203x Filetype PPTX File size 0.10 MB Source: ocd.lcwu.edu.pk
Parametric Tests Based on distributions Parameters are used (mean and standard deviations) T-test ANOVA etc. Aim of Non Parametric Tests Nonparametric, or distribution free tests are so-called because the assumptions underlying their use are “fewer and weaker than those associated with parametric tests” (Siegel & Castellan, 1988, p. 34). To put it another way, nonparametric tests require few if any assumptions about the shapes of the underlying population distributions. For this reason, they are often used in place of parametric tests if/when one feels that the assumptions of the parametric test have been too grossly violated (e.g., if the distributions are too severely skewed). For example non parametric is used when either assumption of normality or homogeneity of variances is violated. Non Parametric tests are often called distribution free. Parametric Non-parametric Assumed distribution Normal Any Assumed variance Homogeneous Any Typical data Ratio or Interval Ordinal or Nominal Data set relationships Independent Any Usual central measure Mean Median Benefits Can draw more Simplicity; Less affected conclusions by outliers Tests Choosing Choosing parametric tes Choosing a non-parametr Correlation test t Pearson ic test Spearman Independent measures, Independent-measures t Mann-Whitney test 2 groups -test Independent measures, One-way, independent- Kruskal-Wallis test >2 groups measures ANOVA Repeated measures, 2 Matched-pair t-test Wilcoxon test conditions Repeated measures, >2 One-way, repeated Friedman's test conditions measures ANOVA Runs Test of Randomness It is used to know the randomness in data. Run test of randomness is sometimes called the Geary test, and it is a nonparametric test. Run test of randomness is an alternative test to test autocorrelation in the data. Autocorrelation means that the data has correlation with its lagged value. To confirm whether or not the data has correlation with the lagged value, run test of randomness is applied. In the stock market, run test of randomness is applied to know if the stock price of a particular company is behaving randomly, or if there is any pattern. Run test of randomness is basically based on the run. Run is basically a sequence of one symbol such as + or -. Run test of randomness assumes that the mean and variance are constant and the probability is independent. Hypothesis: Null hypothesis assumes that the sample is random against alternative that sample is not random
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