Research on Predicting the Turnover of Graduates Using an Enhanced Random Forest Model
Abstract
:1. Introduction
2. Literature Review
2.1. Influencing Factors of Turnover
- (1)
- Individual background variable: Scholars pointed out that turnover intention is the most powerful predictor among predictive variables of actual individual turnover behavior and the direct antecedent variable that best predicts turnover behavior [10,11]. Weisberg and Kirschenbaum found that gender influences employee turnover behavior [12]. They explained the differences in resignation behavior between men and women. When studying the influencing factors of the voluntary resignation of college students in micro, small, and medium enterprises, researchers found that the voluntary turnover proportion of college graduates in literature, history, philosophy, and art was significantly higher than that of science and engineering students. In contrast, the voluntary turnover proportion of college graduates among different groups of family locations and college types was not significantly different [13].
- (2)
- Job characteristic variable: Martin showed that relative individuals’ salary is an important factor affecting their turnover [14]. Harald also revealed that there is a negative correlation between employee compensation, as well as benefits, and resignation behavior [15]. Saks and Ashforth found that the mismatch between personal majors and occupations has a great negative impact on turnover and job switching [16]. Roznowski and Hulin found that job satisfaction is an important antecedent variable of turnover behavior and is one of the most effective factors for researchers and managers to predict turnover intention [17]. Kang and Gatling and Kim pointed out that teachers’ turnover negatively correlates with their job satisfaction [18]. If teachers have high job satisfaction, they are more inclined to stay in their work organization rather than leave, which thereby reduces the occurrence of teacher resignation. When analyzing the impact of enterprise organization features on employee turnover, Bluedorn indicated that the more advanced the management level and mechanism system of an enterprise, the more attractive it is to employees and the lower the possibility of employee turnover [19]. Moreover, some scholars believe that places with high levels of economic development and large economic aggregates have more opportunities for occupational mobility compared with places with low levels of economic development and small economic aggregates [20].
- (3)
- Work environment variable: Sousa-Poza and Henneberger found that the resignation of employees is significantly related to their working environment [21]. Pfeffer pointed out that an efficient working environment and good working atmosphere can reduce employee turnover behavior [22]. Price believed that job opportunity is an important factor influencing the turnover intentions of employees [9]. When organizations provide employees with more development opportunities to meet individual needs, the job stability and durability of employees will be higher, and they are less likely to leave an organization. Karavardar pointed out that the resignation behavior of employees is greatly negatively related to the development opportunities of employee professional capability and the speed of job promotions [23].
2.2. Prediction Algorithm for Turnover
3. Research Methods and Design
3.1. Research Samples
3.2. Predictive Variables
3.3. Research Method
3.3.1. Data Preprocessing
3.3.2. Model Construction
3.3.3. Model Parameter Determination
4. Results
4.1. Evaluation Criterion of the Model
4.2. Prediction Performance of the Model
4.3. Influencing Factors’ Importance Analysis of Models
5. Discussion
5.1. Prediction of the Turnover of College Graduates by Bayesian Optimization Random Forest
5.2. The Effect of Individual Background and College Graduates’ Turnover
5.3. The Effect of Individual Background on College Graduates’ Turnover
5.4. The Effect of Work Environment on College Graduates’ Turnover
6. Conclusions and Implications
6.1. Conclusions
6.2. Implications
6.3. Limitations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Group | Proportion (%) |
---|---|
Gender | |
Male | 51.6 |
Female | 48.4 |
Type of College | |
Key university | 16.4 |
General university | 59.6 |
Private undergraduate and independent college | 24.0 |
Major | |
Science and engineering | 49.5 |
Humanities and social sciences | 50.5 |
Family Location | |
Large and medium-level city | 28.3 |
Towns/county-level city | 38.2 |
Rural area | 33.5 |
Income Level (CNY/Monthly) | |
1000–3000 | 16.8 |
3001–4000 | 21.5 |
4001–5000 | 23.8 |
5001–7000 | 22.3 |
Over 7000 | 15.6 |
Nature of Working Unit | |
Party and government organization | 4.9 |
Public institution | 19.6 |
State-owned enterprise | 28.1 |
Foreign-funded enterprise | 7.0 |
Private enterprise | 40.3 |
Work area | |
Eastern region | 30.6 |
Central region | 7.2 |
Western region | 62.3 |
Group | Average | Standard Deviation |
---|---|---|
Job matching degree (scored from 1 to 5) | 3.37 | 0.95 |
Job satisfaction degree (scored from 1 to 5) | 3.50 | 0.70 |
Job opportunity (scored from 1 to 5) | 3.39 | 0.86 |
Work atmosphere (scored from 1 to 5) | 3.95 | 0.68 |
Work pressure (scored from 1 to 5) | 2.28 | 0.55 |
Turnover intention (scored from 1 to 5) | 2.90 | 0.90 |
Model | Predictive Class | Overall Accuracy (%) | Accuracy (%) | Recall (%) | Value | AUC Value | Running Time (s) |
---|---|---|---|---|---|---|---|
LR | Non-resigned | 69.1 | 87.3 | 73.0 | 0.79 | 0.64 | 0.07 |
Resigned | 32.7 | 55.9 | 0.42 | ||||
RF | Non-resigned | 73.5 | 84.6 | 84.1 | 0.85 | 0.59 | 0.58 |
Resigned | 34.3 | 35.4 | 0.35 | ||||
SVM | Non-resigned | 67.6 | 86.9 | 70.3 | 0.78 | 0.63 | 2.54 |
Resigned | 31.6 | 56.3 | 0.41 | ||||
CNN | Non-resigned | 69.6 | 86.1 | 74.2 | 0.80 | 0.62 | 5.82 |
Resigned | 32.5 | 51.0 | 0.40 | ||||
BORF | Non-resigned | 78.6 | 85.1 | 89.2 | 0.87 | 0.69 | 0.12 |
Resigned | 35.2 | 68.1 | 0.46 |
Influence Factor | Ranking | Relative Importance | Accumulative Importance (%) |
---|---|---|---|
Income level | 1 | 0.1579 | 15.8 |
Turnover intention | 2 | 0.1349 | 29.3 |
Job satisfaction degree | 3 | 0.1303 | 42.3 |
Job opportunity | 4 | 0.1051 | 52.8 |
Job matching degree | 5 | 0.1018 | 63.0 |
Nature of working unit | 6 | 0.0752 | 70.5 |
Type of colleges | 7 | 0.0561 | 76.1 |
Family location | 8 | 0.0555 | 81.7 |
Work atmosphere | 9 | 0.0502 | 86.7 |
Work area | 10 | 0.0371 | 90.4 |
Gender | 11 | 0.0331 | 93.7 |
Work pressure | 12 | 0.0322 | 96.9 |
Major | 13 | 0.0308 | 100.0 |
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Liu, M.; Yang, B.; Song, Y. Research on Predicting the Turnover of Graduates Using an Enhanced Random Forest Model. Behav. Sci. 2024, 14, 562. https://doi.org/10.3390/bs14070562
Liu M, Yang B, Song Y. Research on Predicting the Turnover of Graduates Using an Enhanced Random Forest Model. Behavioral Sciences. 2024; 14(7):562. https://doi.org/10.3390/bs14070562
Chicago/Turabian StyleLiu, Min, Bo Yang, and Yuhang Song. 2024. "Research on Predicting the Turnover of Graduates Using an Enhanced Random Forest Model" Behavioral Sciences 14, no. 7: 562. https://doi.org/10.3390/bs14070562
APA StyleLiu, M., Yang, B., & Song, Y. (2024). Research on Predicting the Turnover of Graduates Using an Enhanced Random Forest Model. Behavioral Sciences, 14(7), 562. https://doi.org/10.3390/bs14070562