230 likes | 352 Views
Experimental Methods. Muna Meky Economist Africa Impact Evaluation Initiative. Motivation. Objective in evaluation is to estimate the CAUSAL effect of intervention X on outcome Y What is the effect of a housing upgrade on household income ?
E N D
Experimental Methods Muna Meky Economist Africa Impact Evaluation Initiative
Motivation • Objective in evaluation is to estimate the CAUSAL effect of intervention X on outcome Y • What is the effect of a housing upgrade on household income? • For causal inference, we need to understand exactly how benefits are distributed • Assigned / targeted • Take-up
Causation versus Correlation • Correlation is NOT causation • Necessary but not sufficient condition • Correlation: X and Y are related • Change in X is related to a change in Y • And…. • A change in Y is related to a change in X • Example: age and income • Causation – if we change X how much does Y change • A change in X is related to a change in Y • Not necessarily the other way around
Causation versus Correlation Three criteria for causation: • Independent variable precedes the dependent variable. • Independent variable is related to the dependent variable. • There are no third variables that could explain why the independent variable is related to the dependent variable.
Statistical Analysis & Impact Evaluation • Statistical analysis: Typically involves inferring the causal relationship between X and Y from observational data • Many challenges & complex statistics • We never know if we’re measuring the true impact • Impact Evaluation: • Retrospectively: • same challenges as statistical analysis • Prospectively: • we generate the data ourselves through the program’s design evaluation design • makes things much easier!
How to assess impact • What is the effect of a housing upgrade on household income? • Ideally, compare same individual with & without programs at same point in time • What’s the problem? • The need for a good counterfactual • What are the requirements?
Case study: housing upgrade • Informal settlement of 15,000 households • Goal: upgrade housing of residents • Evaluation question: What is the impact of upgrading housing on household income? on employment? • Counterfeit counterfactuals
Gold standard:Experimental design • Only method that ensures balance in unobserved (and observed) characteristics • Only difference is treatment • Equal chance of assignment into treatment and control for everyone • With large sample, all characteristics average out • Experimental design = Randomized evaluation
“Random” • What does the term “random” mean here? • Equal chance of participation for everyone • How could one really randomize in the case of housing upgrading? • Options • Lottery • Lottery among the qualified • Phase-in • Encouragement • Randomize across treatments
Kinds of randomization • Random selection: external validity • Ensure that the results in the sample represent the results in the population • What does this program tell us that we can apply to the whole country? • Random assignment: internal validity • Ensure that the observed effect on the outcome is due to the treatment rather than other factors • Does not inform scale-up without assumptions • Example: Housing upgrade in Western Cape vs Sample from across country
External vs Internal External Validity (sample) Randomization Randomization Internal Validity (identification)
Example of Randomization • What is the impact of providing free books to students on test scores? • Randomly assign a group of school children to either: - TreatmentGroup – receives free books - Control Group – does not receive free books
Randomization Random Assignment
How Do You Randomize? • At what level? • Individual • Group • School • Community • District
When would you use randomization? • Universe of eligible individuals typically larger than available resources at a single point in time • Fair and transparent way to assign benefits • Gives an equal chance to everyone in the sample • Good times to randomize: • Pilot programs • Programs with budget/capacity constraints • Phase in programs
Basic Setup of an Experimental Evaluation All informal settlement dwellers Communities that might participate or a targeted sub-group Select those you want to work with right now Based on Orr (1999)
Beyond simple random assignment • Assigning to multiple treatment groups • Treatment 1, Treatment 2, Control • Upgrade housing in situ, relocation to better housing, control • What do we learn? • Assigning to units other than individuals or households • Health Centers (bed net distribution) • Schools (teacher absenteeism project) • Local Governments (corruption project) • Villages (Community-driven development projects)
Unit of randomization • Individual or household randomization is lowest cost option • Randomizing at higher levels requires much bigger samples: within-group correlation • Political challenges to unequal treatment within a community • But look for creative solutions: e.g., uniforms in Kenya • Some programs can only be implemented at a higher level • e.g., strengthening school committees
Efficacy & Effectiveness • Efficacy • Proof of Concept • Pilot under ideal conditions • Effectiveness • At scale • Normal circumstances & capabilities • Lower or higher impact? • Higher or lower costs?
Advantages of experiments • Clear causal impact • Relative to other studies • Much easier to analyze • Cheaper! (smaller sample sizes) • Easier to convey • More convincing to policymakers • Not methodologically controversial
What if randomization isn’t possible? It probably is… • Budget constraints: randomize among the needy • Roll-out capacity: randomize who receives first • Randomly promote the program to some
When is it reallynot possible? • The treatment has already been assigned and announced and no possibility for expansion of treatment • The program is over (retrospective) • Universal eligibility and universal access • Example: free education, exchange rate regime