jagomart
digital resources
picture1_Statistic Ppt 69236 | Conceptsinstatistics 11 Chi Squaretests


 207x       Filetype PPTX       File size 1.29 MB       Source: s3-us-west-2.amazonaws.com


File: Statistic Ppt 69236 | Conceptsinstatistics 11 Chi Squaretests
big picture hypothesis tests that the chi square test statistic can address goodness of fit test test a claim about the distribution of a categorical variable in a population the ...

icon picture PPTX Filetype Power Point PPTX | Posted on 29 Aug 2022 | 3 years ago
Partial capture of text on file.
   Big Picture
          Hypothesis Tests that the Chi-Square Test 
          Statistic can Address:
          Goodness-of-Fit Test: Test a claim about the distribution of a categorical 
          variable in a population.
          •  The distribution of blood types for whites in the US is 45% type O, 41% 
             type A, 10% type B, and 4% type AB. Is the distribution of blood types 
             different for Asian Americans?
          Test of Independence: Test a claim about the relationship between two 
          categorical variables in a population.
          •  For young adults in the US, is gender related to body image?
          Test of Homogeneity: Test a claim about the distribution of a categorical 
          variable in several populations.
          •  Does the use of steroids in collegiate athletics differ across the three NCAA 
             divisions?
          Chi-Square Test
           •   
           The chi-square test statistic  measures how far the observed data are from 
           the null hypothesis by comparing observed counts and expected counts. 
           Expected counts are the counts we expect to see if the null hypothesis is 
           true.
          The Chi-Square Test Statistic and Distribution
           •
           Th e chi-square model is a family of curves that depend on degrees of 
           freedom. For a one-way table the degrees of freedom equals (). All chi-
           square curves are skewed to the right with a mean equal to the degrees of 
           freedom.
           A chi-square model is a good fit for the distribution of the chi-square test 
           statistic only if the following conditions are met:
           •  The sample is randomly selected.
           •  All expected counts are 5 or greater.
           If these conditions are met, we use the chi-square distribution to find the P-
           value. 
     The Chi-Square Test Statistic and Distribution 
     (cont.)
     •
     If t he P-value is at least as small as the 
     significance level, we reject the null 
     hypothesis and accept the alternative 
     hypothesis. 
     The P-value is the likelihood that results 
     from random samples have a  value equal 
     to or greater than that calculated from the 
     data if the null hypothesis is true. 
     For different degrees of freedom, the same 
      value gives different P-values.
The words contained in this file might help you see if this file matches what you are looking for:

...Big picture hypothesis tests that the chi square test statistic can address goodness of fit a claim about distribution categorical variable in population blood types for whites us is type o b and ab different asian americans independence relationship between two variables young adults gender related to body image homogeneity several populations does use steroids collegiate athletics differ across three ncaa divisions measures how far observed data are from null by comparing counts expected we expect see if true th e model family curves depend on degrees freedom one way table equals all skewed right with mean equal good only following conditions met sample randomly selected or greater these find p value cont t he at least as small significance level reject accept alternative likelihood results random samples have than calculated same gives values...

no reviews yet
Please Login to review.