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Are there many ties or a few/no ties within at least one
of the skewed less than 30 variables in this relationship
question?
Many Ties Few/no ties
• What is the correlation between ACT scores (scaled) and
sense of school belongingness (scaled 1-10)?
At least one variable has Many ties
• What is the correlation between ACT scores (scaled) and
sense of school belongingness (scaled 1-10)?
−𝟐.𝟔𝟖𝟒
.𝟒𝟒𝟖
= -5.992 or negatively skewed
At least one variable has Many ties
• What is the correlation between ACT scores (scaled) and
sense of school belongingness (scaled 1-10)?
−𝟐.𝟔𝟖𝟒
.𝟒𝟒𝟖
= -5.992 or negatively skewed
Because the sample size for this skewed distribution
is less than 30 we will use a non-parametric test.
At least one variable has Many ties
• What is the correlation between ACT scores (scaled) and
sense of school belongingness (scaled 1-10)?
At least one variable has Many ties
ACT_scores
• What is the correlation between ACT scores (scaled) and
sense of school belongingness (scaled 1-10)?
At least one variable has Many ties
The skewed variable with less 30 has many ties
ACT_scores
Are there many ties or a few/no ties within at least one
of the skewed less than 30 variables in this relationship
question?
Many Ties Few/no ties
OR
• What is the correlation between ACT scores (scaled) and
sense of school belongingness (scaled 1-10)?
At least one variable has Few ties
ACT_scores
• What is the correlation between ACT scores (scaled) and
sense of school belongingness (scaled 1-10)?
At least one variable has Few ties
The skewed variable has a few ties
ACT_scores
Are there many ties or a few/no ties within at least one
of the skewed less than 30 variables in this relationship
question?
Many Ties Few/no ties
Return to the original question:
Are there many ties or a few/no ties within at least one
of the skewed less than 30 variables in this relationship
question?
Many Ties Few/no ties

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Skewed less than 30 (ties)

  • 1. Are there many ties or a few/no ties within at least one of the skewed less than 30 variables in this relationship question? Many Ties Few/no ties
  • 2. • What is the correlation between ACT scores (scaled) and sense of school belongingness (scaled 1-10)? At least one variable has Many ties
  • 3. • What is the correlation between ACT scores (scaled) and sense of school belongingness (scaled 1-10)? −𝟐.𝟔𝟖𝟒 .𝟒𝟒𝟖 = -5.992 or negatively skewed At least one variable has Many ties
  • 4. • What is the correlation between ACT scores (scaled) and sense of school belongingness (scaled 1-10)? −𝟐.𝟔𝟖𝟒 .𝟒𝟒𝟖 = -5.992 or negatively skewed Because the sample size for this skewed distribution is less than 30 we will use a non-parametric test. At least one variable has Many ties
  • 5. • What is the correlation between ACT scores (scaled) and sense of school belongingness (scaled 1-10)? At least one variable has Many ties ACT_scores
  • 6. • What is the correlation between ACT scores (scaled) and sense of school belongingness (scaled 1-10)? At least one variable has Many ties The skewed variable with less 30 has many ties ACT_scores
  • 7. Are there many ties or a few/no ties within at least one of the skewed less than 30 variables in this relationship question? Many Ties Few/no ties
  • 8. OR
  • 9. • What is the correlation between ACT scores (scaled) and sense of school belongingness (scaled 1-10)? At least one variable has Few ties ACT_scores
  • 10. • What is the correlation between ACT scores (scaled) and sense of school belongingness (scaled 1-10)? At least one variable has Few ties The skewed variable has a few ties ACT_scores
  • 11. Are there many ties or a few/no ties within at least one of the skewed less than 30 variables in this relationship question? Many Ties Few/no ties
  • 12. Return to the original question: Are there many ties or a few/no ties within at least one of the skewed less than 30 variables in this relationship question? Many Ties Few/no ties