Introduction: Saving behaviour is a critical aspect of financial planning, where individuals defer present consumption to enhance their quality of life and meet future needs. The study aims to gain a comprehensive understanding of their financial behaviours, identify the factors that influence their financial decision-making, and compare the financial behaviours among different groups of academic employees. Methods: Employing a quantitative research approach, this study utilizes a structured questionnaire to gather data from academic employees. The questionnaire evaluates variables such as income level, education, job security, and financial goals to examine their impact on saving behaviours and financial readiness. Binary logistic regression analysis is employed to assess the influence of each factor on the dependent variable. Results: The findings indicate that a majority (83.3%) of academic employees have not previously saved, while a minority (16.7%) have managed to accumulate some savings. Statistical analyses, including chi-square tests, demonstrate significant associations between saving habits and variables such as gender, age, marital status, monthly expenses, and housing. The binary logistic regression analysis further highlights the significance of factors such as gender, age, education level, expenses, housing, additional income, and participation in savings groups in shaping employees' saving behaviours. Conclusion: This study contributes to the understanding of Ethiopian savings practices and personal finance by examining and comparing saving behaviours and financial preparedness across different academic institutions. It provides insights into the factors influencing financial decision-making and proposes strategies for enhancing financial literacy.
Published in | International Journal of Business and Economics Research (Volume 13, Issue 2) |
DOI | 10.11648/j.ijber.20241302.12 |
Page(s) | 36-45 |
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 |
Saving Habits, Financial Preparedness, Academic Employees, Ethiopia, Logistic Regression
2.1. Variables in the Study
2.2. Method of Data Analysis
Variables | Category | Frequency | Percentage |
---|---|---|---|
save some money out of your total income | 'save out of income | 52 | 16.7% |
'No, save from income' | 260 | 83.3% | |
Gender | Female | 38 | 12.2% |
Male | 274 | 87.8% | |
Age | <30 | 64 | 20.5% |
30-35 | 150 | 48.1% | |
35-40 | 64 | 20.5% | |
>40 | 34 | 10.9% | |
Educational level | Degree | 9 | 2.9% |
Masters | 292 | 93.6% | |
PhD | 11 | 3.5% | |
Marital status | Single | 192 | 61.5% |
Married | 104 | 33.3% | |
Separated | 14 | 4.5% | |
Widowed | 2 | 0.6% | |
monthly net income | <5000 | 9 | 2.9% |
5000-9000 | 292 | 93.6% | |
>9000 | 11 | 3.5% | |
cost of expenditures per month | <3000 | 2 | 0.6% |
Affairs | 110 | 35.3% | |
7500-9000 | 139 | 44.6% | |
>9000 | 61 | 19.6% | |
Academic Affairs | Yes | 49 | 15.7% |
No | 263 | 84.3% | |
housing status | Owned | 19 | 6.1% |
Rented | 293 | 93.9% | |
have an extra income | Yes | 59 | 18.9% |
No | 253 | 81.1% | |
a member of any savings association | Yes | 32 | 10.3% |
No | 280 | 89.7% | |
saving methods | Modern | 32 | 10.3% |
Traditional | 280 | 89.7% | |
Number of families in the home | 1-2 | 145 | 46.5% |
3-4 | 135 | 43.3% | |
4-5 | 11 | 3.5% | |
More than 5 | 21 | 6.7% | |
Addiction | Yes | 10 | 3.2% |
No | 302 | 96.8% |
Variable | Categories | Saving Habit | Chi-square | p-value | Phi and Cramer’s v | |
---|---|---|---|---|---|---|
'save out of income | 'No, save from income' | |||||
Gender | Female | 18 (47.4%) | 20 (52.6%) | 29.366 | 0.000 | 0.307 0307 |
Male | 34 (12.4%) | 240 (87.6) | ||||
Age | <30 | 8 (12.5%) | 56 (87.5%) | 9.799 | 0.020 | 0.177 0.177 |
30-35 | 23 (15.3%) | 127 (84.7%) | ||||
35-40 | 9 (14.1%) | 55 (85.9%) | ||||
>40 | 12 (35.3%) | 22 (64.7%) | ||||
Educational level | Degree | 0 (0%) | 9 (100%) | 4.884 | 0.087 | 0.125 0.125 |
Masters | 48 (16.4%) | 244 (83.6%) | ||||
PhD | 4 (36.4%) | 7 (63.6%) | ||||
Marital status | Single | 23 (12%) | 169 (88%) | 8.935 | 0.030 | 0.169 0.169 |
Married | 25 (24%) | 79 (76%) | ||||
Separated | 3 (21.4%) | 11 (78.6%) | ||||
Widowed | 1 (50%) | 1 (50%) | ||||
monthly net income | <5000 | 0 (0%) | 9 (100%) | 4.884 | 0.087 | 0.125 0.125 |
5000-9000 | 48 (16.4%) | 244 (83.6%) | ||||
>9000 | 4 (36.4%) | 7 (63.6%) | ||||
cost of expenditures per month | <3000 | 2 (100%) | 0 (0%) | 22.983 | 0.000 | 0.271 0.271 |
3000-7500 | 29 (26.4%) | 81 (73.6%) | ||||
7500-9000 | 14 (10.1%) | 125 (89.9%) | ||||
>9000 | 7 (11.5%) | 54 (88.5%) | ||||
Academic Affairs | Yes | 11 (22.4%) | 38 (77.6%) | 1.399 | 0.237 | 0.067 0.067 |
No | 41 (15.6%) | 222 (84.4%) | ||||
housing status | Owned | 7 (36.8%) | 12 (63.2%) | 5.930 | 0.015 | 0.138 0.138 |
Rented | 45 (15.4%) | 248 (84.6%) | ||||
have an extra income | Yes | 6 (10.2%) | 53 (89.8%) | 2.211 | 0.137 | -0.84 0.84 |
No | 46 (18.2%) | 207 (81.8%) | ||||
a member of any savings association | Yes | 3 (9.4%) | 29 (90.6%) | 1.365 | 0.243 | -0.066 0.066 |
No | 49 (17.5%) | 231 (82.5%) | ||||
saving methods | Modern | 3 (9.4%) | 29 (90.6%) | 1.365 | 0.243 | -0.066 0.066 |
Traditional | 49 (17.5%) | 231 (82.5%) | ||||
Number of families in the home | 1-2 | 21 (14.5%) | 124 (85.5%) | 3.337 | 0.342 | 0.103 0.103 |
3-4 | 28 (20.7%) | 107 (79.3%) | ||||
4-5 | 1 (9.1%) | 10 (90.9%) | ||||
More than 5 | 2 (9.5%) | 19 (90.5%) | ||||
Addiction | Yes | 1 (10%) | 9 (90%) | 0.331 | 0.565 | -0.033 0.033 |
No | 51 (16.9%) | 251 (83.1%) |
Step | -2 Loglikelihood | Cox & Snell R Square | Nagelkerke R Square |
---|---|---|---|
1 | 188.640a | .257 | .432 |
Step | Chi-square | Df | Sig. | |
---|---|---|---|---|
1 | 14.995 | 8 | .061 |
Variables | B | S.E. | Wald | df | Sig. | Exp(B) |
---|---|---|---|---|---|---|
Gender (1) | -3.404 | .644 | 27.933 | 1 | .000 | .033 |
Age | 20.006 | 3 | .000 | |||
Age (1) | 3.479 | .824 | 17.810 | 1 | .000 | 32.423 |
Age (2) | 2.008 | .594 | 11.436 | 1 | .001 | 7.451 |
Age (3) | 2.545 | .727 | 12.271 | 1 | .000 | 12.744 |
Educational_level | 8.483 | 2 | .014 | |||
Educational_level (1) | 2.571 | 0.651 | .000 | 1 | .999 | 13.08 |
Educational_level (2) | 3.353 | 1.151 | 8.483 | 1 | .004 | 28.590 |
Marital_Satus | 4.413 | 3 | .220 | |||
Marital_Satus (1) | .081 | 2.253 | .001 | 1 | .971 | 1.084 |
Marital_Satus (2) | -.457 | 2.231 | .042 | 1 | .838 | .633 |
Marital_Satus (3) | -2.643 | 2.616 | 1.021 | 1 | .312 | .071 |
Expenditure | 26.320 | 3 | .000 | |||
Expenditure (1) | -23.731 | 26502.634 | .000 | 1 | .999 | .000 |
Expenditure (2) | -2.719 | .697 | 15.199 | 1 | .000 | .066 |
Expenditure (3) | -.146 | .666 | Addiction | 1 | .826 | .864 |
Acadamic_afairs (1) | -.424 | .503 | .711 | 1 | .399 | .655 |
Housing_status (1) | -2.048 | .674 | 9.240 | 1 | .002 | .129 |
Extra_income (1) | 2.879 | .667 | 18.626 | 1 | .000 | 17.798 |
Member (1) | 2.623 | .901 | 8.465 | 1 | .004 | 13.772 |
Family_Size | 5.303 | 3 | .151 | |||
Family_Size (1) | -1.127 | 1.130 | .995 | 1 | .319 | .324 |
Family_Size (2) | -1.622 | 1.035 | 2.455 | 1 | .117 | .198 |
Family_Size (3) | 1.836 | 2.021 | .825 | 1 | .364 | 6.272 |
Addiction (1) | -.990 | 1.212 | .667 | 1 | .414 | .372 |
Constant | -.540 | 2.597 | .043 | 1 | .835 | .583 |
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APA Style
Taye, B. A., Belete, A. K., Yirsaw, B. G. (2024). Examining the Impact of Socioeconomic Factors on Academic Staff Saving Behaviors and Financial Readiness in North Wollo Zone, Amhara, Ethiopia. International Journal of Business and Economics Research, 13(2), 36-45. https://doi.org/10.11648/j.ijber.20241302.12
ACS Style
Taye, B. A.; Belete, A. K.; Yirsaw, B. G. Examining the Impact of Socioeconomic Factors on Academic Staff Saving Behaviors and Financial Readiness in North Wollo Zone, Amhara, Ethiopia. Int. J. Bus. Econ. Res. 2024, 13(2), 36-45. doi: 10.11648/j.ijber.20241302.12
AMA Style
Taye BA, Belete AK, Yirsaw BG. Examining the Impact of Socioeconomic Factors on Academic Staff Saving Behaviors and Financial Readiness in North Wollo Zone, Amhara, Ethiopia. Int J Bus Econ Res. 2024;13(2):36-45. doi: 10.11648/j.ijber.20241302.12
@article{10.11648/j.ijber.20241302.12, author = {Birhan Ambachew Taye and Aychew Kassa Belete and Bantie Getnet Yirsaw}, title = {Examining the Impact of Socioeconomic Factors on Academic Staff Saving Behaviors and Financial Readiness in North Wollo Zone, Amhara, Ethiopia }, journal = {International Journal of Business and Economics Research}, volume = {13}, number = {2}, pages = {36-45}, doi = {10.11648/j.ijber.20241302.12}, url = {https://doi.org/10.11648/j.ijber.20241302.12}, eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.ijber.20241302.12}, abstract = {Introduction: Saving behaviour is a critical aspect of financial planning, where individuals defer present consumption to enhance their quality of life and meet future needs. The study aims to gain a comprehensive understanding of their financial behaviours, identify the factors that influence their financial decision-making, and compare the financial behaviours among different groups of academic employees. Methods: Employing a quantitative research approach, this study utilizes a structured questionnaire to gather data from academic employees. The questionnaire evaluates variables such as income level, education, job security, and financial goals to examine their impact on saving behaviours and financial readiness. Binary logistic regression analysis is employed to assess the influence of each factor on the dependent variable. Results: The findings indicate that a majority (83.3%) of academic employees have not previously saved, while a minority (16.7%) have managed to accumulate some savings. Statistical analyses, including chi-square tests, demonstrate significant associations between saving habits and variables such as gender, age, marital status, monthly expenses, and housing. The binary logistic regression analysis further highlights the significance of factors such as gender, age, education level, expenses, housing, additional income, and participation in savings groups in shaping employees' saving behaviours. Conclusion: This study contributes to the understanding of Ethiopian savings practices and personal finance by examining and comparing saving behaviours and financial preparedness across different academic institutions. It provides insights into the factors influencing financial decision-making and proposes strategies for enhancing financial literacy. }, year = {2024} }
TY - JOUR T1 - Examining the Impact of Socioeconomic Factors on Academic Staff Saving Behaviors and Financial Readiness in North Wollo Zone, Amhara, Ethiopia AU - Birhan Ambachew Taye AU - Aychew Kassa Belete AU - Bantie Getnet Yirsaw Y1 - 2024/05/17 PY - 2024 N1 - https://doi.org/10.11648/j.ijber.20241302.12 DO - 10.11648/j.ijber.20241302.12 T2 - International Journal of Business and Economics Research JF - International Journal of Business and Economics Research JO - International Journal of Business and Economics Research SP - 36 EP - 45 PB - Science Publishing Group SN - 2328-756X UR - https://doi.org/10.11648/j.ijber.20241302.12 AB - Introduction: Saving behaviour is a critical aspect of financial planning, where individuals defer present consumption to enhance their quality of life and meet future needs. The study aims to gain a comprehensive understanding of their financial behaviours, identify the factors that influence their financial decision-making, and compare the financial behaviours among different groups of academic employees. Methods: Employing a quantitative research approach, this study utilizes a structured questionnaire to gather data from academic employees. The questionnaire evaluates variables such as income level, education, job security, and financial goals to examine their impact on saving behaviours and financial readiness. Binary logistic regression analysis is employed to assess the influence of each factor on the dependent variable. Results: The findings indicate that a majority (83.3%) of academic employees have not previously saved, while a minority (16.7%) have managed to accumulate some savings. Statistical analyses, including chi-square tests, demonstrate significant associations between saving habits and variables such as gender, age, marital status, monthly expenses, and housing. The binary logistic regression analysis further highlights the significance of factors such as gender, age, education level, expenses, housing, additional income, and participation in savings groups in shaping employees' saving behaviours. Conclusion: This study contributes to the understanding of Ethiopian savings practices and personal finance by examining and comparing saving behaviours and financial preparedness across different academic institutions. It provides insights into the factors influencing financial decision-making and proposes strategies for enhancing financial literacy. VL - 13 IS - 2 ER -