Determinant of University Students’ Choices and Preferences of Agricultural Sub-Sector Engagement in Cameroon
Abstract
:1. Introduction
2. Theoretical Framework
3. Materials and Methods
3.1. Sampling Design and Nature of Data
3.2. Empirical Framework
3.3. Limitations of the Study
4. Results
4.1. Socio-Economic Characteristics of Students
4.2. SWOT Analysis of the Agricultural Sector in Cameroon
4.2.1. Strengths of the Agricultural Sector in Cameroon
- (1)
- Natural
- (2)
- Institutional
4.2.2. Weaknesses of the Agricultural Sector in Cameroon
- (1)
- Access to productive resources
- (2)
- Marketing
- (3)
- Public perception
- (4)
- Business/work environment
4.2.3. Opportunities in the Agricultural Sector in Cameroon
- (1)
- Multiple career options
- (2)
- Un(under)-exploited nodes on the value chain
4.2.4. Threats of the Agricultural Sector in Cameroon
- (1)
- Wide-ranging risks
- (2)
- Rising socio-political unrest
4.3. Maximum Likelihood Estimates of the Determinants of Choice of Agriculture as a University Major
4.4. Maximum Likelihood Estimates of the Determinants of Students’ Preferences of Agricultural Sub-Sector Engagement
4.4.1. Primary versus Secondary Sector Comparison
4.4.2. Primary versus Tertiary Sector Comparison
5. Discussion
5.1. Determinants of Choice of Agriculture as a University Major
5.2. Determinants of Preferences of Agricultural Sub-Sector Engagement
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Agricultural | Non-Agricultural | Total | |||
---|---|---|---|---|---|
Under-Graduate | Post-Graduate | Under-Graduate | Post-Graduate | ||
University of Dschang | 103 | 47 | 109 | 41 | 300 |
University of Buea | 109 | 16 | 106 | 19 | 250 |
TOTAL | 212 | 63 | 215 | 60 | 550 |
Socioeconomic Characteristics | BSc | MSc | PhD | |
---|---|---|---|---|
Sample Size (N) | 427 | 81 | 42 | |
Variable | Description of Response | Frequency (Percentage) | Frequency (Percentage) | Frequency (Percentage) |
Age | <20 | 129 (31.9) | 16 (20.8) | 17 (43.6) |
21–30 | 273 (67.6) | 58 (75.3) | 21 (53.8) | |
>30 | 2 (0.5) | 3 (3.9) | 1 (2.6) | |
% of male | Male | 269 (63.0) | 42 (51.9) | 27 (64.3) |
Discipline of study | Agriculture | 66 (83.5) | 66 (83.5) | 14 (33.3) |
Non-Agriculture | 13 (16.5) | 13 (16.5) | 28 (66.7) | |
Location of the childhood home | Urban | 367 (87.0) | 62 (78.5) | 36 (85.7) |
Rural | 55 (13.0) | 17 (21.5) | 6 (14.3) | |
Pre-university educational background | Pure Sciences | 271 (64.1) | 41 (51.9) | 16 (39.0) |
Others | 152 (35.9) | 38 (48.1) | 25 (61.0) | |
Religious background | Christian | 375 (88.7) | 66 (83.5) | 39 (100.0) |
Others | 48 (11.3) | 13 (16.5) | 0 (0.0) | |
Pre-university farming experience | Yes | 300 (71.4) | 57 (72.2) | 31 (75.6) |
Occupation of sponsor | Agriculture | 81 (19.6) | 19 (25.3) | 10 (25.6) |
Non-Agriculture | 333 (80.4) | 56 (74.7) | 29 (74.4) | |
Pre-university contact with agric. Expert | Yes | 120 (31.7) | 21 (28.8) | 13 (36.1) |
Pre-university academic performance | Average | 256 (66.0) | 57 (86.4) | 25 (78.1) |
Excellent | 132 (34.0) | 9 (13.6) | 7 (21.9) | |
Father’s level of education | Primary | 49 (13.6) | 4 (7.5) | 3 (8.8) |
Secondary | 116 (32.1) | 22 (41.5) | 11 (32.4) | |
Tertiary | 196 (54.3) | 27 (50.9) | 20 (58.8) | |
Mother’s level of education | Primary | 97 (29.7) | 8 (17.0) | 4 (14.3) |
Secondary | 128 (39.1) | 21 (44.7) | 11 (39.3) | |
Tertiary | 102 (31.2) | 18 (38.3) | 13 (46.4) | |
Household revenue | <150,000 | 129 (42.0) | 20 (37.0) | 8 (30.8) |
>150,000 | 178 (58.0) | 34 (63.0) | 18 (69.2) | |
Discipline of study | Agriculture | 215 (51.4) | 65 (85.5) | 14 (36.8) |
Others | 203 (48.6) | 11 (14.5) | 24 (63.2) | |
Primary sub-sector ranking | 1st | 96 (54.2) | 25 (43.9) | 5 (38.5) |
2nd | 53 (29.9) | 16 (28.1) | 6 (46.2) | |
3rd | 28 (15.8) | 16 (28.1) | 2 (15.4) | |
Transformation sub-sector ranking | 1st | 37 (21.5) | 9 (16.4) | 3 (23.1) |
2nd | 90 (52.3) | 30 (54.5) | 5 (38.5) | |
3rd | 45 (26.2) | 16 (29.1) | 5 (38.5) | |
Agri-services Sub-sector Ranking | 1st | 42 (26.3) | 23 (41.1) | 5 (38.5) |
2nd | 28 (17.5) | 9 (16.1) | 2 (15.4) | |
3rd | 90 (56.3) | 24 (42.9) | 6 (46.2) |
Variable | Coefficient | Marginal Effect (dy/dx) |
---|---|---|
Student’s Age (in years) | 0.062 | 0.019 * (0.011) |
Student’s Sex (1 if male, 0 otherwise) | 0.830 | 0.252 *** (0.06) |
The current level of study | ||
The current level of study is masters (1 if yes, 0 otherwise) | −0.028 | −0.008 (0.135) |
The current level of study is Doctoral (1 if yes,0 otherwise) | 0 | |
Religious background (1 if Christian, 0 otherwise) | 0.519 | 0.157 (0.118) |
Location of the childhood home (1if Rural areas, 0 otherwise) | −0.029 | −0.009 (0.081) |
Perceived level of inherent opportunities in agriculture (1 if High, 0 otherwise) | −0.333 | −0.101 (0.069) |
Pre-university farming experience (1 if yes, 0 otherwise) | −0.750 | −0.227 *** (0.076) |
Main occupation of father (1 if agriculture-related, 0 otherwise) | 0.187 | 0.057 (0.081) |
Pre-university educational background of the student (1 if pure sciencies, 0 otherwisse) | 0.519 | 0.157 ** (0.071) |
Pre-university contact of the student with agricultural experts (1 if yes, 0 otherwise) | −0.314 | −0.095 (0.068) |
Pre-university academic performance (1 if excellent, 0 otherwise) | −0.574 | −0.174 (0.062) |
Father’s level of education | ||
Secondary (1 if yes, 0 otherwise) | −0.342 | −0.100 (0.106) |
Tertiary (1 if yes, 0 otherwise) | −0.302 | −0.089 (0.108) |
Mother’s level of Education | ||
Secondary (1 if yes, 0 otherwise) | 0.768 | 0.229 *** (0.085) |
Tertiary (1 if yes, 0 otherwise) | −0.272 | −0.089 (0.102) |
Student’s birth position in th house (1st, 2nd, 3rd) | 0.093 | 0.028 (0.017) |
Household income (in US$) (<272, >272) | 0.554 | 0.168 ** (0.069) |
Constant | −1.911 | |
Number of observations | 196 | |
LR chi2(17) | 54.89 *** | |
Prob > chi2 | 0.0000 |
Rank | Variables | Coefficient (Std. Err.) |
---|---|---|
1 | ||
2 | Student’s Age (in years) | 0.017 (0.041) |
Student’s Sex | −0.534 (0.478) | |
The current level of study | ||
The current level of study is masters (1 if yes, 0 otherwise) | −1.655 ** (0.760) | |
The current level of study is doctoral (1 if yes, 0 otherwise) | 0.379 (1.054) | |
Religious background (1 if Christian, 0 otherwise) | −0.502 * (0.345) | |
Location of the childhood home (1if Rural area, 0 otherwise) | 1.230 ** (0.684) | |
Pre-university farming experience (1 if yes, 0 otherwise) | −0.037 * (0.562) | |
Perceived level of inherent opportunities in agriculture (1 if High, 0 otherwise) | 0.241 (0.166) | |
Pre-university educational background of the student (1 if pure sciences, 0 otherwise) | −0.650 (0.589) | |
Pre-university contact of the student with agricultural experts (1 if yes, 0 otherwise | 1.218 (0.464) | |
Pre-university academic performance (1 if excellent, 0 otherwise) | −0.607 (0.521) | |
Father’s level of education | 0.446 (0.367) | |
Mother’s level of education | −0.316 (0.372) | |
Household income (in US$) (<272, >272) | 0.293 (0.504) | |
Constant | 1.777 (1.563) | |
3 | Student’s Age (in years) | 0.096 (0.092) |
Student’s Sex | 0.977 (1.091) | |
The current level of study | ||
The current level of study is masters (1 if yes, 0 otherwise) | −4.077 (1.852) | |
The current level of study is doctoral (1 if yes, 0 otherwise) | ||
Religious background (1 if Christian, 0 otherwise) | −1.557 (0.833) | |
Location of the childhood home (1if Rural area, 0 otherwise) | 3.299 (1.584) | |
Pre-university farming experience (1 if yes, 0 otherwise) | −2.455 (1.378) | |
Perceived level of inherent opportunities in agriculture(1 if High, 0 otherwise) | 0.391 (0.351) | |
Pre-university educational background of the student (1 if pure sciences, 0 otherwise) | −0.778 (1.215) | |
Pre-university contact of the student with agricultural experts (1 if yes, 0 otherwise | 0.209 (0.963) | |
Pre-university academic performance (1 if excellent, 0 otherwise) | −0.205 (1.065) | |
Father’s level of education | 0.726 (0.761) | |
Mother’s level of education | −0.135 (0.792) | |
Household income (in US$) (<272, >272) | 0.357 (1.063) | |
Constant | 3.319 (3.612) | |
Number of observations | 255 | |
Wald chi2(28) | 20.08 |
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Mkong, C.J.; Abdoulaye, T.; Dontsop-Nguezet, P.M.; Bamba, Z.; Manyong, V.; Shu, G. Determinant of University Students’ Choices and Preferences of Agricultural Sub-Sector Engagement in Cameroon. Sustainability 2021, 13, 6564. https://doi.org/10.3390/su13126564
Mkong CJ, Abdoulaye T, Dontsop-Nguezet PM, Bamba Z, Manyong V, Shu G. Determinant of University Students’ Choices and Preferences of Agricultural Sub-Sector Engagement in Cameroon. Sustainability. 2021; 13(12):6564. https://doi.org/10.3390/su13126564
Chicago/Turabian StyleMkong, Cynthia J., Tahirou Abdoulaye, Paul Martin Dontsop-Nguezet, Zoumana Bamba, Victor Manyong, and Godlove Shu. 2021. "Determinant of University Students’ Choices and Preferences of Agricultural Sub-Sector Engagement in Cameroon" Sustainability 13, no. 12: 6564. https://doi.org/10.3390/su13126564
APA StyleMkong, C. J., Abdoulaye, T., Dontsop-Nguezet, P. M., Bamba, Z., Manyong, V., & Shu, G. (2021). Determinant of University Students’ Choices and Preferences of Agricultural Sub-Sector Engagement in Cameroon. Sustainability, 13(12), 6564. https://doi.org/10.3390/su13126564