第五章异方差性.docx

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第五章异方差性.docx

第五章异方差性

5.3为了研究中国出口商品总额EXPORT对国内生产总值GDP的影响,搜集了1990

2015年相关的指标数据,如表5.3所示。

表3中国出口商品总额与国内生产总值(单位:

亿元)

时间

出口商品总额

EXPORT

国内生产总值

GDP

时间

出口商品总额

EXPORT

国内生产总值

GDP

1991

3827.1

22005.6

2004

49103.3

161840.2

1992

4676.3

27194.5

2005

62648.1

187318.9

1993

5284.8

35673.2

2006

77597.2

219438.5

1994

10421.8

48637.5

2007

93627.1

270232.3

1995

12451.8

61339.9

2008

100394.9

319515.5

1996

12576.4

71813.6

2009

82029.7

349081.4

1997

15160.7

79715.0

2010

107022.8

413030.3

1998

15223.6

85195.5

2011

123240.6

489300.6

1999

16159.8

90564.4

2012

129359.3

540367.4

2000

20634.4

100280.1

2013

137131.4

595244.4

2001

22024.4

110863.1

2014

143883.7

643974.0

2002

26947.9

121717.4

2015

141166.8

685505.8

2003

36287.9

137422.0

资料来源:

《国家统计局网站》

(1)根据以上数据,建立适当线性回归模型。

(2)试分别用White检验法与ARCH检验法检验模型是否存在异方差?

(3)如果存在异方差,用适当方法加以修正。

解:

(1)

DependentVariable:

Y

Method:

LeastSquares

Date:

04/18/20Time:

15:

38

Sample:

19912015

Includedobservations:

25

Variable

Coefficient

Std.Errort-Statistic

Prob.

C

-673.0863

15354.24-0.043837

0.9654

X

4.061131

0.20167720.13684

0.0000

R-squared

0.946323

Meandependentvar

234690.8

AdjustedR-squared

0.943990

S.D.dependentvar

210356.7

S.E.ofregression

49784.06

Akaikeinfocriterion

24.54540

Sumsquaredresid

5.70E+10

Schwarzcriterion

24.64291

Loglikelihood

-304.8174

Hannan-Quinncriter.

24.57244

F-statistic

405.4924

Durbin-Watsonstat

0.366228

Prob(F-statistic)

0.000000

模型回归的结果:

A

Y673.08634.0611Xi

t(0.0438)(20.1368)

R20.9463,n25

(2)white:

该模型存在异方差

HeteroskedasticityTest:

White

F-statistic

4.493068

Prob.F(2,22)

0.0231

Obs*R-squared

7.250127

Prob.Chi-Square

(2)

0.0266

ScaledexplainedSS

8.361541

Prob.Chi-Square

(2)

0.0153

TestEquation:

DependentVariable:

RESIDE

Method:

LeastSquares

Date:

04/18/20Time:

17:

45

Sample:

19912015

Includedobservations:

25

Variable

Coefficient

Std.Errort-Statistic

Prob.

C

-1.00E+09

1.43E+09-0.700378

0.4910

XA2

-0.455420

0.420966-1.081847

0.2910

X

102226.2

60664.191.685117

0.1061

R-squared

0.290005

Meandependentvar

2.28E+09

AdjustedR-squared

0.225460

S.D.dependentvar

3.84E+09

S.E.ofregression

3.38E+09

Akaikeinfocriterion

46.83295

Sumsquaredresid

2.51E+20

Schwarzcriterion

46.97922

Loglikelihood

-582.4119

Hannan-Quinncriter.

46.87352

F-statistic

4.493068

Durbin-Watsonstat

0.749886

Prob(F-statistic)

0.023110

ARCH检验:

该模型存在异方差

HeteroskedasticityTest:

ARCH

F-statistic

18.70391

Prob.F(1,22)

0.0003

Obs*R-squared

11.02827

Prob.Chi-Square

(1)

0.0009

TestEquation:

DependentVariable:

RESIDA2

Method:

LeastSquares

Date:

04/18/20Time:

19:

55

Sample(adjusted):

19922015

Includedobservations:

24afteradjustments

Variable

Coefficient

Std.Errort-Statistic

Prob.

C

8.66E+08

6.92E+081.251684

0.2238

RESIDA2(-1)

0.817146

0.1889444.324802

0.0003

R-squared

0.459511

Meandependentvar

2.37E+09

AdjustedR-squared

0.434944

S.D.dependentvar

3.90E+09

S.E.ofregression

2.93E+09

Akaikeinfocriterion

46.51293

Sumsquaredresid

1.89E+20

Schwarzcriterion

46.61110

Loglikelihood

-556.1552

Hannan-Quinncriter.

46.53898

F-statistic

18.70391

Durbin-Watsonstat

0.888067

Prob(F-statistic)

0.000273

(3)修正:

加权最小二乘法修正

却WFWoricflil-riUTLECiidtle^cJ\

i«Tt"lt-|

H

L日芦£臼电*电引OdiJ10*左(■203>5

r^lucilifl-MI^ITGR1Z7QISw=—T,皿”=

eBa^-oa山口fE=-UHap-oe=-口曰3.21且-口9IB之与尸-口口ti.3-Z2E-DO出q,峙尸・C旦(4.3-1E-O^

303IE09N.HMUO-QI立o右匚

>-nO

4TDE--WZ.&15^=-DC

1hi-tiE-"IIIJi.umrciQsj^F-iiii旦日二-①口

DependentVariable:

Y

Method:

LeastSquares

Date:

04/18/20Time:

20:

46

Sample:

19912015

Includedobservations:

25

Weightingseries:

W2

Weighttype:

Inversevariance(averagescaling)

Variable

Coefficient

Std.Errort-Statistic

Prob.

C

10781.17

2188.7064.925821

0.0001

X

3.931606

0.19200420.47667

0.0000

WeightedStatistics

R-squared

0.947998

Meandependentvar

51703.40

AdjustedR-squared

0.945737

S.D.dependentvar

11816.72

S.E.ofregression

8420.515

Akaikeinfocriterion

20.99135

Sumsquaredresid

1.63E+09

Schwarzcriterion

21.08886

Loglikelihood

-260.3919

Hannan-Quinncriter.

21.01839

F-statistic

419.2938

Durbin-Watsonstat

0.539863

Prob(F-statistic)

0.000000

Weightedmeandep.

39406.30

UnweightedStatistics

R-squared

0.944994

Meandependentvar

234690.8

AdjustedR-squared

0.942602

S.D.dependentvar

210356.7

S.E.ofregression

50396.82

Sumsquaredresid

5.84E+10

修正后进行white检验:

HeteroskedasticityTest:

White

F-statistic

0.261901

Prob.F(2,22)

0.7720

Obs*R-squared

0.581387

Prob.Chi-Square

(2)

0.7477

ScaledexplainedSS

0.211737

Prob.Chi-Square

(2)

0.8995

TestEquation:

DependentVariable:

WGT_RESIDA2

Method:

LeastSquares

Date:

04/18/20Time:

20:

41

Sample:

19912015

Includedobservations:

25

Collineartestregressorsdroppedfromspecification

Variable

Coefficient

Std.Errort-Statistic

Prob.

C

71441488

220462123.240534

0.0038

X*WGTA2

-2711.961

5055.773-0.536409

0.5971

WGTA2

13536351

207148710.653461

0.5202

R-squared

0.023255

Meandependentvar

65232673

AdjustedR-squared

-0.065539

S.D.dependentvar

61762160

S.E.ofregression

63753972

Akaikeinfocriterion

38.89113

Sumsquaredresid

8.94E+16

Schwarzcriterion

39.03739

Loglikelihood

-483.1391

Hannan-Quinncriter.

38.93170

F-statistic

0.261901

Durbin-Watsonstat

0.898907

Prob(F-statistic)

0.771953

修正后的模型为

A

Y10781.173.931606Xi

t(4.925821)(20.47667)

R20.9480,n25

5.4表5.4的数据是2011年各地区建筑业总产值(X)和建筑业企业利润总额(Y)。

表5.4各地区建筑业总产值(X)和建筑业企业利润总额(Y)(单位:

亿元)

地区

建筑业总产值X

建筑业企业利

润总额Y

地区

建筑业总产值X

建筑业企业

利润总额Y

北京

6046.22

216.78

湖北

5586.45

231.46

天津

2986.45

79.54

湖南

3915.02

124.77

河北

3972.66

127.00

广东

5774.01

251.69

山西

2324.91

49.22

广西

1553.07

26.24

内蒙古

1394.68

105.37

海南

255.47

6.44

辽宁

6217.52

224.31

重庆

3328.83

155.34

吉林

1626.65

89.03

四川

5256.65

177.19

黑龙江

2029.16

58.92

贵州

824.72

14.39

上海

4586.28

166.69

云南

1868.40

61.88

江苏

15122.85

595.87

西藏

124.47

5.75

浙江

14907.42

411.57

陕西

3216.63

104.38

安徽

3597.26

127.12

甘肃

925.84

29.33

福建

3692.62

126.47

青海

319.42

8.35

江西

2095.47

62.37

宁夏

427.92

11.25

山东

6482.90

291.77

新疆

1320.37

27.60

河南

5279.36

200.09

数据来源:

国家统计局网站

根据样本资料建立回归模型,分析建筑业企业利润总额与建筑业总产值的关系,并判断模型是否存在异方差,如果有异方差,选用最简单的方法加以修正。

解:

散点图:

建立线性回归模型:

DependentVariable:

Y

Method:

LeastSquares

Date:

04/18/20Time:

21:

16

Sample:

131

Includedobservations:

31

Variablei

Coefficient

Std.Errort-Statistic

Prob.

C

2.368138

9.0493710.261691

0.7954

X

0.034980

0.00175419.94530

0.0000

R-squared

0.932055

Meandependentvar

134.4574

AdjustedR-squared

0.929712

S.D.dependentvar

129.5145

S.E.ofregression

34.33673

Akaikeinfocriterion

9.972649

Sumsquaredresid

34191.33

Schwarzcriterion

10.06516

Loglikelihood

-152.5761

Hannan-Quinncriter.

10.00281

F-statistic

397.8152

Durbin-Watsonstat

2.572841

Prob(F-statistic)

0.000000

white检验:

HeteroskedasticityTest:

White

F-statistic

26.00369

Prob.F(2,28)

0.0000

Obs*R-squared

20.15100

Prob.Chi-Square

(2)

0.0000

 

ScaledexplainedSS

40.83473Prob.Chi-Square

(2)

0.0000

 

TestEquation:

DependentVariable:

RESIDA2

Method:

LeastSquares

Date:

04/18/20Time:

21:

19

Sample:

131

Includedobservations:

31

Variable

Coefficient

Std.Errort-Statistic

Prob.

C

498.3340

559.41850.890807

0.3806

XA2

4.51E-05

1.45E-053.110610

0.0043

X

-0.158176

0.221918-0.712768

0.4819

R-squared

0.650032

Meandependentvar

1102.946

AdjustedR-squared

0.625035

S.D.dependentvar

2412.791

S.E.ofregression

1477.458

Akaikeinfocriterion

17.52580

Sumsquaredresid

61120730

Schwarzcriterion

17.66457

Loglikelihood

-268.6499

Hannan-Quinncriter.

17.57104

F-statistic

26.00369

Durbin-Watsonstat

2.732318

Prob(F-statistic)

0.000000

模型存在异方差

模型修正:

加权最小二乘法

DependentVariable:

Y

Method:

LeastSquares

Date:

04/18/20Time:

21:

24

Sample:

131

Includedobservations:

31

Weightingseries:

W2

Weighttype:

Inversevariance(averagescaling)

VariableCoefficientStd.Errort-StatisticProb.

C0.0207341.3518420.0153380.9879

X0.0345050.00244514.110490.0000

WeightedStatistics

R-squared0.872866Meandependentvar19.08548

AdjustedR-squared

0.868482

S.D.dependentvar

6.416052

S.E.ofregression

6.525709

Akaikeinfocriterion

6.651717

Sumsquaredresid

1234.962

Schwarzcriterion

6.744233

Loglikelihood

-101.1016

Hannan-Quinncriter.

6.681875

F-statistic

199.1059

Durbin-Watsonstat

2.201198

Prob(F-statistic)

0.000000

Weightedmeandep.

9.525906

UnweightedStatistics

R-squared

0.930826

Meandependentvar

134.4574

AdjustedR-squared

0.928441

S.D.dependentvar

129.5145

S.E.ofregression

34.64582

Sumsquaredresid

34809.66

Durbin-Watsonstat

2.531761

加权后进行white检验:

HeteroskedasticityTest:

White

F-statistic

0.224402

Prob.F(2,28)

0.8004

Obs*R-squared

0.489051

Prob.Chi-Square

(2)

0.7831

ScaledexplainedSS

1.141138

Prob.Chi-Square

(2)

0.5652

TestEquation:

DependentVariable:

WGT_RESIDA2

Method:

LeastSquares

Date:

04/18/20Time:

21:

25

Sample:

131

Includedobservations:

31

Collineartestregressorsdroppedfromspecification

Variable

Coefficient

Std.Errort-Statistic

Prob.

C

28.90647

24.350741.187088

0.2452

X*WGTA2

0.074634

0.1114710.669539

0.5086

WGTA2

-9.628706

15.02003-0.641058

0.5267

R-squared

0.015776

Meandependentvar

39.83747

AdjustedR-squared

-0.054526

S.D.depen

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