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Joost de Laat (Phd) Senior Economist Human Development Europe and Central Asia The World Bank
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2012 Slovakia Poverty Mapping project – Statistical Office/WB What are poverty maps? Going from high level NUTS to small LAU areas Combining 2011 census information with EU-SILC survey information as a (potential) way to poverty mapping Bulgaria poverty mapping case study
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http://epp.eurostat.ec.europa.eu/portal/page/portal/nuts_nomenclature/principles_characteristics
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Example: Nuts 3 in Slovakia represent 8 regions
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http://epp.eurostat.ec.europa.eu/portal/page/portal/nuts_nomenclature/local_administrative_units
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LAU 1 level (‘nuts 4’) – 262 municipalities (2005)
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Source: “EU legislation on the 2011 Population and Housing Censuses” (Eurostat 2011, ISSN 1977-0375) In summary: Household survey like EU-SILC have breadth of indicators, but sample sizes too small to be representative for local area units Population censuses do allow small areas calculations but frequently lack breadth of indicators necessary to calculate main poverty indicators
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Common Household Background Characteristics EU-SILC or other detailed survey Common Household Background Characteristics National Population Census Background characteristics unique to EU- SILC Household Welfare Indicator(s) such as at-risk-of-poverty in EU-SILC Step 0 Step 1 Household Welfare Indicator(s) such as at-risk-of-poverty not in census Step 2 POVERTY MAP(S)
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Highly disaggregated databases of: ◦ Poverty ◦ Inequality ◦ Average income/consumption ◦ Calorie intake ◦ Under-nutrition ◦ Other indicators (health, employment etc)
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Goals ◦ Identify poor municipalities targeting for poverty reduction ◦ Serve a basis for targeting for poverty reduction Implementation: Joint team Implementation: Joint team (Data Users’ Group) ◦ Leadership of the Ministry of Labor and Social Policy (MLSP) ◦ Technical expertise of the National Statistical Institute (NSI) ◦ Active involvement of leading Bulgarian academics ◦ World Bank financing and technical assistance trough a Capacity Building Institutional Development Fund (IDF) grant Outcomes ◦ 2003 and 2005 poverty incidence maps
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Methodology ◦ Data sources: 2001 Census and 2001 and 2003 Bulgaria Integrated Household Surveys (BIHS), and district level indicators ◦ BIHS: 2,500-3,023 households, representative at NUTS 1 (Sofia, urban, rural level) ◦ 30 common indicators between Census and BIHS ◦ Standard “small-area estimation” procedure Municipal level indicators estimated ◦ Poverty rate, poverty depth, severity of poverty, and Gini coefficients
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Main Findings Considerable variation in poverty levels across municipalities: 3%-40% of individuals Considerable variation in poverty levels across municipalities within the same district Poorest areas characterized by relatively higher shares of ethnic minorities (Roma and Turkish households) Poorest areas characterized by lacking in: o human capital endowment (prevalence of people with low education attainment, or elderly pensioners), and o infrastructure
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Policy use ◦ Strategic poverty documents, e.g. The National Plan for Poverty Reduction 2005-2006 Strategy for Reduction of Poverty and Social Exclusion 2006-08 District Development Strategies 2005-2015 ◦ Targeting of antipoverty interventions Program for Poverty Reduction in the (13) Poorest Municipalities Targeting of Social Investment Fund (SIF) projects included in a multi-dimensional continuous scoring formula applied for ranking of municipal proposals, along with other indicators Social Investment and Employment Promotion Project (WB)
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Appropriate for targeting Poverty maps can be very useful tool to target poorest areas Implemented around the world. Window of opportunity: 2011 Censuses and annual EU-SILC survey data Involve community of Roma stakeholders to identify Roma communities on poverty map and build ownership – Slovak Roma Atlas
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