Chapter 6 The t-test and Basic Inference Principles
144 CHAPTER 6. T-TEST Frequencies Background Color Percent Cumulative Frequency Valid Percent Percent Valid yellow 17 48.6 48.6 48.6 cyan 18 51.4 51.4 100.0 Total 35 100.0 100.0 The \Frequency" column gives the basic tabulation of the variable’s values. Seventeen subjects were shown a yellow background, and 18 were shown cyan for a total of ...
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