Title: Impact evaluation in the absence of baseline surveys
1Impact evaluation in the absence of baseline
surveys
- By Fabrizio Felloni, Office of Evaluation, IFAD
- International Workshop on Development Impact
Evaluation, Paris, November 15, 2006
2The context of IFAD
- Relatively small projects 2005 median of IFAD
loans US 15.5 m, project costs US 26 m - Focus on rural poverty reduction
- Traditionally limited field presence of IFAD (15
countries on a pilot basis), IFAD not executing
or supervising projects, limited self- evaluation - This scenario is evolving with new Action Plan
3Field-based evaluation at IFAD - OE
- Necessary to make up for distance of headquarters
from the field and information gap - Several types project, country programme and
corporate evaluations - All include field visit and some form of primary
data collection - Project evaluations conducted just before or soon
after project closure
4Methodological requirements
- Standardised methodology for project and country
programme evaluations requires assessing impact
(standardised categories) - No standardised data collection methods to be
identified at approach paper phase - Impact is but one of the analytical domains (also
relevance, effectiveness, efficiency,
sustainability innovation, performance of
partners) - So no dedicated instrument for impact assessment
5Shoe string evaluation in action
- Considerations from personal experience
6A case of shoe string impact evaluation
- See Bamberger et alii AJE, 25 (1), 2004
- A number of constraints
- 1. Time and budget (impact is one of the
evaluation domains) - 2. Poor performance of ME function at project
level - 3. Absence or limited usefulness of baseline
data (now changing baseline survey with
anthropometric and hh asset indicators for all
new projects)
7Logical steps for impact assessment
1
2
3
Multi-disciplinary field visit (mainly
qualitative direct observations)
Preliminary quantitative mini-survey
Impact assessment
Formulate first impact hypotheses, collect
evidence on selected basic indicators
Triangulation of mini-survey, focus groups and
individual interviews key informants
Validate hypotheses, probe on a set of narrower
questions
8A pragmatic approach
- Within this context, impact assessment based on
triangulation, still important qualitative
component - Still place for theory-based approach
- Quantitative survey used to test and generate new
hypotheses, better focus questions during main
mission - Small sample size 200 350 respondents
including project and control. Size determined
by practical issues (represent project
activities, time, transportation, budget)
9Ideal scenario for the survey
1. Best case scenario quasi-experimental design
T0 programme group
T1 programme group
Baseline
Follow-up
C0 control group
C1 control group
- Ti and Ci measurable characteristic of the
population, i time of observation (0,1). - Unfortunately, this scenario is almost never
found
10Typical scenarios
1. Programme group only
T0 programme group
T1 programme group
Baseline
Follow-up
2. No baseline at all most frequent case
???
Evaluation
11Other common issues
- Classical problems with control samples
(selection bias, spill-over effects,
non-compliance) - Ex ante (i) visit similar communities or hh in
administrative areas outside project, (ii) select
new entries - Ex post Mostly dealt with qualitatively at
mission phase (triangulation) - Main constraint to use of econometric techniques
availability of trained specialists, time (impact
is one of the evaluation domains)
12Dealing with lack of baseline data
- Several options (not mutually exclusive)
- 1. Reconstructing baseline data ex post recall
method (more later) - 2. Use key informants and triangulate (mostly
qualitative) - 3. Reconstruct a baseline scenario with
secondary data (not always practical given
absence and quality of baseline studies) - 4. Single difference with econometric techniques
some practical obstacles (workload, time
constraints, availability of trained specialists)
13Recall methods
- Ask about current situation (e.g. cropping
practices) now and at programme start-up
recall
T1 programme group
T0
C1 control group
C0
recall
14Typical problems with recall methods
- Telescoping of major events / expenditures
- Under-estimation of small and routine events /
expenditures - Recall time line (events that are 3 -7 years old)
- Unintended misidentification of project start-up
- Strategic behaviour of respondents (to please
the interviewer or express complaints) - Some indicators are more complex to identify and
remember with precision (income)
15Some techniques to control problems
- Concentrate on few impact variables that are
easier to visualise and recall. Some examples
- household appliances, livestock size (depending
on the context), - cropping patterns, agricultural and grazing
practices, community initiatives) - Help identify baseline point by helping recollect
key facts and events - Do not simply ask what, ask why, i.e.
respondents to state causal linkages. E.g. the
number of goats increased why? and how? Also
useful for attribution. - Pre-test the instruments
16Practical examples
17Ex 1.The Gambia Rural Finance Project (2004)
- Preliminary survey
- - Project and control group
- - Recall income and assets at hh and kafo
level - Data analysis
- - Descriptive statistics and significance tests
principal component analysis - - Generated two hypotheses
- (i) limited overall impact on hh income
- (ii) biases against relatively poorer hh in
villages
18Gambia, Rural Finance (contd)
- Field mission focus groups, individual
interviews key informants - - Confirmed limited effects on income
generation opportunities - - Credit collateral discouraged participation
from poorer hh, ineffective in establishing
credit discipline - Main observations
- - Some validity threats in recall data on
income and monetary assets - - Consistency with qualitative findings
- - Help focus the scope of field mission
19Ex. 2 Ghana Upper East Region
- Similar to the Gambia case (project control,
recall) - Multi-component agricultural project main
intervention, small dams - Recall on household productive and other durable
assets - Main findings seemed to show larger effects for
project group - Some methodological shortcomings
- - difficult to find matched observation for
control group (given multi-component nature) - - small sample size of control group may
have affected significance tests
20Example 3. Morocco, Southern Oasis
- Again, project and control, with recall method
- Many interventions, very heterogeneous, difficult
to standardise questionnaires - Focus on perceptions of trends (e.g. income
generating opportunities, irrigation / potable
water availability, feed for livestock) - Hypothesis the project was effective as a buffer
measure during years of drought. Supported by
qualitative analysis in field mission
21Concluding remarks
- Preliminary survey and recall methods never a
stand alone measure but rather propaedeutic to
(mainly) qualitative mission - Triangulation to validate reliability of
reconstructed baseline survey data, with field
observations, focus group, individual interviews
and key informants - By and large, trends suggested by preliminary
survey found to be consistent with qualitative
data - Some legitimate concerns on accuracy of estimated
means for certain indicators (income, monetary
assets)
22Concluding remarks (contd)
- Evolution towards focus on perceived trends on a
narrower set of key indicators - Cost effective to conduct preliminary work with
local specialists and students as enumerators - Project teams consulted in planning and sampling
phase. Results and database made available - Valuable experience for local students
enumerators - In principle, replicable model for public
authorities in charge of programme implementation