Evaluation Study of the Immediate Intervention/Underperforming ...
Two Intervention/Evaluation Perspectives
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Transcript of Two Intervention/Evaluation Perspectives
04/22/23 RAEL 1
After The Fact– China (K. Smith)– Valerie Mueller– methods, without
random adoption
Two Intervention/Evaluation Perspectives
Creating The Facts– Tanzania (D. Kammen)– Niels Tomijima & V.M.– intervention, focus on
scaling via information
Alexander Pfaff, Duke UniversityWorld Bank February 2, 2009
Valerie Mueller (IFPRI), Alexander Pfaff (co-lead authors)
John Peabody, Yaping Liu, Travis Riddell, Kirk R. Smith
Who Adopts Matters
Evaluating Health Impacts of Improved Stoves
in China using Matching Methods
Motivation
Known potential for confounding due to choice,
with stoves occupying a sort of middle ground:
• groundwater arsenic levels are exogenous
• stove adoption is not but one can randomize (critical questions of where in the process)
• conservation policies (PAs or eco-payments) not randomized yet, so deal with in the data
Evaluation / example that this matters for policy.
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Why worry? Many a slip twixt stove & ..
Often studies measure Exposure = Use Stove X
and thus Exposure Changes = Stoves Changes:
Reduced risks assoc. with improved biomass stoves (Ezzati and Kammen, 2002 & Smith et al., 2004) Outcomes include respiratory symptoms, blood pressure, acute respiratory infection, middle ear infection, COPD, lung and other cancers, asthma, tuberculosis, low birth weight, eye diseases
Numerous China studies focus on lung cancer rates• link aggregate data on lung cancer rates and percentages of coal usage (Mumford et al. 1987, 1989; Lan et al. 2002)• Peabody et al. (2005) find stoves reduce respiratory disease, COPD, exhaled CO, and increase FVC in comparison to TB. 2
With exposure data, two steps seems easier:
(1) dose-response function analyzes health given exposure
However, Tomijima’s ongoing literature review finds little
exposure measurement (Modi/Jack presentation today):Ezzati and Kammen 2000 & 2001
Kirk Smith’s stove randomization project (w/in Guatemala)
measures some exposures (Paris 2006 talk not published)
(2) stove impacts then could focus just on lower exposure
- FEWER factors affect exposure given the stove used
- BUT NOT NONE {even if randomize distribution !!}
- ventilation of one’s home (Susmita Dasgupta)
- location of people vs. stove (Kammen Ezzati)2
What drives stove adoption in China study?
Household-level variation (e.g. all health relevant above),
noting that households bore over 90% of direct costs
County-level variation, in conditions and county actions National Improved Stove Program (Sinton et al. 2004)
Phase 1 (early 1980s-1992) • counties applied to participate and selection depended on energy shortages, dependence, and local willingness to share the cost burden
• stoves were subsidized, but households paid for materials and installation
Phase 2 (1990-1995)• no household subsidies, instead energy industries given tax and loan benefits. • MOH started program to improve kitchens in poor regions targeting fluorosis
Phase 3 (after 1995)• after 1998 Yangtze River flood , project to i) reduce soil erosion by supporting reforestation and ii) promote improved stoves to reduce fuelwood demand• promotion of rural coal markets to convert previous biomass users to coal use2
Stove Use by County (adjust analyses!)
Province County N Symptoms PCS12 TB IB Coal CleanShaanxi 1.00 295.00 1.051 50.229 0.000 0.003 0.990 0.007Shaanxi 2.00 223.00 0.742 50.717 0.032 0.009 0.959 0.000Shaanxi 3.00 370.00 0.943 47.619 0.066 0.658 0.230 0.046Shaanxi 4.00 274.00 1.676 48.212 0.714 0.000 0.286 0.000Shaanxi 5.00 243.00 0.264 52.007 0.000 0.000 0.953 0.047Hubei 6.00 327.00 1.687 45.827 0.013 0.927 0.026 0.035Hubei 7.00 288.00 1.170 47.204 0.032 0.763 0.051 0.154Hubei 8.00 175.00 1.759 47.337 0.283 0.120 0.548 0.048Hubei 9.00 320.00 1.087 48.385 0.013 0.639 0.252 0.097Hubei 10.00 365.00 1.037 47.267 0.000 0.460 0.517 0.023Zhejiang 11.00 479.00 0.839 50.071 0.090 0.861 0.000 0.048Zhejiang 12.00 207.00 0.864 50.194 0.006 0.686 0.000 0.308Zhejiang 13.00 299.00 0.582 48.548 0.000 0.953 0.004 0.044Zhejiang 14.00 286.00 0.785 47.626 0.112 0.806 0.000 0.083Zhejiang 15.00 476.00 0.517 49.955 0.801 0.174 0.000 0.025
Our Analysis
Focuses on comparing households within relevant counties.
Breaks out multiple treatments given four stove/fuel options:
- ‘cleaner’ stoves are Clean and Improved Biomass
- ‘dirtier’ stoves are Traditional Biomass and Coal
- for each pairing/comparison, drop some counties
Here the LHS is “PCS 12”, a self-reported health measure (previously presented work has focused upon Symptoms).
Within-counties (forcing exact matching in some analyses), use matching methods to ‘compare apples to apples’, i.e. to compare any household which uses any cleaner stove with OBSERVATIONALLY SIMILAR household(s) using dirtier.
Health outcomes: number of symptoms, probability of specific symptoms, exhaled CO (NEW), forced vital capacity (NEW)
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SF-12 Survey (a standard tool)
• 12 questions -> physical and mental health indices
• ongoing work (e.g. Peaody et al.) to examine PCS measures’ correlations with patient quality of life, heart disease, and other health indicators
• we use the physical component index formulated from the SF-12 survey (Ware, Kosinski, Keller 1998)
• index is standardized from 1 to 100 (avg=50, sd=10)
• thus the interpretation of each one point difference is that is equivalent to one-tenth of a standard deviation
Data (including observables for matching)
2001-3 visited 3,500 households in three provinces in China
(Shaanxi, Hubei, and Zhejiang -- with five counties in each)
From dirtiest to cleanest, fractions of stoves used: Coal (30%),
Trad’l Biomass (16%), Improved Biomass (48%), Clean (6%)
Information on health outcomes for adults and the household:
-based on previous studies about what affects health,
which we examine for affecting health & stove uses
- age, gender, wealth; smoking behavior; health history
- ventilation (measuring number of kitchen openings)
- cooking time (Ezzati et al. 2000; Ezzati and Kammen 2001)
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Findings – policy (limited by data)
Significantly Cleaner Stoves Have Benefits If Tests Good
• Clean stoves have benefit relative to Traditional Biomass
• not clear/strong for Clean vs. Improved, which are closer
• not clear/strong within the two Biomass; also are closer
• Kirk Smith points out that these data are rather noisy
• by the time one breaks down to stove-stove pairings,
and dumps counties without enough data to compare,
there are significant limitations on getting good tests
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Findings – method (allocation is critical)
Matching (address non-random adoption after the fact)
really does matter and we see this in a variety of ways:
• for Clean versus Traditional, no impact without matching,
as the Clean stoves ended up with ‘sicker’ households
• can see the difference in ventilation, in age, in smoking
• for Clean versus Improved, do see impact if don’t match,
which conveys multiple logics behind non-randomness;
not just ‘sickly adoption’ as ‘sicklier’ have the less clean
• for Clean versus Coal, apparent damage if don’t address
though currently the matching is not attaining ‘balance’6
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Dar es Salaam Stove Market
Dar es Salaam Stove Market
• 46% charcoal, 43% kerosene, 11% wood/elec• many just use one cooking stove & no warming
0%
20%
40%
60%
80%
100%
Dar es Salaam Other urbanareas
Rural areas MainlandTanzania
Firewood
Charcoal
Coal
Paraffin
Gas (Bio gas)
Gas (Industrial)
Solar
Electricity
Tanzania National Census, 2004
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• 30% more efficient than KCJ (we will test)
• Designed by COSTECH (our partnership)
• Built by local artisans & know supply chain
KUUTE Stove
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Comparison of CookstovesAverage PM10 Emissions
Ezzati M and D Kammen (2002)
• cooking behavior (as very similar to jiko)
• fuel (& thus fuel vendor)
• charging (don’t see fire)
• size pot, etc.
Don’t need to switch cooking behavior.
Don’t even need to switch stove vendor.
KUUTE Stove Has The SAME:
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Jiko la paipu liko wapi?
NOT QUITE OUT THERE YET
• handing out new stoves misses Demand (unlike the Mobarak & Greenberg sales)
• bringing stoves to door to offer for a price could get elasticity but miss actual levels
• also, though, need to consider the Supply especially if consider supply interventions; thus we will aim first to work with vendors, providing them information about surplus to see if they disseminate & all respond…
Objective: scale-able via info
• just received 2nd tranch of Blum funding, which helps to resolve what can try now
• RA in Dar now being asked to start survey:
-collect information on sales & knowledge from vendors (who help find consumers)
-collect household consumption by stoves; collect household information for matches
-collect baseline information on E(savings)
Current Steps
• could randomize prices for another group (currently studying separation of markets)
• with Beltramo/Levine (& like Mobarak talk)
• price elasticity is policy relevant in of itself
• price elasticity could affect vendor markup, so this links to the outcome of information
• following prior work on social interactions (deforestation, arsenic), a form of scaling, the price design provide an instrument
Possible Module
Background Slides Follow
SF-12 Survey
1. In general, would you say your health is:
How much does your health limit the following:
2. Moderate activities, such as moving a table, practicing taijiquan, or cleaning windows
3. Climbing several flights of stairs
During the past 4 weeks, have you had any of the following problems with your work or other regular daily activities as a result of your physical health?
4. Accomplished less than you like
5. Were limited in the kind of work or other activities
SF-12 Survey (Continued)
During the past 4 weeks, have you had any of the following problems with your work or other regular daily activities as a result of your emotional health?6. Accomplished less than you would like7. Didn’t do work or other activities as carefully as usual
8. During the past 4 weeks, how much did pain interfere with your normal work?
How much of the time during the past 4 weeks9. Have you felt calm and peaceful?10. Did you have a lot of energy?11. Have you felt downhearted and blue?12. During the past 4 weeks, how much of the time has your physical or emotional health interfered with your social activities?
Methodology
Lechner (2002): propensity score matching in multi-treatment setting• Use series of probits to model choice of clean vs. dirty stove
• Use propensity scores from probit models to match four controls with a treatment observation
• Estimate health impact of improved stove
Robustness checks• Kernel smoothing (Heckman, Ichimura, and Todd, 1997)
• Covariate matching (CM) (Imbens, 2004)
• Additional bias-adjustment when too many covariates and matching not exact (Hill and Reiter, 2006)
• Matching performance (covariate balancing, caliper and common support restrictions)
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