Predicting Determinants of Lifelong Learning Intention Using Gradient Boosting Machine (GBM) with Grid Search
Abstract
:1. Introduction
2. Methods
2.1. Boosting-Based Machine Learning
2.2. Proposed Method
3. Results
3.1. Gradient Boost Machine (GBM)
3.2. Grid Search
4. Discussion and Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Level | Factors |
---|---|
Micro-level | Characteristics of the Learner (Individual Characteristics)
|
Meso-level | Characteristics of the Institutional Programs and Learning Activities |
Macro-level | Characteristics of the Social Context and its Actors |
Micro-Level | B3D_10_IM | Self-Pay Learning Expenses—Vocational Competency Improvement Education (1) (after non-response substitution) | Learning expenses spent in the past year $__________________ |
DQ1A | Highest level of education completed—school level (including non-response) | ① Uneducated, ② Elementary school, ③ Middle school, ④ High school, ⑤ University (2 or 3-year university), ⑥ University (4-year university), ⑦ Graduate school (Master), ⑧ Graduate school (Ph.D.) | |
DQ7 | Main source of income | ① Earned by me, ② Interest and rental income, ③ Allowance money from family, relatives, and children, ④ Pension, ⑤ Subsidy, ⑥ Others | |
Meso-Level | B3D_3 | Program Type—Vocational Competency Improvement Education (1) | ① Lectures taught by instructors at a certain place, ② On-the-job training programs, ③ Remote/Cyber courses, ④ Professional seminars and workshops, ⑤ Study clubs, ⑥ Other lectures and private tutoring |
B3D_14 | Program Satisfaction—Vocational Competency Improvement Education (1) | ① Very dissatisfied, ② Dissatisfied, ③ Normal, ④ Satisfied, ⑤ Very satisfied | |
B4_2 | Increasing psychological satisfaction and happiness | ① Not helpful at all, ② Not very helpful, ③ Medium, ④ Slightly helpful, ⑤ Very helpful, ⑥ Not applicable | |
B4_3 | Self-development, such as cultivating culture and acquiring knowledge | ① Not helpful at all, ② Not very helpful, ③ Medium, ④ Slightly helpful, ⑤ Very helpful, ⑥ Not applicable | |
Macro-Level | B3D_11 | Whether external support for learning expenses is provided—Vocational Competency Improvement Education (1) | ① Yes, ② No |
B4_8 | Social Participation (Volunteer Service and Community/Social Activities) | ① Not helpful at all, ② Not very helpful, ③ Medium, ④ Slightly helpful, ⑤ Very helpful, ⑥ Not applicable | |
J2_3 | Degree of improvement in quality of life by participation in lifelong learning—Satisfaction with social participation | ① Not helpful at all, ② Not very helpful, ③ Medium, ④ Slightly helpful, ⑤ Very helpful, | |
J2_4 | Degree of improvement in quality of life by participation in lifelong learning—Economic stability | ① Not helpful at all, ② Not very helpful, ③ Medium, ④ Slightly helpful, ⑤ Very helpful, |
DQ9 | Employment type | ① Wage worker, ② Non-wage worker |
Train_Score | Test_Score | |
---|---|---|
Gradient Boosting | 0.8598726114649682 | 0.847949080622348 |
Grid Search | 0.8646496815286624 | 0.848656294200848 |
Gradient Boosting | Grid Search | |
---|---|---|
Overall accuracy | 0.84795 | 0.84866 |
Sensitivity | 0.95414 | 0.95054 |
Precision | 0.86612 | 0.86924 |
Specificity | 0.45695364 | 0.47350993 |
f1_score | 0.90800 | 0.90808 |
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Kim, C.; Park, T. Predicting Determinants of Lifelong Learning Intention Using Gradient Boosting Machine (GBM) with Grid Search. Sustainability 2022, 14, 5256. https://doi.org/10.3390/su14095256
Kim C, Park T. Predicting Determinants of Lifelong Learning Intention Using Gradient Boosting Machine (GBM) with Grid Search. Sustainability. 2022; 14(9):5256. https://doi.org/10.3390/su14095256
Chicago/Turabian StyleKim, Chayoung, and Taejung Park. 2022. "Predicting Determinants of Lifelong Learning Intention Using Gradient Boosting Machine (GBM) with Grid Search" Sustainability 14, no. 9: 5256. https://doi.org/10.3390/su14095256
APA StyleKim, C., & Park, T. (2022). Predicting Determinants of Lifelong Learning Intention Using Gradient Boosting Machine (GBM) with Grid Search. Sustainability, 14(9), 5256. https://doi.org/10.3390/su14095256