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Posted to commits@commons.apache.org by er...@apache.org on 2021/08/09 16:41:35 UTC

[commons-math] 03/09: Delete unused test data files.

This is an automated email from the ASF dual-hosted git repository.

erans pushed a commit to branch master
in repository https://gitbox.apache.org/repos/asf/commons-math.git

commit 970834f9b90a27b3d2d8f3de800b677e5066dc0b
Author: Gilles Sadowski <gi...@gmail.com>
AuthorDate: Mon Aug 9 11:40:21 2021 +0200

    Delete unused test data files.
---
 .../math4/legacy/optimization/general/Hahn1.dat    | 296 ---------------------
 .../math4/legacy/optimization/general/Kirby2.dat   | 211 ---------------
 .../math4/legacy/optimization/general/Lanczos1.dat |  84 ------
 .../math4/legacy/optimization/general/MGH17.dat    |  93 -------
 4 files changed, 684 deletions(-)

diff --git a/commons-math-legacy/src/test/resources/org/apache/commons/math4/legacy/optimization/general/Hahn1.dat b/commons-math-legacy/src/test/resources/org/apache/commons/math4/legacy/optimization/general/Hahn1.dat
deleted file mode 100644
index 0e493a4..0000000
--- a/commons-math-legacy/src/test/resources/org/apache/commons/math4/legacy/optimization/general/Hahn1.dat
+++ /dev/null
@@ -1,296 +0,0 @@
-NIST/ITL StRD
-Dataset Name:  Hahn1             (Hahn1.dat)
-
-File Format:   ASCII
-               Starting Values   (lines 41 to  47)
-               Certified Values  (lines 41 to  52)
-               Data              (lines 61 to 296)
-
-Procedure:     Nonlinear Least Squares Regression
-
-Description:   These data are the result of a NIST study involving
-               the thermal expansion of copper.  The response 
-               variable is the coefficient of thermal expansion, and
-               the predictor variable is temperature in degrees 
-               kelvin.
-
-
-Reference:     Hahn, T., NIST (197?). 
-               Copper Thermal Expansion Study.
-
-
-
-
-
-Data:          1 Response  (y = coefficient of thermal expansion)
-               1 Predictor (x = temperature, degrees kelvin)
-               236 Observations
-               Average Level of Difficulty
-               Observed Data
-
-Model:         Rational Class (cubic/cubic)
-               7 Parameters (b1 to b7)
-
-               y = (b1+b2*x+b3*x**2+b4*x**3) /
-                   (1+b5*x+b6*x**2+b7*x**3)  +  e
-
-
-          Starting values                  Certified Values
-
-        Start 1     Start 2           Parameter     Standard Deviation
-  b1 =   10           1            1.0776351733E+00  1.7070154742E-01
-  b2 =   -1          -0.1         -1.2269296921E-01  1.2000289189E-02
-  b3 =    0.05        0.005        4.0863750610E-03  2.2508314937E-04
-  b4 =   -0.00001    -0.000001    -1.4262662514E-06  2.7578037666E-07
-  b5 =   -0.05       -0.005       -5.7609940901E-03  2.4712888219E-04
-  b6 =    0.001       0.0001       2.4053735503E-04  1.0449373768E-05
-  b7 =   -0.000001   -0.0000001   -1.2314450199E-07  1.3027335327E-08
-
-Residual Sum of Squares:                    1.5324382854E+00 
-Residual Standard Deviation:                8.1803852243E-02
-Degrees of Freedom:                               229
-Number of Observations:                           236
-
-
-
-
-
-
-  
-Data:   y              x
-        .591E0         24.41E0  
-       1.547E0         34.82E0  
-       2.902E0         44.09E0  
-       2.894E0         45.07E0  
-       4.703E0         54.98E0  
-       6.307E0         65.51E0  
-       7.03E0          70.53E0  
-       7.898E0         75.70E0  
-       9.470E0         89.57E0  
-       9.484E0         91.14E0  
-      10.072E0         96.40E0  
-      10.163E0         97.19E0  
-      11.615E0        114.26E0  
-      12.005E0        120.25E0  
-      12.478E0        127.08E0  
-      12.982E0        133.55E0  
-      12.970E0        133.61E0  
-      13.926E0        158.67E0  
-      14.452E0        172.74E0  
-      14.404E0        171.31E0  
-      15.190E0        202.14E0  
-      15.550E0        220.55E0  
-      15.528E0        221.05E0  
-      15.499E0        221.39E0  
-      16.131E0        250.99E0  
-      16.438E0        268.99E0  
-      16.387E0        271.80E0  
-      16.549E0        271.97E0  
-      16.872E0        321.31E0  
-      16.830E0        321.69E0  
-      16.926E0        330.14E0  
-      16.907E0        333.03E0  
-      16.966E0        333.47E0  
-      17.060E0        340.77E0  
-      17.122E0        345.65E0  
-      17.311E0        373.11E0  
-      17.355E0        373.79E0  
-      17.668E0        411.82E0  
-      17.767E0        419.51E0  
-      17.803E0        421.59E0  
-      17.765E0        422.02E0  
-      17.768E0        422.47E0  
-      17.736E0        422.61E0  
-      17.858E0        441.75E0  
-      17.877E0        447.41E0  
-      17.912E0        448.7E0   
-      18.046E0        472.89E0  
-      18.085E0        476.69E0  
-      18.291E0        522.47E0  
-      18.357E0        522.62E0  
-      18.426E0        524.43E0  
-      18.584E0        546.75E0  
-      18.610E0        549.53E0  
-      18.870E0        575.29E0  
-      18.795E0        576.00E0  
-      19.111E0        625.55E0  
-        .367E0         20.15E0  
-        .796E0         28.78E0  
-       0.892E0         29.57E0  
-       1.903E0         37.41E0  
-       2.150E0         39.12E0  
-       3.697E0         50.24E0  
-       5.870E0         61.38E0  
-       6.421E0         66.25E0  
-       7.422E0         73.42E0  
-       9.944E0         95.52E0  
-      11.023E0        107.32E0  
-      11.87E0         122.04E0  
-      12.786E0        134.03E0  
-      14.067E0        163.19E0  
-      13.974E0        163.48E0  
-      14.462E0        175.70E0  
-      14.464E0        179.86E0  
-      15.381E0        211.27E0  
-      15.483E0        217.78E0  
-      15.59E0         219.14E0  
-      16.075E0        262.52E0  
-      16.347E0        268.01E0  
-      16.181E0        268.62E0  
-      16.915E0        336.25E0  
-      17.003E0        337.23E0  
-      16.978E0        339.33E0  
-      17.756E0        427.38E0  
-      17.808E0        428.58E0  
-      17.868E0        432.68E0  
-      18.481E0        528.99E0  
-      18.486E0        531.08E0  
-      19.090E0        628.34E0  
-      16.062E0        253.24E0  
-      16.337E0        273.13E0  
-      16.345E0        273.66E0  
-      16.388E0        282.10E0  
-      17.159E0        346.62E0  
-      17.116E0        347.19E0  
-      17.164E0        348.78E0  
-      17.123E0        351.18E0  
-      17.979E0        450.10E0  
-      17.974E0        450.35E0  
-      18.007E0        451.92E0  
-      17.993E0        455.56E0  
-      18.523E0        552.22E0  
-      18.669E0        553.56E0  
-      18.617E0        555.74E0  
-      19.371E0        652.59E0  
-      19.330E0        656.20E0  
-       0.080E0         14.13E0  
-       0.248E0         20.41E0  
-       1.089E0         31.30E0  
-       1.418E0         33.84E0  
-       2.278E0         39.70E0  
-       3.624E0         48.83E0  
-       4.574E0         54.50E0  
-       5.556E0         60.41E0  
-       7.267E0         72.77E0  
-       7.695E0         75.25E0  
-       9.136E0         86.84E0  
-       9.959E0         94.88E0  
-       9.957E0         96.40E0  
-      11.600E0        117.37E0  
-      13.138E0        139.08E0  
-      13.564E0        147.73E0  
-      13.871E0        158.63E0  
-      13.994E0        161.84E0  
-      14.947E0        192.11E0  
-      15.473E0        206.76E0  
-      15.379E0        209.07E0  
-      15.455E0        213.32E0  
-      15.908E0        226.44E0  
-      16.114E0        237.12E0  
-      17.071E0        330.90E0  
-      17.135E0        358.72E0  
-      17.282E0        370.77E0  
-      17.368E0        372.72E0  
-      17.483E0        396.24E0  
-      17.764E0        416.59E0  
-      18.185E0        484.02E0  
-      18.271E0        495.47E0  
-      18.236E0        514.78E0  
-      18.237E0        515.65E0  
-      18.523E0        519.47E0  
-      18.627E0        544.47E0  
-      18.665E0        560.11E0  
-      19.086E0        620.77E0  
-       0.214E0         18.97E0  
-       0.943E0         28.93E0  
-       1.429E0         33.91E0  
-       2.241E0         40.03E0  
-       2.951E0         44.66E0  
-       3.782E0         49.87E0  
-       4.757E0         55.16E0  
-       5.602E0         60.90E0  
-       7.169E0         72.08E0  
-       8.920E0         85.15E0  
-      10.055E0         97.06E0  
-      12.035E0        119.63E0  
-      12.861E0        133.27E0  
-      13.436E0        143.84E0  
-      14.167E0        161.91E0  
-      14.755E0        180.67E0  
-      15.168E0        198.44E0  
-      15.651E0        226.86E0  
-      15.746E0        229.65E0  
-      16.216E0        258.27E0  
-      16.445E0        273.77E0  
-      16.965E0        339.15E0  
-      17.121E0        350.13E0  
-      17.206E0        362.75E0  
-      17.250E0        371.03E0  
-      17.339E0        393.32E0  
-      17.793E0        448.53E0  
-      18.123E0        473.78E0  
-      18.49E0         511.12E0  
-      18.566E0        524.70E0  
-      18.645E0        548.75E0  
-      18.706E0        551.64E0  
-      18.924E0        574.02E0  
-      19.1E0          623.86E0  
-       0.375E0         21.46E0  
-       0.471E0         24.33E0  
-       1.504E0         33.43E0  
-       2.204E0         39.22E0  
-       2.813E0         44.18E0  
-       4.765E0         55.02E0  
-       9.835E0         94.33E0  
-      10.040E0         96.44E0  
-      11.946E0        118.82E0  
-      12.596E0        128.48E0  
-      13.303E0        141.94E0  
-      13.922E0        156.92E0  
-      14.440E0        171.65E0  
-      14.951E0        190.00E0  
-      15.627E0        223.26E0  
-      15.639E0        223.88E0  
-      15.814E0        231.50E0  
-      16.315E0        265.05E0  
-      16.334E0        269.44E0  
-      16.430E0        271.78E0  
-      16.423E0        273.46E0  
-      17.024E0        334.61E0  
-      17.009E0        339.79E0  
-      17.165E0        349.52E0  
-      17.134E0        358.18E0  
-      17.349E0        377.98E0  
-      17.576E0        394.77E0  
-      17.848E0        429.66E0  
-      18.090E0        468.22E0  
-      18.276E0        487.27E0  
-      18.404E0        519.54E0  
-      18.519E0        523.03E0  
-      19.133E0        612.99E0  
-      19.074E0        638.59E0  
-      19.239E0        641.36E0  
-      19.280E0        622.05E0  
-      19.101E0        631.50E0  
-      19.398E0        663.97E0  
-      19.252E0        646.9E0   
-      19.89E0         748.29E0  
-      20.007E0        749.21E0  
-      19.929E0        750.14E0  
-      19.268E0        647.04E0  
-      19.324E0        646.89E0  
-      20.049E0        746.9E0   
-      20.107E0        748.43E0  
-      20.062E0        747.35E0  
-      20.065E0        749.27E0  
-      19.286E0        647.61E0  
-      19.972E0        747.78E0  
-      20.088E0        750.51E0  
-      20.743E0        851.37E0  
-      20.83E0         845.97E0  
-      20.935E0        847.54E0  
-      21.035E0        849.93E0  
-      20.93E0         851.61E0  
-      21.074E0        849.75E0  
-      21.085E0        850.98E0  
-      20.935E0        848.23E0  
diff --git a/commons-math-legacy/src/test/resources/org/apache/commons/math4/legacy/optimization/general/Kirby2.dat b/commons-math-legacy/src/test/resources/org/apache/commons/math4/legacy/optimization/general/Kirby2.dat
deleted file mode 100644
index 75cd80f..0000000
--- a/commons-math-legacy/src/test/resources/org/apache/commons/math4/legacy/optimization/general/Kirby2.dat
+++ /dev/null
@@ -1,211 +0,0 @@
-NIST/ITL StRD
-Dataset Name:  Kirby2            (Kirby2.dat)
-
-File Format:   ASCII
-               Starting Values   (lines 41 to  45)
-               Certified Values  (lines 41 to  50)
-               Data              (lines 61 to 211)
-
-Procedure:     Nonlinear Least Squares Regression
-
-Description:   These data are the result of a NIST study involving
-               scanning electron microscope line with standards.
-
-
-Reference:     Kirby, R., NIST (197?).  
-               Scanning electron microscope line width standards.
-
-
-
-
-
-
-
-
-Data:          1 Response  (y)
-               1 Predictor (x)
-               151 Observations
-               Average Level of Difficulty
-               Observed Data
-
-Model:         Rational Class (quadratic/quadratic)
-               5 Parameters (b1 to b5)
-
-               y = (b1 + b2*x + b3*x**2) /
-                   (1 + b4*x + b5*x**2)  +  e
-
- 
-          Starting values                  Certified Values
- 
-        Start 1     Start 2           Parameter     Standard Deviation
-  b1 =    2           1.5          1.6745063063E+00  8.7989634338E-02
-  b2 =   -0.1        -0.15        -1.3927397867E-01  4.1182041386E-03
-  b3 =    0.003       0.0025       2.5961181191E-03  4.1856520458E-05
-  b4 =   -0.001      -0.0015      -1.7241811870E-03  5.8931897355E-05
-  b5 =    0.00001     0.00002      2.1664802578E-05  2.0129761919E-07
-
-Residual Sum of Squares:                    3.9050739624E+00
-Residual Standard Deviation:                1.6354535131E-01
-Degrees of Freedom:                               146
-Number of Observations:                           151
-
-
-
-
-
-
-
-
-
-Data:   y             x
-       0.0082E0      9.65E0
-       0.0112E0     10.74E0
-       0.0149E0     11.81E0
-       0.0198E0     12.88E0
-       0.0248E0     14.06E0
-       0.0324E0     15.28E0
-       0.0420E0     16.63E0
-       0.0549E0     18.19E0
-       0.0719E0     19.88E0
-       0.0963E0     21.84E0
-       0.1291E0     24.00E0
-       0.1710E0     26.25E0
-       0.2314E0     28.86E0
-       0.3227E0     31.85E0
-       0.4809E0     35.79E0
-       0.7084E0     40.18E0
-       1.0220E0     44.74E0
-       1.4580E0     49.53E0
-       1.9520E0     53.94E0
-       2.5410E0     58.29E0
-       3.2230E0     62.63E0
-       3.9990E0     67.03E0
-       4.8520E0     71.25E0
-       5.7320E0     75.22E0
-       6.7270E0     79.33E0
-       7.8350E0     83.56E0
-       9.0250E0     87.75E0
-      10.2670E0     91.93E0
-      11.5780E0     96.10E0
-      12.9440E0    100.28E0
-      14.3770E0    104.46E0
-      15.8560E0    108.66E0
-      17.3310E0    112.71E0
-      18.8850E0    116.88E0
-      20.5750E0    121.33E0
-      22.3200E0    125.79E0
-      22.3030E0    125.79E0
-      23.4600E0    128.74E0
-      24.0600E0    130.27E0
-      25.2720E0    133.33E0
-      25.8530E0    134.79E0
-      27.1100E0    137.93E0
-      27.6580E0    139.33E0
-      28.9240E0    142.46E0
-      29.5110E0    143.90E0
-      30.7100E0    146.91E0
-      31.3500E0    148.51E0
-      32.5200E0    151.41E0
-      33.2300E0    153.17E0
-      34.3300E0    155.97E0
-      35.0600E0    157.76E0
-      36.1700E0    160.56E0
-      36.8400E0    162.30E0
-      38.0100E0    165.21E0
-      38.6700E0    166.90E0
-      39.8700E0    169.92E0
-      40.0300E0    170.32E0
-      40.5000E0    171.54E0
-      41.3700E0    173.79E0
-      41.6700E0    174.57E0
-      42.3100E0    176.25E0
-      42.7300E0    177.34E0
-      43.4600E0    179.19E0
-      44.1400E0    181.02E0
-      44.5500E0    182.08E0
-      45.2200E0    183.88E0
-      45.9200E0    185.75E0
-      46.3000E0    186.80E0
-      47.0000E0    188.63E0
-      47.6800E0    190.45E0
-      48.0600E0    191.48E0
-      48.7400E0    193.35E0
-      49.4100E0    195.22E0
-      49.7600E0    196.23E0
-      50.4300E0    198.05E0
-      51.1100E0    199.97E0
-      51.5000E0    201.06E0
-      52.1200E0    202.83E0
-      52.7600E0    204.69E0
-      53.1800E0    205.86E0
-      53.7800E0    207.58E0
-      54.4600E0    209.50E0
-      54.8300E0    210.65E0
-      55.4000E0    212.33E0
-      56.4300E0    215.43E0
-      57.0300E0    217.16E0
-      58.0000E0    220.21E0
-      58.6100E0    221.98E0
-      59.5800E0    225.06E0
-      60.1100E0    226.79E0
-      61.1000E0    229.92E0
-      61.6500E0    231.69E0
-      62.5900E0    234.77E0
-      63.1200E0    236.60E0
-      64.0300E0    239.63E0
-      64.6200E0    241.50E0
-      65.4900E0    244.48E0
-      66.0300E0    246.40E0
-      66.8900E0    249.35E0
-      67.4200E0    251.32E0
-      68.2300E0    254.22E0
-      68.7700E0    256.24E0
-      69.5900E0    259.11E0
-      70.1100E0    261.18E0
-      70.8600E0    264.02E0
-      71.4300E0    266.13E0
-      72.1600E0    268.94E0
-      72.7000E0    271.09E0
-      73.4000E0    273.87E0
-      73.9300E0    276.08E0
-      74.6000E0    278.83E0
-      75.1600E0    281.08E0
-      75.8200E0    283.81E0
-      76.3400E0    286.11E0
-      76.9800E0    288.81E0
-      77.4800E0    291.08E0
-      78.0800E0    293.75E0
-      78.6000E0    295.99E0
-      79.1700E0    298.64E0
-      79.6200E0    300.84E0
-      79.8800E0    302.02E0
-      80.1900E0    303.48E0
-      80.6600E0    305.65E0
-      81.2200E0    308.27E0
-      81.6600E0    310.41E0
-      82.1600E0    313.01E0
-      82.5900E0    315.12E0
-      83.1400E0    317.71E0
-      83.5000E0    319.79E0
-      84.0000E0    322.36E0
-      84.4000E0    324.42E0
-      84.8900E0    326.98E0
-      85.2600E0    329.01E0
-      85.7400E0    331.56E0
-      86.0700E0    333.56E0
-      86.5400E0    336.10E0
-      86.8900E0    338.08E0
-      87.3200E0    340.60E0
-      87.6500E0    342.57E0
-      88.1000E0    345.08E0
-      88.4300E0    347.02E0
-      88.8300E0    349.52E0
-      89.1200E0    351.44E0
-      89.5400E0    353.93E0
-      89.8500E0    355.83E0
-      90.2500E0    358.32E0
-      90.5500E0    360.20E0
-      90.9300E0    362.67E0
-      91.2000E0    364.53E0
-      91.5500E0    367.00E0
-      92.2000E0    371.30E0
diff --git a/commons-math-legacy/src/test/resources/org/apache/commons/math4/legacy/optimization/general/Lanczos1.dat b/commons-math-legacy/src/test/resources/org/apache/commons/math4/legacy/optimization/general/Lanczos1.dat
deleted file mode 100644
index d23d5e4..0000000
--- a/commons-math-legacy/src/test/resources/org/apache/commons/math4/legacy/optimization/general/Lanczos1.dat
+++ /dev/null
@@ -1,84 +0,0 @@
-NIST/ITL StRD
-Dataset Name:  Lanczos1          (Lanczos1.dat)
-
-File Format:   ASCII
-               Starting Values   (lines 41 to 46)
-               Certified Values  (lines 41 to 51)
-               Data              (lines 61 to 84)
-
-Procedure:     Nonlinear Least Squares Regression
-
-Description:   These data are taken from an example discussed in
-               Lanczos (1956).  The data were generated to 14-digits
-               of accuracy using
-               f(x) = 0.0951*exp(-x) + 0.8607*exp(-3*x) 
-                                     + 1.5576*exp(-5*x).
-
-
-Reference:     Lanczos, C. (1956).
-               Applied Analysis.
-               Englewood Cliffs, NJ:  Prentice Hall, pp. 272-280.
-
-
-
-
-Data:          1 Response  (y)
-               1 Predictor (x)
-               24 Observations
-               Average Level of Difficulty
-               Generated Data
-
-Model:         Exponential Class
-               6 Parameters (b1 to b6)
-
-               y = b1*exp(-b2*x) + b3*exp(-b4*x) + b5*exp(-b6*x)  +  e
-
-
- 
-          Starting values                  Certified Values
- 
-        Start 1     Start 2           Parameter     Standard Deviation
-  b1 =   1.2         0.5           9.5100000027E-02  5.3347304234E-11
-  b2 =   0.3         0.7           1.0000000001E+00  2.7473038179E-10
-  b3 =   5.6         3.6           8.6070000013E-01  1.3576062225E-10
-  b4 =   5.5         4.2           3.0000000002E+00  3.3308253069E-10
-  b5 =   6.5         4             1.5575999998E+00  1.8815731448E-10
-  b6 =   7.6         6.3           5.0000000001E+00  1.1057500538E-10
-
-Residual Sum of Squares:                    1.4307867721E-25
-Residual Standard Deviation:                8.9156129349E-14
-Degrees of Freedom:                                18
-Number of Observations:                            24
-
-
-
-
-
-
-
-
-Data:   y                   x
-       2.513400000000E+00  0.000000000000E+00
-       2.044333373291E+00  5.000000000000E-02
-       1.668404436564E+00  1.000000000000E-01
-       1.366418021208E+00  1.500000000000E-01
-       1.123232487372E+00  2.000000000000E-01
-       9.268897180037E-01  2.500000000000E-01
-       7.679338563728E-01  3.000000000000E-01
-       6.388775523106E-01  3.500000000000E-01
-       5.337835317402E-01  4.000000000000E-01
-       4.479363617347E-01  4.500000000000E-01
-       3.775847884350E-01  5.000000000000E-01
-       3.197393199326E-01  5.500000000000E-01
-       2.720130773746E-01  6.000000000000E-01
-       2.324965529032E-01  6.500000000000E-01
-       1.996589546065E-01  7.000000000000E-01
-       1.722704126914E-01  7.500000000000E-01
-       1.493405660168E-01  8.000000000000E-01
-       1.300700206922E-01  8.500000000000E-01
-       1.138119324644E-01  9.000000000000E-01
-       1.000415587559E-01  9.500000000000E-01
-       8.833209084540E-02  1.000000000000E+00
-       7.833544019350E-02  1.050000000000E+00
-       6.976693743449E-02  1.100000000000E+00
-       6.239312536719E-02  1.150000000000E+00
diff --git a/commons-math-legacy/src/test/resources/org/apache/commons/math4/legacy/optimization/general/MGH17.dat b/commons-math-legacy/src/test/resources/org/apache/commons/math4/legacy/optimization/general/MGH17.dat
deleted file mode 100644
index 584f73c..0000000
--- a/commons-math-legacy/src/test/resources/org/apache/commons/math4/legacy/optimization/general/MGH17.dat
+++ /dev/null
@@ -1,93 +0,0 @@
-NIST/ITL StRD
-Dataset Name:  MGH17             (MGH17.dat)
-
-File Format:   ASCII
-               Starting Values   (lines 41 to 45)
-               Certified Values  (lines 41 to 50)
-               Data              (lines 61 to 93)
-
-Procedure:     Nonlinear Least Squares Regression
-
-Description:   This problem was found to be difficult for some very
-               good algorithms.
-
-               See More, J. J., Garbow, B. S., and Hillstrom, K. E.
-               (1981).  Testing unconstrained optimization software.
-               ACM Transactions on Mathematical Software. 7(1):
-               pp. 17-41.
-
-Reference:     Osborne, M. R. (1972).  
-               Some aspects of nonlinear least squares 
-               calculations.  In Numerical Methods for Nonlinear 
-               Optimization, Lootsma (Ed).  
-               New York, NY:  Academic Press, pp. 171-189.
- 
-Data:          1 Response  (y)
-               1 Predictor (x)
-               33 Observations
-               Average Level of Difficulty
-               Generated Data
-
-Model:         Exponential Class
-               5 Parameters (b1 to b5)
-
-               y = b1 + b2*exp[-x*b4] + b3*exp[-x*b5]  +  e
-
-
-
-          Starting values                  Certified Values
-
-        Start 1     Start 2           Parameter     Standard Deviation
-  b1 =     50         0.5          3.7541005211E-01  2.0723153551E-03
-  b2 =    150         1.5          1.9358469127E+00  2.2031669222E-01
-  b3 =   -100        -1           -1.4646871366E+00  2.2175707739E-01
-  b4 =      1          0.01        1.2867534640E-02  4.4861358114E-04
-  b5 =      2          0.02        2.2122699662E-02  8.9471996575E-04
-
-Residual Sum of Squares:                    5.4648946975E-05
-Residual Standard Deviation:                1.3970497866E-03
-Degrees of Freedom:                                28
-Number of Observations:                            33
-
-
-
-
-
-
-
-
-
-Data:  y               x
-      8.440000E-01    0.000000E+00
-      9.080000E-01    1.000000E+01
-      9.320000E-01    2.000000E+01
-      9.360000E-01    3.000000E+01
-      9.250000E-01    4.000000E+01
-      9.080000E-01    5.000000E+01
-      8.810000E-01    6.000000E+01
-      8.500000E-01    7.000000E+01
-      8.180000E-01    8.000000E+01
-      7.840000E-01    9.000000E+01
-      7.510000E-01    1.000000E+02
-      7.180000E-01    1.100000E+02
-      6.850000E-01    1.200000E+02
-      6.580000E-01    1.300000E+02
-      6.280000E-01    1.400000E+02
-      6.030000E-01    1.500000E+02
-      5.800000E-01    1.600000E+02
-      5.580000E-01    1.700000E+02
-      5.380000E-01    1.800000E+02
-      5.220000E-01    1.900000E+02
-      5.060000E-01    2.000000E+02
-      4.900000E-01    2.100000E+02
-      4.780000E-01    2.200000E+02
-      4.670000E-01    2.300000E+02
-      4.570000E-01    2.400000E+02
-      4.480000E-01    2.500000E+02
-      4.380000E-01    2.600000E+02
-      4.310000E-01    2.700000E+02
-      4.240000E-01    2.800000E+02
-      4.200000E-01    2.900000E+02
-      4.140000E-01    3.000000E+02
-      4.110000E-01    3.100000E+02
-      4.060000E-01    3.200000E+02