Title: BUYING FERTILIZER IN KENYA: WHAT ARE THE KEY DETERMINANTS
1BUYING FERTILIZER IN KENYA WHAT ARE THE KEY
DETERMINANTS?
- Edward Olale
- PhD Student
- 13 September 2007
2Acknowledgments
- This is a product of a term paper for Advanced
Agricultural Marketing Course by Dr. John
Cranfield - I acknowledge Dr. John Cranfield, Dr. Alfons
Weersink, Dr. Oliver Masakure and fellow
classmates Hina Nazli and Henry Anim-Somuah for
their constructive comments towards the
development of this paper
3Summary
- This study develops an analytical framework that
simultaneously incorporates income
diversification, transaction costs and production
risk in farmer fertilizer market participation
decisions - The framework is then tested in analyzing the
probability and intensity of buying fertilizer in
Kenya, at farm level
4Outline
- Introduction
- Theoretical Framework
- Empirical Framework
- Data
- Results
- Model Tests
- Conclusion
5Introduction
- Improved market access is necessary for poverty
reduction in Kenya and other developing countries - More attention has been given to output markets
than input markets - Specifically, better access to fertilizer can
- increase soil fertility and productivity
- save labour
- Fertilizer consumption levels have been low in
Kenya and other SSA countries (9 kg of
nutrients/ha compared to gt70kg/ha in Latin
America and Asia)
6Research Problem
- Joint influence of income diversification,
transaction costs and production risk on input
market participation has been ignored by past
studies - Research on the influence of these factors on
fertilizer market participation is scanty - This study aims at
- developing an analytical framework of farmer
participation in fertilizer markets that
incorporates all these factors income
diversification, transaction costs and production
risk - empirically testing their influence on farmer
participation in fertilizer markets
7Theoretical Framework Diagram
Utility
Feed-back effect
Farmer Income
Fertilizer market participation
Input prices
Output prices
Transaction costs
Prodn risk
Farm hhs xtics
Income diversification
8Theoretical Framework Assumptions
- Transaction costs in the fertilizer market
- Farmer is risk neutral
- Possibility of production risk, but no price risk
- Output is produced for sale
- Farmer can participate in off-farm employment
- Family labour and hired labour are perfect
substitutes-one wage rate (w) - With these assumptions, the objective of the
farmer is to maximize expected income
9Theoretical Framework Model
- The farmers objective to maximize expected income
can be written as - Where,
- M is expected income
- is expected farm income or profit
- TC is transaction costs in the fertilizer
market - NFI is off-farm income
- Transaction costs are either proportional (PTC)
or fixed (FTC)
10Theoretical Framework Model
- Expanding the expected income equation yields
-
-
-
- Where,
- is output price
- q is expected output
- is the price of fertilizer
- k is fixed expenditure on other inputs
- is per unit proportional transaction
cost - x is fertilizer amount
- is family labour available for work
- is the labour requirement in the farm
11Theoretical Framework Model
- The production function is specified as
-
-
-
- Where,
- is the probability of no crop
loss and by extension - is the probability of crop loss
- represents farm household
characteristics - The above function is substituted into the
expected income (M) equation -
12Theoretical Framework Model
- If M with fertilizer purchase gt M without
fertilizer purchase, then the farmer decides to
buy fertilizer and maximizes the expected income
equation to yield -
-
- with income
diversification - is labour
supply off-farm
13Theoretical Framework Hypotheses
- Comparative statics suggest that fertilizer
demand is - positively influenced by output price
- negatively influenced by fertilizer price
- negatively influenced by per-unit proportional
transaction cost - positively influenced by income diversification
- Test for the influence of production risk
(probability of no crop loss) is inconclusive - The above hypotheses are tested empirically
14Empirical Framework
- Due to data limitations, not all the derived
input demand equations can be estimated - Only the derived fertilizer demand function is
estimated
15Empirical Framework
- Prob./intensity of fertilizer purchase
- F(input prices, output prices, farm household
characteristics, transaction costs, production
risk, income diversification)-linear - Specifically, 17 variables included in the model
were - Prices fertilizer price perception, value of
crop products - Farm household characteristics age, gender,
family size, crop farm size and access to
production credit - Transaction costs education, distance to the
nearest fertilizer market, agricultural extension
and agricultural group membership - Production risk use of drought resistant
varieties, access to permanent water source and
agro-climatic zone - Income diversification predicted wage rate
off-farm, predicted value of livestock and number
of crops grown
16Empirical Framework
- Heckmans two step procedure, is used to obtain
predicted off-farm wage rate and value of
livestock- since wage rate and value of livestock
are endogenously determined - Age, age squared, education and inverse mills
ratio are used to obtain predicted off-farm wage
rate - The same variables in the wage equation, in
addition to family size and value of farm
implements are used to obtain predicted value of
livestock - Probit and Tobit models for probability and
intensity respectively
17Data
- Generated using a semi-structured questionnaire
administered to 228 farmers in semi-arid areas of
Eastern Kenya - GIS random sampling procedure was used in a
catchment area covering three districts - Questions were asked on farm household
characteristics farm enterprise(s) soil
fertility management technologies and marketing
and institutional support
18Results
Significant factors
19Model Tests
- Likelihood ratio tests showed that, all the 17
explanatory variables were jointly able to
explain both probability and intensity of buying
fertilizer - Specifically, inclusion of both transaction costs
and production risk improved the explanatory
power of both models - Inclusion of income diversification only improved
the explanatory power of the probability model
20Conclusion
- Income diversification positively influence
fertilizer market participation this may explain
why use of labour saving inputs increase with
more off-farm employment opportunities - Transaction costs and production risk negatively
influence fertilizer market participation - The three factors improve the explanatory power
of the market participation models except for
inclusion of income diversification in the
intensity model - Inclusion of all the three factors is therefore
recommended in future agricultural input market
participation studies
21THANK YOU
I WELCOME QUESTIONS AND COMMENTS