*************************************************
* Multidimensional Fit *
* *
* By Christian Holm <cholm@nbi.dk> 14/10/00 *
*************************************************
User parameters:
----------------
Variables: 4
Data points: 0
Max Terms: 30
Power Limit Parameter: 1
Max functions: 1000
Max functions to study: 1000
Max angle (optional): 10
Min angle: 10
Relative Error accepted: 0.01
Maximum Powers: 6 6 6 6
Parameterisation will be done using Monomials
======================================
Sample statistics:
------------------
D 1 2 3 4
Max: 141.6264 9.954 9.99 9.998 9.995
Min: 0.149448 0.0455 0.01523 0.04109 0.003819
Mean: 48.40441 5.033 5.044 5 5.002
Function Sum Squares: 1.678e+06
Coeff SumSqRes Contrib Angle QM Func Value W^2 Powers
1 5.065e+05 2.886e-24 10 6.67e-07 0 -7.597e-14 500 0 0 0 0
2 1.15e+05 3.915e+05 50 0.167 2 47.33 174.7 1 0 0 0
3 8.755e+04 2.749e+04 80 0.167 1 13.26 156.3 0 0 0 1
4 6.188e+04 2.568e+04 80 0.167 3 12.39 167.3 0 0 1 0
5 3.708e+04 2.48e+04 80 0.167 4 12.6 156.3 0 1 0 0
6 2.596e+04 1.112e+04 85 0.333 8 14.91 50.03 1 1 0 0
7 1.667e+04 9290 85 0.333 9 13.02 54.78 1 0 0 1
8 7382 9287 85 0.333 14 12.64 58.13 1 0 1 0
9 6235 1147 87.5 0.333 5 5.095 44.16 0 0 0 2
10 5218 1018 87.5 0.333 12 4.983 40.99 0 2 0 0
11 4193 1025 87.5 0.667 53 5.229 37.5 0 0 4 0
12 3299 893.8 88.8 0.333 6 -4.058 54.27 0 0 1 1
13 2458 841.2 88.8 0.333 7 -4.155 48.73 0 1 0 1
14 1933 524.7 88.8 0.333 13 -3.291 48.45 0 1 1 0
15 1675 258.1 88.8 0.5 19 4.211 14.56 1 0 0 2
16 1334 340.6 88.8 0.5 26 -4.731 15.22 1 1 0 1
17 1079 255.5 88.8 0.5 33 3.953 16.35 1 0 2 0
18 788.2 290.4 88.8 0.5 34 4.687 13.22 1 2 0 0
19 709.2 78.94 89.4 0.5 21 2.23 15.88 0 1 1 1
20 473.4 235.8 89.4 0.5 23 -3.543 18.78 1 0 1 1
21 235.4 238 89.4 0.5 28 -3.976 15.06 1 1 1 0
Results of Parameterisation:
----------------------------
Total reduction of square residuals 5.063e+05
Relative precision obtained: 0.01185
Error obtained: 235.4
Multiple correlation coefficient: 0.9995
Reduced Chi square over sample: 0.4975
Maximum residual value: 3.243
Minimum residual value: -2.59
Estimated root mean square: 0.6862
Maximum powers used: 1 2 4 2
Function codes of candidate functions.
1: considered, 2: too little contribution, 3: accepted.
3333333333 1133311113 1313113131 1113311111 1111111111 1113111111
1111111111 1111111111 1111111111 1111111111 1111111111 1111111111
111111
Loop over candidates stopped because max allowed studies reached
Coefficients:
-------------
# Value Error Powers
---------------------------------------
0 -4.371 0.08798 0 0 0 0
1 43.15 0.1601 1 0 0 0
2 13.43 0.08032 0 0 0 1
3 13.46 0.07805 0 0 1 0
4 13.4 0.08054 0 1 0 0
5 13.33 0.1423 1 1 0 0
6 13.3 0.1367 1 0 0 1
7 13.35 0.1331 1 0 1 0
8 4.497 0.1511 0 0 0 2
9 4.639 0.1585 0 2 0 0
10 4.89 0.164 0 0 4 0
11 -3.7 0.1364 0 0 1 1
12 -3.986 0.1438 0 1 0 1
13 -3.862 0.1458 0 1 1 0
14 4.361 0.2614 1 0 0 2
15 -4.026 0.2555 1 1 0 1
16 4.57 0.2477 1 0 2 0
17 4.698 0.2729 1 2 0 0
18 2.838 0.2525 0 1 1 1
19 -3.489 0.2292 1 0 1 1
20 -3.976 0.2566 1 1 1 0
Results of Fit:
---------------
Test sample size: 2100
Multiple correlation coefficient: 0.9994
Relative precision obtained: 0.0001753
Error obtained: 1275
Reduced Chi square over sample: 2.47
FCN=1 FROM MIGRAD STATUS=CONVERGED 861 CALLS 862 TOTAL
EDM=1.67352e-06 STRATEGY= 1 ERROR MATRIX ACCURATE
EXT PARAMETER PHYSICAL LIMITS
NO. NAME VALUE ERROR NEGATIVE POSITIVE
1 coeff00 -4.39851e+00 4.44260e-02
2 coeff01 4.31493e+01 8.56451e-02
3 coeff02 1.34121e+01 3.78565e-02
4 coeff03 1.34869e+01 3.80951e-02
5 coeff04 1.33954e+01 3.74054e-02
6 coeff05 1.32280e+01 6.57916e-02
7 coeff06 1.33441e+01 6.75855e-02
8 coeff07 1.32943e+01 6.66410e-02
9 coeff08 4.52254e+00 7.39945e-02
10 coeff09 4.65912e+00 7.21745e-02
11 coeff10 4.94808e+00 8.14935e-02
12 coeff11 -4.02586e+00 6.53780e-02
13 coeff12 -4.04534e+00 6.55396e-02
14 coeff13 -3.93856e+00 6.51725e-02
15 coeff14 4.42141e+00 1.30526e-01
16 coeff15 -4.00581e+00 1.17191e-01
17 coeff16 4.62595e+00 1.30233e-01
18 coeff17 4.37782e+00 1.28579e-01
19 coeff18 3.51629e+00 1.13771e-01
20 coeff19 -4.11068e+00 1.17446e-01
21 coeff20 -3.82302e+00 1.16486e-01
Coefficients:
-------------
# Value Error Powers
---------------------------------------
0 -4.399 0.04443 0 0 0 0
1 43.15 0.08565 1 0 0 0
2 13.41 0.03786 0 0 0 1
3 13.49 0.0381 0 0 1 0
4 13.4 0.03741 0 1 0 0
5 13.23 0.06579 1 1 0 0
6 13.34 0.06759 1 0 0 1
7 13.29 0.06664 1 0 1 0
8 4.523 0.07399 0 0 0 2
9 4.659 0.07217 0 2 0 0
10 4.948 0.08149 0 0 4 0
11 -4.026 0.06538 0 0 1 1
12 -4.045 0.06554 0 1 0 1
13 -3.939 0.06517 0 1 1 0
14 4.421 0.1305 1 0 0 2
15 -4.006 0.1172 1 1 0 1
16 4.626 0.1302 1 0 2 0
17 4.378 0.1286 1 2 0 0
18 3.516 0.1138 0 1 1 1
19 -4.111 0.1174 1 0 1 1
20 -3.823 0.1165 1 1 1 0
Writing on file "MDF.C" ... done
multidimfit .............................................. OK
(int) 0
{
double upp[5] = { 10, 10, 10, 10, 1 };
double low[5] = { 0, 0, 0, 0, .1 };
for (int i = 0; i < 4; i++)
}
{
-4.37056,
43.1468,
13.432,
13.4632,
13.3964,
13.328,
13.3016,
13.3519,
4.49724,
4.63876,
4.89036,
-3.69982,
-3.98618,
-3.86195,
4.36054,
-4.02597,
4.57037,
4.69845,
2.83819,
-3.48855,
-3.97612
};
-4.399,
43.15,
13.41,
13.49,
13.4,
13.23,
13.34,
13.29,
4.523,
4.659,
4.948,
-4.026,
-4.045,
-3.939,
4.421,
-4.006,
4.626,
4.378,
3.516,
-4.111,
-3.823,
};
1, 1, 1, 1,
2, 1, 1, 1,
1, 1, 1, 2,
1, 1, 2, 1,
1, 2, 1, 1,
2, 2, 1, 1,
2, 1, 1, 2,
2, 1, 2, 1,
1, 1, 1, 3,
1, 3, 1, 1,
1, 1, 5, 1,
1, 1, 2, 2,
1, 2, 1, 2,
1, 2, 2, 1,
2, 1, 1, 3,
2, 2, 1, 2,
2, 1, 3, 1,
2, 3, 1, 1,
1, 2, 2, 2,
2, 1, 2, 2,
2, 2, 2, 1
};
int nc =
fit->GetNCoefficients();
int nv =
fit->GetNVariables();
if (nc != 21) return 1;
int k = 0;
for (int i=0;i<nc;i++) {
if (doFit) {
}
else {
}
k++;
}
}
gROOT->ProcessLine(
".L MDF.C");
double refMDF = (doFit) ? 43.95 : 43.98;
std::intptr_t
iret =
gROOT->ProcessLine(
" double xvalues[] = {5,5,5,5}; double result=MDF(xvalues); &result;");
return 0;
}
{
std::cout << "*************************************************" << std::endl;
std::cout << "* Multidimensional Fit *" << std::endl;
std::cout << "* *" << std::endl;
std::cout << "* By Christian Holm <cholm@nbi.dk> 14/10/00 *" << std::endl;
std::cout << "*************************************************" << std::endl;
std::cout << std::endl;
int nData = 500;
fit->SetMaxFunctions(1000);
fit->SetMinRelativeError(.01);
printf(
"======================================\n");
int i;
for (i = 0; i < nData ; i++) {
}
fit->FindParameterization();
for (i = 0; i <
nVars; i++) {
xMax[i] = (*
fit->GetMaxVariables())(i);
xMin[i] = (*
fit->GetMinVariables())(i);
}
nData =
fit->GetNCoefficients() * 100;
for (i = 0; i < nData ; i++) {
break;
else
i--;
}
if (doFit)
if (!compare) {
printf(
"\nmultidimfit .............................................. OK\n");
} else {
printf(
"\nmultidimfit .............................................. fails case %d\n",compare);
}
return compare;
}
ROOT::Detail::TRangeCast< T, true > TRangeDynCast
TRangeDynCast is an adapter class that allows the typed iteration through a TCollection.
R__EXTERN TRandom * gRandom
A file, usually with extension .root, that stores data and code in the form of serialized objects in ...
Multidimensional Fits in ROOT.
This is the base class for the ROOT Random number generators.
virtual Double_t Gaus(Double_t mean=0, Double_t sigma=1)
Samples a random number from the standard Normal (Gaussian) Distribution with the given mean and sigm...
Double_t Rndm() override
Machine independent random number generator.
fit(model, train_loader, val_loader, num_epochs, batch_size, optimizer, criterion, save_best, scheduler)
Double_t Sqrt(Double_t x)
Returns the square root of x.
Bool_t AreEqualRel(Double_t af, Double_t bf, Double_t relPrec)
Comparing floating points.
Short_t Abs(Short_t d)
Returns the absolute value of parameter Short_t d.