Nonparametric Statistical Methods: Overview and Examples

Slides:



Advertisements
Similar presentations
Prepared by Lloyd R. Jaisingh
Advertisements

CHAPTER TWELVE ANALYSING DATA I: QUANTITATIVE DATA ANALYSIS.
1 Chapter 20: Statistical Tests for Ordinal Data.
Happiness comes not from material wealth but less desire. 1.
Process Improvement in Healthcare: Volunteer Clinic Case Study Nonparametric Statistics ISE 491 Fall 2009 Dr. Joan Burtner Associate Professor, Department.
Parametric Tests 1) Assumption of population normality 2) homogeneity of variance Parametric more powerful than nonparametric.
Biostatistics in Research Practice: Non-parametric tests Dr Victoria Allgar.
15-1 Introduction Most of the hypothesis-testing and confidence interval procedures discussed in previous chapters are based on the assumption that.
Mann-Whitney and Wilcoxon Tests.
Statistical Methods II
1 STATISTICAL HYPOTHESES AND THEIR VERIFICATION Kazimieras Pukėnas.
A Repertoire of Hypothesis Tests  z-test – for use with normal distributions and large samples.  t-test – for use with small samples and when the pop.
CHAPTER 14: Nonparametric Methods
Chapter 14 Nonparametric Statistics. 2 Introduction: Distribution-Free Tests Distribution-free tests – statistical tests that don’t rely on assumptions.
Common Nonparametric Statistical Techniques in Behavioral Sciences Chi Zhang, Ph.D. University of Miami June, 2005.
Nonparametric Statistical Methods: Overview and Examples ETM 568 ISE 468 Spring 2015 Dr. Joan Burtner.
CHAPTER 14: Nonparametric Methods to accompany Introduction to Business Statistics seventh edition, by Ronald M. Weiers Presentation by Priscilla Chaffe-Stengel.
Nonparametric Statistics aka, distribution-free statistics makes no assumption about the underlying distribution, other than that it is continuous the.
Nonparametric Statistical Methods: Overview and Examples IDM 404 ISE 482 Spring 2010 Dr. Joan Burtner.
Choosing a statistical What are you trying to do?.
CHI SQUARE TESTS.
Angela Hebel Department of Natural Sciences
Nonparametric Statistics
Biostatistics Nonparametric Statistics Class 8 March 14, 2000.
Value Stream Management for Lean Healthcare ISE 491 Fall 2009 Data Analysis - Lecture 7.
Chapter 13 Understanding research results: statistical inference.
SUMMARY EQT 271 MADAM SITI AISYAH ZAKARIA SEMESTER /2015.
1 Underlying population distribution is continuous. No other assumptions. Data need not be quantitative, but may be categorical or rank data. Very quick.
Copyright © 2005 Brooks/Cole, a division of Thomson Learning, Inc. CHAPTER 14: Nonparametric Methods to accompany Introduction to Business Statistics fifth.
Inferential Statistics
BIOSTATISTICS Qualitative variable (Categorical) DESCRIPTIVE
Causality, Null Hypothesis Testing, and Bivariate Analysis
Non-parametric test ordinal data
Part Four ANALYSIS AND PRESENTATION OF DATA
Research Methodology Lecture No :25 (Hypothesis Testing – Difference in Groups)
Non-Parametric Tests 12/1.
Chapter 4. Inference about Process Quality
Non-Parametric Tests 12/1.
Non-Parametric Tests 12/6.
Hypothesis testing. Chi-square test
University of Warwick, Department of Sociology, 2014/15 SO 201: SSAASS (Surveys and Statistics) (Richard Lampard) Analysing Means II: Nonparametric techniques.
CHOOSING A STATISTICAL TEST
Parametric vs Non-Parametric
Non-Parametric Tests.
Y - Tests Type Based on Response and Measure Variable Data
Nonparametric Statistical Methods: Overview and Examples
Analysis of Data Graphics Quantitative data
Tests in biostatistics and how to apply them? Prepared by Ajay Prakash Uniyal Department of Plant Sciences Central University of Punjab.
Georgi Iskrov, MBA, MPH, PhD Department of Social Medicine
SDPBRN Postgraduate Training Day Dundee Dental Education Centre
SA3202 Statistical Methods for Social Sciences
Statistical Tool Boxes
Nonparametric Statistical Methods: Overview and Examples
STAT120C: Final Review.
Introduction to Statistics
Nonparametric Statistical Methods: Overview and Examples
Nonparametric Tests BPS 7e Chapter 28 © 2015 W. H. Freeman and Company.
Some Nonparametric Methods
Statistics in SPSS Lecture 8
قياس المتغيرات في المنهج الكمي
Nonparametric Statistical Methods: Overview and Examples
Hypothesis testing. Chi-square test
Statistics in SPSS Lecture 9
Non-parametric tests, part A:
Non – Parametric Test Dr. Anshul Singh Thapa.
Non-parametric methods in statistical testing
UNIT-4.
InferentIal StatIstIcs
Introductory Statistics
Examine Relationships
Presentation transcript:

Nonparametric Statistical Methods: Overview and Examples IDM 404 ISE 468 Spring 2013 Dr. Joan Burtner

Presented by Dr. Joan Burtner Four levels of data Nominal Categorical (Qualitative): Distinct Categories North, South, East, West Bldg. 1, Bldg. 2, Bldg. 7 Ordinal Categorical (Qualitative): Characteristics that possess a logical order 20/20, 20/30, 20/40 Small, Medium, Large H,M,L Special cases Likert Scales (1 2 3 4 5) or (1 2 3 4 5 6 7 8 9 10) Discrete counted variables (number of calls, number of children, particle counts) Interval Continuous (Quantitative): value that can be measured Differences between intervals have true meaning No true zero Scale True zero 2013 Presented by Dr. Joan Burtner

Parametric Hypothesis Tests Assumption of a known distribution, typically the normal distribution Examples Single sample T-tests and Z-tests Two-sample T-tests and Z-tests Single-factor ANOVA Two-factor ANOVA Multi-factor ANOVA Factorial designs 2013 Presented by Dr. Joan Burtner

Non-parametric Hypothesis Tests No assumption of an underlying normal distribution in the population Other assumptions apply (eg. level of measurement) Examples (Since names vary by text and software package, you must look at calculation of test statistic and assumptions) Mann-Whitney Rank-Sum Signed Rank Kruskal-Wallis Sign Mood’s Median Friedman Median Test 2013 Presented by Dr. Joan Burtner

Presented by Dr. Joan Burtner Minitab: Stat Menus Stat/Non-parametric Choose from seven non-parametric tests Names may be different from standard statistics texts Stat/Multivariate and Stat/DOE Stat/Tables One-way and Two-way Chi-Square Tests Not typically included in discussions of non-parametric statistical methods Stat/Basic Statistics Stat/ANOVA Stat/Regression 2013 Presented by Dr. Joan Burtner

Minitab: 1-Sample Sign Test Stat > Nonparametrics > 1-Sample Sign You can perform a 1-sample sign test of the median or calculate the corresponding point estimate and confidence interval. For the one-sample sign test, the hypotheses are H0: median = hypothesized median versus H1: median ≠ hypothesized median Use the sign test as a nonparametric alternative to 1-sample Z-tests and to 1-sample t-tests , which use the mean rather than the median. 2013 Presented by Dr. Joan Burtner

Minitab: 1-Sample Wilcoxon Stat > Nonparametrics > 1-Sample Wilcoxon You can perform a 1-sample Wilcoxon signed rank test of the median or calculate the corresponding point estimate and confidence interval. The Wilcoxon signed rank test hypotheses are H0: median = hypothesized median versus H1: median ≠ hypothesized median An assumption for the one-sample Wilcoxon test and confidence interval is that the data are a random sample from a continuous, symmetric population. 2013 Presented by Dr. Joan Burtner

Minitab: Mann-Whitney Test Stat > Nonparametrics > Mann-Whitney You can perform a 2-sample rank test (also called the Mann-Whitney test, or the two-sample Wilcoxon rank sum test) of the equality of two population medians, and calculate the corresponding point estimate and confidence interval. The hypotheses are H0: 1 =  2 versus H1:  1 ≠  2 , where  is the population median. An assumption for the Mann-Whitney test is that the data are independent random samples from two populations that have the same shape and whose variances are equal and a scale that is continuous or ordinal (possesses natural ordering) if discrete. 2013 Presented by Dr. Joan Burtner

Minitab: Kruskal-Wallis Test Stat > Nonparametrics > Kruskal-Wallis You can perform a Kruskal-Wallis test of the equality of medians for two or more populations. This test is a generalization of the procedure used by the Mann-Whitney test and, like Mood's Median test, offers a nonparametric alternative to the one-way analysis of variance. The Kruskal-Wallis hypotheses are: H0: the population medians are all equal versus H1: the medians are not all equal An assumption for this test is that the samples from the different populations are independent random samples from continuous distributions, with the distributions having the same shape. 2013 Presented by Dr. Joan Burtner

Minitab: Friedman test Stat > Nonparametrics > Friedman Friedman test is a nonparametric analysis of a randomized block experiment, and thus provides an alternative to the Two-way analysis of variance. (according to Minitab) The hypotheses are: H0: all treatment effects are zero versus H1: not all treatment effects are zero Randomized block experiments are a generalization of paired experiments, and the Friedman test is a generalization of the paired sign test. Additivity (fit is sum of treatment and block effect) is not required for the test, but is required for the estimate of the treatment effects. 2013 Presented by Dr. Joan Burtner