This study attempted to identify adoption status, factors affecting the adoption decision and intensity, and identify major constraints of beekeepers for modern beehive adoption. Agriculture is a backbone of country economy. Beekeeping is one of an agricultural subsector which is a sustainable and low-investment strategy for poverty reduction. Both qualitative and quantitative data collected from a sample of 180 beekeepers which collected from three districts of West Hararghe zone and analyzed using STATA software. Heckman two-stage model was employed for the analyses. In study area less than half of the beekeepers were adopters of modern beehive technology. Heckman two-stage model of first-stage results revealed that households’ decision to adopt modern beehive were influenced by factors such as age of household head, education level, livestock owned (tlu) and number of extension contact. Furthermore, the second-stage results indicated that intensity of modern beehive adoption of households’ was influenced by factors such as distance from FTC, access to accessory, livestock owned (tlu), access to training and number of extension contact. From policy perspective improving distribution of modern beehive with full package; encourage extension service, and focus on the deliverance of training are crucial for the adoption of beekeeping technologies and increasing honey production.
Published in | Science, Technology & Public Policy (Volume 8, Issue 2) |
DOI | 10.11648/j.stpp.20240802.12 |
Page(s) | 38-48 |
Creative Commons |
This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited. |
Copyright |
Copyright © The Author(s), 2024. Published by Science Publishing Group |
Adoption, Beekeeping, Decision, Heckman Two-Stage Model, Modern Beehive
Kebeles | Households of districts | Sample taken | |
---|---|---|---|
Frequency | Percent | ||
Gemechis | 43,924 | 73 | 40.56 |
Oda Bultum | 43,840 | 54 | 30.00 |
Tulo | 26,506 | 53 | 29.44 |
Total | 114,270 | 180 | 100 |
Variables | Measurement | Expected sign | |
---|---|---|---|
Decision | Intensity | ||
Dependent variable | |||
Adoption decision | Dummy | ||
Proportion of modern beehive | Continuous | ||
Explanatory variables | |||
Age of household head (years) | Continuous | + | + |
Education level | Continuous | + | + |
Land holding size (timad) | Continuous | + | |
Livestock owned (tlu) | Continuous | + | + |
Household size (numbers) | Continuous | + | |
Extension contact (Frequency) | Continuous | + | + |
Participation on demonstration/ field days | Dummy | + | |
Distance from FTC (Minutes) | Continuous | - | - |
Access to credit | Dummy | + | + |
Access to training | Dummy | + | + |
Land allocated for bee forage (timad) | Continuous | + | |
Beekeeping experience (years) | Continuous | + | + |
Access to accessory | Dummy | + | |
Supplementary feed | Dummy | + | |
Sex | Dummy | + | + |
Membership for beekeeping association | Dummy | + |
District | Adopters | Non adopters | Total (in frequency) | ||
---|---|---|---|---|---|
Frequency | % | Frequency | % | ||
Gemechis | 22 | 30.14 | 51 | 69.86 | 73 |
Oda Bultum | 17 | 31.48 | 37 | 68.52 | 54 |
Tulo | 13 | 24.53 | 40 | 75.47 | 53 |
Total | 52 | 128 | 180 |
Variable | Adopters (N=52) | Non-adopters (N=128) | Total Mean | t-test | ||
---|---|---|---|---|---|---|
Mean | St. dev | Mean | St. dev | |||
Household size (numbers) | 5.37 | 2.57 | 5.29 | 2.55 | 5.3 | -.182 |
Age of households (year) | 40.08 | 12.10 | 42.55 | 14.41 | 41.8 | 1.070 |
Education level (Grade) | 4.9 | 4.05 | 3.56 | 3.77 | 4 | -2.176** |
Livestock owned (TLU) | 3.45 | 2.09 | 2.44 | 1.76 | 2.74 | - 3.296*** |
Land allocated for bee forage (timad) | .03 | .14 | .01 | .06 | .02 | -1.393 |
Distance to FTC (minute) | 17.51 | 16.09 | 25.62 | 25.44 | 23.4 | 2.129** |
Beekeeping experience (years) | 10.38 | 9.74 | 9.26 | 8. 64 | 9.6 | -.764 |
Land owned (timad) | 4.21 | 3.18 | 3.52 | 2.07 | 2.5 | -1.717* |
Frequency of extension contact (numbers) | 1.71 | 2.30 | .38 | 1.01 | .8 | -5.417*** |
Variables | Characteristic | Adopters (%) | Non-adopters (%) | Overall (%) | Pearson chi2 |
---|---|---|---|---|---|
Sex | Male | 76.92 | 67.97 | 70.56 | 1.427 |
Female | 23.08 | 32.03 | 29.44 | ||
Membership for beekeeping association | Yes | 17.31 | 1.56 | 6.11 | 15.977*** |
No | 82.69 | 98.44 | 93.89 | ||
Access to accessory | Yes | 26.92 | 4.69 | 11.11 | 18.511*** |
No | 73.08 | 95.31 | 88.89 | ||
Supplementary feed | Yes | 53.85 | 47.66 | 49.44 | 0.567 |
No | 46.15 | 52.34 | 50.56 | ||
Participation on demonstration | Yes | 21.15 | 7.81 | 11.67 | 6.387** |
No | 78.85 | 92.19 | 88.33 | ||
Access to credit | Yes | 1.92 | 3.13 | 2.78 | 0.198 |
No | 98.08 | 96.88 | 97.22 | ||
Access to training | Yes | 30.77 | 10.16 | 16.11 | 11.625*** |
No | 69.23 | 89.84 | 83.89 |
Adoption decision | Adoption intensity | |||||||
---|---|---|---|---|---|---|---|---|
Variables | Coef. | SE | t-value | dy/dx | Variables | Coef. | SE | t-value |
Sex of household head | .140 | .089 | 1.57 | .1397 | Sex of household head | .088 | .282 | 0.31 |
Age of household head | .009** | .004 | 2.22 | .0093 | Age of household head | -.015 | .012 | -1.25 |
Education level | .026*** | .008 | 3.09 | .0263 | Education level | .055 | .034 | 1.61 |
Distance from FTC | -.003 | .003 | -0.95 | -.0026 | Distance from FTC | -.022** | .009 | -2.58 |
Beekeeping experience | -.006 | .006 | -0.96 | -.0056 | Household size | .051 | .049 | 1.04 |
Livestock owned (tlu) | .046*** | .017 | 2.65 | .0461 | Beekeeping experience | .022 | .016 | 1.35 |
Land owned | .007 | .010 | 0.70 | .0070 | Land allocated for bee forage | 1.204 | 2.087 | 0.58 |
Number of extension contact | .041** | .020 | 2.07 | .0411 | Livestock owned (tlu) | .146** | .063 | 2.33 |
Access to training | .106 | .102 | 1.03 | .1057 | Access to accessory | 1.054*** | .399 | 2.64 |
Access to credit | -.085 | .236 | -0.36 | -.0855 | Access to training | .537* | .312 | 1.72 |
Membership for beekeeping association | .071 | .083 | 0.85 | .0708 | Access to credit | -.522 | .727 | -0.72 |
Participation on demonstration | -.025 | .086 | -0.29 | -.0246 | Supplementary feed | -.112 | .239 | -0.47 |
Number of extension contact | .236*** | .089 | 2.67 | |||||
Constant | -1.048* | .615 | -1.70 | |||||
Number of obs | 180 | Selected | 52 | Non-selected | 128 | |||
Lambda | .2919 (.1008) P>|z|=0.004 | Rho | 1.000 | |||||
Wald χ2 (12) | 174.47*** | Sigma | .2919 |
No | Problems | Frequency | Percent | Rank |
---|---|---|---|---|
1 | Chemical sprayed | 7 | 8.75 | 3 |
2 | Lack of beehive accessories | 32 | 40 | 1 |
3 | Unavailability of modern beehive on time | 3 | 3.75 | 7 |
4 | Negative perception towards modern beehive | 6 | 7.5 | 5 |
5 | Bee enemies | 6 | 7.5 | 5 |
6 | Lack skill and experience on modern beehive | 7 | 8.75 | 3 |
7 | Expensiveness of hive and bee wax | 16 | 20 | 2 |
8 | Labor intensive for management | 3 | 3.75 | 7 |
ATI | Agricultural Transformation Institute |
FTC | Farmers Training Center |
GDP | Gross Domestic Product |
GOs | Governmental Organizations |
HABP | Household Asset Building Programme |
m.a.s.l. | Meter Above Sea Level |
MSEs | Micro and Small Enterprises |
NGOs | Non-Governmental Organizations |
tlu | tropical Livestock Unit |
VIF | Variance Inflation Factor |
[1] | Adino Andaregie & Tessema Astatkie. 2022. Determinants of technology adoption by micro and small enterprises in Awi zone, Northwest Ethiopia. AJSTID; 14(4): 997–1006. |
[2] | Amsalu Dachito and Alebachew Angelo. 2021. Farmers’ technology adoption decision and use intensity in the agricultural sector: Case of Masha Woreda (Double Hurdle Model). JPPDPD, 9(1): 51- 60. |
[3] | Asfaw Albore, Dessalegn Anshiso and Getachew Abraham. 2019. Adoption and intensity of adoption of beekeeping technology by farmers: The case of Sheko Woreda of Bench-Maji Zone, South West Ethiopia. UJE; 9(3): 103-111. |
[4] | ATI (Agricultural Transformation Inistitute). 2022. Annual Report. |
[5] | Bacha Gebissa, Anteneh Temesgen and Seid Hassen. 2020. Determinants of Modern Beehive technology adoption by smallholder farmers: The Case of Jimma Genati district, Horro Guduru Wollega Zone, Oromia Regional State of Ethiopia. WJAS; 16 (3): 195-199. |
[6] | Basuma Rasa. 2019. Profitability Analysis and Adoption of Improved Box Hive Technology by Small holder Beekeepers: The Case of Bule Hora Woreda, West Guji Zone of Oromia Regional State, Ethiopia. IJHAF; 3(6): 346-357. |
[7] | Benyam T., Yaregal T., Wondimu W., Mekuanint B. and Zelalem A. 2021. Factors influencing organic honey production level and marketing: evidence from southwest Ethiopia. Heliyon, 7: 1-12. |
[8] | Bunde, A. O. and Kibet, K. 2016. Socio-Economic Factors Influencing Adoption of Modern Bee Keeping Technologies in Baringo County, Kenya; IJSR; 5(6): 960-969. |
[9] | CSA (Central Statistical Agency). 2021. Agricultural Sample Survey 2020/21: Report on Land Utilization (private peasant holdings) Volume II. Addis Ababa, Ethiopia. |
[10] | CSA. 2021b. Agricultural Sample Survey 2020/21: Report on Crop and Livestock Product Utilization (Private peasant holdings, meher season), Volume II. Addis Ababa, Ethiopia. |
[11] | CSA. 2022. Agricultural Sample Survey 2021/22: Volume II Report on Livestock and Livestock Characteristics (Private Peasant Holdings) Statistical Bulletin 594. |
[12] | Elias Bojago. 2022. Adoption of modern hive beekeeping technology: Evidence from Ethiopia. |
[13] | Elsheikh, S. E., Hashim, A. A., Faki, H. H. and Fageeri, E. A. 2018. Heckman Model for identifying the probability of adoption of improved varieties of sorghum, millet, groundnut and sesame Innorth Kordofan State, Sudan. JNRES. |
[14] | GAO (Gemechis Agricultural Office). 2021. Annual Report of 2020 of Gemechis District Office of Agriculture. Gemechis district, West Hararghe Zone. |
[15] | Heckman, J. J., 1979. Sample selection bias as a specification error; Econometrical, 47: 153-159. |
[16] | Jima Degaga, Gosa Alemu and Birhanu Angasu. 2020. Factors affecting adoption of improved haricot bean (Phaseolus Vulagris L) technology in West Hararghe zone of Oromia region, Ethiopia: A Heckman two-step approach. TA; 97(4): 253-267. |
[17] | Kansiime, M. K., Wambugu1, S. K., and Shisanya, C. A. 2022. Determinants of farmers’ decisions to adopt adaptation technologies in Eastern Uganda; JESD; 5(3): 189- 199. |
[18] | Kassa Tarekegn & Assefa Ayele. 2020. Impact of improved beehives technology adoption on honey production efficiency: empirical evidence from Southern Ethiopia; AFS; 9(7): 1-13. |
[19] | Kothari, C. R. 2004. Research Methodology Methods and Techniques, 2nd ed., New Delhi: New Age International Publishers. |
[20] | Malede Birhan, Selomon Sahlu and Zebene Getiye. 2015. Assessment of Challenges and Opportunities of Bee Keeping in and around Gondar. AJE; 8 (3): 127-131. |
[21] | Meskerem Bogale, J. M. Sasikumar, Meseret C. Egigu. 2023. An ethnomedicinal study in tulo district, west hararghe zone, oromia region, Ethiopia. Heliyon: 1-15. |
[22] | Negash Bekena and Greiling, J. 2017. Quality Focused Apiculture Sector Value Chain Development in Ethiopia. JAST; 7: 107-116. |
[23] | OBAO (Oda Bultum District Agricultural Office), 2021. Annual Report of 2020 of Oda Bultum District Office of Agriculture. Oda Bultum district, West Hararghe Zone. |
[24] | Sheleme Refera. 2017. Assessment of Factors Affecting Adoption of Modern Beehive in East Wolega Zone, Western Oromia. IJERT; 6(1): 85-91. |
[25] | Tadele Adisu. 2016. Factors Affecting Adoption of Modern Beehive in Saese Tsaeda District of Tigray Ethiopia. JETP; 6(2): 29-36. |
[26] | TAO (Tulo District Agricultural Office), 2021. Annual Report of 2020 of Tulo District Office of Agriculture. Tulo district, West Hararghe Zone. |
[27] | Verkaart, S. 2018. Poor farmers Agricultural innovation and poverty reduction in Ethiopia and Kenya. PhD thesis, Wageningen University, Wageningen, Netherland. |
APA Style
Angasu, B., Alemu, G., Sime, N. (2024). Factors Affecting Adoption of Improved Modern Beehive Technology in West Hararghe Zone, Oromia National Regional State, Ethiopia. Science, Technology & Public Policy, 8(2), 38-48. https://doi.org/10.11648/j.stpp.20240802.12
ACS Style
Angasu, B.; Alemu, G.; Sime, N. Factors Affecting Adoption of Improved Modern Beehive Technology in West Hararghe Zone, Oromia National Regional State, Ethiopia. Sci. Technol. Public Policy 2024, 8(2), 38-48. doi: 10.11648/j.stpp.20240802.12
AMA Style
Angasu B, Alemu G, Sime N. Factors Affecting Adoption of Improved Modern Beehive Technology in West Hararghe Zone, Oromia National Regional State, Ethiopia. Sci Technol Public Policy. 2024;8(2):38-48. doi: 10.11648/j.stpp.20240802.12
@article{10.11648/j.stpp.20240802.12, author = {Birhanu Angasu and Gosa Alemu and Nimona Sime}, title = {Factors Affecting Adoption of Improved Modern Beehive Technology in West Hararghe Zone, Oromia National Regional State, Ethiopia }, journal = {Science, Technology & Public Policy}, volume = {8}, number = {2}, pages = {38-48}, doi = {10.11648/j.stpp.20240802.12}, url = {https://doi.org/10.11648/j.stpp.20240802.12}, eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.stpp.20240802.12}, abstract = {This study attempted to identify adoption status, factors affecting the adoption decision and intensity, and identify major constraints of beekeepers for modern beehive adoption. Agriculture is a backbone of country economy. Beekeeping is one of an agricultural subsector which is a sustainable and low-investment strategy for poverty reduction. Both qualitative and quantitative data collected from a sample of 180 beekeepers which collected from three districts of West Hararghe zone and analyzed using STATA software. Heckman two-stage model was employed for the analyses. In study area less than half of the beekeepers were adopters of modern beehive technology. Heckman two-stage model of first-stage results revealed that households’ decision to adopt modern beehive were influenced by factors such as age of household head, education level, livestock owned (tlu) and number of extension contact. Furthermore, the second-stage results indicated that intensity of modern beehive adoption of households’ was influenced by factors such as distance from FTC, access to accessory, livestock owned (tlu), access to training and number of extension contact. From policy perspective improving distribution of modern beehive with full package; encourage extension service, and focus on the deliverance of training are crucial for the adoption of beekeeping technologies and increasing honey production. }, year = {2024} }
TY - JOUR T1 - Factors Affecting Adoption of Improved Modern Beehive Technology in West Hararghe Zone, Oromia National Regional State, Ethiopia AU - Birhanu Angasu AU - Gosa Alemu AU - Nimona Sime Y1 - 2024/08/30 PY - 2024 N1 - https://doi.org/10.11648/j.stpp.20240802.12 DO - 10.11648/j.stpp.20240802.12 T2 - Science, Technology & Public Policy JF - Science, Technology & Public Policy JO - Science, Technology & Public Policy SP - 38 EP - 48 PB - Science Publishing Group SN - 2640-4621 UR - https://doi.org/10.11648/j.stpp.20240802.12 AB - This study attempted to identify adoption status, factors affecting the adoption decision and intensity, and identify major constraints of beekeepers for modern beehive adoption. Agriculture is a backbone of country economy. Beekeeping is one of an agricultural subsector which is a sustainable and low-investment strategy for poverty reduction. Both qualitative and quantitative data collected from a sample of 180 beekeepers which collected from three districts of West Hararghe zone and analyzed using STATA software. Heckman two-stage model was employed for the analyses. In study area less than half of the beekeepers were adopters of modern beehive technology. Heckman two-stage model of first-stage results revealed that households’ decision to adopt modern beehive were influenced by factors such as age of household head, education level, livestock owned (tlu) and number of extension contact. Furthermore, the second-stage results indicated that intensity of modern beehive adoption of households’ was influenced by factors such as distance from FTC, access to accessory, livestock owned (tlu), access to training and number of extension contact. From policy perspective improving distribution of modern beehive with full package; encourage extension service, and focus on the deliverance of training are crucial for the adoption of beekeeping technologies and increasing honey production. VL - 8 IS - 2 ER -