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Philippines EquityTool: Released December 9, 2015 Source data: Philippines DHS 2013 # of survey questions in original wealth index: 30 # of variables in original index: 112 # of survey questions in EquityTool: 9 # of variables in EquityTool: 10 Questions: Q1 Question Option 1 Option 2 Option 3 Does your household have a refrigerator/freezer? Yes No Q2. a CD or VCD or DVD player? Yes No Q3 a washing machine? Yes No Q4 a television? Yes No Q5 a personal computer or laptop? Yes No Q6 a component or karaoke? Yes No Q7 What is the main source of drinking water for members of your household? Bottled water or refilling station Other Q8 What kind of toilet facility do members of your household usually use? Flush or pour flush toilet to septic tank Other Q9 What type of fuel does your household mainly use for cooking? Wood LPG Other

Technical notes: The standard simplification process was applied to achieve high agreement with the original wealth index. Kappa was greater than 0.75 for the national and urban indices. Details on the standard process can be found in this article. The data used to identify important variables comes from the factor weights released by ICF. Level of agreement: Respondents in the original dataset were divided into 3 groups those in the 1 st and 2 nd quintiles (poorest 40%), those in the 3 rd quintile, and those in the 4 th and 5 th quintiles (richest 40%). After calculating their wealth using the simplified index, they were again divided into 3 groups. Agreement between the original data and our simplified index is presented below. National Population (n=14,804) Urban only population (n=6,251) % agreement 85.1% 85.1% Kappa statistic 0.766 0.768 What does this mean? When shortening and simplifying the index to make it easier for programs to use to assess equity, it no longer matches the original index with 100% accuracy. At an aggregate level, this error is minimal, and this methodology was deemed acceptable for programmatic use by an expert panel. However, for any given individual, especially those already at a boundary between two quintiles, the quintile the EquityTool assigns them to may differ to their quintile according to the original DHS wealth index. The graph below illustrates the difference between the EquityTool generated index and the full DHS wealth index. Among all of those people (20% of the population) originally identified as being in the poorest quintile, approximately 83% are still identified as being in the poorest quintile when we use the simplified index. However, approximately 16% of people are now classified as being in Quintile 2. From a practical standpoint, all of these people are relatively poor. Yet, it is worthwhile to understand that the simplified index of 9 questions produces results that are not identical to using all 30 questions in the original survey.

EquityTool wealth index Respondent movement between original national quintiles and EquityTool national quintiles - Philippines DHS 2013 20% Quintile 1 15% Quintile 2 Quintile 3 10% Quintile 4 Quintile 5 5% 0% Quintile 1 Quintile 2 Quintile 3 Quintile 4 Quintile 5 Original wealth index The following table provides the same information on the movement between national quintiles when using the EquityTool versus the original DHS wealth index: EquityTool National Quintiles Quintile 1 Quintile 2 Quintile 3 Quintile 4 Quintile 5 Total Original DHS National Quintiles Quintile 1 16.60% 3.20% 0.20% 0.00% 0.00% 20% Quintile 2 4.30% 11.90% 3.70% 0.10% 0.00% 20% Quintile 3 0.10% 4.80% 12.20% 2.90% 0.00% 20% Quintile 4 0.00% 0.00% 3.00% 14.70% 2.20% 20% Quintile 5 0.00% 0.00% 0.00% 2.90% 17.10% 20% Total 21.00% 19.80% 19.20% 20.60% 19.40% 100% The following graph provides information on the movement between urban quintiles when using the EquityTool versus the original DHS wealth index:

EquityTool wealth index Respondent movement between original urban quintiles and EquityTool urban quintiles - Philippines DHS 2013 20% Quintile 1 15% Quintile 2 Quintile 3 10% Quintile 4 Quintile 5 5% 0% Quintile 1 Quintile 2 Quintile 3 Quintile 4 Quintile 5 Original wealth index The following table provides the same information on the movement between urban quintiles when using the EquityTool versus the original DHS wealth index: EquityTool Urban Quintiles Quintile 1 Quintile 2 Quintile 3 Quintile 4 Quintile 5 Total Original DHS Urban Quintiles Quintile 1 15.90% 3.90% 0.20% 0.00% 0.00% 20% Quintile 2 4.00% 12.30% 3.60% 0.10% 0.00% 20% Quintile 3 0.10% 3.90% 12.50% 3.50% 0.10% 20% Quintile 4 0.00% 0.10% 3.30% 12.90% 3.70% 20% Quintile 5 0.00% 0.00% 0.10% 3.60% 16.40% 20% Total 20.00% 20.20% 19.70% 20.00% 20.20% 100% Data interpretation considerations: 1. This tool provides information on relative wealth ranking respondents within the national or urban population. The most recent available data from the WorldBank

indicates that 13.1% of people in the Philippines live below $1.90/day 1. This information can be used to put relative wealth into context. 2. People who live in urban areas are more likely to be wealthy. In the Philippines, 29.8% of people living in urban areas are in the richest national quintile, compared to only 10.9% of those living in rural areas 2. a. If your population of interest is predominantly urban, we recommend you look at the urban results to understand how relatively wealthy or poor they are, in comparison to other urban dwellers. b. If the people you interviewed using the EquityTool live in rural areas, or a mix of urban and rural areas, we recommend using the national results to understand how relatively wealthy or poor they are, in comparison to the whole country. 3. Some regions in the Philippines are wealthier than others. It is important to understand the country context when interpreting your results. 4. In most cases, your population of interest is not expected to be equally distributed across the five wealth quintiles. For example, if your survey interviewed people exiting a shopping mall, you would probably expect most of them to be relatively wealthy. Metrics for Management provides technical assistance services to those using the EquityTool, or wanting to collect data on the wealth of their program beneficiaries. Please contact equitytool@m4mgmt.org and we will assist you. 1 From povertydata.worldbank.org, reporting Poverty headcount ratio at $1.90/day at 2011 international prices. 2 From the Philippines DHS 2013 dataset household recode, available at http://dhsprogram.com/