An Analysis of the Factors Influencing the Selection of a Given Form of Learning
Abstract
:1. Introduction
- A 100% of stationary learning;
- A 100% of remote learning;
- Hybrid learning.
2. Higher Education in Poland
- Law, business, and administration (23.6%);
- Technology, industry, construction (16.5%);
- Health, and social care (11.2%);
- Journalism, social sciences, and information (10.6%).
3. Literature Review of Works Relating to the Education of Students in the Conditions of the COVID-19 Pandemic
4. Materials and Methods
4.1. Characteristics of the Conducted Survey Research
- Data that are characterized by the respondent’s profile: gender, age, and nationality;
- Characteristics of the respondents’ educations: type, degree, year, and field of study, number of fields of study, possibly the name of an additional field of study, participation in additional activities (e.g., courses, training, learning to play the piano, English lessons, dance lessons, etc.), the average of grades in the last year of studies (semester in the case of the first semester of studies);
- Family situation (marital status, caring for parents, caring for children, caring for disabled children) and professional situation (if applicable);
- Sense of security during classes, and during obtaining materials for classes, as well as during sending final papers to the academic teachers.
4.2. Description of the Variables Used in Modeling
- Variable Y1—100% of classes carried out in the contact form, at the university,
- Variable Y2—100% of classes carried out remotely;
- Variable Y3—classes carried out in a hybrid form, i.e., lectures conducted online (with the use of software enabling free, two-way communication between the academic teachers, and the students, e.g., zoom, MS Teams), and exercises as well as laboratories conducted in the form of contact at the university.
- Yi—dependent variable.
- Yi—dependent variable (i = 1, 2, 3);
- k—number of independent variables;
- x1, x2, x3, ..., Xk—independent variables;
- α1, α2, α3, ..., αk—structural parameters of the model.
- 0—given determinant does not exist;
- 1—given determinant is present.
- X1—gender (1—female; 0—male);
- X2—age (0—below 22 years old; 1—from 22 years old and up);
- X3—type of studies (0—full-time; 1—part-time);
- X4—degree of studies (0—first degree; 1—second degree);
- X5—year of study (0—the remaining years of study; 1—the first year of study);
- X6—field of study (1—transport; 0—civil engineering and logistics);
- X7—nationality (0—Polish; 1—foreigner);
- X8—place of stay during the pandemic (0—house; 1—dormitory/rented apartment);
- X9—number of fields of study (0—one; 1—two);
- X10—participation in additional activity/activities (0—yes; 1—no);
- X11—average grade point in studies (0—≤ 4.0; 1—>4.0);
- X12—performing professional work (0—no; 1—yes);
- X13—caring for parents (0—no; 1—yes);
- X14—caring for disabled children or siblings (0—no; 1—yes);
- X15—marital status (0—single; 1—married/cohabiting);
- X16—having children (0—no; 1—yes);
- X17—living alone (0—no; 1—yes);
- X18—means of transport used in commuting to the university (0—private means of transport; 1—public means of transport);
- X19—average travel time to the university (0—> 0–30 min; 1—> 30 min and more);
- X20—having your own car (0—no; 1—yes);
- X21—assessment of knowledge and skills obtained by the student thanks to 100% online classes compared to 100% contact classes (0—unsatisfactory (i.e., at a lower level than the knowledge obtained during contact classes); 1—satisfactory (at the same or higher level than the knowledge obtained during contact classes));
- X22—place of obtaining materials for scientific work before the COVID-19 pandemic (0—internet resources, library, and others; 1—only the library);
- X23—students’ trust in privacy during online classes (in the context of third parties, undesirable persons during classes), and a sense of security of the information provided (files of final papers, presentations) (0—no trust; 1—trust);
- X24—technical quality of online classes (0—unsatisfactory; 1—satisfactory);
- X25—the quality of the online classes in terms of content (0—unsatisfactory; 1—satisfactory).
- In the first stage, the independent variables (Y1, Y2, Y3) were assigned to the independent variables that may, from the physical point of view, affect the given dependent variable;
- In the second stage, variables that showed too small dispersion of values among the analyzed data were excluded from further analysis. To select independent variables in this stage, the coefficient of variation was used:
- Si—standard deviation of the variable xi;
- —average value of the variable xi.
- In the third stage, variables showing a strong mutual correlation were excluded. Strong mutual correlation of independent variables causes the phenomenon of catalysis, i.e., an increase in the multiple correlation coefficient resulting not from properly selected independent variables and a correctly constructed regression model, but as a result of mutual correlation of the explanatory variables. Based on the scientific literature on the subject [66,67], it was found that a strong correlation between the variables occurs when the correlation coefficient R ≥ 0.70;
- In the fourth stage, variables showing too weak correlation with the dependent variable were excluded. The analysis assumed that a low level of correlation occurs when the correlation coefficient R < 0.20.
5. Modeling the Influence of Selected Features on the Choice of a Given Form of Learning
5.1. Factors Influencing the Choice of Learning as 100% of Contact Classes at University
- Increases by 11.40% if the student is a woman;
- Decreases by 19.43% if the student is at least 22 years old and older;
- It decreases by as much as 67.37% in the case when the student is studying in part-time studies;
- Increases by as much as 59.68% in the case when the student participates in additional activities;
- Increases by as much as 81.85% if the student owns a car;
- Increases by as much as 86.33% when the student negatively assesses his knowledge and skills obtained in online classes (i.e., the knowledge gained thanks to remote learning is at a lower level than the knowledge obtained during contact classes);
- Increases by 23.37% when the place to obtain materials for research work before the COVID-19 pandemic was only the library;
- Increases by 36.30% due to the students’ lack of trust in privacy during online classes (in the context of third parties, undesirable people in classes), and the sense of security of the information provided (files, final papers, presentations);
- Increases by 15.63% when the technical quality of online classes is unsatisfactory;
- Increases by 11.31% when the quality of online classes is unsatisfactory in terms of scientific content.
5.2. Factors Influencing the Choice of Learning as 100% of Classes Carried out Remotely
- Age (X2);
- Type of studies (X3);
- Number of study fields of study (X9);
- Participation in additional activities (X10);
- Performance of professional work (X12);
- Means of transport used to travel to the university (X18);
- Average travel time to the university (X19);
- Assessment of knowledge and skills obtained by the student thanks to 100% online classes compared to 100% contact classes at the university (X21);
- Technical quality of the online classes (X24);
- Content-related quality of online classes (X25).
- Increases by 14.11% if the student is 22 years old and older;
- Increases by 61.93% in a situation where the student is studying in part-time studies;
- Increases by as much as 122.78% in a situation where a student studies two fields of study at the same time;
- Increases by as much as 140.85% in a situation where the student, apart from studying, also participates in additional activities;
- Increases by as much as 118.58% in a situation where the student, apart from studying, also performs professional work.
- Increases by as much as 101.17% in a situation where the student traveled to the university by means of public transport;
- Increases by as much as 179.55% when the average travel time of a student to the university is at least 30 min or more;
- Increases by 20.08% in a situation where the knowledge and skills obtained by a student in online classes are at the same or higher level than the knowledge acquired in contact classes;
- Increases by 34.18% in a situation where the quality of the classes is technically satisfactory for the student;
- Increases by 53.27% in a situation where the quality of the classes is satisfactory in terms of content.
Explanatory Variables (Xi) | αk | Wald Statistics | Significance Level p-Value | Exp (αi) |
---|---|---|---|---|
X2 | 0.132 | 31.253 | 0.0000 | 1.141 |
X3 | 0.482 | 4.327 | 0.0250 | 1.619 |
X9 | 0.801 | 5.874 | 0.0140 | 2.228 |
X10 | 0.879 | 8.462 | 0.0020 | 2.408 |
X12 | 0.782 | 12.471 | 0.0000 | 2.186 |
X18 | 0.699 | 2.481 | 0.5100 | 2.012 |
X19 | 1.028 | 10.392 | 0.0000 | 2.795 |
X21 | 0.183 | 3.862 | 0.0240 | 1.201 |
X24 | 0.294 | 6.392 | 0.0030 | 1.342 |
X25 | 0.427 | 2.523 | 0.1240 | 1.533 |
α0 | 6.353 | |||
Log Likelihood | −62.543601 | |||
−2 Log Likelihood | 125.087202 | |||
Log Likelihood (for α0) | −85.904769 | |||
2 Log Likelihood (for α0) | 171.809538 | |||
Chi-square statistics | 44.0528092 | |||
*p-value | <0.000001 | |||
Pseudo R2 | 0.2894150 | |||
R2 Nagelkerke | 0.4698181 | |||
R2 Coxa-Snella | 35.908673 | |||
Hosmer–Lemeshow test results: | ||||
Chi-square statistics | 10.6890232 | |||
p-value | 0.14923897 |
5.3. Factors Influencing the Choice of Learning Provided in a Hybrid Form
- Taking care of parents (X13);
- Living alone (X17);
- Owning a car (X20).
- Increases by 44.05% in a situation where the student takes care of his parents;
- Increases by 32.84% when the student lives alone;
- Increases by 61.61% in a situation where the student has their own car.
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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No. | Independent Variables (Xi) | Correlation Coefficient Value (R) |
---|---|---|
1. | X1 | 0.35 |
2. | X2 | 0.44 |
3. | X3 | 0.21 |
4. | X5 | 0.24 |
5. | X7 | 0.22 |
6. | X10 | 0.33 |
7. | X15 | 0.29 |
8. | X20 | 0.46 |
9. | X21 | 0.52 |
10. | X22 | 0.40 |
11. | X23 | 0.37 |
12. | X24 | 0.63 |
13 | X25 | 0.26 |
No. | Independent Variables (Xi) | Correlation Coefficient Value (R) |
---|---|---|
1. | X2 | 0.32 |
2. | X3 | 0.27 |
3. | X4 | 0.35 |
4. | X9 | 0.31 |
5. | X10 | 0.46 |
6. | X12 | 0.28 |
7. | X18 | 0.49 |
8. | X19 | 0.33 |
9. | X21 | 0.24 |
10. | X24 | 0.30 |
11. | X25 | 0.37 |
No. | Independent Variables (Xi) | Correlation Coefficient Value (R) |
---|---|---|
1. | X10 | 0.21 |
2. | X12 | 0.34 |
3. | X13 | 0.42 |
4. | X17 | 0.38 |
5. | X20 | 0.35 |
Explanatory Variables (Xi) | αk | Wald Statistics | Significance Level p-Value | Exp (αi) |
---|---|---|---|---|
X1 | 0.108 | 6.791 | 0.0030 | 1.114 |
X2 | −0.216 | 6.908 | 0.0029 | 0.806 |
X3 | −1.12 | 1.497 | 0.0061 | 0.326 |
X10 | 0.468 | 5.70 | 0.0138 | 1.597 |
X20 | 0.598 | 0.354 | 0.0749 | 1.818 |
X21 | −1.99 | 4.729 | 0.0152 | 0.137 |
X22 | 0.21 | 16.462 | 0.0120 | 1.234 |
X23 | −0.451 | 42.515 | 0.0120 | 0.637 |
X24 | −0.17 | 1.621 | 0.0341 | 0.844 |
X25 | −0.12 | 0.353 | 0.0749 | 0.887 |
α0 | −3.212 | |||
Log Likelihood | −74.005673 | |||
−2 Log Likelihood | 148.011346 | |||
Log Likelihood (for α0) | −97.498702 | |||
2 Log Likelihood (for α0) | 194.997404 | |||
Chi-square statistics | 38.372654 | |||
* p-value | <0.000001 | |||
Pseudo R2 | 0.324260 | |||
R2 Nagelkerke | 0.518953 | |||
R2 Coxa-Snella | 0.357946 | |||
Hosmer–Lemeshow test results: | ||||
Chi-square statistics | 10.646431 | |||
p-value | 0.257487 |
Explanatory Variables (Xi) | αk | Wald Statistics | Significance Level p-Value | Exp (αi) |
---|---|---|---|---|
X13 | 0.365 | 7.160 | 0.1010 | 1.441 |
X17 | 0.284 | 4.39 | 0.0489 | 1.328 |
X20 | 0.480 | 6.457 | 0.0000 | 1.616 |
α0 | 3.184 | |||
Log Likelihood | −82.980315 | |||
−2 Log Likelihood | 165.96063 | |||
Log Likelihood (for α0) | −96.485928 | |||
2 Log Likelihood (for α0) | 192.971856 | |||
Chi-square statistics | 32.104756 | |||
*p-value | <0.000001 | |||
Pseudo R2 | 0.313822 | |||
R2 Nagelkerke | 0.501837 | |||
R2 Coxa-Snella | 0.457201 | |||
Hosmer–Lemeshow test results: | ||||
Chi-square statistics | 8.473920 | |||
p-value | 0.115265 |
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Macioszek, E.; Kurek, A. An Analysis of the Factors Influencing the Selection of a Given Form of Learning. J. Open Innov. Technol. Mark. Complex. 2022, 8, 54. https://doi.org/10.3390/joitmc8010054
Macioszek E, Kurek A. An Analysis of the Factors Influencing the Selection of a Given Form of Learning. Journal of Open Innovation: Technology, Market, and Complexity. 2022; 8(1):54. https://doi.org/10.3390/joitmc8010054
Chicago/Turabian StyleMacioszek, Elżbieta, and Agata Kurek. 2022. "An Analysis of the Factors Influencing the Selection of a Given Form of Learning" Journal of Open Innovation: Technology, Market, and Complexity 8, no. 1: 54. https://doi.org/10.3390/joitmc8010054
APA StyleMacioszek, E., & Kurek, A. (2022). An Analysis of the Factors Influencing the Selection of a Given Form of Learning. Journal of Open Innovation: Technology, Market, and Complexity, 8(1), 54. https://doi.org/10.3390/joitmc8010054