Use Automated Capability Analysis to have Minitab Statistical Software help to determine a reasonable method that fits the data, while considering the usefulness and practicality of the method. The analysis considers distributions first, then transformations. If no model fits the data, the analysis uses the nonparametric method.
To look at more detail about the data, use Individual Distribution Identification. The analysis provides goodness-of-fit measures for different methods to support your decision about which method to use.
Use Automated Capability Analysis to assess the compatibility of several methods with the data and make a reasonable selection.
The analysis considers distributions, then transformations. If no parametric method fits the data, then the analysis uses the nonparametric method. The results include a capability report for the first method that provides a reasonable fit. The table of distribution results shows the order of the evaluation of the methods, information about the fit of the methods, and capability statistics. You can produce results for an alternative method to investigate the methods in more detail.
An engineer collects data on the extent of warping in ceramic tiles. The data distribution is unknown, so she performs Individual Distribution Identification on the data to determine a reasonable method for a capability analysis.
The table of distribution results shows the order of the evaluation of the methods. In the first row, the conclusion for the Anderson-Darling test is that the data do not follow a normal distribution at the 0.05 level of significance because the p-value is less than 0.05. In the second row, the conclusion for the Anderson-Darling test is that the Weibull distribution is a reasonable fit to the data because the p-value is greater than 0.05. The capability results are for the Weibull distribution because the Weibull distribution is the first method in the list that provides a reasonable fit.
The engineers use process knowledge to consider whether the Weibull distribution is a reasonable method. For example, the Weibull distribution has a boundary at 0. In the data, 0 is a boundary that represents an unwarped tile.
The analysis includes a capability analysis that uses the Weibull distribution.
Distribution | Location | Scale | Threshold | Shape | P | Ppk | Cpk |
---|---|---|---|---|---|---|---|
Normal | 2.9231 | 1.7860 | 0.0100421 | 0.5743 | 0.5838 | ||
Weibull* | 3.2781 | 1.6937 | >0.25 | 0.5133 | |||
Lognormal | 0.8443 | 0.7444 | <0.005 | 0.4242 | |||
Smallest Extreme Value | 3.8641 | 1.9924 | <0.01 | 0.5362 | |||
Largest Extreme Value | 2.0958 | 1.4196 | 0.212835 | 0.5130 | |||
Gamma | 1.2477 | 2.3428 | 0.238337 | 0.4851 | |||
Logistic | 2.7959 | 1.0162 | 0.0127347 | 0.5799 | |||
Loglogistic | 0.9097 | 0.4217 | <0.005 | 0.4090 | |||
Exponential | 2.9231 | <0.0025 | 0.3780 | ||||
3-Parameter Weibull | 2.9969 | 0.2099 | 1.5049 | 0.467097 | 0.4980 | ||
3-Parameter Lognormal | 1.3788 | 0.4184 | -1.4002 | 0.4961 | |||
3-Parameter Gamma | 1.2314 | -0.0197 | 2.3898 | 0.4864 | |||
3-Parameter Loglogistic | 1.3043 | 0.2700 | -1.0940 | 0.4656 | |||
2-Parameter Exponential | 2.6679 | 0.2552 | <0.01 | 0.3982 | |||
Box-Cox transformation | 1.6237 | 0.5380 | 0.574337 | 0.5116 | 0.5214 | ||
Johnson transformation | 0.0112 | 0.9949 | 0.798895 | 0.4959 | |||
Nonparametric | 0.6187 |
Use Individual Distribution Identification prior to performing a capability analysis to determine which distribution or transformation is most appropriate for your data. If no distribution or transformation is compatible with your data, consider Nonparametric Capability Analysis.
An engineer collects data on the extent of warping in ceramic tiles. The data distribution is unknown, so she performs Individual Distribution Identification on the data to compare goodness-of-fit between the exponential distribution and the normal distribution after a Johnson transformation.