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Research Article

Famers’ access to credit: Does collateral matter or cash flow matter?—Evidence from Sindh, Pakistan

ORCID Icon, , , ORCID Icon & | (Reviewing Editor)
Article: 1369383 | Received 16 May 2017, Accepted 15 Aug 2017, Published online: 01 Sep 2017

Abstract

Credit is highly demanded in different parts of the world, mainly for capital requirement to improve land, purchase of main agricultural inputs including fertilizers, seeds, pesticides, and purchase of farm machinery. The purpose of this study was to examine the farmers’ access to credit: does collateral matter or cash flow matter?—evidence from Sindh province of Pakistan. The random sampling technique was used to collected data from 300 rural households through a face-to-face interview. To find the important factors affecting access to credit in Sindh province of Pakistan, we performed descriptive statistics and probit regression model. The results of probit regression model showed that gender, household size, educational level, farming experience, farm size, income, and availability of collateral have positive effect on farmers’ access to credit, while age has a negative and statistically insignificant effect on the farmers’ access to credit. Therefore, this study recommended that institutional sources of credit (such as the ZTBL and other Commercial Banks) should improve their loaning schemes to better suit the diversified needs of small farmers.

Public Interest Statement

The main objective of this study is to examine the determinants of farmers’ access to credit, and the effects of access to credit on household behavior and welfare in Sindh province of Pakistan. The random sampling technique was used to collected data from 300 farmers through a face-to-face interview. The collected data were analyzed through the probit regression model. The results of our study showed that gender, household size, education, farming experience, farm size, income, and collateral have positive effect on farmers’ access to credit, while age has a negative and statistically insignificant effect on the farmers’ access to credit. This is the first study to examine the determinants of farmers’ access to credit, and the effects of access to credit on household behavior and welfare in Sindh province of Pakistan. This paper will be an important addition to the literature regarding access to credit studies.

1. Introduction

It’s very critical for smallholders to access credit in developing countries of the world. This is all due to total production of farmers and improvement in agricultural production per unit input. Credit is a very important factor in different aspect of farming maneuver. Credit is highly demanded in different parts of the world, mainly for capital requirement to improve land, purchase machinery, seeds, breeding stocks, and fertilizers as well as labor payment of wages. Agricultural credit can be defined into institutional and non-institutional sources; including cooperative societies, commercial, and development banks. Sources of non-institutional credit cannot contribute for agricultural development (Olomola, Citation1999).

Blancard, Boussemart, Briec, and Kerstens (Citation2006) studied the conceptual frame work of credit availability can determine through different factors, that farm has various techniques to access financial resources. Through vertical integration agriculture sector is channeled to financial resources. The recent work on vertical integration and contracting shows an important source of credit to farms in the CEE (Dries & Swinnen, Citation2004; Gorton & White, Citation2007). Government in several countries intercede in agricultural markets with development support polices. Even though support of agricultural credit may not be directly intended to improve the access of credit. Furthermore, government interventions and rural financial structures may lead to input specific changes. For instance, subsidy of agriculture increases short-run credit which is needed to finance variable rather than long-run credit (Ciaian & Swinnen, Citation2009). In the occurrence of expensive contract implementation and unequal information, the collateral may occur an important way to farms to access credit (Bester, Citation1985; Ghosh, Mookherjee, & Ray, Citation2000).

Diagne and Zeller (Citation2001) research shows that the difference between credit market and access to credit. They examined that households of farm have access to credit but do not take part in credit market due to risk on return of loan. Their study also revealed that formal and informal loans in the agriculture. The result indicates that formal lenders provide a greater percentage of loans to the farmers as compare to informal lenders.

In rural areas of Pakistan, smallholders obtain credit from formal and informal sources. Formal sources like ZTBL, Commercial Banks, Microcredit Institutions, and NGOs, while informal sources include relatives, friends, commission agents, input suppliers, and shopkeepers (Khandker & Faruqee, Citation2003). Among financial sources, formal credit sources are more common in rural areas of Pakistan. However, informal credit sources plays an important role in smallholders’ access to credit, particularly among those who do not have access to credit from formal credit sources. Furthermore, most of smallholders are borrowing credit from relatives, input suppliers, and fellow farmers. Large farmers have more access to credit from institutional sources compared to smallholders. The main reason for this is their possession of more collateral, high income level and social status (Chandio, Magsi, Rehman, & Sahito, Citation2017; Hussain & Thapa, Citation2012). Amjad and Hasnu (Citation2007) reported that smallholders are more dependent on non-institutional sources of credit compared to institutional sources, as 90% of smallholders acquired credit from non-institutional sources. However, non-institutional sources of credit cannot fulfill farmers’ demand for credit due to associated problems like as need for collateral and production guarantees (Basu, Citation1997). In Pakistan, the government has implemented a policy to provide agricultural credit to the smallholders for increasing agriculture productivity and food security. The policy was partially successful in increasing the proportion of rural household access to agricultural credit but it was less successful in fulfilling smallholders demand for agricultural credit (Hussain & Thapa, Citation2012). This resulted in a huge gap between the smallholders demand and the supply of agricultural credit. In rural areas, smallholders are facing various problems such as complicated and lengthy procedure of documentations, high interest rate, short-term nature of the credit, and the alarming problem is mortgage for security which is demanded by banks (Abdullah, Khan, Jebran, & Ali, Citation2015; Hussain & Thapa, Citation2012; Tagar & Panhwar, Citation2010). Thus, previous studies on institutional credit show that smallholders have limited access to institutional credit primarily due to institutional constraints (Aleem, Citation1990; Jabbar, Ehui, & Von Kaufmann, Citation2002; World Bank, Citation2008). However, large farmers have better access to institutional credit as they are able to influence financial sources by virtue of their position of high-value collateral such as their high landholding size (Ladman & Tinnermeir, Citation1981). Furthermore, many researchers have studied in different regions of Punjab and KPK provinces of Pakistan like as (Abedullah, Mahmood, Khalid, & Kouser, Citation2009; Ahmad, Jan, Ullah, & Pervez, Citation2015; Bashir & Mehmood, Citation2010; Chandio, Jiang, Joyo, & Rehman, Citation2016; Hussain & Thapa, Citation2012; Iqbal, Munir, & Abbas, Citation2003; Jan & Khan, Citation2012; Nouman, Siddiqi, Asim, & Hussain, Citation2013; Saqib, Ahmad, Panezai, & Khattak, Citation2016) on access to institutional credit and impact of institutional credit on field crops production like as wheat, rice, sugarcane, and on livestock. But, this study differs from the previous researches. This study attempts to investigate famers’ access to credit: does collateral matter or cash flow matter?—evidence from Sindh province of Pakistan as a case study using probit regression model.

2. Farmers endowment and the mortgaged property

Land is the most valuable asset of rural families in Sindh province of Pakistan. The survival of farmers is largely dependent on land, and land ownership is very limited. However, land is the most important form of easy access to collateral for loans and farmers are not likely to evasion easily. As large farmers has higher landholdings and also have better access to formal credit. Furthermore, larger farmers in rural societies have more social status and have a good relationship.

In Pakistan, majority of the households in rural areas are smallholders. The institutional credit sources provides agricultural credit to the rural households with the primarily condition to repay the amount along with the interest rate on the total amount borrowed. The borrower is required to repay as he provide personal guarantors or guarantee in the form of landholding size collateral to the institutional credit sources. The ZTBL and Commercial Banks relies on personal commitments as shown by Bashir and Azeem (Citation2008), Hussain and Thapa (Citation2012) who found that most of smallholders provide personal collateral or personal guarantees to the banks in order to agricultural credit access. However, there are three types of farmers living in the rural areas of Sindh province of Pakistan with land size of 12.5 acres like self-sufficient farmers, economic holding farmers have 12.6–50 acres and above economic holding farmers have 50 acres, respectively (SBP, 2003). Collateral is the formal sources of security which is required for the loan and it is rarely required by informal sources of credit. Inadequate or lack of collateral and size, smallholders’ uneasy access to formal credit due to small landholdings and low social status. As a result, most of the smallholders borrowed credit from informal sources due to following reasons.

No requirement of Agricultural Pass Book.

No requirement of other guarantees.

No any lengthy documentation procedure for borrowing credit.

Timely availability and easy accessibility of credit.

Therefore, in rural areas of Sindh province of Pakistan non-institutional sources of credit have significant role in obtaining credit for smallholders.

3. Effects of collateral and income on access to credit

Collateral is required for all borrowers by institutional sources of credit and default is that; it can be used to offset the loan if the borrower fails to pay the principal amount of loan and interest satisfactorily under the terms of the loan agreement. The availability of collateral is a very important factor that affects the formal credit of the farmers. It has a positive and significant impact on access to formal credit. There are several types of collaterals are required by institutional sources for agricultural credit, such as land, gold, income, wage accounts, and livestock. These types of collaterals are required by the banks to ensure repayment of agricultural credits in rural areas of Sindh province of Pakistan as given in (Figure ). Safe and secure land is the preferred form of collateral for ZTBL and also other commercial banks in Sindh, Pakistan. If smallholders have landownership certificate (Agricultural Pass Book), they can use landownership certificate for collateral and they can easily access to formal credit. On the other hand, high farm income and off-farm income are important factors that affect the formal credit of the farmers. Recent empirical findings also shows that income has positively influenced access to formal credit (Denkyirah, Adu, Aziz, Denkyirah, & Okoffo, Citation2016; Duniya & Adinah, Citation2015). Farmers with high farm income have more probability of access to formal and informal credits and have better abilities of repaying loans given to them by financial sources.

Figure 1. Theoretical analysis framework.

Figure 1. Theoretical analysis framework.

4. Materials and methods

4.1. Study area

The present study is conducted in Sindh province of Pakistan. Sindh is the second largest province of Pakistan on the basis of its contribution to agriculture production of the country. This province has geographical area of 140,900 square kilometers. It is estimated that 62% of geographical area of Sindh province is arid, comprising Thar, Nara, and Kohistan, beside a large area under coastal belt (350 km) and Katcha area. Furthermore, total reported area of Sindh province is 14.09 million hectares. Cultivated area is 5.08 million hectares and uncultivated area is about 6.80 million hectares as given in Table (Government of Pakistan [GOP], Citation2011).

Table 1. The land utilization statistics in Sindh province of Pakistan

Sindh province is one of the major agricultural provinces in Pakistan, almost 14 million people are living in rural areas and engaged in agricultural farming, forestry, animal husbandry, and fish farming activities. The climate condition of Sindh is tropical and sub-tropical, during the tropical the month of May–August the temperature may reach up to more than 45°C, while in the cold the month of December and January decreases to 2°C. The mostly rainfall occur in the month of July and August. According to soil and climatic condition, this province consists of three crop zones like as upper, middle, and lower parts of Sindh. The upper part of Sindh is the best for different growing crops like as rice as main crop, sugarcane, matter, rape, mustard, and sunflower. Whereas, the middle part of Sindh is suitable for growing different crops such as cotton, wheat, banana, and sugarcane. While lower part of Sindh is suitable for different cultivated crops as cotton, wheat, tomato, sunflower, soybean, and groundnut.

4.2. Sampling and data collection

For the present study, primary data have been collected through a survey and administering set of interview schedule to farmers in rural areas of Sindh province. A multi-stage random sampling technique has been applied to collect the data. At first stage, five districts, i.e. Shikarpur and Sukkur from upper region, Naushahro Feroze and Shaheed Benazir Abad, previously known as Nawabshah from middle region, and Badin from lower region have been selected from Sindh province of Pakistan as shown in (Figure ). At second stage, six villages from each district have been randomly selected and from each village 10 farmers have been personally interviewed. Thus, the total number of respondents came out to be 300. At finally stage primary data have been collected through a well-designed detailed questionnaire in order to collect socioeconomic characteristics information of the farmers (age, gender, education, farming experience, landholding size, household size, off-farm income, and availability of collateral. The collected primary data have been analyzed with the help of Stata software.

Figure 2. Map of study area.

Figure 2. Map of study area.

4.3. Analytical techniques

Accessibility can be defined by the utility maximization theory. It is expected that a rural household will desire to access credit if the utility derived from credit accessibility levels highest compared to the utility derived from not accessing the credit. In this study, accessibility of credit is assumed to be binary choice such that a rural household is expected to either borrow credit or not. A farmer is therefore expected to have access to credit for the highest marginal benefits. Let the state of accessibility be represented by Pr, where Pr = 0 for no access and Pr = 1 for access. If it is assumed that the error term follows a normal distribution, then the estimation can be achieved using a probit distribution model as described by Gujarati (Citation2009). Specifically, the model takes the implicit form as follows:

(1) y=fi=1nβiXi(1)

where y is the probability of access/no-access credit and Xi refers to all explanatory variables.

(2) Pry=1|Xi=Φβ0+i=18βiXi+εi(2)

If we assume Φ is following the standard normal CDF, Equation (1) becomes explicitly written as a probit model:

(3) PrCRA=1|X=Φβ0+β1X1+β2X2+β3X3+β4X4+β5X5+β6X6+β7X7+β8X8+εi(3)

where CRA (Credit access) is a dichotomous dependent variable which is refers to 1 for access to credit and 0 otherwise. That is

CRA=1CRA>0=if1CRA>00otherwise

X1=Age\;of\;the\;farmers(years)

X2=Gender(dummy1=male,0=female)

X3=Educational\;level(years)

X4=Household size(numbers)

X5=Farming\;experience(years)

X6=Farm\;size(acres)

X7=Off-farm\;income(PKR)

X8=collateral\;availability(dummy1if\;available,0otherwise)

β0,β1,β2,β3,β4,β5,β6,β7,β8=Parameters\;to\;be\;estimated.

εi=Stochastic\;error\;term

5. Results and discussion

The aim of this research is to investigate famers’ access to credit: Does collateral matter or cash flow matter?—evidence from Sindh province of Pakistan as a case study. Quantitative data were collected during the period from November 2016 to December 2016 from 300 farmers. The information collected include socioeconomic characteristics of the farmers. Descriptive statistics and probit regression were used to examine the determinants of farmers’ access to credit, and the effects of access to credit on household behavior and welfare in Sindh province of Pakistan.

5.1. Characteristics of the farmers

Table represents the several socioeconomic characteristics of the farmers like gender is captured as a dummy (i.e. 1 if male, 0 if female), age (in years), education level (in years), farming experience (in years), farm size (in acre), household size (in numbers), collateral security captured as a dummy (i.e. 1 if available, 0 otherwise), and off-farm income is measured (in PKR) are summarized in Table . It could be viewed from the Table that a mean gender of the respondents was 0.793 with standard deviation of 0.406 of the population are males. Similarly, the mean value of age is 41.16 years with standard deviation of 11.47, which means majority of the farmers in the study area are young and strong with adequate energy to tackle the challenges of farming activities. Whereas, the statistics indicate of education level of the respondents’ a mean value of 7.450 with a standard deviation of 4.425, this means that high level of formal education achievement may increase to well assessment and management of funds, better farming decision, and efficient allocation of major agricultural inputs cost. Furthermore, finding on socioeconomic factors shows that the mean value of farming experience is 26.58 with a standard deviation of 9.539, this means farmers with more years of farming experience have better knowledge to adopt new farm technology to enhance the efficiency of their crops production. The mean household size in the study area is investigated about 8.853 with a standard deviation of 2.720, which implies that an increase in the size of the family incentivizes the household to increase its agricultural productivity. Similarly, the average farm size is investigated about 12.81acres with a standard deviation of 14.40, this means farm size is an important factor in accessing formal and informal credit and it is a symbol of high social status in the rural society. The income level of off-farm is with a mean value of Rs. 23,283.33 with a standard deviation of 4.425 which is low indicates that the rural households were likely to borrow credit form institutional sources or non-institutional sources to carry most of the farming activities. In addition, a mean value of collateral security variable is 0.677 with a standard deviation of 0.469, which means more collateral security available farmers would access to credit.

Table 2. Mean socioeconomic characteristics of the respondents

5.2. Correlation matrix

To examine the association among the variables, correlation matrix was used. The correlation matrix results of the constructed variables are presented in Table . Results show that access to credit has a positive and significant relationship with household size, farming experience, income level, and availability of collateral. Further, a positive association was found on age, gender, education, and landholding size but insignificant.

Table 3. Estimated correlation matrix results

5.3. Determinants of farmer’s access to credit in Sindh province of Pakistan

The estimated results of probit regression model are presented in Table . The likelihood ratio test with the chi-square statistic indicates significant value of −74.796 and chi-square value of 50.37 implying that the estimated model is significant. Hence, the probit regression model is considered to be a good fit and equally consistent with theory. Also the value of fit measure, pseudo-R2 (0.3079) showed a very satisfactory fit. It is clear that the explanatory power of the probit model is satisfactory and the model can be applied to describe the probability of accessing to credit by farmers in rural areas of Sindh, Pakistan. Based on the estimated results, seven explanatory variables are found to have a positive effect on farmers’ access to formal credit including gender (+), education (+), household size (+), farming experience (+), farm size (+), off-income (+), and (+) availability of collateral.

Table 4. Results of probit regression analysis

The coefficient of age is negative, this means when the age increases, access to credit decreases. The results of our study are consistent with the results of other studies (Anders, Citation2002; Kaino, Citation2005; Sebopetji & Belete, Citation2009; Winter-Nelson & Temu, Citation2005). They reported that the age has a negative effect on access to formal credit. Furthermore, the coefficient of education level is positive but statistically insignificant. This implies that farmers who have attained secondary education or less have more probability to access to credit from institutional sources than the uneducated households. The result of our study is consistent with the findings of Akram, Hussain, Sial, and Hussain (Citation2008), Amjad and Hasnu (Citation2007), Duniya and Adinah (Citation2015), Li, Gan, and Hu (Citation2011), Ibrahim and Aliero (Citation2012), Ugwumba and Omojola (Citation2013) who reported a positive association between access to credit and education level. Whereas, a significant and positive association is found between variable household size and households’ access to credit, indicating that larger households have higher demand for credit to increase agricultural productivity. This finding is similar with the findings of Vaessen (Citation2000) and Ho’s (Citation2004). They found that access to formal credit increases with household size. The significant positive sign on farming experience continuous variable indicates that a direct relationship exists between the farming experience and the credit demanded by the farmers. This implies that a unit increase in experience of farmers can increase the probability to have access to formal credit. This is similar to the results obtained by Okunade (Citation2007), Nouman et al. (Citation2013), Duniya and Adinah (Citation2015), Saqib et al. (Citation2016) that farming experience is a significant factor influencing farm management and decision-making. Similarly, we further found that landholding size has right positive relation with access to credit but variable is statistically insignificant. Hence, landholding size is an important factor in accessing credit from formal sources and it is a symbol of higher social status in the society of rural households which is also helps in getting credits from informal sources. In rural areas of Sindh province of Pakistan, most of smallholders had limited landholding size and those smallholders had limited access to institutional credits. The finding of this study for landholding size is consistent with findings of Akram et al. (Citation2008), Hussain and Thapa (Citation2012), Saqib et al. (Citation2016) who reported that small upper holders having farm size from 2.5 acres to 5.00 acres had above average access to credit from institutional sources, while the small landholder farmers had lower access to credit from institutional sources. Additionally, we further found that the estimated coefficient of income has a positive and significant influence on access to credit. The result implies that farmers with high income level have high probability of accessing credit from institutional sources. Furthermore, high income-level farmers may also be more confident in repaying credits if they acquiring from formal sources. Our finding regarding income level is in agreement with Duniya and Adinah (Citation2015), Ibrahim and Aliero (Citation2012), Li et al. (Citation2011), Saqib et al. (Citation2016). They have found significant and positive relationships between access to credit and income. Finally, the availability of collateral is an essential factor that affects the farmer’s access to formal credit. Safe and secure land is the preferred form of collateral for ZTBL and also commercial banks in Pakistan. This study found that the estimated coefficient of collateral security has a positive and significant effect on access to credit. Hence, the positive effect of collateral implies that the more collateral farmer have higher probability of accessing credit from institutional sources. The result of our study is consistent with the findings of Atieno (Citation2001), Hainz and Teksöz (Citation2006), Sanusi and Adedeji (Citation2010), Ibrahim and Aliero (Citation2012), Duniya and Adinah (Citation2015) they found a significant and positive relationship between access to credit and collateral.

5.4. Socioeconomic factors affecting on access to credit (marginal effects)

The accessibility of credit was to be influenced by a number of socioeconomic factors of the respondents. Table shows that an estimated marginal coefficient of household size, farming experience, income, and availability of collateral has a significant and positive influence on the accessibility of credit. These results imply that 1% increase in these variables the probability of access to credit will increase by 0.0089149, 0.0559083, 0.0740369, and 0.2665232%, respectively (Table ).

Table 5. Socioeconomic factors affecting on access to credit (marginal effects analysis)

6. Conclusions and policy recommendations

This study investigated the famers’ access to credit: does collateral matter or cash flow matter?—evidence from Sindh, Pakistan. Overall, our results suggest that smallholder farmers in Sindh province have limited access to formal credit, including the agricultural credits provided by ZTBL and other commercial banks. This study is based on probit model has established eight household-level factors important in influencing farmers’ likelihood to access credit, including age, gender, household size, educational level, farming experience, landholding size, collateral, and income. The estimated results of probit regression analysis showed that age negatively influenced farmers’ access to credit, while gender, household size, education, farming experience, landholding size, collateral, and income positively influenced farmers’ access to credit in the study area. In obtaining formal credit from formal sources in rural areas of Sindh province of Pakistan, still small farmers have low access to formal credit compared to large farmers due to lack of collateral, low income level, and their less landholding size. Thereby, only those farmers who have collateral, high income level, and large landholding size are capable of acquiring formal credit. Hence, to improve small farmers’ access to credit, this study recommended that the institutional sources of credit need to restructure their policies and financial mechanism that requires securities in the form (like personal security, standing crops) that smallholder farmers could easily access to formal credit. Furthermore, the cumbersome procedure of getting agricultural pass book from the department of revenue, due to which most of the smallholder farmers lose interest in applying for credit from formal sources, needs to be simplified.

Cover image

Source: Authors.

Acknowledgments

The authors are very grateful to ZaraiTaraqiati Bank Limited (ZTBL) and Khushhali Bank officials for their support during field visit and providing the needed research materials. Also, authors would like to express their thanks to the editor and two anonymous reviewers for their insight comments and suggestions that substantially enhanced the quality of the paper.

Additional information

Funding

Funding. The authors received no direct funding for this research.

Notes on contributors

Abbas Ali Chandio

Abbas Ali Chandio is the PhD research scholar in college of Economics, Sichuan Agricultural University, Chengdu, China. He won Sichuan Government Scholarship (SGS) 2014 sponsored by SAU. His major interests include Rural Finance, Agricultural Economics, Agricultural Development, Development Economics, Econometrics, Financial Economics, Microeconomics, Macroeconomics, Regional Economics, Sustainable Agriculture and Regional Rural Development. Due to his excellent research work, he has been awarded with Excellent International Students Award in 2017. He has good research publications in the world leading journals databases that having indexing of the Web of Science.

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