![]() |
|
| Home > Tools & Templates | Search: | for |
|
Nonparametric: Distribution-Free, Not Assumption-Free
B Nonparametric or distribution-free methods have several advantages or benefits. They may be used on all types of data including nominal, ordinal, interval and ratio scaled. They make fewer and less stringent assumptions than their parametric counterparts. Depending on the particular procedure, nonparametric methods may be almost as powerful as the corresponding parametric procedure when the assumptions of the latter are met. When this is not the case, they are generally more powerful. A parametric method Consider using when:
A nonparametric method Consider using if the data is:
A False Sense of SecurityBlack Belts may have a false sense of security when using nonparametric methods because it is generally believed that nonparametric tests are immune to data assumption violations and the presence of outliers. While nonparametric methods require no assumptions about the population probability distribution functions, they are based on some of the same assumptions as parametric methods, such as randomness and independence of the samples. In addition, many nonparametric tests are sensitive to the shape of the populations from which the samples are drawn. For example, the 1-sample Wilcoxon test can be used when the team is unsure of the population's distribution but the distribution is assumed to be symmetrical. For the Kruskal-Wallis test, samples must be from populations with similar shapes and equal variances. The Kruskal-Wallis test is more powerful than the Mood's Median test for data from many distributions, but is less robust against outliers. Table 1 contains the most commonly used parametric tests, their nonparametric equivalents and the assumptions that must be met before the nonparametric test can be used.
Figure 1 provides a roadmap for selecting the appropriate nonparametric method.Roadmap
Conclusion: Can Be More Powerful...Nonparametric methods are essential tools in the Black Belt's analytic toolbox. When appropriately applied, nonparametric methods are often more powerful than parametric methods if the assumptions for the parametric model cannot be met. About the Author: Robert Cardone is a Six Sigma Master Black Belt with Merrill Lynch Global Private Client & Enterprise Technology. He can be reached at Robert_Cardone@ML.com. Reproduction Without Permission Is Strictly Prohibited Copyright Requests Publish an Article: Do you have a Six Sigma tip, learning or case study? Share it with the largest community of Six Sigma professionals, and be recognized by your peers. It's a great way to promote your expertise and/or build your resume. Read more about submitting an article. "The Bottom Line" Links
|
|
||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||
| Home | Discussion Forum | Event Calendar | Job Shop | |
| Link To iSixSigma | Rate This Page | Report A Problem | Free Content For Your Site | Submit Article For Publishing | |
| Terms of Service. ©2000-2008 iSixSigma. All rights reserved. v3.0lb, 2.3-C-246 |
About iSixSigma · Contact Us · Privacy Policy · Site Map. |