The Role of Self-Efficacy, Motivation, and Connectedness in Dropout Intention in a Sample of Italian College Students
Abstract
:1. Introduction
2. Materials and Methods
2.1. Measures
2.2. Statistical Analysis
3. Results
3.1. Characteristics of the Sample
3.2. Multiple Regression
3.3. Confirmatory Factor Analysis (CFA)
3.4. Structural Equation Modeling (SEM)
3.5. Multi-Group Analysis
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Variables | n (%) |
---|---|
Gender | |
Male | 284 (35.9) |
Female | 501 (63.4) |
Other | 5 (0.6) |
Relationship status | |
Single | 451 (57.1) |
Married/cohabitant | 25 (3.2) |
In a relationship | 311 (39.4) |
Separated/divorced/widower | 3 (0.4) |
Incoming school | |
High school | 437 (55.3) |
Technical school | 290 (36.7) |
Vocational school | 63 (8.0) |
Mother’s educational level | |
Primary school | 22 (2.8) |
Secondary school | 253 (32.0) |
High school | 351 (44.4) |
University/postgraduate specialization | 164 (20.7) |
Father’s educational level | |
Primary school | 28 (3.5) |
Secondary school | 276 (34.9) |
High school | 346 (43.8) |
University/postgraduate specialization | 140 (17.7) |
Area of residence | |
Rural (Up to 100.000 residents) | 613 (77.6) |
Urban (Over 100.000 residents) | 177 (22.4) |
Income bracket | |
Up to 36.151.98 € | 427 (54.1) |
From 36.151.99 to 70.000 € | 232 (29.4) |
From 70.001 to 100.000 € | 90 (11.4) |
Over 100.000 € | 41 (5.2) |
Working student | |
Yes | 267 (33.8) |
No | 523 (66.2) |
Scale/Item | Estimate | α | CR | AVE |
---|---|---|---|---|
Extrinsic motivation | 0.870 | 0.871 | 0.494 | |
AMS_1 | 0.823 | |||
AMS_6 | 0.931 | |||
AMS_11 | 0.876 | |||
AMS_13 | 0.775 | |||
Intrinsic motivation | 8/8 | 0.938 | 0.925 | 0.611 |
AMS_4 | 0.892 | |||
AMS_5 | 0.718 | |||
AMS_9 | 0.813 | |||
AMS_10 | 0.700 | |||
AMS_14 | 0.889 | |||
AMS_15 | 0.680 | |||
AMS_19 | 0.908 | |||
AMS_20 | 0.593 | |||
Connectedness | 0.868 | 0.865 | 0.479 | |
UCS_3 | 0.597 | |||
UCS_5 | 0.671 | |||
UCS_8 | 0.771 | |||
UCS_10 | 0.734 | |||
UCS_12 | 0.591 | |||
UCS_13 | 0.741 | |||
UCS_14 | 0.719 | |||
Self-efficacy | 0.875 | 0.871 | 0.495 | |
SASP_1 | 0.790 | |||
SASP_2 | 0.794 | |||
SASP_3 | 0.705 | |||
SASP_5 | 0.731 | |||
SASP_6 | 0.717 | |||
SASP_7 | 0.583 | |||
SASP_8 | 0.573 | |||
Dropout | 0.930 | 0.927 | 0.761 | |
dropout_1 | 0.838 | |||
dropout_2 | 0.771 | |||
dropout_3 | 0.936 | |||
dropout_4 | 0.934 | |||
Self-learning | 0.870 | 0.871 | 0.494 | |
SRK_6 | 0.565 | |||
SRK_8 | 0.762 | |||
SRK_3 | 0.646 | |||
SRK_13 | 0.677 | |||
SRK_15 | 0.728 | |||
SRK_10 | 0.782 | |||
SRK_5 | 0.734 |
Configural Invariance | Metric Invariance | |||||||||
---|---|---|---|---|---|---|---|---|---|---|
Factor | χ2 (df) | p | CFI | TLI | RMSEA | Δχ2 (df) | p | ΔCFI | ΔTLI | ΔRMSEA |
Gender | 2227.59 (1200) | <0.001 | 0.948 | 0.942 | 0.033 | 40.07 (31) | 0.127 | 0.000 | 0.001 | 0.000 |
Parents’ educational level * | 3066.13 (1800) | <0.001 | 0.934 | 0.927 | 0.031 | 99.88 (62) | 0.002 | 0.002 | 0.000 | 0.031 |
Attendance | 2177.62 (1200) | <0.001 | 0.950 | 0.945 | 0.032 | 57.14 (31) | 0.003 | 0.001 | 0.000 | 0.032 |
School | 3215.44 (1800) | <0.001 | 0.931 | 0.923 | 0.032 | 70.83 (62) | 0.207 | 0.001 | 0.002 | 0.001 |
Study | 3938.97 (2400) | <0.001 | 0.925 | 0.917 | 0.029 | 157.55 (93) | <0.001 | 0.003 | 0.001 | 0.000 |
Relationship ** | 2239.61 (1200) | <0.001 | 0.947 | 0.941 | 0.034 | 43.02 (31) | 0.074 | 0.001 | 0.001 | 0.000 |
Path | Total Effects | Direct Effects | Indirect Effects | Interpretation | |||
---|---|---|---|---|---|---|---|
β | 95% CI | β | 95% CI | β | 95% CI | Interpretation | |
SE-SL | 0.42 | [0.35, 0.49] | 0.42 | [0.35, 0.49] | - | - | Direct relationship |
SE-IM | 0.35 | [0.26, 0.42] | 0.23 | [0.15, 0.32] | 0.11 | [0.08, 0.16] | Partial mediation |
SE-DO Ind1 | −0.23 | [−0.31, −0.15] | −0.18 | [−0.27, −0.10] | −0.03 | [−0.05, −0.01] | Partial mediation |
SE-DO Ind2 | −0.23 | [−0.31, −0.15] | −0.18 | [−0.27, −0.10] | −0.05 | [−0.09, −0.02] | Partial mediation |
CO-EM | −0.45 | [−0.52, −0.38] | −0.45 | [−0.53, −0.37] | - | - | Direct relationship |
CO-DO | −0.46 | [−0.54, −0.37] | −0.42 | [−0.51, −0.33] | −0.04 * | [−0.08, 0.00] | Direct relationship |
SL-IM | 0.27 | [0.18, 0.35] | 0.27 | [0.18, 0.35] | - | - | Direct relationship |
SL-DO | −0.04 | [−0.07, −0.02] | - | - | −0.04 | [−0.07, −0.02] | Partial mediation |
EM-DO | 0.08 * | [−0.01, 0.17] | 0.08 * | [−0.01, 0.17] | - | - | No relationship |
IM-DO | −0.14 | [−0.22, −0.06] | −0.14 | [−0.22, −0.06] | - | - | Direct relationship |
n | SE-SL | CO-EM | SE-IM | SL-IM | CO-DO | IM-DO | EM-DO | SE-DO | |
---|---|---|---|---|---|---|---|---|---|
Gender | ns | ns | ns | ns | ns | ns | ns | ns | |
Male (1) | 284 | 0.45 *** (0.10) | −0.43 *** (0.12) | 0.23 ** (0.16) | 0.28 *** (0.16) | −0.42 *** (0.07) | −0.15 * (0.05) | 0.08 ns (0.03) | −0.17 * (0.11) |
Female (2) | 501 | 0.42 *** (0.06) | −0.46 *** (0.07) | 0.25 *** (0.14) | 0.23 *** (0.16) | −0.41 *** (0.05) | −0.14 *** (0.03) | 0.08 ns (0.03) | −0.19 *** (0.08) |
Relationship status | ns | ns | ns | ns | ns | ns | (1 vs. 2) | (1 vs. 2) | |
Single (1) | 451 | 0.38 *** (0.07) | −0.48 *** (0.08) | 0.27 *** (0.15) | 0.28 *** (0.13) | −0.37 *** (0.05) | −0.10 * (0.03) | 0.02 ns (0.03) | −0.28 *** (0.09) |
Engaged (1) | 311 | 0.51 *** (0.08) | −0.45 *** (0.11) | 0.19 * (0.16) | 0.27 *** (0.19) | −0.46 *** (0.07) | −0.11 * (0.04) | 0.21 *** (0.04) | −0.09 ns (0.09) |
Parents’ education level | ns | (1 vs. 2, 3) | (1 vs. 2, 3) | ns | ns | ns | ns | (1 vs. 2, 3) | |
Secondary school (1) | 276 | 0.44 *** (0.09) | −0.38 *** (0.08) | 0.12 ns (0.17) | 0.37 *** (0.17) | −0.53 *** (0.05) | −0.24 *** (0.04) | 0.02 ns (0.04) | −0.11 ns (0.09) |
High school (2) | 346 | 0.39 *** (0.07) | −0.48 *** (0.10) | 0.29 *** (0.15) | 0.21 ** (0.15) | −0.46 *** (0.08) | −0.12 * (0.04) | 0.08 ns (0.03) | −0.17 ** (0.10) |
University (3) | 113 | 0.39 *** (0.07) | −0.48 *** (0.10) | 0.29 *** (0.15) | 0.21 ** (0.15) | −0.46 *** (0.08) | −0.12 * (0.04) | 0.08 ns (0.03) | −0.17 ** (0.10) |
Incoming school | (3 vs. 1, 2) | ns | (3 vs. 1, 2) | (2 vs. 3) | ns | (3 vs. 1, 2) | (1 vs. 2, 3) | (3 vs. 1, 2) | |
High school (1) | 437 | 0.46 *** (0.07) | −0.48 *** (0.09) | 0.20 *** (0.14) | 0.28 *** (0.16) | −0.41 *** (0.06) | −0.11 * (0.03) | 0.11 * (0.03) | −0.18 * (0.09) |
Technical institute (2) | 290 | 0.38 *** (0.08) | −0.40 *** (0.09) | 0.29 *** (0.16) | 0.21 ** (0.13) | −0.44 *** (0.06) | −0.17 ** (0.04) | 0.05 ns (0.03) | −0.14 * (0.10) |
Vocational institute (3) | 63 | 0.14 ns (0.17) | −0.54 *** (0.23) | 0.26 ns (0.49) | 0.49 ** (0.49) | −0.42 * (0.13) | −0.16 ns (0.05) | 0.08 ns (0.07) | −0.25 ns (0.27) |
Area of study | (4 vs. 1, 2, 3) | (1 vs. 2, 4) (3 vs. 4) | (4 vs. 1, 2, 3) | (4 vs. 1, 2, 3) | ns | (4 vs. 1, 2, 3) | (3 vs. 1, 2, 4) | (1, 2 vs. 3, 4) | |
Medicine (1) | 337 | 0.40 *** (0.08) | −0.50 *** (0.12) | 0.29 *** (0.19) | 0.18 ** (0.18) | −0.39 *** (0.07) | −0.14 ** (0.03) | 0.04 ns (0.03) | −0.21 ** (0.10) |
Economy (2) | 195 | 0.42 *** (0.13) | −0.32 *** (0.12) | 0.24 * (0.19) | 0.28 ** (0.14) | −0.38 *** (0.06) | −0.08 ns (0.06) | 0.08 ns (0.04) | −0.21 ** (0.14) |
Engineering (3) | 205 | 0.44 *** (0.08) | −0.47 *** (0.11) | 0.19 * (0.16) | 0.31 ** (0.22) | −0.45 *** (0.07) | −0.05 ns (0.05) | 0.19 ** (0.04) | −0.15 ns (0.11) |
Law (4) | 53 | 0.31 ns (0.14) | −0.42 * (0.10) | −0.01 ns (0.16) | 0.43 ns (0.35) | −0.62 ** (0.19) | −0.32 * (0.23) | −0.05 ns (0.21) | −0.02 ns (0.25) |
Class attendance | ns | ns | (1 vs. 2) | ns | ns | (1 vs. 2) | (1 vs. 2) | ns | |
Less than 70% (1) | 148 | 0.33 ** (0.13) | −0.38 *** (0.13) | 0.19 ns (0.18) | 0.20 * (0.14) | −0.43 *** (0.08) | −0.30 ** (0.08) | 0.03 ns (0.05) | −0.18 * (0.13) |
More than 70% (2) | 642 | 0.43 *** (0.06) | −0.45 *** (0.08) | 0.21 *** (0.12) | 0.30 *** (0.14) | −0.40 *** (0.05) | −0.08 ns (0.02) | 0.11 ** (0.03) | −0.18 *** (0.07) |
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Buizza, C.; Cela, H.; Sbravati, G.; Bornatici, S.; Rainieri, G.; Ghilardi, A. The Role of Self-Efficacy, Motivation, and Connectedness in Dropout Intention in a Sample of Italian College Students. Educ. Sci. 2024, 14, 67. https://doi.org/10.3390/educsci14010067
Buizza C, Cela H, Sbravati G, Bornatici S, Rainieri G, Ghilardi A. The Role of Self-Efficacy, Motivation, and Connectedness in Dropout Intention in a Sample of Italian College Students. Education Sciences. 2024; 14(1):67. https://doi.org/10.3390/educsci14010067
Chicago/Turabian StyleBuizza, Chiara, Herald Cela, Giulio Sbravati, Sara Bornatici, Giuseppe Rainieri, and Alberto Ghilardi. 2024. "The Role of Self-Efficacy, Motivation, and Connectedness in Dropout Intention in a Sample of Italian College Students" Education Sciences 14, no. 1: 67. https://doi.org/10.3390/educsci14010067
APA StyleBuizza, C., Cela, H., Sbravati, G., Bornatici, S., Rainieri, G., & Ghilardi, A. (2024). The Role of Self-Efficacy, Motivation, and Connectedness in Dropout Intention in a Sample of Italian College Students. Education Sciences, 14(1), 67. https://doi.org/10.3390/educsci14010067