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World Journal of Agricultural Research. 2015, 3(6), 208-217
DOI: 10.12691/WJAR-3-6-5
Original Research

Fish Farming Land Allocation in Northern Part of Bangladesh: Exploring Causes across the Farm Sizes

Md. Salauddin Palash1, , Humayun Kabir2 and Siegfried Bauer1

1Institute of Project and Regional, Justus-Liebig University, Giessen-35390, Germany

2Department of Agricultural Economics, Bangladesh Agricultural University, Mymensingh-2202, Bangladesh

Pub. Date: December 10, 2015

Cite this paper

Md. Salauddin Palash, Humayun Kabir and Siegfried Bauer. Fish Farming Land Allocation in Northern Part of Bangladesh: Exploring Causes across the Farm Sizes. World Journal of Agricultural Research. 2015; 3(6):208-217. doi: 10.12691/WJAR-3-6-5

Abstract

The research was conducted to find out the decision-making quantitative and qualitative variables that devise the different types of farmers’ involvement in freshwater fish farming in Bangladesh. Combinations of the participatory, qualitative and quantitative methods were used for primary data collection. Researchers considered 29 explanatory variables under the category of economic, socio-economic, institution, ecology, and geography to find out the appropriate causes of increasing or decreasing the fish land ratio. Ten variables were selected for the regression model after applying two multi-collinearity detection methods. Regression model shows that five economic factors (Crop and fish labor requirement, availability of cereal food, least crop area and availability of feed), and one geographical factor (distance of extension office) have a significant effect on making the decision of fish land use. Among the significant factors, fish feed availability plays the vital role to make the decision of freshwater fish farming in Bangladesh.

Keywords

small farmer, freshwater fish farming, determinants, regression analysis, bangladesh

Copyright

Creative CommonsThis work is licensed under a Creative Commons Attribution 4.0 International License. To view a copy of this license, visit http://creativecommons.org/licenses/by/4.0/

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