Impact of crop insurance and crop loans on agricultural growth in Haryana: A factor analysis approach
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https://doi.org/10.58414/SCIENTIFICTEMPER.2024.15.1.39Keywords:
Crop Insurance, Crop Loan, Agricultural Growth, Factor AnalysisDimensions Badge
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This study aims to evaluate the impact of crop loans and crop insurance on the agricultural sector’s growth and development in Haryana, India. Through a quantitative analysis involving factor analysis, it investigates how these financial instruments influence agricultural productivity, sustainability, and farmers’ livelihoods. Data for the study was gathered through a structured questionnaire distributed to 846 farmers across various districts in Haryana. The survey included questions about the use and impact of crop loans and crop insurance and demographic information. Factor analysis was employed to identify and interpret the underlying factors influencing agricultural growth related to these financial mechanisms. The analysis revealed several key factors contributing to the agricultural sector’s growth in Haryana. These include the direct impacts of crop insurance and crop loans, governmental and economic influences, and the accessibility and awareness of these financial tools among farmers. The study found that crop loans and insurance significantly contribute to agricultural productivity and sustainability but also identified areas where improvements are needed, such as in policy implementation and farmer education. The research highlights the crucial role of crop loans and crop insurance in supporting agricultural growth in Haryana. However, it also points out the need for more tailored financial products and policies to better address the diverse needs of the farming community. The study provides valuable insights for policymakers, financial institutions, and agricultural stakeholders, suggesting a more integrated and farmer-centric approach in developing agricultural finance strategies.Abstract
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