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Neighborhood Effect in Korean Electoral Regionalism
Unformatted Document Text:  29 Table 4. Mixed Regressive – Spatial Autoregressive (MRSAR) Model: Voting in Youngnam (Southeast) and Gangwon (Northeast) 1997 2002 Variable MLE OLS MLE OLS Constant .605 (.350) .420 (.359) 1.069*** (.273) . 861*** (.271) Education -.239 (.146) -.176 (.148) -.438*** (.122) -.368*** (.121) Age -.010 (.007) -.007 (.007) -.017*** (.004) -.015*** (.005) ρ .685*** (.078) .824*** (.069) .820*** (.050) .957*** (.049) N 90 90 91 91 R 2 .09 .64 .25 .83 Standard errors are in parentheses. *** p<.01; ** p<.05; 2-tailed tests. Table 5. Mixed Regressive – Spatial Autoregressive (MRSAR) Model: Voting in Honam (Southwest) 1997 2002 Variable MLE OLS MLE OLS Constant .450 (.232) .214 (.241) .661*** (.238) . 338 (.256) Education .028 (.074) .006 (.071) -.082 (.084) -.098 (.085) Age .001 (.003) .000 (.004) -.004 (.004) -.004 (.003) ρ .481*** (.153) .771*** (.190) .528*** (.144) .898*** (.190) N 42 42 42 42 R 2 .06 .33 .06 .40 Standard errors are in parentheses. *** p<.01; ** p<.05; 2-tailed tests.

Authors: Baek, Mijeong., Lee, So Young. and Lin, Tse-min.
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Table 4. Mixed Regressive – Spatial Autoregressive (MRSAR) Model:
Voting in Youngnam (Southeast) and Gangwon (Northeast)
1997 2002
Variable
MLE OLS MLE OLS
Constant
.605
(.350)
.420
(.359)
1.069***
(.273)
. 861***
(.271)
Education
-.239
(.146)
-.176
(.148)
-.438***
(.122)
-.368***
(.121)
Age
-.010
(.007)
-.007
(.007)
-.017***
(.004)
-.015***
(.005)
ρ
.685***
(.078)
.824***
(.069)
.820***
(.050)
.957***
(.049)
N
90 90 91 91
R
2
.09 .64 .25 .83
Standard errors are in parentheses. *** p<.01; ** p<.05; 2-tailed tests.
Table 5. Mixed Regressive – Spatial Autoregressive (MRSAR) Model:
Voting in Honam (Southwest)
1997 2002
Variable
MLE OLS MLE OLS
Constant
.450
(.232)
.214
(.241)
.661***
(.238)
. 338
(.256)
Education
.028
(.074)
.006
(.071)
-.082
(.084)
-.098
(.085)
Age
.001
(.003)
.000
(.004)
-.004
(.004)
-.004
(.003)
ρ
.481***
(.153)
.771***
(.190)
.528***
(.144)
.898***
(.190)
N
42 42 42 42
R
2
.06 .33 .06 .40
Standard errors are in parentheses. *** p<.01; ** p<.05; 2-tailed tests.


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