Multiple Regression Analysis: Japanese Emigration Dataset, Assignments of Statistics

The steps to perform a multiple regression analysis using the japanese emigration dataset in spss. The analysis includes obtaining partial regression plots, writing out the fitted equation, testing significance of predictors, examining pairwise correlations, and determining the proportion of variation explained by the model.

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Uploaded on 09/17/2009

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STA 6127 – HW#1 – Due Jan. 26
Multiple Regression
Download the Japanese emigration dataset. Import the dataset into SPSS. The variables in
the dataset (and their “columns”) are:
Prefecture 1-20
Emigrants 23-25 /* Per 1 million residents */
% land cultivated by tenant farmers 32-33
% change in ratio of tenant farmlands 37-41
Average area of arable land per farm 45-49
# of government labors working in Hawaii 52-57 /* in 100s */
Existence of pioneer immigrants 65 /* 1=Yes, 0=No */
The response variable is EMIGRANT RATE. The k=5 predictor variables can be broken
into 3 “groups”: POVERTY (the 2 variables concerning tenant farming), POPULATION
PRESSURE (area of land per farm), and INFORMATION (the 2 variables concerning
workers in Hawaii and the Dummy variable for Pioneer immigrants).
1. Obtain partial regression plots for each of the predictor variables and interpret.
a) Analyze Regression Linear Fill in dependent and independent variables
Plots Produce all Partial Plots Continue OK
2. Write out the fitted equation.
3. Test whether any of the predictors are associated with the EMIGRANT RATE at the
=0.05 significance level
4. Test whether the EMIGRANT RATE is associated with POPULATION PRESSURE,
after controlling for the variables measuring POVERTY and INFORMATION at the
=0.05 significance level.
5. Obtain the pairwise Pearson correlations of each predictor variable and the response
variable.
a) Analyze Correlate Bivariate select all variables
6. Obtain all partial correlations involving Y and each predictor (e.g.
5,4,3,21 XXXXYX
r
)
a) Analyze Correlate Partial Variables:Y, X1 Controlling for: X2,X3,X4,X5
pf2

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STA 6127 – HW#1 – Due Jan. 26

Multiple Regression

Download the Japanese emigration dataset. Import the dataset into SPSS. The variables in the dataset (and their “columns”) are:  Prefecture 1-Emigrants 23-25 / Per 1 million residents /% land cultivated by tenant farmers 32-% change in ratio of tenant farmlands 37-Average area of arable land per farm 45-# of government labors working in Hawaii 52-57 / in 100s /Existence of pioneer immigrants 65 / 1=Yes, 0=No / The response variable is EMIGRANT RATE. The k=5 predictor variables can be broken into 3 “groups”: POVERTY (the 2 variables concerning tenant farming), POPULATION PRESSURE (area of land per farm), and INFORMATION (the 2 variables concerning workers in Hawaii and the Dummy variable for Pioneer immigrants).

  1. Obtain partial regression plots for each of the predictor variables and interpret. a) Analyze  Regression  Linear  Fill in dependent and independent variables  Plots  Produce all Partial Plots  Continue  OK
  2. Write out the fitted equation.
  3. Test whether any of the predictors are associated with the EMIGRANT RATE at the =0.05 significance level
  4. Test whether the EMIGRANT RATE is associated with POPULATION PRESSURE, after controlling for the variables measuring POVERTY and INFORMATION at the =0.05 significance level.
  5. Obtain the pairwise Pearson correlations of each predictor variable and the response variable. a) Analyze  Correlate  Bivariate  select all variables
  6. Obtain all partial correlations involving Y and each predictor (e.g. rYX^ 1  X 2 , X 3 , X 4 , X 5 ) a) Analyze  Correlate  Partial  Variables:Y, X1  Controlling for: X2,X3,X4,X
  1. What proportion of the variation in the EMIGRANT RATE is “explained” by the regression model?
  2. Test whether either of the two POVERTY variables are associated with EMIGRANT RATE, after controlling for POPULATION PRESSURE and INFORMATION at the =0.05 significance level.