185x Filetype PPTX File size 2.53 MB Source: www.ee.ncu.edu.tw
CHAPTER CONTENTS CHAPTER CONTENTS 12.1 Introduction .................................................................................................. 590 12.2 Nonparametric Confidence Interval ................................................................. 592 12.3 Nonparametric Hypothesis Tests for One Sample ............................................. 597 12.4 Nonparametric Hypothesis Tests for Two Independent Samples ........................ 609 12.5 Nonparametric Hypothesis Tests for > 2 Samples ........................................ 618 12.6 Chapter Summary .......................................................................................... 627 12.7 Computer Examples ....................................................................................... 627 Projects for Chapter 12 .......................................................................................... 635 Objective of this chapter : To study tests that do not require distributional assumptions about the population such as the normality. N(mean, variance), Uniform(a, b, 1/(b-a)) Jacob Wolfowitz It is in this paper by Wolfowitz in 1942 that the term nonparametric appears for the first time. Wolfowitz made important contributions to Information theory. 12.1 Introduction Sometimes we may be required to make inferences about models that are difficult to parameterize, or we may have data in a form that make, say, the normal theory tests unsuitable. to parameterize = to identify a classical probability distribution that will characterize the data’s behavior. Nonparametric methods are appropriate to estimation or hypothesis testing problems when the population distributions could only be specified in general terms. The conditions may be specified as being continuous, symmetric, or identical, differing only in median or mean. Nonparametric methods: Classical : based on ordering, ranking, and permutations Ch 12 Modern: based on resampling method Ch 13 Nonparametric methods: The distributions need not belong to specific families such as normal or gamma. Are distribution-free methods Depend on a minimum number of assumptions (So, the chance of their being improperly used is relatively small.) Involve ranking data values and developing testing methods based on the ranks. When the assumptions of the parametric tests can be verified as true, parametric tests are generally more powerful than nonparametric tests Some information is lost because the actual values are not used. Less powerful than their parametric counterparts when parametric tests can be used
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