Daily Mirror (Sri Lanka)

Want to meet SDGS? Invest in longitudin­al data

- BY ARTURO MARTINEZ

To meet the Sustainabl­e Developmen­t Goals (SDGS) by 2030, we need more data. Collecting data can be time-consuming and expensive, but doesn’t have to break the bank. Government­s can select the data collection methods and analytical tools that will best help them reach their SDG targets.

Fortunatel­y, there are several approaches at hand. Our research shows that longitudin­al data on household expenditur­e may be a better way of measuring poverty and income inequality in Asia and the Pacific than the cross-sectional data analysis currently used across the region. Longitudin­al data tracks the same kinds of data on the same subjects over long periods of time, whereas cross-sectional data is collected from many subjects at a single point in time.

For example, using three rounds of household expenditur­e survey data collected from the Philippine­s in 2003, 2006 and 2009, we identified the proportion of the country’s population who experience­d persistent (long-term) and transient (short-term) poverty during the period covered by the survey.

If we focus on cross-sectional data only, say for the latest year 2009, we estimate that the proportion of the population who were non-poor in that year is 88.7 percent while the headcount poverty rate is about 11.3 percent using the US $ 1.90 a day (2011 PPP) poverty line.

Longitudin­al data informs poverty interventi­ons

Having access to longitudin­al data or panel data lets us examine the historical poverty profile of both non-poor and poor, i.e., we can identify how many people were falling into, escaping from and staying in and out of poverty over time. For instance, of the 11.3 percent of the population considered poor in 2009, about 8.9 percent are considered persistent­ly poor while 2.4 percent are considered as transient poor.

But what’s more interestin­g is that within the non-poor in 2009, about 4.3 percent have just recently escaped poverty after having been poor two consecutiv­e survey periods, while 8.9 percent were once poor or transient poor.

Why is this important? If we can identify the characteri­stics of persistent­ly and transientl­y poor households and locate them within the country, national government­s can determine the most effective interventi­ons for a given population or geographic­al area.

The most commonly used statistica­l models today do not enable the government agencies to extract such nuanced informatio­n from cross-sectional surveys, as they only measure the proportion of the population living in poverty at a given time, So, vulnerable groups of people within the ‘non-poor’ (e.g. those having recently escaped poverty) using cross section data might be left out when formulatin­g policies for the poor.

Better data to close income inequality gap

Longitudin­al data can provide a deeper, more accurate snapshot of the life circumstan­ces of a group of people. As such, it is vital for countries striving to meet SDG1 (eradicatin­g extreme poverty for all by 2030). They should invest more in longitudin­al surveys, particular­ly on household income, consumptio­n or living standards. Furthermor­e, the applicatio­ns of longitudin­al data are not limited to studying poverty. Government­s can use the same data to inform policymaki­ng on closing the income inequality gap (SDG10).

Armed with panel data that can track factors and circumstan­ces associated with the persistent­ly marginaliz­ed, countries can better understand exactly when disadvanta­ge begins to negatively affect households and when its impact becomes irreversib­le. Longitudin­al data thus helps government­s prevent inequality of opportunit­ies, instead of just managing its ill effects.

Despite all these benefits, most long-running longitudin­al data sets have only been collected in industrial­ized countries, simply because the process is costly and complicate­d. Systematic use of panel data can build a solid evidence base for policies and programmes to meet the SDGS, but it comes at a price that stakeholde­rs must be willing and able to pay.

The good news is that longitudin­al surveys are increasing­ly available across Asia and the Pacific. The family life surveys conducted in Indonesia and Malaysia are examples. However, such initiative­s are not conducted regularly and need to be integrated into official statistica­l systems. This can be easier than it appears, as panel surveys can use data from previous crosssecti­onal household surveys, thereby reducing start-up costs.

We won’t be able to end poverty everywhere in all its forms without solid informatio­n to underpin policies. By investing in timely and high-quality longitudin­al data, we can turn this vision into reality. (Arturo Martinez is a Statistici­an at Economic Research and Regional Cooperatio­n Department, Asian Developmen­t Bank)

OUR RESEARCH SHOWS THAT LONGITUDIN­AL DATA ON HOUSEHOLD EXPENDITUR­E MAY BE A BETTER WAY OF MEASURING POVERTY AND INCOME INEQUALITY IN ASIA AND THE PACIFIC THAN THE CROSS-SECTIONAL DATA ANALYSIS CURRENTLY USED ACROSS THE REGION

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