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