Exam 3
Regression line
Allows us to make predictions 1) Extent of the variability around the regression line
The Pearson r might be thought of as a proportion, that when multiplied by 100, yields the percent of variance, on one variable explained by the other.
False
The maximum value of a Pearson r is 0.00.
False
The purpose of a Pearson r is to establish the central tendency of a set of scores.
False
2
The response variable (DV) is the direct cause of the exlamptory variable (IV) ex. social status & health or self esteem & academic achievements x -----> y x <-----y
3) Point where the line crosses he y-axis (y-intercept)
y' = mx+b
Problems w/ correlations
3 problems
Some reasons two variable may be related
7 reasons
6
Both variables are changing over time
5
Both variables may result from a common cause (third variable) x & y <---- z
4
Cofounding variables may exist
Correlations
Establish the degree of the relationship
A Pearson r of -0.97 represents a very weak relationship.
False
A Pearson r of 1.00 represents no relationship.
False
All negative relationships are weak.
False
For a Pearson r of -0.36, the coefficient of determination equals -0.06.
False
For a Pearson r of -0.40, 40% of the variance on one variable is explained by the other.
False
For a Pearson r of -0.62, a majority of the variance on one variable is explained on the other.
False
For a Pearson r of 0.75, 75% of the variance on the one variable is explained by (accounted for) the other.
False
If a Pearson r between two variables is very strong, this provides clear evidence that one variable affects the other.
False
If a relationship is extremely strong, a Pearson r will have a greater value than 1.00.
False
What do scatter plots tell us?
If the relationship between two interval or ratio variables is linear or not
Pearsons Correlation Coefficient (r)
Number between -1 and 1 that describes the linear relationship between pairs of measurement variables 1) Sign of r ( + or - ) indicates type of relationship 2) Value of r, without regard to the sign, indicates the strength of the relationship
Simple linear regression
One variable to make the prediction ex. ACT to predict college GPA
Regression
Procedure for making predictions about one variable based on its relation with another variable
2) Slope of the line (ties in w regression line)
Rise over run angle or tilt of the line; positive or negative
Least squares criterion
States that the variability around the line will be at a minimum ∑(y-y') = minimum If there was a zero, it would mean it's on the line
What do correlations measure
Strength and direction between two interval or ratio variables
Perfect linear relationship
Strongest relationship you can have with two variables r = 1
7
The association may be nothing more than a coincidence
3
The exlamptory variable (IV) is contributing but sole because of the response variable (DV)
1
The exlamptory variable (IV) is the direct cause of the response variable (DV)
Coefficient of determination (r^2)
The proportion of variability in the y-variable that is accounted for by the x-variable "variability accounted for" = R^2
A Pearson r indicates both the strength and direction of a relationship.
True
A Pearson r is a type of correlation coefficient.
True
A Pearson r of -0.50 is more likely to be called "moderately strong" than to be called "weak."
True
A Pearson r of 0.50 is more likely to be called "moderately strong" than to be called "weak."
True
A Pearson r of 0.95 represents a very strong relationship.
True
A scatter diagram with dots that form a patter going from the lower left have corner to the upper right hand corner represents scores that would yield a positive value of r.
True
A simple correlational study is usually NOT suitable for identifying cause-and-effect relationships.
True
For a Pearson r of -.60, the coefficient of determination equals 0.36.
True
For a Pearson r of -0.22, about 95% of the variance on one variable is NOT explained by the other.
True
For a Pearson r of 0.50, the coefficient of determination equals 0.25.
True
For a Pearson r of 0.80, 36% of the variance on one variable is explained by the other.
True
For a Pearson r of 0.90, 81% of the variance on one variable is explained by the other.
True
For making predictions from one variable to another, a Pearson r of -0.78 is better than a Pearson r of 0.52.
True
The possible values of a Pearson r is -1.00 to 1.00.
True
The square of Pearson r is called the coefficient of determination.
True
Multiple regression
Use several variable to make the prediction
Criterion Variable
Variable being predicted ex. Your GPA, a successful team we always predict the y-variable (y')
No relationship
Weakest relationship r = 0
Groups combined inappropriately may mask relationship (w regression line)
ex. height and weight with both male and female correlation does not imply causation