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Explain the step-by-step process of manually computing Pearson's from the raw scores of two quantitative variables, including how individual score transformations lead to the final correlation coefficient.
Question: Explain the step-by-step process of manually computing Pearson's from the raw scores of two quantitative variables, including how individual score transformations lead to the final correlation coefficient.
Sample answer: To manually compute Pearson's , you first convert the raw scores of the two quantitative variables for each individual in the sample into scores. Next, for each individual, you multiply their two scores together to get a cross-product. Finally, you calculate the mean of these cross-products across the entire sample to obtain the value for Pearson's .
Key points:
- Transforming raw scores of two quantitative variables into scores.
- Calculating the cross-product of the scores for each individual.
- Taking the mean of the cross-products across the sample to find Pearson's .
Rubric: The answer must outline the following three steps: 1) Conversion of raw scores of two quantitative variables to scores for each participant. 2) Multiplication of each participant's scores to compute a cross-product. 3) Calculating the mean of these cross-products across the entire sample to find Pearson's .
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Research Methods in Psychology - 4th American Edition @ KPU
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