Abstract:
The agricultural sector has been regarded as the prime sector of the economy of Bangladesh
since the industrial sector took its roots from this sector, and the service sector is also passively
influenced by the agricultural sector. Besides its economic importance, this sector also has some
social (i.e., food supply, nutrition demand fulfilment, rural employment) and environmental (i.e.,
influence on climate, biodiversity) contributions. In any developing country, economic and
financial activities largely depend on smooth financial intermediation. Banks, as financial
institutions, can play a vital role in this regard. Hence, Banks in Bangladesh can contribute to the
economic development process through effective and efficient lending. In view of this sectoral
importance, Bangladesh Bank has announced agricultural credit as a priority sector lending and
mandatorily incorporated all scheduled banks to lend in this sector to increase agricultural
productivity.
The purpose of this study is threefold: i) Detect the nature of the farmers’ agricultural credit
constraint status, explore the problems associated with access to banks’ agricultural credit and
find the intensity of banks’ agricultural credit diversion to non-agricultural purposes. ii) Identify
the determinants of constraint, access to credit and credit fungibility status. iii) Estimate the
impact of constraint, access to credit and credit fungibility status on agricultural productivity.
A filed level survey was conducted over five sub-districts of Dhaka. Four hundred sampled
farmer’s data were collected through a structured, close-ended questionnaire. Collected data
were further analyzed with STATA 14.2 software in both descriptive (i.e., cross-tabulation, ratio,
mean and percentage) and analytical frameworks (i.e., probit regression model, propensity score
matching model)
The outcome of descriptive statistics stated the condition of constraint status, access problems
and extent of fund diversion. The probit regression model identifies marital status, gender, risk
perception, cooperative membership, land ownership deed, total owned land and distance to bank
variables that are found statistically significant to explain the constraint status of the farmers.
While education, household size, household labor, krishi card, past access to bank credit, the
purpose of farming and bank account variables are found statistically significant to predict access
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to credit status. On the other hand, we have found that chronic diseases, delay in disbursement,
old debt, non-fixed assets, and household size variables significantly influence credit fungibility
status. Then paired t-test confirms several socio-economic differences exist between farmers'
group, i.e., constraint and unconstraint, accessed and non-accessed, fungible and non-fungible.
Results of the mean productivity confirm that unconstraint, accessed and non-fungible farmers'
input use, production and income are significantly higher than the constraint, non-accessed and
fungible farmers. Finally, PSM estimates revealed that the farmers' constraint and fungible status
negatively impact input use, production and income. While the access status of the farmers
positively affects input use, production and income.
Bangladesh Bank, the central monetary authority of Bangladesh, annually issues Agricultural
and Rural Credit Policies and Programs for scheduled banks in Bangladesh. The empirical
findings of this research can contribute to the modification of the agricultural credit policy of
Bangladesh Bank. Moreover, other research findings, suggestions and recommendations can also
incrementally contribute to taking policy measures by different relevant stakeholders.
The novelty of this study lies in using a very extensive, unique and newer data set to decompose
the determinants of banks’ agricultural credit constraints, access and diversion issues and their
corresponding impacts on agricultural productivity. In Bangladesh, to the best of our knowledge,
no work has been done on farmers' formal agricultural credit’s different status determination and
impact assessment issues based on micro-level data. Thus, we expect this evidence from
Bangladesh can contribute incrementally to the existing literature.