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Technical Efficiency Performance among Micro Enterprises in Dibrugarh District (Assam): A Stochastic Frontier Analysis


Affiliations
1 Department of Economics, DHSK College, Dibrugarh 786001, Assam, India
2 Department of Mathematics, Dibrugarh University, Dibrugarh 786001, Assam, India
     

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This study analyses technical efficiency performance among micro enterprises in Dibrugarh; a developed and industrialised district in Assam using the Stochastic Production Frontier Model. It is based on cross sectional firm-level data collected through a field survey from 115 micro manufacturing enterprises. The results indicate the presence of a high degree of technical inefficiency in the production process. Output is more responsive to labour than capital, which points that higher productivity can be obtained by increasing labour and not by increasing mechanization. The enterprises are subject to decreasing returns to scale, suggesting that they are of supra-optimal size and need to adopt a policy of rational downsizing.

Further, an attempt has been made to identify firm-specific and entrepreneurial background variables responsible for inefficiency using Coelli’s Inefficiency Effects Model. It is found that skilled labour ratio, firm-age, gender and experience of the entrepreneur significantly affect technical efficiency in the firms. From policy perspective, the strong influence of skilled labour points to the needfor skill upgradation and training of the local labour force. The influence of age of firms is a pointer to the benefits of the principle of learning-by-doing and accumulated knowledge. Thus, along with the establishment of new enterprises, government support policies must focus on reorganization and rehabilitation of existing old firms. The empirical evidences also point to the need for industry–specific and gender-specific policy guidelines.


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  • Technical Efficiency Performance among Micro Enterprises in Dibrugarh District (Assam): A Stochastic Frontier Analysis

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Authors

Rubab Fatema Nomani
Department of Economics, DHSK College, Dibrugarh 786001, Assam, India
Tazid Ali
Department of Mathematics, Dibrugarh University, Dibrugarh 786001, Assam, India

Abstract


This study analyses technical efficiency performance among micro enterprises in Dibrugarh; a developed and industrialised district in Assam using the Stochastic Production Frontier Model. It is based on cross sectional firm-level data collected through a field survey from 115 micro manufacturing enterprises. The results indicate the presence of a high degree of technical inefficiency in the production process. Output is more responsive to labour than capital, which points that higher productivity can be obtained by increasing labour and not by increasing mechanization. The enterprises are subject to decreasing returns to scale, suggesting that they are of supra-optimal size and need to adopt a policy of rational downsizing.

Further, an attempt has been made to identify firm-specific and entrepreneurial background variables responsible for inefficiency using Coelli’s Inefficiency Effects Model. It is found that skilled labour ratio, firm-age, gender and experience of the entrepreneur significantly affect technical efficiency in the firms. From policy perspective, the strong influence of skilled labour points to the needfor skill upgradation and training of the local labour force. The influence of age of firms is a pointer to the benefits of the principle of learning-by-doing and accumulated knowledge. Thus, along with the establishment of new enterprises, government support policies must focus on reorganization and rehabilitation of existing old firms. The empirical evidences also point to the need for industry–specific and gender-specific policy guidelines.


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DOI: https://doi.org/10.21648/arthavij%2F2020%2Fv62%2Fi3%2F203583