Previous Page Table of Contents Next Page


Chapter 5. Empirical estimation and predictions


In the analysis of poverty in Ecuador, the spatial autocorrelation of household consumption was calculated for the total sample (5 630 households), the rural households (2 264) and the urban households (3 366). Table 4 shows that there is a large and significant spatial autocorrelation in rural household consumption, whereas it is small but significant for the total sample and urban household consumption.

In order to account for the presence of significant spatial autocorrelation in the data, three spatial probit models were constructed: for the total sample and for the subsamples of the rural and urban households. The coefficient values, their z-value in all three models, were analysed and it was verified that there were no large differences. Hence, it was decided to use only one model: the total sample model.

Table 5 gives the estimated coefficients of the spatial probit regression that estimates the probability that the household is poor as a function of various households’ characteristics, various characteristics of the area in which the household resides and of a component (y*) standing for the spatial dimension. Table 5 reports the standard errors. Even if they do not have a theoretical meaning, they can have a descriptive value and provide some general information. However, some studies where the standard errors are computed both by standard statistical packages and bootstrap simulation techniques remark on the comparability of the results.

In both rural and urban areas, the household variables that have a significant relationship to a household’s probability of being poor are the adult literacy rates (if the components of the household have a diploma, the household’s probability of being poor decreases). The same effect is related to the adequacy of the house and to the presence of a waste collection truck (if the household lives in a house with solid walls and a toilet and there is the regular presence of a waste collection truck, the household’s probability of being poor decreases). Moreover, as the number of persons living in a single room of the house increases, the household’s probability of being poor also increases.

TABLE 4. Spatial autocorrelation

Spatial correlation estimate (total sample)

Statistic = “Moran”

Sampling = “free”

Correlation = 0.177

Null hypothesis: no spatial autocorrelation (rejection)

Spatial correlation estimate (rural sample)

Statistic = “Moran”

Sampling = “free”

Correlation = “0.651”

Null hypothesis: no spatial autocorrelation (rejection)

Spatial correlation estimate (urban sample)

Statistic = “Moran”

Sampling = “free”

Correlation = 0.0532

Null hypothesis: no spatial autocorrelation (rejection)

All the variables at the county level have a significant correlation with poverty. In particular, households living in counties with a high population density and high mortality rates have high probabilities of being poor.

Environmental factors also have a significant relationship to a household’s probability of being poor. In particular, households living close to roads, in large counties and with irrigation systems have a low probability of being poor.

TABLE 5. Coefficient estimates, standard error, z-value of the autologistic model

Coefficients

Estimate

Std. error

zvalue

Pr(>|z|)

Significance

Percentage adults illiterate in household

2.69E-02

1.02E-01

0.263

0.792368


Percentage persons with diploma

-2.12E+00

2.49E-01

-8.519

2.00E-16

***

Adequate home

-7.62E-02

6.33E-02

-1.204

0.228537


Home with drinking-water

-6.85E-03

5.01E-02

-0.137

0.891297


Home with adequate toilet

-1.07E-01

6.20E-02

-1.727

0.084099

.

Home with adequate wall

-1.83E-01

4.68E-02

-3.91

9.24E-05

***

Home with public electricity network

8.40E-02

7.28E-02

1.154

0.248359


Waste collection by truck

-3.13E-01

5.24E-02

-5.977

2.28E-09

***

Persons per room

3.75E-01

1.69E-02

22.142

2.00E-16

***

Population

7.98E-06

2.99E-06

2.67

0.007594

*

Mortality rate ()

5.81E-03

2.48E-03

2.347

0.018943

*

Number of babies

-2.80E-04

1.39E-04

-2.011

0.044284

*

Slippery and landslide

4.06E-01

2.05E-01

1.987

0.046905

*

Sulifluxion

3.61E-01

1.81E-01

1.997

0.045802

*

Temperate dry

4.93E-01

2.22E-01

2.221

0.026349

*

Temperate humid

2.88E-01

2.11E-01

1.363

0.173001


Hot and temperate

1.88E-01

2.22E-01

0.846

0.397364


Hot and temperate humid

8.46E-01

3.73E-01

2.264

0.023572

*

Flooding area

1.77E-01

1.48E-01

1.196

0.231526


Volcano area

6.42E-02

1.50E-01

0.428

0.668536


Spatial correlation variable (y*)

-1.35E-03

3.51E-04

-3.851

0.000118

***

Rural or urban

5.74E-02

6.01E-02

0.955

0.339784


People < 5 km from road

-2.34E-06

8.70E-07

-2.692

0.007101

*

People 5-15 km from road

1.95E-06

3.00E-06

0.651

0.515001


People > 15 km from road

-8.83E-07

1.20E-05

-0.074

0.941289


County surface (km2)

-3.15E-05

7.60E-06

-4.142

3.45E-05

***

Cereal production coefficient

3.83E-04

2.05E-04

1.871

0.061304

.

Protected area

1.01E-01

7.59E-02

1.332

0.18282


> 35% of irrigation area

-2.18E-01

7.44E-02

-2.925

0.00345

*

Closed forest

3.06E-02

6.90E-02

0.443

0.657655


Arable land (30-60%)

3.01E-02

7.61E-02

0.395

0.692683


Arable land (> 60%)

3.35E-01

2.15E-01

1.556

0.119686


Significance codes: 0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ‘ 1.

Finally, it is important to underline the significant effect of the spatial correlation variable (y*) that denotes the presence of clusters in the spatial distribution of poverty and the influence between neighbour households on the probability of being poor.

The estimated parameters of the autol ogistic model (Equation 12) were applied to the data in the county database (INFOPLAN) in order to predict the distribution of poverty across all the counties in Ecuador. The percentage of poor households in each county was obtained from Equation 15.

In order to count the number of poor individuals, the average households’components in each county were multiplied by the number of poor families in each county (Figure 1).

Table 6. Poverty level comparison (in ascending order): econometric estimation and ECV data

County

% poor persons

County

Probit model (%)

County

Spatial probit model (%)

Milagro

16.7

Quito

7.6

Quito

10.8

Rumiñahui

17.0

Guayaquil

21.5

Rumiñahui

23.2

Quito

29.2

Rumiñahui

21.7

Cuenca

29.5

Zamora

31.5

Cuenca

29.6

Guayaquil

31.7

Quevedo

32.1

Machala

31.4

Machala

32.0

S. Dom. Colorados

32.7

Portoviejo

33.2

Portoviejo

33.5

Tena

33.3

Ambato

34.6

Ambato

35.2

Guayaquil

33.9

Manta

35.4

S. Dom. Colorados

36.5

Santa Rosa

34.0

S. Dom. Colorados

36.8

Manta

37.5

Machala

35.8

Quevedo

40.6

Quevedo

42.8

Pastaza

36.9

Esmeraldas

42.6

Pastaza

44.8

Ambato

38.2

Pastaza

43.6

Baños

45.6

Manta

40.7

Riobamba

44.6

Riobamba

45.8

Cuenca

42.3

Baños

45.3

Esmeraldas

45.8

Portoviejo

43.1

Loja

46.5

Loja

47.5

Baños

45.5

Milagro

47.8

Milagro

49.4

Playas

45.5

Santa Rosa

51.0

Santa Rosa

52.2

Morona

47.1

Cayambe

53.2

Cayambe

52.3

Cayambe

48.1

Piñas

53.5

Piñas

53.7

Santa Elena

49.6

Sucre

54.2

Sucre

55.9

S. Miguel De Los Bancos

50.0

Ibarra

56.8

Zamora

57.7

Gualaquiza

50.8

Zamora

57.7

Ibarra

58.9

Sucua

50.9

Playas

58.0

Playas

60.0

Esmeraldas

51.7

Tulcan

59.6

Urdaneta

60.1

Ventanas

51.9

Urdaneta

60.6

Junin

60.9

Urdaneta

52.1

Junin

61.3

Tulcan

61.1

Montecristi

54.5

Chimbo

62.2

Chimbo

62.2

Ibarra

54.7

Montecristi

64.1

Sucua

64.0

Quero

56.9

Morona

64.2

S. Miguel De Los Bancos

64.2

Sucre

57.6

S. Miguel De Los Bancos

64.4

Gualaquiza

64.2

Tulcan

58.8

El Empalme

65.5

Morona

64.3

Santa Lucia

59.3

Sucua

65.8

Montecristi

66.8

Chimbo

60.0

Gualaquiza

65.9

Tena

67.1

Loja

60.4

Tena

67.2

El Empalme

67.2

Junin

61.1

La Troncal

68.0

Quero

67.6

Lago Agrio

61.1

Ventanas

68.3

La Troncal

68.9

Catamayo

63.6

Quero

69.3

Ventanas

70.0

Riobamba

64.3

Catamayo

70.3

San Juan Bosco

71.3

Piñas

65.3

Jipijapa

70.8

Jipijapa

71.5

San Juan Bosco

67.8

Santa Elena

70.9

Catamayo

72.2

Santa Isabel

69.1

Calvas

71.4

Calvas

72.7

La Troncal

71.2

San Juan Bosco

71.9

Santa Elena

72.9

El Empalme

72.2

Montufar

72.3

Lago Agrio

73.1

Saraguro

72.4

Lago Agrio

72.7

Montufar

73.6

Calvas

72.5

Gualaceo

74.9

Gualaceo

75.8

Montufar

73.4

Zapotillo

76.5

Zapotillo

77.5

Quininde

76.4

Quininde

79.5

Quininde

78.6

Cotacachi

80.6

Santa Lucia

80.5

Santa Lucia

80.2

Zapotillo

80.9

Cotacachi

80.9

Cotacachi

80.8

Jipijapa

81.9

Santa Isabel

83.0

Santa Isabel

82.6

Gualaceo

82.2

Saraguro

85.6

Saraguro

85.7

Urbina Jado

84.1

Urbina Jado

87.8

Urbina Jado

88.8

Guamote

87.5

Guamote

95.9

Guamote

96.3

Total

47.7


45.6


48.2

Notes: Spearman coefficients: ECV and probit model = 0.781; ECV and spatial probit model = 0.791; probit model and spatial probit model = 0.995.

The first validation test draws its conclusion about the reliability of the incidence of poverty from the counties’ranking. The higher the coefficient of rank correlation for the counties, the higher the likelihood that the ranking of counties established by these estimates will also be highly correlated with the ranking established by the ECVdata. Table 6 compares the results using the probit model and the spatial probit model with the estimates obtained directly from the ECVdata.

Figure 2 shows the aggregate poverty situation at the province level. Table 7 compares these results with those obtained by applying a probit regression without the spatial component.

Figure 1. Percentage of poor people in each county

Figure 2. Percentage of poor people in each province

Table 7. Comparison between probit and spatial probit in the headcount index and in the percentage of poor people in the provinces of Ecuador, total sample

Province

Total poor Bigman (a)

Total poor spatial p. (b)

Total pop.

% poor Bigman (a)

% poor spatial p. (b)

Differences [((b-a)/b)*100]

Azuay

235 579

235 692

506 090

46.5

46.6

0.048

Bolivar

107 848

108 660

155 088

69.5

70.1

0.747

Ca_ar

138 804

140 292

185 927

74.7

75.5

1.061

Carchi

97 513

98 698

141 482

68.9

69.8

1.200

Chimborazo

242 872

245 923

362 430

67.0

67.9

1.240

Cotopaxi

196 531

197 070

276 324

71.1

71.3

0.273

El Oro

199 160

201 868

412 725

48.3

48.9

1.342

Esmeraldas

205 404

209 311

315 449

65.1

66.4

1.867

Guayas

941 136

1 115 349

2517 398

37.4

44.3

15.620

Imbabura

178 447

181 566

265 499

67.2

68.4

1.718

Loja

254 383

257 534

384 545

66.2

67.0

1.223

Los Rios

324 256

330 755

527 559

61.5

62.7

1.965

Manabi

570 799

576 256

1 031 927

55.3

55.8

0.947

Morona Santiago

58 653

57 962

84 216

69.6

68.8

-1.193

Napo

40 434

40 063

57 316

70.5

69.9

-0.926

Orellana

34 845

34 930

46 328

75.2

75.4

0.243

Pastaza

21 227

21 448

41 554

51.1

51.6

1.029

Pichincha

264 323

306 122

1 756 228

15.1

17.4

13.654

Sucumbios

58 287

57 895

76 952

75.7

75.2

-0.677

Tungurahua

157 685

157 312

361 980

43.6

43.5

-0.237

Zamora Chinchipe

44 769

44 517

66 167

67.7

67.3

-0.567

Total

4 372 957

4 619 221

9 573 184

45.6

48.2

5.394


Table 8. Comparison between probit and spatial probit in the headcount index and in the percentage of poor people in the provinces of Ecuador, rural sample

Province

Total poor Bigman (a)

Total poor spatial p. (b)

Total pop.

% poor Bigman (a)

% poor spatial p. (b)

Differences [((b-a)/b)*100]

Azuay

207 797

204 639

302 537

68.7

67.6

-1.543

Bolivar

103 282

103 631

139 358

74.1

74.4

0.337

Ca_ar

110 052

110 075

130 958

84.0

84.1

0.021

Carchi

75 624

75 176

92 440

81.8

81.3

-0.596

Chimborazo

217 438

217 950

255 942

85.0

85.2

0.235

Cotopaxi

176 080

175 486

214 655

82.0

81.8

-0.338

El Oro

89 114

87 217

123 728

72.0

70.5

-2.175

Esmeraldas

144 262

143 221

172 741

83.5

82.9

-0.727

Guayas

309 035

307 138

414 686

74.5

74.1

-0.618

Imbabura

123 950

123 367

142 879

86.8

86.3

-0.472

Loja

208 061

207 866

250 089

83.2

83.1

-0.094

Los Rios

227 863

227 714

294 834

77.3

77.2

-0.065

Manabi

391 569

386 384

542 961

72.1

71.2

-1.342

Morona Santiago

55 657

54 802

75 970

73.3

72.1

-1.560

Napo

38 381

37 838

49 443

77.6

76.5

-1.437

Orellana

31 294

31 148

38 523

81.2

80.9

-0.468

Pastaza

18 707

18 600

27 116

69.0

68.6

-0.575

Pichincha

119 782

112 367

367 646

32.6

30.6

-6.599

Sucumbios

50 358

49 597

63 787

78.9

77.8

-1.535

Tungurahua

134 471

131 623

217 213

61.9

60.6

-2.164

Zamora Chinchipe

42 364

41 937

58 119

72.9

72.2

-1.018

Total

2 875 141

2 847 776

3 975 625

72.3

71.6

-0.977


Table 9. Comparison between probit and spatial probit in the headcount index and in the percentage of poor people in the provinces of Ecuador, urban sample

Province

Total poor Bigman (a)

Total poor spatial p. (b)

Total pop.

% poor Bigman (a)

% poor spatial p. (b)

Differences
[((b-a)/b)*100]

Azuay

27 783

31 053

203 553

13.6

27.0

10.531

Bolivar

4 566

5 029

15 730

29.0

25.7

9.198

Ca_ar

28 752

30 216

54 969

52.3

52.6

4.847

Carchi

21 889

23 522

49 042

44.6

42.8

6.942

Chimborazo

25 434

27 973

106 488

23.9

28.3

9.075

Cotopaxi

20 452

21 585

61 669

33.2

36.3

5.249

El Oro

110 046

114 651

288 997

38.1

43.7

4.017

Esmeraldas

61 141

66 090

142 708

42.8

48.4

7.488

Guayas

632 101

808 211

2 102 712

30.1

39.6

21.790

Imbabura

54 497

58 199

122 620

44.4

46.3

6.361

Loja

46 323

49 667

134 456

34.5

33.9

6.734

Los Rios

96 394

103 040

232 725

41.4

46.3

6.451

Manabi

179 230

189 872

488 966

36.7

40.7

5.605

Morona Santiago

2 996

3 160

8 246

36.3

36.9

5.169

Napo

2 052

2 225

7 873

26.1

31.5

7.774

Orellana

3 551

3 781

7 805

45.5

49.4

6.098

Pastaza

2 520

2 848

14 438

17.5

31.7

11.505

Pichincha

144 542

193 756

1 388 582

10.4

19.6

25.400

Sucumbios

7 929

8 298

13 165

60.2

62.9

4.453

Tungurahua

23 214

25 689

144 767

16.0

23.2

9.636

Zamora Chinchipe

2 405

2 579

8 048

29.9

28.9

6.776

Total

1 497 815

1 771 445

5 597 559

26.7

31.6

15.506

With the spatial probit regression, the percentage of poor persons in the total population is 48 percent, compared with 45 percent for the probit regression. The difference (5.39 percent) is very significant. For the rural population, the corresponding figures for the spatial probit regression and the probit regression are 71 and 72 percent respectively (Table 8). The differences among the urban population are more evident (Table 9), even if the spatial autocorrelation is very small. These differences are very important if poverty distribution is analysed at the county level (Table A.1 in Annex A).

TABLE 10. Comparison of three methods for estimating poverty, percentage of poor people in Ecuador

Area

Method

Lanjouw et al. (1995)

Bigman et al.

Spatial probit

Costa

54

46

50

Urban

43

33

39

Rural

75

75

74

Sierra

58

42

44

Urban

42

17

20

Rural

78

69

69

Oriente

65

69

69

Urban

47

36

39

Rural

70

75

75

Ecuador

56

45

48

Urban

42

26

31

Rural

76

72

71

Figure 3. Comparison between the Lanjouw et al. method and spatial probit at regional level

Figure 4. Comparison between the Bigman et al. method and spatial probit at regional level

The method applied in this study for poverty mapping at the level of small geographical areas provides a more accurate specification of poverty by incorporating a spatial component into the classical model regression.

Recalling the comparison performed in Chapter 3, Table 10 and Figures 3 and 4 compare the percentage of poor individuals at the regional level as obtained with spatial probit regression with the percentage of poor persons using the Lanjouw et al. and Bigman et al. methods.


Previous Page Top of Page Next Page