Index

Abstract

The study examined the socio-demographic features of farmers and credit accessibility in the Sefwi-Wiawso Municipality Ghana. It also identifies the sources and factors influencing access to credit in the Sefwi-Wiawso Municipality. Primary data were obtained from 1,200 households and farmers within the Sefwi-Wiawso Municipal. The empirical analysis employed a logistic regression technique, the Tobit model and Endogenous Switching Regression Model (ESRM) to explore the accessibility of credit on productivity in the agriculture sector.  The results revealed that age and gender are statistically significant in determining access to credit from both the logit and the endogenous regression models. The endogenous switching regression model further reveals that educational status, land ownership, access to knowledge on credit significantly influences the amount of credit received by a particular farmer within the Sefwi-Wiawso Municipality. These findings have practical implications for the modernizations of the Agriculture sector in Ghana. It is therefore important for various stakeholders to increase financial literacy among farming communities and the financial institutions to increase the credit accessibility by the Agriculture sector. It is therefore recommended that extension services provision, diversification of agriculture production and easy access to credit from financial institutions in the Municipality be established to ensure increased agriculture production.  

Keywords: Socio-demographic, Productivity, Credit, Farmers, Accessibility, Modernization., Agriculture

Received: 13 November 2018 / Revised: 21 December 2018 / Accepted: 30 January 2019/ Published: 15 April 2019

Contribution/ Originality

This study is one of the very few studies which have investigated the impact of access to credit on agricultural productivity.


1. INTRODUCTION

The contribution of Agriculture to Ghana’s economy cannot be overemphasized. Its importance in the areas of foreign exchange earnings, food security, and employment creation cannot be understated. Agriculture plays both backward and forward linkage roles with itself and other sectors of the economy.  It provides raw materials to agro-based sectors that create income to those engaged in the sector as well as the central government (Binswanger and Deininger, 1999; Sulemana and Adjei, 2015). According to the Institute of Statistical Social and Economic Research (2014) reports agriculture employs about 43.7% of the Ghanaian labour force and helps reduce rural-urban migration. The impact of agriculture on poverty reduction is profound, and as a result, most policies ear-marked towards poverty alleviation have been modeled around agriculture (Agwu et al., 2008). Accordingly, policy initiatives keep emerging in the agriculture sector to help augment total output.

The production and distribution of agriculture products require huge capital and credit accessibility. However, the agriculture sector is financially constrained leading to the use of old methods and rudimental technology resulting in low production and ineffective distribution (Sulemana and Adjei, 2015). It is estimated that roughly, 80 percent of total agricultural cultivation in Ghana is rain-fed dependent and quite a few (roughly 20 percent) of farming households use fertilizer. Farmers lack access to high yielding seed varieties, fertilizers, insecticides as well as irrigation-based techniques for production. The resultant effect is that most farmers do not enjoy economies of scale due to small scale production reflecting in high cost of production (Sulemana and Adjei, 2015). Credit, which farmers receive, is influenced by several factors which do not give small-scale farmers the opportunity to get the needed amount from the financial institutions.

The Sefwi-Wiawso Municipality in Ghana is no exception to the problem of inadequate agricultural credit to increase crop yield. Access to credit in the municipality is a challenge to small-scale farmers and as a result, farmers find it difficult to purchase the needed inputs to expand their farms. Most farmers often rely on the little income received from their produce and the support of friends to acquire the needed inputs in their farm operations. The primary occupation of the inhabitants is agricultural production and distribution with roughly a little over 70 percent of households engaged in the sector. The farmers in the municipality produce agriculture products such as cocoa, oil palm, pineapple, plantain, yam, rice, tomatoes, garden eggs, citrus, pepper, cassava, cabbage, cocoyam and maize.
Financial institutions that are available in this municipality give loans to farmers based on certain demographic characteristics because most farmers do not have collateral security to secure credit. Farmers in this municipality are not able to save due to the low income they receive from their farm outputs or products. Low amount of savings due to the low disposable income of small-scale farmers is one of the constraints for farmers to access credit from the financial institutions in this municipality. Financial institutions usually use the amount of savings as a yardstick to give credit to farmers.  Farmer’s socio-demographic features such as age, educational level, gender, marital status, farmer’s income, types of crops grown, farm size, extension contact and among others influence their ability to access credit. Socio-demographic characteristics of farmers and access to credit are therefore related. This study, therefore, seeks to evaluate the impact of farmer’s credit accessibility on farm productivity within the Sefwi-Wiawso Municipality. More specifically this study seeks to answer the following research questions. How does the socio-demographic feature of respondents affect their capacity to have access to agriculture credit in the Sefwi-Wiawso Municipality? What are the sources of credit and factors influencing access to credit by farmers in the Sefwi-Wiawso Municipality?

2. RELEVANT LITERATURE

Aidoo-Acquah (2016) conducted a study on the factors that influence the accessibility of credit facilities among small-scale farmers of the Fiaseman Rural Bank Limited in the Prestea/ Huni-valley District located in the Western part of Ghana. The primary data for the study was collected through questionnaire administration, and the probit regression model used revealed that “marital status, family size, interest rate, the income of household head and the value of collateral were the major factors which influence farmers’ access to credit”.
Just like Elisha et al. (2016) in their study also proved that “factors such as marital status and income of the farmer influence the farmer’s access to credit”.  In relation to this, Benjamin et al. (2015) also discovered in their research that “farmers’ access to credit is being influenced by gender of the farmer, level of household income, amount of farm capital, technology adoption, contact with an extension officer, farm capital, capital ownership and awareness of lending institution”. 

Furthermore, Gideon et al. (2015) also examined “the factors influencing the probability of accessing agricultural credit and how the amount received is collecting to farming operators”. Their study proved that “there exists a significant difference between the amount of credit received and the amount allocated to farm operations”. The probit model of data collection and analysis was used to explore the determinants of agricultural credit and the results is in line with the studies of Benjamin et al. (2015); Elisha et al. (2016); Aidoo-Acquah (2016) which observed that “gender, household size, farmers engaging in off-farm income and membership farmer-based organization influence the probability of farmers’ access to agricultural credit”.

In addition, Benjamin et al. (2015) also analyzed the factors influencing access to loans. The study was done to basically look at the determinants of loan size. They made use of the probit model to analyze “the factors which influence access to agricultural microcredit in the Northern region of Ghana”. It was concluded that gender, farm capital, the size of the household are major determinants of access to credit by farmers.

Elisha et al. (2016) also investigated the factors which influence smallholders Rice farmers’ access to credit in the Eastern part of Ghana. “A multi-stage technique of sampling was used to undertake the study and the probit model was used to estimate the factors that, influence farmers’ access to credit”. Their results showed that “age, marital status, membership of the farmer-based organization, extension visit, record keeping and farm income influenced access to credit”. The study again proved that most farmers did not use the credit on agricultural activities but rather for other activities.

Moreover, Javed et al. (2008) also embarked on a study on the effects credit on rice productivity in Pakistan. “Their study identified that credit offered to farmers had a positive correlation with agricultural productivity”. The study employed secondary data in credit given to farmers by the government of Pakistan. The data were analyzed using the linear regression model of the Cobb Douglass hype and the study found out that, credit disbursed for seeds, fertilizers, pesticides, irrigation and tractors had a strong positive correlation on agricultural productivity.

Awotide et al. (2015) also examined the influence of the availability of credit on agricultural productivity in Nigeria. The study made use of “Endogenous Switching Regression model (ESRM)”. The results revealed clearly that determinant of farmer’s access to credit was livestock unit and farm size. Also, their study pointed out that “accessibility to credit has a significant impact on the production of cassava”. However, they recommended that credit services to rural farming households should be improved to enable farmers’ access credit and increase productivity. 

Rahman et al. (2014) made use of the logit regression model, “to examine the impact of agricultural credit availability on farm productivity in Pakistan”. The results from the study showed “a significant positive association between household size, household income, farmers’ education, agricultural credit and agriculture output or yield per acre”. The study therefore recommends that “financial assistance should be readily accessible to farmers to help enhance agricultural productivity”.

Makina and Chisasa (2013) in a study observed that “the impact of bank credit on agricultural credit in South Africa using the Cobb-Douglas production functions”. The data for the study spanned from 1970 to 2009 on agricultural output, bank credit access, capital accumulation, labour and rainfall, they estimated the OLS coefficients of the Cobb-Douglas production function. Results from their study indicate that “bank credit has a significant positive impact on agricultural output in South Africa”. Specifically, they observed that, “ceteris paribus, a 1 percent increase in credit results in 0.6 percent increase in agricultural output”. Also, “with other variables held constant, a 1 percent increase in capital accumulation results in 0.4 percent increase in agricultural output”. The study further showed that “the combined effect of the elasticity’s from the Cobb-Douglas estimation showed constant returns to scale which indicates that a proportionate increase in inputs will result in the same proportionate increase in agricultural output”.

In a related study, Sial et al. (2011) examined “the role of institutional credit on agricultural production in Pakistan using time series analysis”. Using a time series data spanning from 1972 to 2008, a Cobb-Douglas production function using OLS was examined. A result of their study indicates that “agricultural production credit, availability of irrigation water, the intensity of cropping, and labour force in the Agriculture sector are positively significantly related to agricultural production output”.

Waheed (2009) investigated the “effects of micro credits on the farm production and well-being of rural farmers in Pakistan. Microfinance is recognized to be an essential ingredient for investment in rural agricultural production activities and a catalyst well-being improvement of the rural poor”. The study pointed out that “credit accessibility to non-poor was better and more productive than credit to the poor farmer”. It can be concluded that, non-poor are more easily able to have access to credit compared to the poor.

A study explored “the effect of agricultural credit scheme under supervision (SACS) on farm output”. In a comparative analysis of “two group of farmers who have access to credit from formal sources and those from informal sources, and it was observed that farmers who had access to SACS utilized more inputs, had greater yields and profits than their informal counterparts”. It was therefore recommended that extension services and access to credit should be intensified to realize higher productivity within the sector.

3. METHODOLOGY

The method of analysis of the study is a quantitative approach of estimation. The dependent variable Y, is the credit constraint condition of the farmer (i.e., a credit constraint farmer is the farmer who has not received all the loans applied for (received only a part of the loan applied for), from the financial institution, and this condition is dummied 1, otherwise 0 when the farmer received all the loan amount applied for, from the financial institution). Let assume that Y* can be specified as follows:

Following Nagler (2002) where he used X1, X2, X3... Xn    represent vector of random variables, I represent avector of unknown parameters and I represent a random disturbance term”. The empirical logit model specified to analyze the credit constraint condition of the farmers can be expressed as follows:

Yi = β0 + β1 0066armers Age + β2 Sex of the farmers + β3 Household size + β4 Educational status of the farmers + β5 Income level + β6 Farming experience + β7 Farm size + ᶓ                                                                                      (4)
Where β0 is a constant, β1…, β7are coefficients and is the stochastic disturbance or the error term.

Where in Equation 4 Yi represents the determinants of access to credit or denial to credit.

3.1. Data Sampling

This section discusses theoretical framework and statistical techniques employed in determining credit constraint in agricultural productivity in the Sefwi Wiawso Municipality using data from a well-structured questionnaire. It examines the types and sources of data, model specification variables employed under the study, prior expectations on the signs of the coefficients to be estimated as well as the model estimation technique. 

In Probit estimation, the variable of interest is always an unobserved variable of interest (y*).  Under the probit model, there exist dummy variables for the unobserved regression analysis which are categorized as one (1) and zero (0).  Contrarily, Ellinger et al. (1992) “ Tobit (Tobin’s probit)  also known as the censored normal regression model is used for situations in which y is observed for values greater than 0 but is not observed (that is censored) for values of zero or less”.
It can be modeled as:

The Maximum Likelihood Estimation (MLE) of the Tobit model is a straight forward one and it interpreted in the same way as the linear regression model just that under Tobit model, there are observed latent variable and censored variables.

3.2. Endogenous Switching Regression Model

Hausman (1983) observed that, “one of the best ways to deal with endogeneity is the use of simultaneous models in estimating their outcomes”. The use of the Endogenous Switching Regression Model (ERM) is used to correct any biases in the study during the selection of farmers and their respective variables for study especially when providing services to farmers in addition to credit.

First, the study specifies binary choice model associated with the econometric model stated above. The model is based on Alene and Manyong (2007) study which assessed “farmers access to credit conditioned on observed co-variates using Probit Modeled as;

Following Lokshin and Sajaia (2004) “the Full Information Maximum Likelihood method is the perfect way to conduct analysis of the endogenous switching regression model”. Empirically, the equation of the ESRM to be estimated; is credit demand function, in a probit regression and an Agricultural production function. The access to credit decision equation, which =is equivalent to Equation 8, is specified as follows:

CREDITACCESS= f(AGE, EDUC, INCOME LEVEL, SEX,LAND OWNERSHIP, ACRES,KNOW.OF CREDIT, ACCESS TO EXT. BANK ACC. ).    (12)

Where in Equation 12  defines the determinants of access to credit based on all factors of credit demand by a particular farmer.

The binary dependent outcome of the study is categorized into 1 if the farmer has access to credit and (0) if the farmer does not have access to credit. The level of productivity after the access or no access to credit by a particular farmer is then written as;

PRODUCTIVITY = f (AGE, EDUC, INCOME LEVEL, SEX, LAND OWNERSHIP, ACRES, KNOW.OF CREDIT, ACCESS TO EXT. BANK ACC. )     (13)

Where in Equation 13 is defined as the determinants of productivity by a farmer due to access to credit in the Sefwi-Municipal.

4. EMPIRICAL RESULTS

The survey covered farmers of the Sefwi-Wiawso Municipality with a representative sample of 1,210 households in ten (10) enumeration areas. Exactly, One thousand, two hundred (1,200) respondents were successfully interviewed translating into a response rate of 99.17 percent. Detailed information was collected on the demographic characteristics of households, education, employment, credit accessibility conditions, household agriculture, income and their components.

The summary statistics of credit accessibility and agricultural productivity in the Sefwi- Wiawso Municipality of the Western region is presented in Table 4.1 above shows that, 62.5 percent of the households interviewed were males' while 37.5 percent of them were females. Table 4.1 shows that most of the farmers interviewed were within the age group of 38-47 years which shows an active age group of the population within the Sefwi-Municipal. About 43.85 percent of the individuals fall within this age category. The proportion of farmers who have had some form of education was skewed towards educated with 65 percent. More than half of the households interviewed were located in the urban areas of the Municipal (54.17%) whiles the rural households were 45.83 percent. Out of the total number of people interviewed, the number of farmers who were married was 71.61 percent compared to 28.33 percent of them who were not married. This means that, since farming is an economic activity that requires more helping hands most farmers get married early in other to have more helping hands on the farm work compared to the unmarried people.

Table-4.1. Summary statistics of variables.

DEMOGRAPHIC VARIABLE
No. of household
Percent of total
GENDER
Male
750
62.50%
Female
450
37.50%
AGE GROUP
18-27 years
230
19.17%
28-37 years
670
55.83%
38-47 years
300
25.00%
48-57 years
>58 years
EDUCATION
Educated
780
65%
Non-educated
420
35%
RESIDENCE
Urban
650
54.17%
Rural
550
45.83%
MARITAL STATUS
Married
860
71.67%
Single
340
28.33%
ACRES OF LAND OWNED
1-5 acres
850
70.83%
>10 acres
350
29.16%
ENGAGED IN ECONOMIC ACTIVITY
Yes
934
77.83%
No
266
22.17%
FARM OWNERSHIP
Farm
980
81.17%
No-farm
240
18.83%

Source: Authors computation with data from Field Survey, 2018.

The number of people engaged in economic activity for income, cash or in kind within the Municipality was represented by 77.83 percent. This means that most of individuals are engaged in one form or work or the other. The major occupation within the Municipality is farming which is represented by 81.1 percent compared to other economic activities such as the manufacturing and service sector which together constitute 18.83 percent. The Sefwi-Wiawso Municipality is an area with large tracts of land for agriculture purposes and mining as well. The members within the communities of the Municipality are predominantly farmers. This is the main occupation of the residents of the Municipality.

Table-4.2. Access to credit and land size.

Credit Accessibility among farmers
Acres  of land
Yes
No
Total
1-5 acres
560 (46.66%)
200 (16.67%)
760 (63.33%)
>10 acres
200 (16.67%)
240 (20%)
440 (36.67%)
Total
1,200(100%)

Source: Authors computation with data from survey interview.

The acreage of land influences the ability of a farmer to have access to credit. Farmers with a land area of (1-5 acres) have 46.66 percent access to credit in the Sefwi-Wiawso Municipality compared to individuals who have acreage of land above 10. The farmers with above 10 acres of land have 16.67 percent to have access to credit. This means that, most of the financial institutions within the Municipality have the high tendency to give credit to farmers who engages in small scale farming compared to those who engage in large scale farming. The reason could be that, the farmers who cultivate the land on small scale are able to sell their farm produce quickly since they are normally engage in food crops that yield within the short term.

The farmers who engage in large scale farming (above 10 acres) usually cultivates crops that requires high level of capital and also have long period before cultivation. This is a major reason for their denial of access to credit by the financial institutions that exists in the Municipality. The large agricultural activities in the Municipality also usually require the cultivation over long periods of time and therefore limit the financial institutions ability to give out more financial resources to the farmers. From Table 4.2 about 20 percent of the farmers who falls under the category of large-scale farming that requires ten (10) acres and above areas of land were denied financial access from the financial institutions when they applied for loans. This is usually the case of most banks prefer investment in short term interesting activities compared to long term activities which usually take about three (3) years and above.

4.1. Logistic Regression Results

The estimation of results of access to credit and farm productivity in the Sefwi-Wiawso Municipality is done in the table below. The first part entails the demographic variables and then followed by the economic variables. The characteristics of the households such as age, gender, employment status, and educational status significantly affect the household decision to partake in Agriculture activities as well as put in a loan application.

Similar to the findings of Jangwe (2014) the educational attainment or level of education has a negative effect on the farmers’ participation decision in Agriculture in the Sefwi-Wiawso Municipality. In comparison with farmers with no formal education, farmers with basic and secondary educational attainment are less likely to participate in Agricultural activities. This finding also confirms the findings of Dosal et al. (2011) for the sample households in Bobo Dioulasso, Burkina Faso. The marginal effects results indicate that compared to farmers with no formal education, the probability that a farmer participate in agriculture activities are reduced by about 8.1 and 18.4 percentage points respectively. This negative relationship between educational attainment and participation in farming activities may be taken as an indication that farmers with formal education stands a better chance of securing good jobs in the Municipality and thus, would be paid better at their workplaces, hence, may not engage in subsistence farming as income generating source to augment his or her income.

The age of the farmer is positively related to access to financial resources for Agriculture participation. This means that farmers with are older enough are more likely to own their lands and therefore use it for Agriculture activities. From the analysis, a one year increase in the age of the farmer raises the farmer likelihood of participating in the phenomenon by about 1.2 percentage points. This result consistent with that of Dosal et al. (2011) who finds that farmers engaging in Agricultural activities in Sikasso, Mali are older compared to those non- participating farmers.

A farmer’s access to land significantly influences his decision to engage in the agricultural activities. The results indicate a positive association between land ownership or land access and the decision to participate in Agriculture activities Table 4.3. This finding is consistent with that of Adebisi and Monisola (2012). Land constitutes one of the significant inputs or factors of farming. Thus, farmers that have easy access to agricultural land are more likely to participate in it compared to farmers with limited or no access. Furthermore, it can be observed that, compared to the Sewfi-Wiawso Municipality, farmers in the other towns in the Municipality are more probable to engage in Agriculture activities. This may be due to the availability of land and /or the ease of acquiring land in these towns.

Table-4.3. Marginal Effects of the Logistic Regression Estimating the Probability that a farmer have access to credit for Agriculture in the Sefwi Wiawso Municipality.

Variable
Coef.
Std.Err
P>Z
Marginal effects
Std.Err
X'tics of farmers
Age 
0.067***
0.014
0
0.012
0.002
Gender
Male (Dummy)
0.615***
0.089
0
0.104
0.014
Educ. Attainment
No Educ. (Ref. Cat.)
Basic
-0.458***
0.076
0
-0.081
0.013
Secondary
-1.336***
0.113
0
-0.184
0.012
Tertiary
0.48
1.252
0.701
0.096
0.276
Employment Status
Employed (Ref. Cat.)
Retired
-1.269***
0.27
0
-0.156
0.021
Unemployed
-1.526***
0.136
0
-0.19
0.012
Marital Status
Married (Ref. Cat.)
Never married
-0.077
0.105
0.461
-0.014
0.018
Divorced
-0.093
0.102
0.365
-0.061
0.018
Household X'tics
Sector of employment
Service (Ref. Cat.)
Agriculture
0.15***
0.015
0
0.719
0.023
Manufacturing
0.166
0.112
0
-0.099
0.013
Ownership of Agric. Land
Land owned (Dummy)
0.813***
0.295
0
0.719
0.023
Agriculture outputs
Food crops (Ref. Cat.)
cash crops
-0.552***
0.07
0
0.099
0.013
Tree crops
0.050**
0.024
0.041
0.009
0.004
Towns
Sefwi-Wiawso (Ref. Cat.)
Boako
2.090***
0.157
0
0.468
0.033
Datano
2.145***
0.156
0
0.48
0.032
Wiaso-Kwasipatabo
3.022***
0.161
0
0.637
0.023
Sefwi- Waise
2.975***
0.15
0
0.637
0.023
Wiawso-Somaakrom
1.550***
0.15
0
0.336
0.034
Akalomonbo
3.072***
0.166
0
0.629
0.022
Susumete3
2.964***
0.164
0
0.627
0.024
New town
3.378***
0.185
0
0.679
0.021
Asaman
2.949***
0.202
0
0.62
0.028
Constant
6.087***
0.407
0
Log Likelihood                                    -3588.9917
Pseudo R2                                             0.2152
P>chi2                                                   0.000
*** Significance at 1% ** Significance at 5% *Significance at 10%

Source: Authors estimation based on Data from field survey, 2017.

Table-4.4. Tobit Estimation for Parameters on Access to credit by farmers.

Variables
Coefficients
Standard Error
Asymptotic t-ratio
Constant
-0.8597
0.3129
-2.747
AMT.EXP
0.0032
0.0064
-0.5
EDUC
0.0061
0.0085
0.0071**
ACRES
-0.1623
0.0191
-0.084*
SEX
0.1325
0.1181
1.122
COLLATERAL
0.8704
0.1212
0.0182***
REASON FOR LOAN
0.6726
0.0897
0.749
LOAN REPAYMENT
0.6615
0.9684
0.0068***
INCOME LEVEL
0.5211
0.4822
1.081
CREDIT ACCESS
0.0075
0.0314
0.239***
*** Significance at 1%
** Significance at 5%
*Significance at 10%
Log-Likelihood Function                                              = -91. 44385
Number                                                                       = 761
LR Chi2 (11)                                                               = 15.754
Prob > Chi2                                                                 = 0.000
Pseudo R2                                                                     = 0.0083

Source: Authors computation with data from Field Survey, 2018.

The results indicate a significant association between the employment status of the farmer and his or her decision to participate in Agriculture activities. Compared to individuals who are employed in other sectors of the economy, people who are retired and unemployed are less likely to participate in agricultural activities. This is because agricultural activities require ample time and enough strength. Retired individuals may not have enough financial support for the Agricultural activities as well as may be even denied loans to participate in Agricultural activities.

The results show a significant relationship between the type of crops cultivated and the farmer’s access to credit in the Sefwi-Wiawso Municipality. A farmer who engages in cash crops cultivation are less likely to have access to financial support compared to those to who engage in food crops. This is because food crops yield their harvest within the shortest possible time compared to cash crops which may need longer periods before harvesting. Moreover, farmers who engage in food crops have a better chance of been given a loan compared to those who engage in cash crops. Lastly, the results reveal no significant association between the marital status of the farmer and the decision to engage in farming activities. Thus, the decision to participate in farming in the Sefwi-Wiawso Municipality is not influenced by the whether the individual is married, divorced or widowed.

The Tobit regression estimates above shows a pulled sampled data for the various categories of farmers with access to credit and those without access to credit. The Table 4.4 above shows the Tobit regression estimates of the data.

4.2. Socio Demographic Features

From Table 4.4 above, socio-demographic characteristics such as the level of education and the gender dimension of the respondent are very important in determining access to credit by a farmer within a household.  The educational status of the farmer influences his or her ability to have access to credit. This is significant at 5 percent level. This means that, as individual gains more education, he or she is more likely to have access to credit compared to uneducated one. Loan application or credit accessibility involves a lot of procedures that hinders or improves the individual’s ability to have access to the credit.

The sex of the farmer from Table 4.4 above has no influence on credit accessibility. There exists a positive relationship between credit accessibility and the sex of the farmer. This means that, irrespective of the gender of the farmer, he or she has a high chance of having access to credit. It is however insignificant.

4.3. Institutional Factors

The amount of expenditure incurred by a farmer on the farm is also not significant to credit accessibility. This may be because, a farmer may acquire a loan but will not use it for the purpose of farming. This may reduce the ability of the farmer to expand the acres to land cultivated in a particular year. The amount of expenditure incurred by a farmer is positively related to the amount of credit acquired even though it is highly insignificant. An increase in the amount of expenditure by one unit will increase the credit acquired by a farmer by 3.2 percent.

From Table 4.4, the acre of land cultivated has a significant impact on the amount of credit acquired. This is significant at 10 percent. An increase in the acres of the land cultivated significantly reduces the individual farmer’s access to credit. This means that, as an individual have more access to land, the rate at which financial institutions will be willing to give out credit to such individuals’ falls. Most financial institutions prefer to give out loans to farmers who cultivate on a small scale than large scale cultivation.

The availability of collateral security by a farmer significantly influences the amount of credit accessibility by a particular farmer in the Sefwi-Municipality. Because of the farming nature of the Municipality, the amount of the amount of credit is highly influenced by the availability of credit. Individual farmers who have collateral security are more likely to have access to credit compared to people who do not have access to credit. From Table 4.4, the availability of collateral security and access to credit by a farmer is significant at 1 percent and also positively related.

From Table 4.4 loan repayment ability of the farmer based on previous records significantly influences an individual farmer’s ability to have access to credit. This is significant at 1 percent and also positively related to access to credit. A 1 percent increase in loan repayment or credit worthiness will increase the amount of credit accessibility by 66 percent. This is very significant since many credit institutions look at the credit worthiness of an individual before they give any loans applied for. This case is not different under the accessibility of credit by farmers in the Sefwi-Municipality.

The amount of income level of the farmers does not significantly influence their credit accessibility. The ability of farmer to have access to credit is not dependent on their income. This is true for the study above because, farmers in the Sefwi-Municipality usually receive low levels of income from the farming activities. Most of these farmers also go for loans during the times where the farming seasons are off. This reduces their ability to haves access to credit. This is insignificant from Table 4.4 above.

Table-4.5. Maximum Likelihood Estimation of Endogenous Switching Regression Model.

Variable
Access to credit (0/1)
Access to credit=1
Access to credit =0
AGE
-0.0455***(0.0144)
0.1721**(0.0828)
0.1793***(0.0686)
EDUC
0.0754**(0.0349)
0.1772**(0.0864)
0.4322(0.2793)
INCOME LEVEL
-0.0011**(0.005)
0.0053(0.0114)
0.0527(0.0384)
SEX
0.898***(0.3625)
0.0485*(0.1515)
0.7079(0.2912)
LAND OWNERSHIP
0.3754 (0.2705)
-0.1136**(0.0548)
0.1881(0.1087)
ACRES
-0.02719 (0.2878)
0.7428***(0.141)
-1.0577(0.3088)
KNOW. OF CREDIT
0.2589 (0.2924)
5.5927***(0.590)
2.2784(1.4926)
ACCESS TO EXT.
0.0223 (0.0287)
-1.7506***(0.082)
-0.5529***(0.0781)
BANK.ACC.
0.0607** (0.0354)
0.50398*(0.3004)
0.1562(0.4140)
CONSTANT
-1.465** (0.524)
5.927**(0.204)
4.875**(0.354)
*** Significance at 1%, ** Significance at 5% and * significance at 1%. 
/Ins1                             -1.7506*** (0.08278)
/Ins2                              -0.5529*** (0.0781)
/r1                                  0.50398* (0.3004)
/r2                                  0.1562    (0.4140) LR test for Joint

Independence of eqn:   Chi2 (1) = 765 Prob> Chi2 = 0.000.

From Table 4.5 above, the maximum likelihood Estimation of the Endogenous Switching Regression Model is provided.

The regression above shows farmers with access to credit and farmers without access to credit. Those with credit are coded as (1) and those without credit are coded as (0).

Age significantly influences the level of credit accessibility. Credit institutions are always willing to provide credit farmers who are old enough to handle such amounts. This is significant at 1 percent significance level. As an individual gains additional years, there is high probability of having access to credit in Sefwi-Municipality. Age significantly influences the impact on productivity by a farmer within the Sefwi Municipality. Older farmers who have access to credit are more productive since they have access to credit.

The educational level of the farmer also influences the ability of such individual to have access to credit. This has a positive impact on the level of productivity of the farmers within the household. From Table 4.5, there exist a positive relationship between the educational status of the farmer and the level of productivity. More educated people are more likely to have access to credit and therefore produce more output on a large scale compared to unproductive farmers.

Landownership also significantly impact on the level of productivity of the farmer. The farmer’s ability to have access to credit is significantly dependent on land ownership. This makes a farmer more productive when he or she owns the land compared to when the land is sharecropped. From Table 4.5, there is a positive relationship between farmers who owns the land and the level of their productivity through access to credit. This is significant at 1 percent significance level. This result is consistent with Obasi et al. (2013) who found a positive relationship between access to credit and the farm ownership.

The knowledge of credit by a farmer also significantly influences the level of credit availability and impact on productivity. Farmers who have fore knowledge of their credit and it usage are more likely to have access to credit. This is significant at 1 percent significance level and also shows a positive relationship between the level of knowledge on credit and access to it by a particular farmer in the Municipality. This has a positive impact on the level of output or productivity of the farmers within the Municipality as shown in Table 4.5 compared to the farmers who have do not have access to credit.

The availability of bank accounts for the farmer also has a positive impact on the level of productivity by that farmer. This is shown in Table 4.5 at 1 percent significance level. This means that, farmers who have bank account are more likely to have access to credit and therefore become more productive compared to farmers who do not have access to credit.

5. CONCLUSION AND POLICY RECOMMENDATION

The logit regression technique was employed in examining the access to credit by an individual and the willingness to participate in Agricultural activities in the Municipality. The analysis of the farmer’s decision to engage in agriculture reveals that, the socio-demographic variables of the farmer as well as some economic characteristics are significant predictors of the farmer’s ability to have access to financial support to participate in the phenomenon.

Farmer’s socio-demographic characteristics or features such as age, gender, educational attainment and employment status influence their access to credit to participate in the Agriculture sector of the economy. The age of farmer raises the likelihood of the farmer to participate in agriculture.  This is because older people are more likely to have access to financial support as well as land to participate in Agriculture activities. Household heads who are males are more likely to participate in agricultural activities in the Sefwi wiawso Municipality compared to female-headed households. Also, the educational attainment of farmer had negative influence on the individual’s participation decision.

The major conclusions drawn from this study have a number of significant suggestions for policy implementation in this Municipality. The results presented in this study suggest that agriculture has the potential reducing the poverty level of people in the Sefwi – Wiawso Municipality. To ensure the full potential of the agricultural sector in the improving the livelihoods of the farmers, the following policy recommendations are worth considering:

First, policy interventions that address the problems of credit unavailability, lack of inputs should be set up in the Municipality. There should be measures to ensure that farmers have access to credit and the necessary inputs especially land and hygienic water for irrigation in the Municipality. This will enable those involved to produce on large scale and also attract new people to engage in the agricultural activity. Also, there is the need for the existence of efficient market for agricultural produce and the government and local activities should support and promote the marketing of these agricultural products in the Municipality.

Secondly, there is the need to encourage agricultural diversification which promotes the production of high-valued foods (e.g. mushrooms) that require little cultivation space but offer good monetary returns. Thus, access to land must not be a big problem in the cultivation of such agricultural products. The farmers in the Municipality should be supported to produce foods that improve the family’s food security and income as well.  Moreover, there is the need for education and environmental health awareness. This can be done through the education of farmers on good farming practices in the Sefwi-Wiawso Municipality. From the interview conducted on farmers perception of extension officers’ agency establishment, there was a 100 percent support for the establishment of such unit. The provision of adequate extension officers will facilitate the dissemination of information and the teaching of good farming practices that will promote the production of food in a healthy way.

Funding: This study received no specific financial support.
Competing Interests: The authors declare that they have no competing interests.
Contributors/Acknowledgement: All authors contributed equally to the conception and design of the study.

REFERENCES

Adebisi, A. and T.A. Monisola, 2012. Motivations for women involvement in urban agriculture in Nigeria. Asian Journal of Agriculture and Rural Development, 2(03): 1-8.

Agwu, A., J. Ekwueme and A. Anyanwu, 2008. Adoption of improved agricultural technologies disseminated via radio farmer programme by farmers in Enugu State, Nigeria. African Journal of Biotechnology, 7(9): 1277-1286.

Aidoo-Acquah, K., 2016. A case study of Fiaseman rural bank limited at Prestea/Huni-Valley District in Western Region of Ghana (Doctoral Dissertation).

Alene, A.D. and V. Manyong, 2007. The effects of education on agricultural productivity under traditional and improved technology in Northern Nigeria: An endogenous switching regression analysis. Empirical Economics, 32(1): 141-159.Available at: https://doi.org/10.1007/s00181-006-0076-3.

Awotide, B.A., T. Abdoulaye, A. Alene and V.M. Manyong, 2015. Impact of access to credit on agricultural productivity: Evidence from smallholder cassava farmers in Nigeria. International Conference of Agricultural Economists, Milan, Italy, August. pp: 9-14.

Benjamin, D., R. Winfree, I. Bartomeus, L. Carvalheiro, M. Henry, R. Rufus Isaacs, A. Klein, C. Kremen, R. Rader and T. Ricketts, 2015. Delivery of crop pollination services is an insufficient argument for wild pollinator conservation. Nature Communications, 6(7414): 1-8.

Binswanger, H.P. and K. Deininger, 1999. Explaining agricultural and Agrarian policies in developing countries. The World Bank.

Dosal, E., J. Viguri and A. Andrés, 2011. Primary sector waste indicators for regional planning. WIT Transactions on Ecology and the Environment, 150: 39-50.Available at: https://doi.org/10.2495/sdp110041.

Elisha, D.K., D.O. Elvis and T.A. Derick, 2016. What are the drivers of cocoa farmers choice of climate. The Institute of Statistical Social and Economic Research Report.

Ellinger, P.N., N.S. Splett and P.J. Barry, 1992. Consistency of credit evaluations at agricultural banks. Agribusiness, 8(6): 517-536.Available at: https://doi.org/10.1002/1520-6297(199211)8:6<517::aid-agr2720080604>3.0.co;2-e.

Gideon, A., E. Ouma, J. Jagwe, Obare and S. Abele, 2015. Determinants of smallholder farmers' participation in banana markets in Central Africa: The role of transaction costs. Agricultural Economics, 41(2): 111-122.

Hausman, J.A., 1983. Specification and estimation of simultaneous equation models In: Griliches Z, Intriligator M (Eds), Handbook of econometrics. Amsterdam: North Holland Press.

Institute of Statistical Social and Economic Research, 2014. Constraints of agricultural productivity in Ghana. ISSER Report.

Jangwe, U., 2014. Subsistence farmers’ mycotoxin contamination awareness in the SADC region: Implications on millennium development goal 1, 4 and 6. Journal of Human Ecology, 46(1): 21-31.Available at: https://doi.org/10.1080/09709274.2014.11906702.

Javed, M.I., S.A. Adil, M.S. Javed and S. Hassan, 2008. Efficiency analysis of rice-wheat system in Punjab, Pakistan. Pakistan Journal of Agricultural Sciences, 45(3): 96-100.

Lokshin, M. and Z. Sajaia, 2004. Maximum likelihood estimation of endogenous switching regression models. The Stata Journal, 4(3): 282-289.Available at: https://doi.org/10.1177/1536867x0400400306.

Makina, D. and J. Chisasa, 2013. Bank credit and agricultural output in South Africa: A Cobb-Douglas empirical analysis. The International Business & Economics Research Journal, 12(4): 387-398.Available at: https://doi.org/10.19030/iber.v12i4.7738.

Nagler, J., 2002. Interpreting probit analysis. New York University.

Obasi, P., A. Henri-Ukoha, I. Ukewuihe and N. Chidiebere-Mark, 2013. Factors affecting agricultural productivity among arable crop farmers in Imo State, Nigeria. American Journal of Experimental Agriculture, 3(2): 443-454.Available at: https://doi.org/10.9734/ajea/2013/2030.

Rahman, M., S. B Mostafiz, J.V. Paatero and R. Lahdelma, 2014. Extension of energy crops on surplus agricultural lands: A potentially viable option in developing countries while fossil fuel reserves are diminishing. Renewable and Sustainable Energy Reviews, 29(C): 108-119.Available at: https://doi.org/10.1016/j.rser.2013.08.092.

Sial, M.H., M.S. Awan and M. Waqas, 2011. Role of institutional credit on agricultural production: A time series analysis of Pakistan. International Journal of Economics and Finance, 3(2): 126-132.Available at: https://doi.org/10.5539/ijef.v3n2p126.

Sulemana, A. and S.A. Adjei, 2015. Microfinance impact on agricultural production in developing countries–a study of the Pru district in Ghana. International Journal of Academic Research and Reflection, 3(3): 2309-0405.

Waheed, S., 2009. Does rural micro credit improve well-being of borrowers in the Punjab (Pakistan)? Pakistan Economic and Social Review, 47(1): 31-47.

Views and opinions expressed in this article are the views and opinions of the author(s), Journal of Social Economics Research shall not be responsible or answerable for any loss, damage or liability etc. caused in relation to/arising out of the use of the content.