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Department of Applied Economics National Chung Hsing University

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1 Department of Applied Economics National Chung Hsing University
Simple Regression Department of Applied Economics National Chung Hsing University

2 Linear Functions Formula: Y = a + bX
Is a linear formula. If you graphed X and Y for any chosen values of a and b, you’d get a straight line. It is a family of functions: For any value of a and b, you get a particular line a is referred to as the “constant” or “intercept” b is referred to as the “slope” To graph a linear function: Pick values for X, compute corresponding values of Y Then, connect dots to graph line

3 Linear Functions: Y = a + bX
The “constant” or “intercept” (a) Determines where the line intersects the Y-axis If a increases (decreases), the line moves up (down) Y axis X axis 20 10 -10 -20 Y= X Y= X Y= X

4 Linear Functions: Y = a + bX
The slope (b) determines the steepness of the line Y=3+3X Y axis X axis 20 10 -10 -20 Y=3-1.5X Y=3+.2X

5 Linear Functions: Slopes
The slope (b) is the ratio of change in Y to change in X 20 10 -10 -20 Y=3+3X Slope: b = 15/5 = 3 Change in Y=15 Change in X =5 The slope tells you how many points Y will increase for any single point increase in X

6 Linear Functions as Summaries
A linear function can be used to summarize the relationship between two variables: Slope: b = 2 / 40,000 = pts/$ Change in X = 40,000 Change in Y = 2 If you change units: b = .05 / $1K b = .5 pts/$10K b = 5 pts/$100K

7 Linear Functions as Summaries
Slope and constant can be “eyeballed” to approximate a formula: Happy = Income Slope (b): b = 2 / 40,000 = pts/$ Constant (a) = Value where line hits Y axis a = 2

8 Linear Functions as Summaries
Linear functions can powerfully summarize data: Formula: Happy = Income Gives a sense of how the two variables are related Namely, people get a increase in happiness for every extra dollar of income (or 5 pts per $100K) Also lets you “predict” values. What if someone earns $150,000? Happy = ($150,000) = 9.5 But be careful… You shouldn’t assume that a relationship remains linear indefinitely Also, negative income or happiness make no sense…

9 Linear Functions as Summaries
Come up with a linear function that summarizes this real data: years of education vs. job prestige It isn’t always easy! The line you choose depends on how much you “weight” these points.

10 Computing Regressions
Regression coefficients can be calculated in SPSS You will rarely, if ever, do them by hand SPSS will estimate: The value of the constant (a) The value of the slope (b) Plus, a large number of related statistics and results of hypothesis testing procedures

11 Example: Education & Job Prestige
Example: Years of Education versus Job Prestige Previously, we made an “eyeball” estimate of the line Our estimate: Y = 5 + 3X

12 Example: Education & Job Prestige
The actual SPSS regression results for that data: Estimates of a and b: “Constant” = a = Slope for “Year of School” = b = 2.487 Equation: Prestige = Education A year of education adds 2.5 points job prestige

13 Example: Education & Job Prestige
Comparing our “eyeball” estimate to the actual OLS regression line Our estimate: Y = 5 + 3X Actual OLS regression line computed in SPSS

14 R-Square The R-Square statistic indicates how well the regression line “explains” variation in Y It is based on partitioning variance into: 1. Explained (“regression”) variance The portion of deviation from Y-bar accounted for by the regression line 2. Unexplained (“error”) variance The portion of deviation from Y-bar that is “error” Formula:

15 R-Square Visually: Deviation is partitioned into two parts Y=2+.5X
“Error Variance” Y=2+.5X 4 2 -2 -4 “Explained Variance” Y-bar

16 Example: Education & Job Prestige
R-Square & Hypothesis testing information: The R and R-Square indicate how well the line summarizes the data This information allows us to do hypothesis tests about constant & slope

17 Hypothesis Tests: Slopes
Given: Observed slope relating Education to Job Prestige = 2.47 Question: Can we generalize this to the population of all Americans? How likely is it that this observed slope was actually drawn from a population with slope = 0? Solution: Conduct a hypothesis test Notation: slope = b, population slope = b H0: Population slope b = 0 H1: Population slope b  0 (two-tailed test)

18 Example: Slope Hypothesis Test
The actual SPSS regression results for that data: t-value and “sig” (p-value) are for hypothesis tests about the slope Reject H0 if: T-value > critical t (N-2 df) Or, “sig.” (p-value) less than a (often a = .05)

19 Hypothesis Tests: Slopes
What information lets us to do a hypothesis test? Answer: Estimates of a slope (b) have a sampling distribution, like any other statistic It is the distribution of every value of the slope, based on all possible samples (of size N) If certain assumptions are met, the sampling distribution approximates the t-distribution Thus, we can assess the probability that a given value of b would be observed, if b = 0 If probability is low – below alpha – we reject H0

20 Hypothesis Tests: Slopes
Visually: If the population slope (b) is zero, then the sampling distribution would center at zero Since the sampling distribution is a probability distribution, we can identify the likely values of b if the population slope is zero If b=0, observed slopes should commonly fall near zero, too b Sampling distribution of the slope If observed slope falls very far from 0, it is improbable that b is really equal to zero. Thus, we can reject H0.

21 Regression Assumptions
Assumptions of simple (bivariate) regression If assumptions aren’t met, hypothesis tests may be inaccurate 1. Random sample w/ sufficient N (N > ~20) 2. Linear relationship among variables Check scatterplot for non-linear pattern; (a “cloud” is OK) 3. Conditional normality: Y = normal at all values of X Check histograms of Y for normality at several values of X 4. Homoskedasticity – equal error variance at all values of X Check scatterplot for “bulges” or “fanning out” of error across values of X Additional assumptions are required for multivariate regression…

22 Bivariate Regression Assumptions
Normality: Examine sub-samples at different values of X. Make histograms and check for normality. Good Not very good

23 Bivariate Regression Assumptions
Homoskedasticity: Equal Error Variance Examine error at different values of X. Is it roughly equal? Here, things look pretty good.

24 Bivariate Regression Assumptions
Heteroskedasticity: Unequal Error Variance At higher values of X, error variance increases a lot. This looks pretty bad.

25 Regression Hypothesis Tests
If assumptions are met, the sampling distribution of the slope (b) approximates a T-distribution Standard deviation of the sampling distribution is called the standard error of the slope (sb) Population formula of standard error: Where se2 is the variance of the regression error

26 Regression Hypothesis Tests
Finally: A t-value can be calculated: It is the slope divided by the standard error Where sb is the sample point estimate of the S.E. The t-value is based on N-2 degrees of freedom Reject H0 if observed t > critical t (e.g., 1.96).

27 Example: Education & Job Prestige
T-values can be compared to critical t... SPSS estimates the standard error of the slope. This is used to calculate a t-value The t-value can be compared to the “critical value” to test hypotheses. Or, just compare “Sig.” to alpha. If t > crit or Sig < alpha, reject H0

28 Department of Applied Economics National Chung Hsing University
Multiple Regression 1 Department of Applied Economics National Chung Hsing University

29 Multiple Regression Question: What if a dependent variable is affected by more than one independent variable? Strategy #1: Do separate bivariate regressions One regression for each independent variable This yields separate slope estimates for each independent variable Bivariate slope estimates implicitly assume that neither independent variable mediates the other In reality, there might be no effect of family wealth over and above education

30 Both variables have positive, significant slopes
Multiple Regression Job Prestige: Two separate regression models Both variables have positive, significant slopes

31 Multiple Regression Idea #2: Use Multiple Regression
Multiple regression can examine “partial” relationships Partial = Relationships after the effects of other variables have been “controlled” (taken into account) This lets you determine the effects of variables “over and above” other variables And shows the relative impact of different factors on a dependent variable And, you can use several independent variables to improve your predictions of the dependent var

32 Education slope is basically unchanged
Multiple Regression Job Prestige: 2 variable multiple regression Education slope is basically unchanged Family Income slope decreases compared to bivariate analysis (bivariate: b = 2.07) And, outcome of hypothesis test changes – t < 1.96

33 Multiple Regression Ex: Job Prestige: 2 variable multiple regression
1. Education has a large slope effect controlling for (i.e. “over and above”) family income 2. Family income does not have much effect controlling for education Despite a strong bivariate relationship Possible interpretations: Family income may lead to education, but education is the critical predictor of job prestige Or, family income is wholly unrelated to job prestige… but is coincidentally correlated with a variable that is (education), which generated a spurious “effect”.

34 The Multiple Regression Model
A two-independent variable regression model: Note: There are now two X variables And a slope (b) is estimated for each one The full multiple regression model is: For k independent variables

35 Multiple Regression: Slopes
Regression slope for the two variable case: b1 = slope for X1 – controlling for the other independent variable X2 b2 is computed symmetrically. Swap X1s, X2s Compare to bivariate slope:

36 Multiple Regression Slopes
Let’s look more closely at the formulas: What happens to b1 if X1 and X2 are totally uncorrelated? Answer: The formula reduces to the bivariate What if X1 and X2 are correlated with each other AND X2 is more correlated with Y than X1? Answer: b1 gets smaller (compared to bivariate)

37 Regression Slopes So, if two variables (X1, X2) are correlated and both predict Y: The X variable that is more correlated with Y will have a higher slope in multivariate regression The slope of the less-correlated variable will shrink Thus, slopes for each variable are adjusted to how well the other variable predicts Y It is the slope “controlling” for other variables.

38 Multiple Regression Slopes
One last thing to keep in mind… What happens to b1 if X1 and X2 are almost perfectly correlated? Answer: The denominator approaches Zero The slope “blows up”, approaching infinity Highly correlated independent variables can cause trouble for regression models… watch out

39 Interpreting Results (Over)Simplified rules for interpretation
Assumes good sample, measures, models, etc. Multivariate regression with two variables: A, B If slopes of A, B are the same as bivariate, then each has an independent effect If A remains large, B shrinks to zero we typically conclude that effect of B was spurious, or operates through A If both A and B shrink a little, each has an effect, but some overlap or mediation is occurring

40 Interpreting Multivariate Results
Things to watch out for: 1. Remember: Correlation is not causation Ability to “control” for many variables can help detect spurious relationships… but it isn’t perfect. Be aware that other (omitted) variables may be affecting your model. Don’t over-interpret results. 2. Reverse causality Many sociological processes involve bi-directional causality. Regression slopes (and correlations) do not identify which variable “causes” the other. Ex: self-esteem and test scores.

41 Standardized Regression Coefficients
Regression slopes reflect the units of the independent variables Question: How do you compare how “strong” the effects of two variables if they have totally different units? Example: Education, family wealth, job prestige Education measured in years, b = 2.5 Family wealth measured on 1-5 scale, b = .18 Which is a “bigger” effect? Units aren’t comparable! Answer: Create “standardized” coefficients

42 Standardized Regression Coefficients
Standardized Coefficients Also called “Betas” or Beta Weights” Symbol: Greek b with asterisk: b* Equivalent to Z-scoring (standardizing) all independent variables before doing the regression Formula of coeficient for Xj: Result: The unit is standard deviations Betas: Indicates the effect a 1 standard deviation change in Xj on Y

43 Standardized Regression Coefficients
Ex: Education, family income, and job prestige: An increase of 1 standard deviation in Education results in a .52 standard deviation increase in job prestige What is the interpretation of the “family income” beta? Betas give you a sense of which variables “matter most”

44 R-Square in Multiple Regression
Multivariate R-square is much like bivariate: But, SSregression is based on the multivariate regression The addition of new variables results in better prediction of Y, less error (e), higher R-square.

45 R-Square in Multiple Regression
Example: R-square of .272 indicates that education, parents wealth explain 27% of variance in job prestige “Adjusted R-square” is a more conservative, more accurate measure in multiple regression Generally, you should report Adjusted R-square.

46 Dummy Variables Question: How can we incorporate nominal variables (e.g., race, gender) into regression? Option 1: Analyze each sub-group separately Generates different slope, constant for each group Option 2: Dummy variables “Dummy” = a dichotomous variables coded to indicate the presence or absence of something Absence coded as zero, presence coded as 1.

47 Dummy Variables Strategy: Create a separate dummy variable for all nominal categories Ex: Gender – make female & male variables DFEMALE: coded as 1 for all women, zero for men DMALE: coded as 1 for all men Next: Include all but one dummy variables into a multiple regression model If two dummies, include 1; If 5 dummies, include 4.

48 Dummy Variables Question: Why can’t you include DFEMALE and DMALE in the same regression model? Answer: They are perfectly correlated (negatively): r = -1 Result: Regression model “blows up” For any set of nominal categories, a full set of dummies contains redundant information DMALE and DFEMALE contain same information Dropping one removes redundant information.

49 Dummy Variables: Interpretation
Consider the following regression equation: Question: What if the case is a male? Answer: DFEMALE is 0, so the entire term becomes zero. Result: Males are modeled using the familiar regression model: a + b1X + e.

50 Dummy Variables: Interpretation
Consider the following regression equation: Question: What if the case is a female? Answer: DFEMALE is 1, so b2(1) stays in the equation (and is added to the constant) Result: Females are modeled using a different regression line: (a+b2) + b1X + e Thus, the coefficient of b2 reflects difference in the constant for women.

51 Dummy Variables: Interpretation
Remember, a different constant generates a different line, either higher or lower Variable: DFEMALE (women = 1, men = 0) A positive coefficient (b) indicates that women are consistently higher compared to men (on dep. var.) A negative coefficient indicated women are lower Example: If DFEMALE coeff = 1.2: “Women are on average 1.2 points higher than men”.

52 Dummy Variables: Interpretation
Visually: Women = blue, Men = red INCOME 100000 80000 60000 40000 20000 HAPPY 10 9 8 7 6 5 4 3 2 1 Overall slope for all data points Note: Line for men, women have same slope… but one is high other is lower. The constant differs! If women=1, men=0: The constant (a) reflects men only. Dummy coefficient (b) reflects increase for women (relative to men)

53 Dummy Variables What if you want to compare more than 2 groups?
Example: Race Coded 1=white, 2=black, 3=other (like GSS) Make 3 dummy variables: “DWHITE” is 1 for whites, 0 for everyone else “DBLACK” is 1 for Af. Am., 0 for everyone else “DOTHER” is 1 for “others”, 0 for everyone else Then, include two of the three variables in the multiple regression model.

54 Dummy Variables: Interpretation
Ex: Job Prestige Negative coefficient for DBLACK indicates a lower level of job prestige compared to whites T- and P-values indicate if difference is significant.

55 Dummy Variables: Interpretation
Comments: 1. Dummy coefficients shouldn’t be called slopes Referring to the “slope” of gender doesn’t make sense Rather, it is the difference in the constant (or “level”) 2. The contrast is always with the nominal category that was left out of the equation If DFEMALE is included, the contrast is with males If DBLACK, DOTHER are included, coefficients reflect difference in constant compared to whites.


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