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Chapter 8 Nonlinear Regression Functions
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2 Nonlinear Regression Functions (SW Chapter 8)
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3 The TestScore – STR relation looks linear (maybe)…
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4 But the TestScore – Income relation looks nonlinear...
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5 Nonlinear Regression Population Regression Functions – General Ideas (SW Section 8.1)
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6 The general nonlinear population regression function
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8 Nonlinear Functions of a Single Independent Variable (SW Section 8.2)
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9 1. Polynomials in X
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10 Example: the TestScore – Income relation
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11 Estimation of the quadratic specification in STATA
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12 Interpreting the estimated regression function:
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13 Interpreting the estimated regression function, ctd:
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15 Estimation of a cubic specification in STATA
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17 Summary: polynomial regression functions
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18 2. Logarithmic functions of Y and/or X
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19 The three log regression specifications:
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20 I. Linear-log population regression function
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21 Linear-log case, continued
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22 Example: TestScore vs. ln(Income)
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23 The linear-log and cubic regression functions
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24 II. Log-linear population regression function
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25 Log-linear case, continued
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26 III. Log-log population regression function
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27 Log-log case, continued
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28 Example: ln( TestScore) vs. ln( Income)
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29 Example: ln( TestScore) vs. ln( Income), ctd.
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30 The log-linear and log-log specifications:
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31 Summary: Logarithmic transformations
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32 Other nonlinear functions (and nonlinear least squares) (SW App. 8.1)
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33 Negative exponential growth
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34 Nonlinear Least Squares
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37 Interactions Between Independent Variables (SW Section 8.3)
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38 (a) Interactions between two binary variables
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39 Interpreting the coefficients
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40 Example: TestScore, STR, English learners
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41 (b) Interactions between continuous and binary variables
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42 Binary-continuous interactions: the two regression lines
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43 Binary-continuous interactions, ctd.
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44 Interpreting the coefficients
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45 Example: TestScore, STR, HiEL (=1 if PctEL 10)
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46 Example, ctd: Testing hypotheses
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47 (c) Interactions between two continuous variables
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48 Interpreting the coefficients:
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49 Example: TestScore, STR, PctEL
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50 Example, ctd: hypothesis tests
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51 Application: Nonlinear Effects on Test Scores of the Student-Teacher Ratio (SW Section 8.4)
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52 Strategy for Question #1 (different effects for different STR?)
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53 Strategy for Question #2 (interactions between PctEL and STR?)
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54 What is a good “base” specification?
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56 Tests of joint hypotheses:
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57 Interpreting the regression functions via plots:
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58 Next, compare the regressions with interactions:
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59 Summary: Nonlinear Regression Functions
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