Transitioning from the University to the Workplace: A Duration Model with Grouped Data
Abstract
:1. Introduction
2. Background
3. Length of Time to the First Job: An Exploratory Analysis
4. Methodology
4.1. Duration Models
4.2. Grouped or Discrete-Time Duration Data
5. Factors Influencing the University-to-Work Transition Duration
6. Conclusions
Funding
Data Availability Statement
Conflicts of Interest
References
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TIME | * Intervals as They Appeared in the Survey | Full Sample | Subsample | ||
---|---|---|---|---|---|
Observations | Percentage | Observations | Percentage | ||
0 | S/he continued for at least 6 months in the work s/he had while studying | 7819 | 27.36 | 4396 | 26.04 |
1 | Less than 3 months | 6916 | 24.20 | 4714 | 27.92 |
2 | From 3 to 6 months | 3290 | 11.51 | 1891 | 11.20 |
3 | From 6 months to 1 year | 3538 | 12.38 | 2189 | 12.97 |
4 | From 1 year to a year and a half | 2466 | 8.63 | 1388 | 8.22 |
5 | For 1 year and a half to 2 years | 1506 | 5.27 | 821 | 4.86 |
6 | More than two years | 3045 | 10.65 | 1484 | 8.79 |
Total | 28,580 | 100.00 | 16,883 | 100.00 |
TIME | Intervals as They Appeared in the Survey | Arts and Humanities | Hard Sciences | Social and Legal Sciences | Engineering and Architecture | Health Sciences | |||||
---|---|---|---|---|---|---|---|---|---|---|---|
Percentage | Accumulated Percentage | Percentage | Accumulated Percentage | Percentage | Accumulated Percentage | Percentage | Accumulated Percentage | Percentage | Accumulated Percentage | ||
0 | S/he continued for at least 6 months in the work s/he had while studying | 33.19 | 33.19 | 22.57 | 22.57 | 31.77 | 31.77 | 28.01 | 28.01 | 10.99 | 10.99 |
1 | Less than 3 months | 16.04 | 49.23 | 18.93 | 41.50 | 19.83 | 51.60 | 29.24 | 57.25 | 39.76 | 50.75 |
2 | From 3 to 6 months | 8.46 | 57.69 | 11.79 | 53.29 | 11.20 | 62.80 | 12.29 | 69.54 | 13.29 | 64.04 |
3 | From 6 months to 1 year | 9.19 | 66.88 | 12.63 | 65.93 | 11.65 | 74.45 | 9.33 | 78.87 | 22.03 | 86.07 |
4 | From 1 year to a year and a half | 11.10 | 77.97 | 12.92 | 78.85 | 8.79 | 83.24 | 6.45 | 85.32 | 6.86 | 92.93 |
5 | For a year and a half to 2 years | 7.52 | 85.49 | 7.79 | 86.64 | 5.38 | 88.63 | 4.43 | 89.74 | 2.86 | 95.79 |
6 | More than 2 years | 14.51 | 100.00 | 13.36 | 100.00 | 11.37 | 100.00 | 10.26 | 100.00 | 4.21 | 100.00 |
Total | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | ||||||
Observations (full sample) | 2874 | 2747 | 12,599 | 6484 | 3876 | ||||||
0 | S/he continued for at least 6 months in the work s/he had while studying | 37.74 | 37.74 | 20.50 | 20.50 | 31.37 | 31.37 | 29.86 | 29.86 | 7.56 | 7.56 |
1 | Less than 3 months | 15.66 | 53.40 | 22.25 | 42.74 | 22.51 | 53.88 | 31.44 | 61.30 | 43.01 | 50.57 |
2 | From 3 to 6 months | 8.15 | 61.55 | 11.12 | 53.87 | 10.63 | 64.51 | 11.74 | 73.03 | 13.16 | 63.73 |
3 | From 6 months to 1 year | 9.11 | 70.67 | 13.36 | 67.23 | 11.45 | 75.97 | 8.22 | 81.26 | 23.90 | 87.63 |
4 | From 1 year to a year and a half | 10.27 | 80.94 | 12.64 | 79.87 | 8.97 | 84.93 | 5.86 | 87.11 | 6.55 | 94.18 |
5 | For a year and a half to 2 years | 6.87 | 87.80 | 7.68 | 87.55 | 5.28 | 90.21 | 4.16 | 91.27 | 2.52 | 96.69 |
6 | More than 2 years | 12.20 | 100.00 | 12.45 | 100.00 | 9.79 | 100.00 | 8.73 | 100.00 | 3.31 | 100.00 |
Total | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | ||||||
Observations (subsample) | 1558 | 1654 | 6312 | 4183 | 3176 |
Explanatory Variable § | Full Sample | Subsample |
---|---|---|
Mean | Mean | |
GENDER (=1 male) | 0.403 | 0.409 |
AGE 1 (under 30 years old) | 0.588 | 0.588 |
AGE 2 (from 30 to 34 years old) | 0.254 | 0.241 |
AGE 3 (35 years old or older) | 0.157 | 0.171 |
INTERNSHIP (=1 yes) | 0.613 | 0.638 |
UNIVERSITY (=1 private) | 0.143 | 0.164 |
FIELD OF STUDY 1 (Arts and Humanities) | 0.101 | 0.092 |
FIELD OF STUDY 2 (Hard Sciences) | 0.096 | 0.098 |
FIELD OF STUDY 3 (Social and Legal Sciences) | 0.441 | 0.374 |
FIELD OF STUDY 4 (Engineering and Architecture) | 0.227 | 0.248 |
FIELD OF STUDY 5 (Health Sciences) | 0.136 | 0.188 |
Observations | 28,580 | 16,883 |
Variable | Model 1 | Model 2 | ||||
---|---|---|---|---|---|---|
Coefficient | Standard Error | Coefficient | Standard Error | |||
Index function for probability | ||||||
Constant | 0.2460 | ** | 2.29 × 10−2 | 0.2363 | ** | 3.02 × 10−2 |
GENDER (=1 male) | −0.0412 | ** | 1.56 × 10−2 | −0.0490 | ** | 2.04 × 10−2 |
AGE 1 (under 30 years old) | 0.4405 | ** | 1.69 × 10−2 | 0.4772 | ** | 2.24 × 10−2 |
AGE 2 (from 30 to 34 years old) | reference | reference | ||||
AGE 3 (35 years old or older) | −0.9576 | ** | 2.91 × 10−2 | −0.9915 | ** | 3.73 × 10−2 |
INTERNSHIP (=1 yes) | −0.0722 | ** | 1.61 × 10−2 | −0.0507 | ** | 2.18 × 10−2 |
UNIVERSITY (=1 private) | −0.1692 | ** | 2.07 × 10−2 | −0.2104 | ** | 2.58 × 10−2 |
FIELD OF STUDY 1 (Arts and Humanities) | 0.0301 | 2.83 × 10−2 | −0.0098 | 3.88 × 10−2 | ||
FIELD OF STUDY 2 (Hard Sciences) | 0.1732 | ** | 2.71 × 10−2 | 0.2593 | ** | 3.47 × 10−2 |
FIELD OF STUDY 3 (Social and Legal Sciences) | −0.0853 | ** | 2.01 × 10−2 | −0.0215 | 2.64 × 10−2 | |
FIELD OF STUDY 4 (Engineering and Architecture) | reference | reference | ||||
FIELD OF STUDY 5 (Health Sciences) | 0.1363 | ** | 2.51 × 10−2 | 0.2298 | ** | 3.03 × 10−2 |
Threshold parameters for index | ||||||
Mu (1) | 0.7399 | ** | 7.47 × 10−3 | 0.8832 | ** | 1.05 × 10−2 |
Mu (2) | 1.1197 | ** | 9.00 × 10−3 | 1.2683 | ** | 1.24 × 10−2 |
Mu (3) | 1.6258 | ** | 1.15 × 10−2 | 1.8365 | ** | 1.61 × 10−2 |
Mu (4) | 2.1179 | ** | 1.45 × 10−2 | 2.3631 | ** | 2.05 × 10−2 |
Mu (5) | 2.5531 | ** | 1.79 × 10−2 | 2.8336 | ** | 2.58 × 10−2 |
Ordered probability model | ||||||
Maximum likelihood estimates | ||||||
Dependent variable | TIME | TIME | ||||
Number of observations | 28,580 | 16,883 | ||||
Log-likelihood function | −49,567.73 | −28,466.79 | ||||
Restricted log-likelihood | −51,744.17 | −30,099.51 | ||||
Chi-squared | 4352.888 | 3265.438 | ||||
Degrees of freedom | 9 | 9 | ||||
Prob[ChiSqd > value] | 0.0000 | 0.0000 | ||||
Underlying probabilities based on Gompertz | ||||||
Both models were run using LIMDEP (econometric software by William H. Greene) | ||||||
** Level of significance at 5% |
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Salas-Velasco, M. Transitioning from the University to the Workplace: A Duration Model with Grouped Data. Stats 2024, 7, 719-731. https://doi.org/10.3390/stats7030043
Salas-Velasco M. Transitioning from the University to the Workplace: A Duration Model with Grouped Data. Stats. 2024; 7(3):719-731. https://doi.org/10.3390/stats7030043
Chicago/Turabian StyleSalas-Velasco, Manuel. 2024. "Transitioning from the University to the Workplace: A Duration Model with Grouped Data" Stats 7, no. 3: 719-731. https://doi.org/10.3390/stats7030043
APA StyleSalas-Velasco, M. (2024). Transitioning from the University to the Workplace: A Duration Model with Grouped Data. Stats, 7(3), 719-731. https://doi.org/10.3390/stats7030043