Title: PRINCIPLES OF MULTIPLE REGRESSION
1PRINCIPLES OF MULTIPLE REGRESSION
2ON RESEARCH PROJECTS
- Papers due at Week 10 section meeting
- Hard copy only (4-6 pages tables, graphs)
- See handout on course website
- Lateness policy
- 5 off for 24 hours lateness
- 10 off for 48 hours lateness
- 20 off for 72 hours lateness
- NOT ACCEPTED after 72 hours
- If completed over weekend, send electronic copy
to TA and submit a hard copy on Monday, June 2
3Postscripts
- Calculating intercept a
- a Y b X (note b positive or negative)
- Defining t-ratio or t statistic
- t (b ß)/SE, where b is sample slope and ß is
population parameter - In null hypothesis, ß 0, thus
- t b/SE, and
- If t gt 2, can reject the null hypothesis
4READINGS
- Pollock, Essentials, ch. 7 (pp. 165-176)
- Pollock, SPSS Companion, ch. 9
- Course Reader, Selections 5-6 (Smith Ziegler,
Governmental Performance, and Inglehart, Mass
Support for Democracy)
5OUTLINE
- Purposes of Multiple Regression
- The Basic Model
- Key Concepts
- An Illustration
6- Purposes of Multiple Regression
- Incorporating more than one independent variable
into - the explanation of a dependent variable
- Measuring the cumulative impact of independent
variables - on a dependent variable
- Determining the relative importance of
independent - variables
7The Basic Model Y a b1X1 b2X2 b3X3 .
bkXk Note Signs can be positive or
negative! PRE R2 Standardized regression
coefficient (beta) bi (st.dev.Xi/st.dev
Y) Partial correlation coefficient rYX2.X1,
or r13.2
8 Key Concepts Measuring the cumulative impact on
Y of X1 and X2 (via PRE or R2) Examining
relationship between Y and X2, controlling for
the effects of X1 (via partial correlation
coefficient) Detecting the identifiable impact
of independent variables (Xs) on Y (via beta
weights) Assessing significance of overall
relationship and of individual regression
coefficients (via significance tests, including
standard errors)
9Visualizing a Plane of Least Squares
10Detecting Relationships
- Spurious relationship between Y and X1 vanishes
(i.e., approaches zero) with X2 in equation
check correlation between X1 and X2 - Enhancement cumulative strength of relationship
(R2) much higher with X1 and X2 in equation than
with just X1 - Specification see use of dummy variables next
time
11 An Illustration of the Principles Problem
Effects of public health expenditures Y
infant mortality rate X1 health
expenditures X2 nonwhite population
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15Since a Y bX Y 0 (as mean value of
residuals) X 0 (as mean value of
residuals) the value of a for this equation
0 so there is no intercept.
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