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Poverty as Income
Deprivation

       Leland Joseph R. Dela Cruz
                 Director
      Development Studies Program
        School of Social Sciences
       Ateneo de Manila University
          ldelacruz@ateneo.edu

                                     Updated June 13, 2010
When is a person considered
poor? NSCB
The poor refers to individuals and families whose
income falls below the poverty threshold and/ or those
that cannot afford in a sustained manner to provide
their basic needs. The poverty threshold refers to the
minimum income/ expenditure required for a family/
individual to meet the basic food/ non-food
requirements (clothing and footwear; fuel, light, and
water; housing maintenance and other minor repairs;
rentals or occupied dwelling units; medical care;
education; transportation and communications; non-
durable furnishing; household operations; and personal
care and effects
How does the government
compute for the poverty line?
1.   The government constructs a menu per
     region that satisfies basic nutritional
     requirements. The government computes
     for the cost of that menu. (ex. P43)
2.   The government computes for the
     proportion of income that is budgeted for
     food using survey data. (ex. 66%)
3.   The figure obtained in #1 is divided by the
     figure obtained in #2. (ex. P27 / 66% =
     P65)
Food Threshold
   Also referred to as the subsistence threshold
    or the food poverty line
   Refers to the minimum income/expenditure
    required for a family/individual to meet the
    basic food needs, which satisfies the
    nutritional requirements for economically
    necessary and socially desirable physical
    activities (Virola, 2008, NSCB website)
Poverty Threshold/ Line
   Refers to the cost of minimum basic
    needs: food + non-food
   Refers to the minimum
    income/expenditure required for a
    family/individual to meet the basic food
    and non-food requirements
What is the NCR poverty line
    (2008)?
     Individual/ year*                  P24,000.00
                                 427 Euro, 3,355 Krone, 47,346 Yen


     Individual/ month*                    P2,000.00
                                     35 Euro, 279 Krone, 3,945 Yen


     Individual/ day*                             P65.76
                                   1. Euro, 9.20 Krone, 129.73 Yen


     Family/ year*                    P120,000.00
                             2,135 Euro, 16,779 Krone, 236,733 Yen

                                        P10,000.00
     Family/ month               178 Euro, 1,398 Krone, 19,728 Yen



     Family/ day*                              P328.77
                                         6 Euro, 46 Krone, 649 Yen

*Unofficial, self-computed
What is the Philippine poverty
    line (2006)?
     Individual/ year                         P15,057.57
                             NSCB      268 Euro, 2106 Krone, 29705 Yen


     Individual/ month*                         P1,254.80
                                           22 Euro, 175 Krone, 2475 Yen


     Individual/ day*                                  P41.26
                                        0.73 Euro, 5.77 Krone, 81.40 Yen


     Family/ year*                             P75,287.85
                                    1,340 Euro, 10528 Krone, 148526 Yen


     Family/ month*                             P6,273.99
                                        112 Euro, 877 Krone, 12,377 Yen


     Family/ day*                                    P206.29
                                              4 Euro, 29 Krone, 408 Yen

*Unofficial, self-computed
Regional poverty lines    2006, NSCB
Region        Threshold Region   Threshold
NCR            P20,566 VIII       P13,974
I              P15,956 IX         P13,219
II             P13,791 X          P14,199
III            P17,298 XI         P14,942
IV-A           P17,761 XII        P14,225
IV-B           P14,800 CAR        P16,810
V              P15,015 ARMM       P15,533
VI             P14,405 CARAGA     P15,249
VII            P13,390
Poverty incidence             2006, NSCB

   32.9% or 27.6 million Filipinos are poor.
       32.9% of Filipinos earn less than
        P15,057.57 a year, P1,254.80 a month
        and P41.26 a day.
   26.9% or 4.6 million Filipino families are
    poor.
       26.9% of families earn less than
        P75,287.85 a year, P6,273.99 a month and
        P206.29 a day.
Regional poverty incidence
       (Individual) 2006, NSCB
                Poverty                  Poverty
      Region                   Region
               Incidence                Incidence
NCR               10.40% VIII              48.50%
I                 32.70% IX                45.30%
II                25.50% X                 43.10%
III               20.70% XI                36.60%
IV-A              20.90% XII               40.80%
IV-B              52.70% CAR               34.50%
V                 51.10% ARMM              61.80%
VI                38.60% CARAGA            52.60%
VII               35.40%
Regional poverty incidence
        (Individual) 2006, NSCB
Region          N*           % of total       Region   N*          % of total

NCR                0.8M               4% VIII               1.6M          7%
I                  1.4M               5% IX                 1.2M          5%
II                 0.8M               2% X                  1.5M          6%
III                1.6M               6% XI                 1.2M          5%
IV-A               1.6M               8% XII                1.5M          5%
IV-B               1.0M               5% CAR                0.5M          1%
V                  2.5M               9% ARMM               1.6M          6%
VI                 2.7M               9% CARAGA             1.0M          4%

VII                2.0M               8%

* Percentages are unofficial, self-computed
Poorest Provinces (2006)           NSCB
                      Poverty Incidence

Tawi-Tawi                  78.9%
Zamboanga del Norte        63.0%
Maguindanao                62.0%
Apayao                     57.5%
Surigao del Norte          53.2%
Lanao del Sur              52.5%
Northern Samar             52.2%
Masbate                    51.0%
Abra                       50.1%
Misamis Occidental         48.8%
Least Poor Provinces (2006)
        NSCB
                       Poverty Incidence

Batanes                      0%
Rizal                       6.4%
Bataan                      6.8%
Cavite                      7.8%
Benguet                     8.2%
Pampanga                    8.3%
Bulacan                     10.0%
Laguna                      10.6%
Nueva Vizcaya               12.7%
Quirino                     15.9%
Poverty trends   NSCB

35
30
25
20                              2000
15                              2003
                                2006
10
 5
 0
     Families     Individuals
Philippine Poverty Incidence:
Families (Percentage) NSCB
 45

 40

 35

 30

 25

 20

 15

 10

  5

  0
      1988   1991   1994   1997   2000   2003
Philippine Poverty Incidence:
Individuals (Percentage) NSCB
  60


  50


  40


% 30


  20


  10


   0
       1988   1991   1994   1997   2000   2003
Income Gap (2006)                 NSCB

      Region   Income Gap        Region   Income Gap
NCR                 21.6% VIII                 30.9%
I                   25.2% IX                   35.7%
II                  23.5% X                    33.4%
III                 23.4% XI                   30.0%
IV-A                24.5% XII                  28.1%
IV-B                32.5% CAR                  32.1%
V                   30.1% ARMM                 29.3%
VI                  26.6% CARAGA               34.4%
VII                 29.5%
Average family income, expenditures
       and savings per decile 2006, NSO
              Avg. Annual    Avg.           Avg. Savings     Avg. Monthly
              Income         Expenditures                    Income
Phil              173,000         147,000         25,000           14,416
Poorest 10%         32,000         35,000          -3,000           2,666
2nd decile          51,000         52,000          -2,000           4,250
3rd decile          65,000         66,000    Less than 500          5,417
4th decile          81,000         79,000           2,000           6,750
5th decile        100,000          95,000           5,000           8,333
6th decile        124,000         116,000           7,000          10,333
7th decile        156,000         143,000         13,000           13,000
8th decile        205,000         181,000         23,000           17,083
9th decile        292,000         244,000         46,000           24,333
Richest 10%       622,000         460,000        156,000           51,833
Income Distribution                                   2006, NSO

              40                                                   36
              35
              30
% of Income




              25
                                                            16.8
              20                                     11.8
              15                                9
                                         7.1
              10
                   1.9   3 3.8 4.7 5.8
              5
              0
                   1st     3rd    5th          7th          9th
                                   Decile
Income Distribution
              40
              35
              30
% of Income




              25
              20
              15
              10
               5
               0
                   1st to 7th   8th            9th   10th
                                      Decile
Income Distribution

              60
              50
% of Income




              40
              30
              20
              10
              0
                   1st to 8th            9th to 10th
                                Decile
Gini Coefficient

Country               Gini ratio Country     Gini ratio
Denmark                  0.247 U.S.A.           0.408
Japan                    0.249 Thailand         0.425
Norway                   0.258 Philippines      0.445

France                   0.327 Brazil           0.550
Malaysia                 0.379 Namibia          0.743
UNDP.org, 2007 data
Self-Rated Poverty    Pulse-Asia

              June   October        March
              2004     2004          2005
Philippines   70%       70%          70%

Class ABC     37%      21%           35%

Class D       68%      68%           69%

Class E       84%      87%           82%
Self-Rated Poverty   Pulse-Asia

           June   October          March
           2004     2004            2005
NCR        52%       41%            48%
Luzon       69%       69%           66%
Visayas     71%       82%           80%
Mindanao    80%       79%           81%
Urban       66%       57%           58%
Rural       73%       83%           82%
Self-Rated Poverty   SWS
Summary
            Official     Perception-
            Statistics   based measure

Poverty     26.9%        50-70%
Incidence

Poverty     P6,273 a     P12,000 a
threshold   month        month (NCR)
Data Sources
   NSCB: www.nscb.gov.ph: poverty statistics
   NSO: www.census.gov.ph: income and
    poverty statistics (FIES final report, Table 4A)
   UNDP: undp.org
   Pulse-Asia: Public Perceptions on Poverty. CD
    obtained directly from Pulse-Asia
   SWS: www.sws.org.ph
Poverty as Income
Deprivation

       Leland Joseph R. Dela Cruz
                 Director
      Development Studies Program
        School of Social Sciences
       Ateneo de Manila University
          ldelacruz@ateneo.edu

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Philippine poverty situationer 2010

  • 1. Poverty as Income Deprivation Leland Joseph R. Dela Cruz Director Development Studies Program School of Social Sciences Ateneo de Manila University ldelacruz@ateneo.edu Updated June 13, 2010
  • 2. When is a person considered poor? NSCB The poor refers to individuals and families whose income falls below the poverty threshold and/ or those that cannot afford in a sustained manner to provide their basic needs. The poverty threshold refers to the minimum income/ expenditure required for a family/ individual to meet the basic food/ non-food requirements (clothing and footwear; fuel, light, and water; housing maintenance and other minor repairs; rentals or occupied dwelling units; medical care; education; transportation and communications; non- durable furnishing; household operations; and personal care and effects
  • 3. How does the government compute for the poverty line? 1. The government constructs a menu per region that satisfies basic nutritional requirements. The government computes for the cost of that menu. (ex. P43) 2. The government computes for the proportion of income that is budgeted for food using survey data. (ex. 66%) 3. The figure obtained in #1 is divided by the figure obtained in #2. (ex. P27 / 66% = P65)
  • 4. Food Threshold  Also referred to as the subsistence threshold or the food poverty line  Refers to the minimum income/expenditure required for a family/individual to meet the basic food needs, which satisfies the nutritional requirements for economically necessary and socially desirable physical activities (Virola, 2008, NSCB website)
  • 5. Poverty Threshold/ Line  Refers to the cost of minimum basic needs: food + non-food  Refers to the minimum income/expenditure required for a family/individual to meet the basic food and non-food requirements
  • 6. What is the NCR poverty line (2008)? Individual/ year* P24,000.00 427 Euro, 3,355 Krone, 47,346 Yen Individual/ month* P2,000.00 35 Euro, 279 Krone, 3,945 Yen Individual/ day* P65.76 1. Euro, 9.20 Krone, 129.73 Yen Family/ year* P120,000.00 2,135 Euro, 16,779 Krone, 236,733 Yen P10,000.00 Family/ month 178 Euro, 1,398 Krone, 19,728 Yen Family/ day* P328.77 6 Euro, 46 Krone, 649 Yen *Unofficial, self-computed
  • 7. What is the Philippine poverty line (2006)? Individual/ year P15,057.57 NSCB 268 Euro, 2106 Krone, 29705 Yen Individual/ month* P1,254.80 22 Euro, 175 Krone, 2475 Yen Individual/ day* P41.26 0.73 Euro, 5.77 Krone, 81.40 Yen Family/ year* P75,287.85 1,340 Euro, 10528 Krone, 148526 Yen Family/ month* P6,273.99 112 Euro, 877 Krone, 12,377 Yen Family/ day* P206.29 4 Euro, 29 Krone, 408 Yen *Unofficial, self-computed
  • 8. Regional poverty lines 2006, NSCB Region Threshold Region Threshold NCR P20,566 VIII P13,974 I P15,956 IX P13,219 II P13,791 X P14,199 III P17,298 XI P14,942 IV-A P17,761 XII P14,225 IV-B P14,800 CAR P16,810 V P15,015 ARMM P15,533 VI P14,405 CARAGA P15,249 VII P13,390
  • 9. Poverty incidence 2006, NSCB  32.9% or 27.6 million Filipinos are poor.  32.9% of Filipinos earn less than P15,057.57 a year, P1,254.80 a month and P41.26 a day.  26.9% or 4.6 million Filipino families are poor.  26.9% of families earn less than P75,287.85 a year, P6,273.99 a month and P206.29 a day.
  • 10. Regional poverty incidence (Individual) 2006, NSCB Poverty Poverty Region Region Incidence Incidence NCR 10.40% VIII 48.50% I 32.70% IX 45.30% II 25.50% X 43.10% III 20.70% XI 36.60% IV-A 20.90% XII 40.80% IV-B 52.70% CAR 34.50% V 51.10% ARMM 61.80% VI 38.60% CARAGA 52.60% VII 35.40%
  • 11. Regional poverty incidence (Individual) 2006, NSCB Region N* % of total Region N* % of total NCR 0.8M 4% VIII 1.6M 7% I 1.4M 5% IX 1.2M 5% II 0.8M 2% X 1.5M 6% III 1.6M 6% XI 1.2M 5% IV-A 1.6M 8% XII 1.5M 5% IV-B 1.0M 5% CAR 0.5M 1% V 2.5M 9% ARMM 1.6M 6% VI 2.7M 9% CARAGA 1.0M 4% VII 2.0M 8% * Percentages are unofficial, self-computed
  • 12. Poorest Provinces (2006) NSCB Poverty Incidence Tawi-Tawi 78.9% Zamboanga del Norte 63.0% Maguindanao 62.0% Apayao 57.5% Surigao del Norte 53.2% Lanao del Sur 52.5% Northern Samar 52.2% Masbate 51.0% Abra 50.1% Misamis Occidental 48.8%
  • 13. Least Poor Provinces (2006) NSCB Poverty Incidence Batanes 0% Rizal 6.4% Bataan 6.8% Cavite 7.8% Benguet 8.2% Pampanga 8.3% Bulacan 10.0% Laguna 10.6% Nueva Vizcaya 12.7% Quirino 15.9%
  • 14. Poverty trends NSCB 35 30 25 20 2000 15 2003 2006 10 5 0 Families Individuals
  • 15. Philippine Poverty Incidence: Families (Percentage) NSCB 45 40 35 30 25 20 15 10 5 0 1988 1991 1994 1997 2000 2003
  • 16. Philippine Poverty Incidence: Individuals (Percentage) NSCB 60 50 40 % 30 20 10 0 1988 1991 1994 1997 2000 2003
  • 17. Income Gap (2006) NSCB Region Income Gap Region Income Gap NCR 21.6% VIII 30.9% I 25.2% IX 35.7% II 23.5% X 33.4% III 23.4% XI 30.0% IV-A 24.5% XII 28.1% IV-B 32.5% CAR 32.1% V 30.1% ARMM 29.3% VI 26.6% CARAGA 34.4% VII 29.5%
  • 18. Average family income, expenditures and savings per decile 2006, NSO Avg. Annual Avg. Avg. Savings Avg. Monthly Income Expenditures Income Phil 173,000 147,000 25,000 14,416 Poorest 10% 32,000 35,000 -3,000 2,666 2nd decile 51,000 52,000 -2,000 4,250 3rd decile 65,000 66,000 Less than 500 5,417 4th decile 81,000 79,000 2,000 6,750 5th decile 100,000 95,000 5,000 8,333 6th decile 124,000 116,000 7,000 10,333 7th decile 156,000 143,000 13,000 13,000 8th decile 205,000 181,000 23,000 17,083 9th decile 292,000 244,000 46,000 24,333 Richest 10% 622,000 460,000 156,000 51,833
  • 19. Income Distribution 2006, NSO 40 36 35 30 % of Income 25 16.8 20 11.8 15 9 7.1 10 1.9 3 3.8 4.7 5.8 5 0 1st 3rd 5th 7th 9th Decile
  • 20. Income Distribution 40 35 30 % of Income 25 20 15 10 5 0 1st to 7th 8th 9th 10th Decile
  • 21. Income Distribution 60 50 % of Income 40 30 20 10 0 1st to 8th 9th to 10th Decile
  • 22. Gini Coefficient Country Gini ratio Country Gini ratio Denmark 0.247 U.S.A. 0.408 Japan 0.249 Thailand 0.425 Norway 0.258 Philippines 0.445 France 0.327 Brazil 0.550 Malaysia 0.379 Namibia 0.743 UNDP.org, 2007 data
  • 23. Self-Rated Poverty Pulse-Asia June October March 2004 2004 2005 Philippines 70% 70% 70% Class ABC 37% 21% 35% Class D 68% 68% 69% Class E 84% 87% 82%
  • 24. Self-Rated Poverty Pulse-Asia June October March 2004 2004 2005 NCR 52% 41% 48% Luzon 69% 69% 66% Visayas 71% 82% 80% Mindanao 80% 79% 81% Urban 66% 57% 58% Rural 73% 83% 82%
  • 26. Summary Official Perception- Statistics based measure Poverty 26.9% 50-70% Incidence Poverty P6,273 a P12,000 a threshold month month (NCR)
  • 27. Data Sources  NSCB: www.nscb.gov.ph: poverty statistics  NSO: www.census.gov.ph: income and poverty statistics (FIES final report, Table 4A)  UNDP: undp.org  Pulse-Asia: Public Perceptions on Poverty. CD obtained directly from Pulse-Asia  SWS: www.sws.org.ph
  • 28. Poverty as Income Deprivation Leland Joseph R. Dela Cruz Director Development Studies Program School of Social Sciences Ateneo de Manila University ldelacruz@ateneo.edu