IDN_2021_KUR_v01_M
Survey of Businesses Receiving The People's Business Credit 2021
Name | Country code |
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Indonesia | IDN |
In 2007, the Government of Indonesia launched the “People’s Business Loan” (Kredit Usaha Rakyat, KUR) program as a flagship public program to enhance MSMEs’ access to finance. Since its inception, KUR has grown into one of the world’s largest public support programs for MSMEs. This survey includes a nationally representative sample of 1,402 KUR borrowers who received micro or small KUR loans between December 2015 and March 2020. The survey covers basic business information, business practices, workers, revenue, financial history prior to receiving KUR for the first time, and financial history after receiving KUR for the first time. In addition, firms were asked one of two of the following modules: experiences with the KUR program or impact of COVID-19 on the business. The data was collected by phone in January and February 2021, and weighted stratified sampling was used to ensure a representative sample and enable subgroup analysis.
Sample survey data [ssd]
Business
2021-02-15
The Indonesia - KUR 2021 survey covered the following topics:
Nationally representative survey of KUR borrowers
Businesses who received KUR loans between December 2015 and March 2020.
Name | Affiliation |
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Coordinating Ministry for Economic Affairs | Republic of Indonesia |
Name | Role |
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Republic of Indonesia | Funding |
An administrative database (SIKP), which contains basic characteristics of all KUR borrowers since 2016, served as the sampling frame for the quantitative data collection. Weighted stratified random sampling was used to select the sample. Strata were based on four characteristics that may influence beneficiaries’ experiences with KUR and how KUR may change their business: gender of KUR recipient, size of KUR loan, financial institution that issued the KUR loan, and geographic region. Strata including less than 1% of KUR beneficiaries were oversampled in order to ensure that each subgroup of interest would have sufficient representation in the sample in order to draw precise estimates at the subgroup level.
Stratified sampling methodology was chosen because the team wanted to ensure that subgroup analysis was feasible across certain dimensions. Some of the subgroups of interest represent only a small portion of KUR borrowers, so a random sampling approach without using strata may not have provided a sufficient number of observations to draw any conclusions about some of these subgroups. Gender was included as a stratification variable to ensure that a gender-sensitive analysis was feasible. Female entrepreneurs in Indonesia face greater financing constraints than male entrepreneurs (World Bank 2023), so KUR may have particularly strong impacts for female entrepreneurs. Nevertheless, the market-based implementation of KUR may also limit the ability of KUR to reach female entrepreneurs, if it does not alleviate gendered constraints to accessing financing. Micro KUR loans and small KUR loans have different requirements and offer different sizes of subsidies to the KUR distributors. As such, it is critical to be able to analyze them separately. Because less than 10 percent of KUR loans are small KUR loans, stratification on this variable ensures that there is enough statistical power to draw conclusions about small KUR loans. One financial institution, BRI, issues the majority of KUR loans. Because KUR is implemented by different distributors and some aspects of implementation are left to the distributor’s discretion, it is important to understand whether the implementation of KUR looks different when issued by the dominant bank or when issued by other distributors. Finally, financing conditions and alternatives vary across geography. Because the environment may shift how important KUR is to MSMEs, it is important to be able to understand how trends vary across different regions. Some regions have less than 10 percent of KUR borrowers in them, so a simple random selection may not have produced enough observations in some regions to allow for analysis disaggregated by region.
Generally, strata including firms with KUR loans of more than 25 million and those outside of Jawa were over-sampled, while firms receiving loans of less than 25 million in Jawa were under-sampled to ensure the total sample size rested within budget and logistical constraints. Finally, an even number of firms were selected for the sample from each strata so that they can be split into halves, where one half would answer the modules in questionnaire A and the other half would answer modules in questionnaire B. This allows the design weights to remain constant for all variables in the survey and facilitates data analysis. The modules to be asked were randomly assigned and balanced across sampling strata to ensure all modules included nationally representative information. Due to the weighted sampling design, design weights are used in all descriptive analysis in this report, and once incorporating the design weights the analysis is representative of all KUR recipients since 2016.
The survey firm received a randomized order list of firms within each strata and were instructed to call respondents until reaching the quota per strata.
In practice, there were two extra interviews conducted, leading to a total number of interviews of 1,402 instead of the targeted 1,400 interviews. The design weights used in the analysis were adjusted to the actual number of interviews conducted in each strata.
Overall, 10,789 phone-calls were attempted. Of these calls, about 30 percent of the calls were not connected and classified as ‘voice mail’, 15 percent were notified that the number is inactive, and 13 percent were notified that the number is not registered. 28 percent of the overall phone-call attempts were connected, and 13 percent were successfully interviewed.
The dataset includes a sampling weight variable (wgt) that should be used if nationally representative statistics are desired.
Start | End |
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2021-01-15 | 2021-02-14 |
Name |
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Regional Economic Development Institute |
Quantitative data was collected from 1,402 KUR beneficiaries between January 15 and January 31, 2021. Due to the COVID-19 pandemic, all interviews were carried out over the phone. All firms were asked modules on basic business information (including sector of activity business ownership and management structure), business practices, workers, revenue, financial history prior to receiving KUR for the first time, and financial history after receiving KUR for the first time. In addition, firms were asked one of two of the following modules: impact of COVID-19 on the business (questionnaire A) or experiences with the KUR program (questionnaire B). These modules were not asked of all respondents due to concerns about survey length and respondent fatigue. On average, interviews using questionnaire A lasted approximately 40 minutes, while interviews using questionnaire B lasted approximately 38 minutes. Finally, detailed information on firms that had closed was also collected in cases where the business was no longer operational.
Confidentiality declaration text |
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All personally identifiable information has been removed from the datasets to respect the confidentiality of the participants. |
DDI_IDN_2021_KUR_v01_M_WB
Name | Affiliation | Role |
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Development Data Group | World Bank | Documentation of the DDI |
2024-08-12
Version 01 (August 2024)