SlideShare a Scribd company logo
1 of 14
Download to read offline
Tuesday, April 01, 2014
Problems of Impact evaluation
Confounding factors and selection biases
INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Page 2
Objective of Impact Evaluation
Measure the effect of the program on its beneficiaries (and eventually on its
non-beneficiaries) by answering the counterfactual question:
• How would individuals who participated in a program have fared in the absence
of the program?
• How would those who were not exposed to the program have fared in the
presence of the program?
 Two main problems arise: confounding factors and selection biases.
INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Page 3
Comparing averages
• Individual-level measure of impact : what would be the outcome (e.g.
purchase patterns) had he/she not participated to the program (in our
case the treatment?
• Compare the individual with the program, to the same individual without the
program, at the same time ?
Pb: can never observe both, missing data problem.
• Instead: Average impact on given groups of individuals
• Compare mean outcome in group of participants (Treatment group)
to mean outcome in similar group of non-participants (Control group)
• Average Treatment effect on the treated (ATT):
INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Page 4
Building a control group
• Compare what is comparable.
• Treatment” and “Control” groups must look the same if there was no
program.
• But: very often, those individuals who benefit from the program initially
differ from those who don’t.
• External selection: programs are explicitly targeted (Particular areas,
Particular individuals).
• Self selection: the decision to participate is voluntary.
 Pb with comparing beneficiaries and non-beneficiaries: the difference can be
attributed to both the impact or the original differences.
• SELECTION BIAS when individuals or groups are selected for
treatment on characteristics that may also affect their outcomes.
INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Page 5
Initial
Population
Selection
Treatment Group
(receives procedure X)
Impact = Y Exp – Y Control
Quintile I
(Poorer)
Quintile II Quintile III Quintile IV QuintileV
(Richer)
Program selection does not lead to selection bias
(from Bernard 2006)
Control group
(does not receives procedure X)
INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Page 6
Initial
Population
Quintile I
(Poorer)
Quintile II Quintile III Quintile IV QuintileV
(Richer)
Control group
(does not receives procedure X)
Treatment Group
(receives procedure X)
Program selection leads to selection bias
Selection
Impact ≠ Y Exp – Y Control
INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Page 7
“Sign” of the selection bias (1)
Program targeted on “worse-off” households
Treatment Control
Observed difference is negative
Actual impact
INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Page 8
Treatment Control
Observed difference is very large
Actual impact
“Sign” of the selection bias (2)
Program targeted on “better-off” households
INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Page 9
Exercise
1. Detail how confounding factors may be an issue in evaluating the impact
of your project.
2. Suppose that you were to compare households in communities were the
project was implemented to households in the neighboring communities
were the project was not implemented.
- What would be the likely sign of the selection bias?
3. Suppose that you were to compare, within the communities were the
project is implemented, households who have decided to use the project
(e.g. drink water from the tap or build stone bunds in their field), to the
ones who have decided not to use it.
- What would be the likely sign of the selection bias?
INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE
Step 3: What data to collect -Collect qualitative data and
quantitative data on both treatment and control households
in the baseline
• Qualitative data-key supplement to quantitative IE providing
complementary perspectives on program’s performance.
• Approaches include FGD, expert elicitation, key informant
interviews
• Useful 1. Can use to develop hypotheses as to how and why
the program would work
• 2. Before quantitative IE results are out, qualitative work can
provide quick insights on happenings in the program.
• 3. In the analysis stage, it can provide context and
explanations for the quantitative results
Page 10
INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE
Mixed methods- Quantitative and qualitative
:
• Possible rationale:
• Triangulation: to cross-check and compare results and offset any
weaknesses in one method by the strengths of another;
• Complementarities: examining overlapping and different facets of a
phenomenon by using several approaches and tools;
• Initiation: discovering paradoxes, identifying contradictions, or obtaining
fresh perspectives that relate to the topic of investigation;
• Development: using quantitative and qualitative methods sequentially, such
that results from the first method inform the use of the second method and
vice versa; and
• Expansion: adding breadth and scope to a project to convey findings and
recommendations to audiences with different capabilities and interests.
Page 11
INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE
Step 3 linked to Step 2: Focusing on quantitative methods-
Propose to execute double difference methods
• Central feature of the method is use of
longitudinal data to use “difference-in-
differences” or “double difference”.
• Method relies on baseline data collected before
the project implementation and follow-up data
after it starts to develop a “before/after”
comparison.
• Data collected from households receiving the
program and those that do not (“with the
program” / “without the program”).
Page 12
INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE
Double difference methods: continued
• Why both “before/after” and “with/without” data are necessary
?
• Suppose only collected data from beneficiaries.
• Suppose between the baseline and follow-up, some adverse event occurs.
• —the benefits of the program being more than offset by the damage
from bad event. These effects would show up in the difference over
time in the intervention group, in addition to the effects attributable to
the program.
• More generally, restricting the evaluation to only “before/after”
comparisons makes it impossible to separate program impacts from
the influence of other events that affect beneficiary households.
• To guard against this add a second dimension to evaluation design
that includes data on households “with” and “without” the program.
Page 13
INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE
Summary of the method and its application
• The approach- By comparing changes in selected outcome
indicators between treatment group and the comparable
control group, the project impact is estimated quantitatively.
• Approach can also be applied to measure spillover effect from
the treated to the non-treated famers in the treated areas.
• examined by comparing the outcomes between non-treated households
in treatment areas and households in control areas.
• Moreover, impact heterogeneity across population sub-groups can be
investigated.
• The sub-groups can be defined based on caste, gender, agro-
ecological zones etc.
• Such information will be collected in the baseline survey.
Page 14

More Related Content

What's hot

Gilligan quantitative impact eval methods
Gilligan quantitative impact eval methodsGilligan quantitative impact eval methods
Gilligan quantitative impact eval methods
genderassets
 
Lessons Learned from OVC Evaluations for Future Public Health Evaluations
Lessons Learned from OVC Evaluations for Future Public Health EvaluationsLessons Learned from OVC Evaluations for Future Public Health Evaluations
Lessons Learned from OVC Evaluations for Future Public Health Evaluations
MEASURE Evaluation
 
Malaria Data Quality and Use in Selected Centers of Excellence in Madagascar:...
Malaria Data Quality and Use in Selected Centers of Excellence in Madagascar:...Malaria Data Quality and Use in Selected Centers of Excellence in Madagascar:...
Malaria Data Quality and Use in Selected Centers of Excellence in Madagascar:...
MEASURE Evaluation
 

What's hot (20)

The Role of Economic Evaluation and Cost-Effectiveness in Program Science
The Role of Economic Evaluation and Cost-Effectiveness in Program ScienceThe Role of Economic Evaluation and Cost-Effectiveness in Program Science
The Role of Economic Evaluation and Cost-Effectiveness in Program Science
 
Gilligan quantitative impact eval methods
Gilligan quantitative impact eval methodsGilligan quantitative impact eval methods
Gilligan quantitative impact eval methods
 
STOP HIV/AIDS Pilot: Program Science and Systems Transformation
STOP HIV/AIDS Pilot: Program Science and Systems TransformationSTOP HIV/AIDS Pilot: Program Science and Systems Transformation
STOP HIV/AIDS Pilot: Program Science and Systems Transformation
 
A Role for Mathematical Models in Program Science
A Role for Mathematical Models in Program ScienceA Role for Mathematical Models in Program Science
A Role for Mathematical Models in Program Science
 
Scaling Mobile Community-Based Information Systems
Scaling Mobile Community-Based Information SystemsScaling Mobile Community-Based Information Systems
Scaling Mobile Community-Based Information Systems
 
M&E Systems for Evaluation: Where M meets E
M&E Systems for Evaluation: Where M meets EM&E Systems for Evaluation: Where M meets E
M&E Systems for Evaluation: Where M meets E
 
Evaluating Mental Health First Aid
Evaluating Mental Health First AidEvaluating Mental Health First Aid
Evaluating Mental Health First Aid
 
Key Issues in Impact Evaluation: A MEET and GEMNet-Health Virtual Event
Key Issues in Impact Evaluation: A MEET and GEMNet-Health Virtual EventKey Issues in Impact Evaluation: A MEET and GEMNet-Health Virtual Event
Key Issues in Impact Evaluation: A MEET and GEMNet-Health Virtual Event
 
Addressing Complexity in the Impact Evaluation of the Cross-Border Health Int...
Addressing Complexity in the Impact Evaluation of the Cross-Border Health Int...Addressing Complexity in the Impact Evaluation of the Cross-Border Health Int...
Addressing Complexity in the Impact Evaluation of the Cross-Border Health Int...
 
Lessons Learned from OVC Evaluations for Future Public Health Evaluations
Lessons Learned from OVC Evaluations for Future Public Health EvaluationsLessons Learned from OVC Evaluations for Future Public Health Evaluations
Lessons Learned from OVC Evaluations for Future Public Health Evaluations
 
Custom Country Tool: Global Application
Custom Country Tool: Global ApplicationCustom Country Tool: Global Application
Custom Country Tool: Global Application
 
Malaria Data Quality and Use in Selected Centers of Excellence in Madagascar:...
Malaria Data Quality and Use in Selected Centers of Excellence in Madagascar:...Malaria Data Quality and Use in Selected Centers of Excellence in Madagascar:...
Malaria Data Quality and Use in Selected Centers of Excellence in Madagascar:...
 
Measureing if Programs Make a Difference in the Lives of Orphans and Vulnerab...
Measureing if Programs Make a Difference in the Lives of Orphans and Vulnerab...Measureing if Programs Make a Difference in the Lives of Orphans and Vulnerab...
Measureing if Programs Make a Difference in the Lives of Orphans and Vulnerab...
 
Centers of Excellence in Monitoring and Evaluation: An Approach to Improving ...
Centers of Excellence in Monitoring and Evaluation: An Approach to Improving ...Centers of Excellence in Monitoring and Evaluation: An Approach to Improving ...
Centers of Excellence in Monitoring and Evaluation: An Approach to Improving ...
 
Health Information System Performance Monitoring Tool
Health Information System Performance Monitoring ToolHealth Information System Performance Monitoring Tool
Health Information System Performance Monitoring Tool
 
What is impact evaluation?
What is impact evaluation?What is impact evaluation?
What is impact evaluation?
 
Evaluations of Gender-Integrated Reproductive Health Interventions: A Review ...
Evaluations of Gender-Integrated Reproductive Health Interventions: A Review ...Evaluations of Gender-Integrated Reproductive Health Interventions: A Review ...
Evaluations of Gender-Integrated Reproductive Health Interventions: A Review ...
 
Measuring Impact Qualitatively
Measuring Impact QualitativelyMeasuring Impact Qualitatively
Measuring Impact Qualitatively
 
Routine data use in evaluation: practical guidance
Routine data use in evaluation: practical guidanceRoutine data use in evaluation: practical guidance
Routine data use in evaluation: practical guidance
 
Measuring National M&E System Strengthening in Nigeria: Application of the Mo...
Measuring National M&E System Strengthening in Nigeria: Application of the Mo...Measuring National M&E System Strengthening in Nigeria: Application of the Mo...
Measuring National M&E System Strengthening in Nigeria: Application of the Mo...
 

Similar to IFPRI - The Problem of Impact Evaluation

Step 1 Engage Stakeholders The first step in the CD.docx
Step 1  Engage Stakeholders  The first step in the CD.docxStep 1  Engage Stakeholders  The first step in the CD.docx
Step 1 Engage Stakeholders The first step in the CD.docx
dessiechisomjj4
 
Ueda2015 tupelo.nurses role in dm prevention dr.martyn molnar
Ueda2015 tupelo.nurses role in dm prevention dr.martyn molnarUeda2015 tupelo.nurses role in dm prevention dr.martyn molnar
Ueda2015 tupelo.nurses role in dm prevention dr.martyn molnar
ueda2015
 
HCM 3305, Community Health 1 Course Learning Outcom.docx
 HCM 3305, Community Health 1 Course Learning Outcom.docx HCM 3305, Community Health 1 Course Learning Outcom.docx
HCM 3305, Community Health 1 Course Learning Outcom.docx
aryan532920
 
Chapter 5 Program Evaluation and Research TechniquesCharlene R. .docx
Chapter 5 Program Evaluation and Research TechniquesCharlene R. .docxChapter 5 Program Evaluation and Research TechniquesCharlene R. .docx
Chapter 5 Program Evaluation and Research TechniquesCharlene R. .docx
christinemaritza
 
Program evaluation
Program evaluationProgram evaluation
Program evaluation
Nongre Arphon
 

Similar to IFPRI - The Problem of Impact Evaluation (20)

PROGRAM EVALUATION
PROGRAM EVALUATIONPROGRAM EVALUATION
PROGRAM EVALUATION
 
Impact Evaluation Overview
Impact Evaluation OverviewImpact Evaluation Overview
Impact Evaluation Overview
 
Paying for performance to improve the delivery of health interventions in LMICs
Paying for performance to improve the delivery of health interventions in LMICsPaying for performance to improve the delivery of health interventions in LMICs
Paying for performance to improve the delivery of health interventions in LMICs
 
What is Evaluation
What is EvaluationWhat is Evaluation
What is Evaluation
 
Labor Markets Core Course 2013: Monitoring and evaluation
Labor Markets Core Course 2013: Monitoring and evaluation Labor Markets Core Course 2013: Monitoring and evaluation
Labor Markets Core Course 2013: Monitoring and evaluation
 
Step 1 Engage Stakeholders The first step in the CD.docx
Step 1  Engage Stakeholders  The first step in the CD.docxStep 1  Engage Stakeholders  The first step in the CD.docx
Step 1 Engage Stakeholders The first step in the CD.docx
 
C. Everett Koop National Health Award Update 2014 with Ron Goetzel
C. Everett Koop National Health Award Update 2014 with Ron Goetzel C. Everett Koop National Health Award Update 2014 with Ron Goetzel
C. Everett Koop National Health Award Update 2014 with Ron Goetzel
 
Evavluation of large scale health programs
Evavluation of large scale  health programsEvavluation of large scale  health programs
Evavluation of large scale health programs
 
Program Evaluations to avoid aids/HIV for children
Program Evaluations to avoid aids/HIV for childrenProgram Evaluations to avoid aids/HIV for children
Program Evaluations to avoid aids/HIV for children
 
Evaluation of health services
Evaluation of health servicesEvaluation of health services
Evaluation of health services
 
Conquering the NHMRC grant impact elements
Conquering the NHMRC grant impact elementsConquering the NHMRC grant impact elements
Conquering the NHMRC grant impact elements
 
Dr V K Tiwari
Dr V K TiwariDr V K Tiwari
Dr V K Tiwari
 
Benefits of M&E.PDF
Benefits of M&E.PDFBenefits of M&E.PDF
Benefits of M&E.PDF
 
Score iSYS Health Apps
Score iSYS Health AppsScore iSYS Health Apps
Score iSYS Health Apps
 
The scientific evidence: to measure in order to improve impact
The scientific evidence: to measure in order to improve impactThe scientific evidence: to measure in order to improve impact
The scientific evidence: to measure in order to improve impact
 
Ueda2015 tupelo.nurses role in dm prevention dr.martyn molnar
Ueda2015 tupelo.nurses role in dm prevention dr.martyn molnarUeda2015 tupelo.nurses role in dm prevention dr.martyn molnar
Ueda2015 tupelo.nurses role in dm prevention dr.martyn molnar
 
HCM 3305, Community Health 1 Course Learning Outcom.docx
 HCM 3305, Community Health 1 Course Learning Outcom.docx HCM 3305, Community Health 1 Course Learning Outcom.docx
HCM 3305, Community Health 1 Course Learning Outcom.docx
 
Olivier Ecker & Jef Leroy • 2016 IFPRI Egypt Seminar Series: What is the Role...
Olivier Ecker & Jef Leroy • 2016 IFPRI Egypt Seminar Series: What is the Role...Olivier Ecker & Jef Leroy • 2016 IFPRI Egypt Seminar Series: What is the Role...
Olivier Ecker & Jef Leroy • 2016 IFPRI Egypt Seminar Series: What is the Role...
 
Chapter 5 Program Evaluation and Research TechniquesCharlene R. .docx
Chapter 5 Program Evaluation and Research TechniquesCharlene R. .docxChapter 5 Program Evaluation and Research TechniquesCharlene R. .docx
Chapter 5 Program Evaluation and Research TechniquesCharlene R. .docx
 
Program evaluation
Program evaluationProgram evaluation
Program evaluation
 

More from International Food Policy Research Institute- South Asia Office

More from International Food Policy Research Institute- South Asia Office (20)

8. Dr Rao.pdf
8. Dr Rao.pdf8. Dr Rao.pdf
8. Dr Rao.pdf
 
13. Manish Patel.pdf
13. Manish Patel.pdf13. Manish Patel.pdf
13. Manish Patel.pdf
 
15. Smita Sirohi.pdf
15. Smita Sirohi.pdf15. Smita Sirohi.pdf
15. Smita Sirohi.pdf
 
6. CD Mayee.pdf
6. CD Mayee.pdf6. CD Mayee.pdf
6. CD Mayee.pdf
 
10. Keshavulu_1.pdf
10. Keshavulu_1.pdf10. Keshavulu_1.pdf
10. Keshavulu_1.pdf
 
12. Swati Nayak.pdf
12. Swati Nayak.pdf12. Swati Nayak.pdf
12. Swati Nayak.pdf
 
16. Dr Anjani.pdf
16. Dr Anjani.pdf16. Dr Anjani.pdf
16. Dr Anjani.pdf
 
9. Malavika Dadlani_1.pdf
9. Malavika Dadlani_1.pdf9. Malavika Dadlani_1.pdf
9. Malavika Dadlani_1.pdf
 
7. Neeru Bhooshan.pdf
7. Neeru Bhooshan.pdf7. Neeru Bhooshan.pdf
7. Neeru Bhooshan.pdf
 
4. Raj Ganesh.pdf
4. Raj Ganesh.pdf4. Raj Ganesh.pdf
4. Raj Ganesh.pdf
 
11. Surinder K Tikoo_1.pdf
11. Surinder K Tikoo_1.pdf11. Surinder K Tikoo_1.pdf
11. Surinder K Tikoo_1.pdf
 
3. DK Yadava.pdf
3. DK Yadava.pdf3. DK Yadava.pdf
3. DK Yadava.pdf
 
14. Paresh Verma_1.pdf
14. Paresh Verma_1.pdf14. Paresh Verma_1.pdf
14. Paresh Verma_1.pdf
 
5. Ram Kaundinya.pdf
5. Ram Kaundinya.pdf5. Ram Kaundinya.pdf
5. Ram Kaundinya.pdf
 
1. Dr Anjani.pdf
1. Dr Anjani.pdf1. Dr Anjani.pdf
1. Dr Anjani.pdf
 
2. David Spielman.pdf
2. David Spielman.pdf2. David Spielman.pdf
2. David Spielman.pdf
 
GFPR 2021 South Asia Launch Ppt - Dr. Shahidur Rashid
GFPR 2021 South Asia Launch Ppt - Dr. Shahidur RashidGFPR 2021 South Asia Launch Ppt - Dr. Shahidur Rashid
GFPR 2021 South Asia Launch Ppt - Dr. Shahidur Rashid
 
GFPR 2021 South Asia Launch Ppt - Dr. Johan Swinnen
GFPR 2021 South Asia Launch Ppt - Dr. Johan SwinnenGFPR 2021 South Asia Launch Ppt - Dr. Johan Swinnen
GFPR 2021 South Asia Launch Ppt - Dr. Johan Swinnen
 
Book Launch : Agricultural Transformation in Nepal: Trends, Prospects and Pol...
Book Launch : Agricultural Transformation in Nepal: Trends, Prospects and Pol...Book Launch : Agricultural Transformation in Nepal: Trends, Prospects and Pol...
Book Launch : Agricultural Transformation in Nepal: Trends, Prospects and Pol...
 
Understanding the landscape of pulse policy in India and implications for trade
Understanding the landscape of pulse policy in India and implications for tradeUnderstanding the landscape of pulse policy in India and implications for trade
Understanding the landscape of pulse policy in India and implications for trade
 

Recently uploaded

Reconciling Conflicting Data Curation Actions: Transparency Through Argument...
Reconciling Conflicting Data Curation Actions:  Transparency Through Argument...Reconciling Conflicting Data Curation Actions:  Transparency Through Argument...
Reconciling Conflicting Data Curation Actions: Transparency Through Argument...
Bertram Ludäscher
 
Gartner's Data Analytics Maturity Model.pptx
Gartner's Data Analytics Maturity Model.pptxGartner's Data Analytics Maturity Model.pptx
Gartner's Data Analytics Maturity Model.pptx
chadhar227
 
Top profile Call Girls In Bihar Sharif [ 7014168258 ] Call Me For Genuine Mod...
Top profile Call Girls In Bihar Sharif [ 7014168258 ] Call Me For Genuine Mod...Top profile Call Girls In Bihar Sharif [ 7014168258 ] Call Me For Genuine Mod...
Top profile Call Girls In Bihar Sharif [ 7014168258 ] Call Me For Genuine Mod...
nirzagarg
 
Top profile Call Girls In bhavnagar [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In bhavnagar [ 7014168258 ] Call Me For Genuine Models...Top profile Call Girls In bhavnagar [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In bhavnagar [ 7014168258 ] Call Me For Genuine Models...
gajnagarg
 
怎样办理圣路易斯大学毕业证(SLU毕业证书)成绩单学校原版复制
怎样办理圣路易斯大学毕业证(SLU毕业证书)成绩单学校原版复制怎样办理圣路易斯大学毕业证(SLU毕业证书)成绩单学校原版复制
怎样办理圣路易斯大学毕业证(SLU毕业证书)成绩单学校原版复制
vexqp
 
Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...
Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...
Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...
gajnagarg
 
怎样办理旧金山城市学院毕业证(CCSF毕业证书)成绩单学校原版复制
怎样办理旧金山城市学院毕业证(CCSF毕业证书)成绩单学校原版复制怎样办理旧金山城市学院毕业证(CCSF毕业证书)成绩单学校原版复制
怎样办理旧金山城市学院毕业证(CCSF毕业证书)成绩单学校原版复制
vexqp
 
Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...
nirzagarg
 
+97470301568>>weed for sale in qatar ,weed for sale in dubai,weed for sale in...
+97470301568>>weed for sale in qatar ,weed for sale in dubai,weed for sale in...+97470301568>>weed for sale in qatar ,weed for sale in dubai,weed for sale in...
+97470301568>>weed for sale in qatar ,weed for sale in dubai,weed for sale in...
Health
 
Abortion pills in Jeddah | +966572737505 | Get Cytotec
Abortion pills in Jeddah | +966572737505 | Get CytotecAbortion pills in Jeddah | +966572737505 | Get Cytotec
Abortion pills in Jeddah | +966572737505 | Get Cytotec
Abortion pills in Riyadh +966572737505 get cytotec
 
如何办理英国诺森比亚大学毕业证(NU毕业证书)成绩单原件一模一样
如何办理英国诺森比亚大学毕业证(NU毕业证书)成绩单原件一模一样如何办理英国诺森比亚大学毕业证(NU毕业证书)成绩单原件一模一样
如何办理英国诺森比亚大学毕业证(NU毕业证书)成绩单原件一模一样
wsppdmt
 

Recently uploaded (20)

Reconciling Conflicting Data Curation Actions: Transparency Through Argument...
Reconciling Conflicting Data Curation Actions:  Transparency Through Argument...Reconciling Conflicting Data Curation Actions:  Transparency Through Argument...
Reconciling Conflicting Data Curation Actions: Transparency Through Argument...
 
Ranking and Scoring Exercises for Research
Ranking and Scoring Exercises for ResearchRanking and Scoring Exercises for Research
Ranking and Scoring Exercises for Research
 
Data Analyst Tasks to do the internship.pdf
Data Analyst Tasks to do the internship.pdfData Analyst Tasks to do the internship.pdf
Data Analyst Tasks to do the internship.pdf
 
Switzerland Constitution 2002.pdf.........
Switzerland Constitution 2002.pdf.........Switzerland Constitution 2002.pdf.........
Switzerland Constitution 2002.pdf.........
 
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...
 
Gartner's Data Analytics Maturity Model.pptx
Gartner's Data Analytics Maturity Model.pptxGartner's Data Analytics Maturity Model.pptx
Gartner's Data Analytics Maturity Model.pptx
 
Top profile Call Girls In Bihar Sharif [ 7014168258 ] Call Me For Genuine Mod...
Top profile Call Girls In Bihar Sharif [ 7014168258 ] Call Me For Genuine Mod...Top profile Call Girls In Bihar Sharif [ 7014168258 ] Call Me For Genuine Mod...
Top profile Call Girls In Bihar Sharif [ 7014168258 ] Call Me For Genuine Mod...
 
Top profile Call Girls In bhavnagar [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In bhavnagar [ 7014168258 ] Call Me For Genuine Models...Top profile Call Girls In bhavnagar [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In bhavnagar [ 7014168258 ] Call Me For Genuine Models...
 
Digital Transformation Playbook by Graham Ware
Digital Transformation Playbook by Graham WareDigital Transformation Playbook by Graham Ware
Digital Transformation Playbook by Graham Ware
 
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
 
怎样办理圣路易斯大学毕业证(SLU毕业证书)成绩单学校原版复制
怎样办理圣路易斯大学毕业证(SLU毕业证书)成绩单学校原版复制怎样办理圣路易斯大学毕业证(SLU毕业证书)成绩单学校原版复制
怎样办理圣路易斯大学毕业证(SLU毕业证书)成绩单学校原版复制
 
Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...
Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...
Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...
 
SR-101-01012024-EN.docx Federal Constitution of the Swiss Confederation
SR-101-01012024-EN.docx  Federal Constitution  of the Swiss ConfederationSR-101-01012024-EN.docx  Federal Constitution  of the Swiss Confederation
SR-101-01012024-EN.docx Federal Constitution of the Swiss Confederation
 
怎样办理旧金山城市学院毕业证(CCSF毕业证书)成绩单学校原版复制
怎样办理旧金山城市学院毕业证(CCSF毕业证书)成绩单学校原版复制怎样办理旧金山城市学院毕业证(CCSF毕业证书)成绩单学校原版复制
怎样办理旧金山城市学院毕业证(CCSF毕业证书)成绩单学校原版复制
 
Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...
 
+97470301568>>weed for sale in qatar ,weed for sale in dubai,weed for sale in...
+97470301568>>weed for sale in qatar ,weed for sale in dubai,weed for sale in...+97470301568>>weed for sale in qatar ,weed for sale in dubai,weed for sale in...
+97470301568>>weed for sale in qatar ,weed for sale in dubai,weed for sale in...
 
Abortion pills in Jeddah | +966572737505 | Get Cytotec
Abortion pills in Jeddah | +966572737505 | Get CytotecAbortion pills in Jeddah | +966572737505 | Get Cytotec
Abortion pills in Jeddah | +966572737505 | Get Cytotec
 
Discover Why Less is More in B2B Research
Discover Why Less is More in B2B ResearchDiscover Why Less is More in B2B Research
Discover Why Less is More in B2B Research
 
如何办理英国诺森比亚大学毕业证(NU毕业证书)成绩单原件一模一样
如何办理英国诺森比亚大学毕业证(NU毕业证书)成绩单原件一模一样如何办理英国诺森比亚大学毕业证(NU毕业证书)成绩单原件一模一样
如何办理英国诺森比亚大学毕业证(NU毕业证书)成绩单原件一模一样
 
Sequential and reinforcement learning for demand side management by Margaux B...
Sequential and reinforcement learning for demand side management by Margaux B...Sequential and reinforcement learning for demand side management by Margaux B...
Sequential and reinforcement learning for demand side management by Margaux B...
 

IFPRI - The Problem of Impact Evaluation

  • 1. Tuesday, April 01, 2014 Problems of Impact evaluation Confounding factors and selection biases
  • 2. INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Page 2 Objective of Impact Evaluation Measure the effect of the program on its beneficiaries (and eventually on its non-beneficiaries) by answering the counterfactual question: • How would individuals who participated in a program have fared in the absence of the program? • How would those who were not exposed to the program have fared in the presence of the program?  Two main problems arise: confounding factors and selection biases.
  • 3. INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Page 3 Comparing averages • Individual-level measure of impact : what would be the outcome (e.g. purchase patterns) had he/she not participated to the program (in our case the treatment? • Compare the individual with the program, to the same individual without the program, at the same time ? Pb: can never observe both, missing data problem. • Instead: Average impact on given groups of individuals • Compare mean outcome in group of participants (Treatment group) to mean outcome in similar group of non-participants (Control group) • Average Treatment effect on the treated (ATT):
  • 4. INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Page 4 Building a control group • Compare what is comparable. • Treatment” and “Control” groups must look the same if there was no program. • But: very often, those individuals who benefit from the program initially differ from those who don’t. • External selection: programs are explicitly targeted (Particular areas, Particular individuals). • Self selection: the decision to participate is voluntary.  Pb with comparing beneficiaries and non-beneficiaries: the difference can be attributed to both the impact or the original differences. • SELECTION BIAS when individuals or groups are selected for treatment on characteristics that may also affect their outcomes.
  • 5. INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Page 5 Initial Population Selection Treatment Group (receives procedure X) Impact = Y Exp – Y Control Quintile I (Poorer) Quintile II Quintile III Quintile IV QuintileV (Richer) Program selection does not lead to selection bias (from Bernard 2006) Control group (does not receives procedure X)
  • 6. INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Page 6 Initial Population Quintile I (Poorer) Quintile II Quintile III Quintile IV QuintileV (Richer) Control group (does not receives procedure X) Treatment Group (receives procedure X) Program selection leads to selection bias Selection Impact ≠ Y Exp – Y Control
  • 7. INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Page 7 “Sign” of the selection bias (1) Program targeted on “worse-off” households Treatment Control Observed difference is negative Actual impact
  • 8. INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Page 8 Treatment Control Observed difference is very large Actual impact “Sign” of the selection bias (2) Program targeted on “better-off” households
  • 9. INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Page 9 Exercise 1. Detail how confounding factors may be an issue in evaluating the impact of your project. 2. Suppose that you were to compare households in communities were the project was implemented to households in the neighboring communities were the project was not implemented. - What would be the likely sign of the selection bias? 3. Suppose that you were to compare, within the communities were the project is implemented, households who have decided to use the project (e.g. drink water from the tap or build stone bunds in their field), to the ones who have decided not to use it. - What would be the likely sign of the selection bias?
  • 10. INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Step 3: What data to collect -Collect qualitative data and quantitative data on both treatment and control households in the baseline • Qualitative data-key supplement to quantitative IE providing complementary perspectives on program’s performance. • Approaches include FGD, expert elicitation, key informant interviews • Useful 1. Can use to develop hypotheses as to how and why the program would work • 2. Before quantitative IE results are out, qualitative work can provide quick insights on happenings in the program. • 3. In the analysis stage, it can provide context and explanations for the quantitative results Page 10
  • 11. INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Mixed methods- Quantitative and qualitative : • Possible rationale: • Triangulation: to cross-check and compare results and offset any weaknesses in one method by the strengths of another; • Complementarities: examining overlapping and different facets of a phenomenon by using several approaches and tools; • Initiation: discovering paradoxes, identifying contradictions, or obtaining fresh perspectives that relate to the topic of investigation; • Development: using quantitative and qualitative methods sequentially, such that results from the first method inform the use of the second method and vice versa; and • Expansion: adding breadth and scope to a project to convey findings and recommendations to audiences with different capabilities and interests. Page 11
  • 12. INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Step 3 linked to Step 2: Focusing on quantitative methods- Propose to execute double difference methods • Central feature of the method is use of longitudinal data to use “difference-in- differences” or “double difference”. • Method relies on baseline data collected before the project implementation and follow-up data after it starts to develop a “before/after” comparison. • Data collected from households receiving the program and those that do not (“with the program” / “without the program”). Page 12
  • 13. INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Double difference methods: continued • Why both “before/after” and “with/without” data are necessary ? • Suppose only collected data from beneficiaries. • Suppose between the baseline and follow-up, some adverse event occurs. • —the benefits of the program being more than offset by the damage from bad event. These effects would show up in the difference over time in the intervention group, in addition to the effects attributable to the program. • More generally, restricting the evaluation to only “before/after” comparisons makes it impossible to separate program impacts from the influence of other events that affect beneficiary households. • To guard against this add a second dimension to evaluation design that includes data on households “with” and “without” the program. Page 13
  • 14. INTERNATIONAL FOOD POLICY RESEARCH INSTITUTE Summary of the method and its application • The approach- By comparing changes in selected outcome indicators between treatment group and the comparable control group, the project impact is estimated quantitatively. • Approach can also be applied to measure spillover effect from the treated to the non-treated famers in the treated areas. • examined by comparing the outcomes between non-treated households in treatment areas and households in control areas. • Moreover, impact heterogeneity across population sub-groups can be investigated. • The sub-groups can be defined based on caste, gender, agro- ecological zones etc. • Such information will be collected in the baseline survey. Page 14