCMC interval on p0: [-0.28, 0.6] MCMC interval on p1: [-0.2, 0.6] Real time 0:00:00, CP time 0.530