Correlations Flashcards
1
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Definition of Correlation
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- Definition: A statistical measure that describes the strength and direction of a relationship between two variables.
- Purpose: To understand how changes in one variable may relate to changes in another.
2
Q
Types of Correlation
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- Positive Correlation
o Definition: As one variable increases, the other variable also increases.
o Example: Height and weight. - Negative Correlation
o Definition: As one variable increases, the other variable decreases.
o Example: Amount of exercise and body weight. - No Correlation
o Definition: There is no relationship between the two variables.
o Example: Shoe size and intelligence.
3
Q
Correlation Coefficient (r)
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- Definition: A numerical value that quantifies the degree of correlation between two variables.
- Range:
o -1 to +1:
+1: Perfect positive correlation.
-1: Perfect negative correlation.
0: No correlation. - Interpretation: Values close to +1 or -1 indicate a strong relationship; values close to 0 indicate a weak relationship.
4
Q
Calculating Correlation
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- Pearson’s r: Used for measuring linear correlations between two continuous variables.
o Formula:
r=n(∑xy)−(∑x)(∑y)[n∑x2−(∑x)2][n∑y2−(∑y)2]r = \frac{n(\sum xy) - (\sum x)(\sum y)}{\sqrt{[n\sum x^2 - (\sum x)^2][n\sum y^2 - (\sum y)^2]}}r=[n∑x2−(∑x)2][n∑y2−(∑y)2]n(∑xy)−(∑x)(∑y) - Spearman’s Rank Correlation Coefficient: Used for ordinal data or non-parametric data.
o Measures the strength and direction of association between two ranked variables.
5
Q
Limitations of Correlation
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- Correlation Does Not Imply Causation: A correlation between two variables does not mean that one variable causes the other to change.
o Example: Ice cream sales and drowning rates may correlate, but one does not cause the other (both influenced by temperature). - Outliers: Extreme values can distort the correlation coefficient, leading to misleading interpretations.
6
Q
Interpreting Correlation
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- Strength:
o Strong Correlation: |r| > 0.7
o Moderate Correlation: 0.3 < |r| ≤ 0.7
o Weak Correlation: |r| < 0.3 - Direction:
o Positive: Both variables move in the same direction.
o Negative: Variables move in opposite directions.
7
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Applications of Correlation
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- Research: Used to explore relationships between variables in social sciences, health studies, marketing, etc.
- Predictive Analysis: Correlations can help predict outcomes based on known relationships (though with caution regarding causation).
8
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Reporting Correlation Results
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- APA Format: Include:
o Correlation coefficient (r value).
o Sample size (n).
o Significance level (p-value). - Example: “A strong positive correlation was found between study time and exam scores (r = 0.85, n = 100, p < 0.01).”
9
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