Title: Qualitative and Quantitative Poverty Appraisal: Maximizing Complementarities, Minimizing Tradeoffs
1Qualitative and Quantitative Poverty
AppraisalMaximizing Complementarities,
Minimizing Tradeoffs
- Chris Barrett
- Cornell University
- Presentation at Wageningen, August 26, 2002
2This seminar draws on presentations and
discussions at March 2001 conference at Cornell
University, summarized in Ravi Kanbur, ed.,
Q-Squared Combining Qualitative and Quantitative
Methods In Poverty Appraisal (Delhi Permanent
Black, forthcoming), as well as on the insights
of colleagues in several multidisciplinary
collaborative research projects.
3Significant recent progress in both qualitative
(QUAL) and quantitative (QUANT) methods - rapid
rise of PA methods - emergence of widespread,
nationally representative household
survey data.
4Are QUAL and QUANT complements or
substitutes?There is considerable conflict
among the practitioners of each does that mean
the methods necessarily conflict
too???Importance of being self-reflexive and
self-critical
5Dimensions of QUAL-QUANT Difference Be clear
about focus of question(1) Data collection
methods(2) Data types (3) Data analysis
methods(4) Audience
6 Qual-Quant DimensionsData collection methods
General Specific
Census
SR Surveys
PRA
Autobiography
Passive Active Population Involvement in
Research
7Qual-Quant Dimensions
- Qualitative Quantitative
- Data types
- Categorical Ordinal Cardinal
-
- Each data collection method can yield both
non-numerical and numerical data
8Qual-Quant Dimensions
- Qualitative Quantitative
- Data analysis methods
- Inductive Deductive
- Related to the specific-general data collection
methods distinction, theres often (not always) a
difference in analysis methods.
9Qual-Quant Dimensions
- Audience
- Local community Global/national
policymakers - QUAL researchers often worry out loud about local
empowerment and the intrinsic value of the
research process. QUANT types tend to worry
about big picturetake home messages
speaking truth to power
10Key advantages of QUAL approaches
- Allow more immediate probing in response to
unanticipated results (adaptability) - More nuanced and textured for complex,
unmeasurable concepts (e.g., power, opportunity,
security) - Let subjects speak for themselves
11Key advantages of QUANT approaches
- Use of sampling frames and randomization reduces
inferential bias coincidence and causality - Uniformity/structure in design/definitions
fosters replicability over time (longitudinal
analysis) and across samples (comparative
analysis) - Easily aggregability few scaling up problems
12Myths about QUAL-QUANT differences
- One more/less extractive than the other
(ethical superiority) - One more/less contextual than the other
(historical superiority) - One inherently numerical/non-numerical
- (statistical superiority)
- (4) One more rigorous than the other
- (scientific superiority)
- Bad practice is bad practice, whatever the
method.. - Key question when and how is good practice
within one strand still wanting? How can the
other fill the blanks?
13Mixing methods
- When brought together, QUAL and QUANT rarely have
similar status, especially in policy discourse,
where aggregability and the illusion of
precision commonly dominate. - Improve analysis by mixing the two taking the
con out of econometrics, generalizing beyond
the part of participatory methods
14Why mix methods?
- QUAL can improve QUANT by
- Improving survey/instrument design. Data are
social products, so need to understand source - Improving specification of formal models
- Improving statistical inference
- Identifying suitable instrumental variables,
exclusionary restrictions, etc. - Shedding light on outliers (It helps to have had
tea with an outlier Biju Rao) - Highlighting likely sources of measurement error
(the Chai stall error Ron Herring)
15Why mix methods?
- QUANT can improve QUAL by
- Reducing researcher-induced bias by structure and
replicability - Facilitating comparability
- Facilitating aggregability
- Broadening the audience for results
- Fostering more precise criteria for demonstrating
causal relationships
16Different methods of mixing
- Sequential mixing or classical integration
- Practitioners of each method do their best with
their own tools on same problem, then triangulate - Examples Fields work on SA labor markets
- Shafers work on intrahh inequality in
west Africa - BASIS project on natural capital and
dynamic poverty traps
17Different methods of mixing
- Simultaneous mixing or Bayesian integration
- Iterative approach to using one method to inform
another, then back to the first, etc., keeping
multiple methods interactive throughout the
research process. - Feedback loop yields a homeostatic research
mechanism - ethnography precedes participatory which in
turn precedes survey in dictionary and should
in field, too! - Ongoing, creative tension between methods helps
ensure originality, robustness and relevance of
results
18Different methods of mixing
- Example Pastoral Risk Management (PARIMA)
project based on multidisiplinary integration - (a) What does it mean to poor or vulnerable in
this setting? How does this vary across
individuals, households, communities and time?
asking the right questions or the right people
at right time? -
- (b) Derivative from (a), are we measuring the
correct variables and in the right manner? -
- (c) Is our inference consistent (i) across
methods (a test of robustness) and (i) with local
understandings of the problem(s) (a test of
relevance)?
19- Tools developed/employed
- - Participatory risk mapping (Smith et al. WD
2000, JDS 2001) to identify relevant threats
(e.g., human health) open-ended,
spatially-explicit, pseudo-cardinal - - Quarterly repeated surveys with open-ended
sections and mixed modules - (i) complex property rights climate
forecasting, resource conflict land use history
livelihoods strategies, etc. - (ii) complementarity at multiples levels of
analysis and different methods (e.g., livestock
marketing with data from households, markets and
traders) -
20Example Participatory risk maps of rainfall and
drought risk (Smith et al. 2001 JDS)
21Walking On Both Legs
- Development scholars and practitioners
increasingly recognize the complementarity
between qualitative and quantitative methods - There are big gains to be enjoyed from
relatively small movements along the QUAL-QUANT
axes in any of several dimensions. - Tradeoffs grow, however, so multidisciplinary
mixing seems best, whether sequential or
simultaneous, to take advantage of inherent
complementarities from diversity of methods.
22Walking On Both Legs
- But much remains to be done
- Need work on
- (i) vocabulary
- (ii) field methods
- (iii) data cross-referencing
- (iv) fostering respectful dialogue