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Inequality, Poverty and Welfare

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Ethiopia, Kenya, Zambia, Philippines, Colombia, Peru, Thailand, Brazil, Malaysia, ... Doing this, Deininger and Squire (1998) found coefficients that do not fit ... – PowerPoint PPT presentation

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Title: Inequality, Poverty and Welfare


1
Inequality, Poverty and Welfare
2
Various issues
  • Household or macro data
  • Between nations and within nations
  • Between groups (religion/ethnicity)
  • Income or consumption
  • Crossectional and time series data
  • Historical data

3
Inequality scenario in the world
  • Sri Lanka Equal distribution of income
  • South Korea and Taiwan Equal distribution
    combined with rapid growth
  • Latin America High inequality
  • Ethiopia, Kenya, Zambia, Philippines, Colombia,
    Peru, Thailand, Brazil, Malaysia, Venezuela and
    Mexico Unusually high inequality
  • Bulgaria, Poland and Hungary (transition
    economies)
  • Australia, Singapore and USA (developed countries)

4
The inverted-U hypothesis
  • According to Kuznets, a country in its initial
    stage of development exhibits low per capita
    income level and relatively low inequality level.
  • As the country develops and per capita income
    increases, inequality tends to increase as well.
  • At a more advanced stage of the development
    process, however, the per capita income-
    inequality relationship turns from positive to
    negative.
  • Using data from developed and developing
    countries in the early 1960s, he plotted it in a
    graph where the vertical axis represents
    inequality (given by the ratio of income of the
    richest 20 of the population to the poorest 60
    of the population) and the horizontal axis, per
    capita income levels.
  • The plotted data had the shape of an inverted-U
    curve.

5
Problems with inverted-U hypothesis (1)
  • Pooling countries in a cross-sectional study may
    cause an artificial Latin effect.
  • All the middle-income countries tend to be Latin
    American, so it may be something particular about
    Latin American regimes or culture that causes
    higher inequalities in this middle-income group,
    rather than their stage of development.
  • Thus it is necessary to run tests using
    country-specific dummies.

6
Problems with inverted-U hypothesis (2)
  • Doing this, Deininger and Squire (1998) found
    coefficients that do not fit Kuznets inverted-U
    hypothesis.
  • The findings of Fields and Jakubson (1994), who
    suggest that if there is any relationship it is
    that inequality tends to fall with development,
    also refute the inverted-U law, as do Dollar and
    Kraay(2000) and Ravallion(2001).
  • The growth in South East Asia did not fit the
    inverted-U hypothesis.
  • government policies
  • For example, the focus on education allowed the
    skills base of the poor to quickly catch up with
    what was demanded by the growing sectors.

7
Reasons for inequality
  • Ravallion and Datts study (1999) of 15 of
    Indias states looks more closely at the
    questionwhy inequalities in some countries are
    rising?
  • They find that the growth of the non-farm sector
    had a better impact on the poor in states with
    initially higher farm productivity, higher rural
    living standards relative to urban areas, and
    higher literacy, as these factors all make it
    easier for those living in that area to reap
    benefits from the growing non-farm sector.
  • Ravallion and Datt also noted that rural economic
    growth cuts poverty more than urban growth.
  • In Brazil equalisation of the distribution of
    education amongst income groups between 1976-96
    resulted in a fall of income inequality.

8
Range and Range Ratio
  • The range is simply the difference between the
    highest and lowest observations.
  • salary difference between highest and the lowest
    earner
  • Easy to understand and compute
  • But ignores about distribution (outliers)
  • The Range Ratio is computed by dividing a value
    at one predetermined percentile (higher) by the
    value at a lower predetermined percentile (95/5
    percentile)
  • Easy to calculate and understand
  • Outliers are taken care
  • But this measure focuses just on 2 observations

9
The mean absolute deviation
  • This measure takes the advantage of the entire
    income distribution.
  • Concept inequality is proportional to distance
    from the mean income.
  • We take all income distances from the average
    income, add them up and divide it by total income
    to express the average deviation as a fraction of
    total income

10
Coefficient of Variation
  • The Coefficient of Variation () of a set of
    values is calculated as
  • 100(Standard Deviation)/(mean value of set)
  • For a dataset that is closely bunched around the
    mean, the peak will be high, and the coefficient
    of variation small.
  • Data that is more dispersed will have a shorter
    peak and a higher coefficient of variation.
  • Ceteris paribus, the smaller the coefficient of
    variation, the more equitable the distribution.

11
CV of height of various regions
12
Theils T statistic
  • where n is the number of individuals in the
    population
  • Yp is the income of the person indexed by p
  • and µy is the populations average income.
  • If every individual has exactly the same income,
    T will be zero this represents perfect equality
    and is the minimum value of Theils T.
  • If one individual has all of the income, T will
    equal ln n this represents utmost inequality and
    is the maximum value of Theils T statistic.

13
Between group and within group
  • Theils T statistic is made up of two components,
    the between group element (Tg) and the within
    group element (Twg).
  • T Tg Twg
  • When aggregated data is available instead of
    individual data, Tg can be used as a lower bound
    for the populations value of Theils T
    statistic.

14
100
80
Line of complete equality
60
Percentage share of national income (cumulative)
A
40
B
Lorenz curve
20
O
O
100
60
80
20
40
Percentage of population
15
100
Gini coefficient A / (A B)
80
Line of complete equality
60
Percentage share of national income (cumulative)
A
40
B
Lorenz curve
20
O
O
100
60
80
20
40
Percentage of population
16
The Gini-Coefficient
  • Divide A by the sum of A B to get the Gini
    coefficient
  • If the Lorenz curve is on the 45 deg. Line, the
    Gini coefficient would be 0
  • Range 0-1
  • Limitations

17
100
Gini coefficient A / (A B)
80
60
Percentage share of national income (cumulative)
L1
40
L2
Lorenz curve
20
O
O
100
60
80
20
40
Percentage of population
18
Infant Mortality Residual vs. Gini Coefficient
(Epstein et al)
19
Relation between poverty and inequality
  • Inequality focuses on the distribution of
    attributes, such as income or consumption, across
    the whole population.
  • In the context of poverty analysis, inequality
    requires examination if one believes that the
    welfare of an individual depends on their
    economic position relative to others in society.
  • Vulnerability is defined as the risk of falling
    into poverty in the future, even if the person is
    not necessarily poor now it is often associated
    with the effects of shocks such as a drought, a
    drop in farm prices, or a financial crisis.

20
Historical data
(Strauss and Thomas) Health nutrition and
economic development
21
Poverty and development
22
Human development index
  • Life expectancy at birth (this will indirectly
    reflect infant and child mortality)
  • Educational attainment of the society which is a
    composite index (It takes weighted average of
    adult literacy (with weight of 2/3) and a
    combination of enrolment rates in primary,
    secondary and tertiary education (with weight
    of 1/3).
  • Per capita income (adjusted)
  • HDI is calculated using average of the above
    three indicators.

23
Comparison of per capita income and HDI, 1998
24
Poverty Monetary dimensions
  • Monetary measures of poverty can be measured
    using income or consumption.
  • Consumption will be a better indicator for
    poverty measurement than income
  • Consumption is a better outcome indicator than
    income
  • Consumption may be better measured than income
  • Consumption may better reflect a households
    ability to meet basic needs

25
Non-monetary dimensions of poverty
  • Health and nutrition poverty
  • Education poverty
  • Composite indices of wealth
  • One can combine the information on different
    aspects of poverty that creates a measure which
    takes income, health, assets and education into
    account.
  • Limitation of composite indices It is not
    possible to define a poverty line. Analysis by
    quintile or other percentile remains possible.

26
Important issues poverty
  • Absolute or relative?
  • Absolute poverty measures the number of people
    living below a certain income threshold or the
    number of households unable to afford certain
    basic goods and services.
  • Relative poverty measures the extent to which a
    household's financial resources falls below an
    average income threshold for the economy..
  • Temporary or chronic
  • Fluctuations in income and consumption (famine)
  • Seasonal differences in food availability and
    consumption
  • Household or individual expenditures are reliable
    measures to assess chronic poverty

27
Important issues poverty (2)
  • Households or individuals
  • Most of the measures neglect the allocation of
    resources within households
  • Most of the potential victims are female and
    elderly
  • Poverty line
  • Is it possible to have a fixed notion of poverty?
  • Poverty lines are approximations to a threshold
    that is unclear as the effects of sustained
    deprivation are often felt at a later point in
    time

28
Poverty
  • Rural and urban poverty
  • Land holding
  • Nutrition
  • Intake
  • Calories
  • Intra-household allocation
  • Female headed households

29
Rural-urban disparity
30
Data
  • http//www.iisg.nl/hpw/data.html
  • http//www.measuredhs.com/aboutsurveys/dhs/start.c
    fm
  • http//utip.gov.utexas.edu/data.html
  • http//pwt.econ.upenn.edu/php_site/pwt_index.php
  • http//www3.who.int/whosis/menu.cfm
  • http//www.wider.unu.edu/wiid/wiid.htm
  • http//chinadatacenter.org/newcdc/
  • http//chinadataonline.org/
  • http//sedac.ciesin.columbia.edu/china/popuhealth/
    popagri/census90.html

31
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