ANEXO C. ****** Method 1 (space saver) will be used for this analysis ****** R E L I A B I L I T Y A N A L Y S I S S C A L E (A L P H A)

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ANEXO C Alfa del factor de motivación general ****** Method (space saver) will be used for this analysis ****** R E L I A B I L I T Y A N A L Y S I S S C A L E (A L P H A) Item total Statistics Scale Scale Corrected Mean Variance Item Alpha if Item if Item if Item Deleted Deleted Correlation Deleted PE.7 5.6.6.004 P4I.54.774.65.004 P5I.4576.05.7067.85 P6I.44 0.0560.767.8 P7E.044.04.6854.870 P8I.780 0.70.778.86 P0I.644.05.65.80 PE.6780.857.65.00 PE.665.507.4788.00 PI.076 0.666.7468.80 Analysis of Variance Source of Variation Sum of Sq. DF Mean Square F Prob. Between People 6.776 7.7844 Within People.6000 06.7 Between Measures 55.44 6.4.868.0000 Residual 44.576 05.766 Nonadditivity 8.64 8.64 6.86.00 Balance 5.6084 05.66 0.76 7.5550 Grand Mean 4.678 Tukey estimate of power to which observations must be raised to achieve additivity =.4770 Reliability Coefficients N of Cases = 8.0 N of Items = 0 Alpha =.074

Alfa del factor de sin motivación ****** Method (space saver) will be used for this analysis ****** R E L I A B I L I T Y A N A L Y S I S S C A L E (A L P H A) Item total Statistics Scale Scale Corrected Mean Variance Item Alpha if Item if Item if Item Deleted Deleted Correlation Deleted PSM.584.47.884.57 PE.44.068.40.54 PE.7.4755.74.5 P4SM.648.6.60.548 Analysis of Variance Source of Variation Sum of Sq. DF Mean Square F Prob. Between People 55.00 4.570 Within People 70.500 66.60 Between Measures 4.0 4.040 7.74.000 Residual 65. 6.858 Nonadditivity.007.007.00.50 Balance 65.0 6.808 54.60 487.5755 Grand Mean 4.88 Tukey estimate of power to which observations must be raised to achieve additivity =.477 Reliability Coefficients N of Cases =.0 N of Items = 4 Alpha =.607

Alfa del factor de satisfacción general ****** Method (space saver) will be used for this analysis ****** R E L I A B I L I T Y A N A L Y S I S S C A L E (A L P H A) Item total Statistics Scale Scale Corrected Mean Variance Item Alpha if Item if Item if Item Deleted Deleted Correlation Deleted P5E 40.76 5.04.448.885 P6I 40.847 0.6.66.874 P7E 40.8860 0.8807.5655.8786 P8I 40.64 08.887.5866.8774 PE 40.877 0.554.60.876 P0I 40.78 07.0847.765.864 PI 40.56 08.47.587.8777 P4I 4. 0.68.647.87 P5E 4.064 0.67.6485.876 P7E 4.0000 06.460.648.876 PE 4.5000 08.800.57.8785 Analysis of Variance Source of Variation Sum of Sq. DF Mean Square F Prob. Between People 44.76.854 Within People 50.66 40.5 Between Measures 6. 0 6. 4.550.0000 Residual 5.08 0.5 Nonadditivity.8648.8648.68.44 Balance 58.660.56 4.5 5.40 Grand Mean 4.07 Tukey estimate of power to which observations must be raised to achieve additivity =.4706 Reliability Coefficients N of Cases = 4.0 N of Items = Alpha =.886

Alfa del factor de intenciones de rotación de personal ****** Method (space saver) will be used for this analysis ****** R E L I A B I L I T Y A N A L Y S I S S C A L E (A L P H A) Item total Statistics Scale Scale Corrected Mean Variance Item Alpha if Item if Item if Item Deleted Deleted Correlation Deleted P0 8.844 7.7.74.8077 P.00 7.57.787.86 P 8.86 6.745.7.8056 Analysis of Variance Source of Variation Sum of Sq. DF Mean Square F Prob. Between People 67.47 5.854 Within People 56.0000 44.6 Between Measures.704.855.480.054 Residual 5.86 4.6 Nonadditivity.54.54.674.4 Balance 5.84 4.60 78.47 65.464 Grand Mean 4.486 Tukey estimate of power to which observations must be raised to achieve additivity =.86 Reliability Coefficients N of Cases =.0 N of Items = Alpha =.8786

Análisis descriptivo del factor de motivación general Descriptive Statistics F_M N (listwise) N Range Minimum Maximum Mean Std. Deviation Variance 4.70.00 6.70 4.8.584.4 Análisis descriptivo del factor sin motivación Descriptive Statistics F_SM N (listwise) N Range Minimum Maximum Mean Std. Deviation Variance 5.00.00 6.00 4.866.06485.4 Análisis descriptivo del factor de satisfacción general Descriptive Statistics F_S N (listwise N Range Minimum Maximum Mean Std. Deviation Variance 5.8.6 6.55 4.48.048.08 Análisis descriptivo del factor de intenciones de rotación Descriptive Statistics F_IR N (listwise N Range Minimum Maximum Mean Std. Deviation Variance 5..00 6. 4.474.65.7

Análisis descriptivo de los datos generales Ocupación o puesto P ocupación o puesto 4 5 8 4 5 6 7 8 0 6 4 6 7 4 4 46 47 5 54 56 57 60 64 66 68 70 Frequency 5 4. 4. 4. 5 4. 4. 8. 6 4. 4..0.6.6 4.6 5 4. 4. 8.7 6 4. 4..6 5 4. 4. 7.6.6.6..8.8 0..8.8 0..6.6.5 5 4. 4. 6.6.6.6 8..4.4 40.7.6.6 4..8.8 4..6.6 44.7 4.. 48.0.6.6 4.6.6.6 5..8.8 5.0 6 4. 4. 56. 4.. 60..6.6 6.8.4.4 64..8.8 65.0.8.8 65..4.4 68..8.8 6..8.8 6. 7. 7. 87.0.4.4 8.4.8.8 0..8.8. 5 4. 4. 5..6.6 6.7 4.. 00.0 00.0 00.0

4 5 Antigüedad en la empresa P4 antigüedad en la empresa Frequency 8.7.. 7 0. 0.8 50.0 4.8 40.8 0.8 7. 7.5 8..6.7 00.0 0 7.6 00.0.4 00.0 Género P6 género Frequency 80 65.0 65.0 65.0 4 5.0 5.0 00.0 00.0 00.0 Escolaridad 4 5 6 7 P5 escolaridad Frequency 0 8. 8.4 8.4 5.4 6.0 4.4 8.7. 4.7 5..6 56. 47 8..5 5.8 4..4..8.8 00.0 6.7 00.0 4. 00.0

Edad P7 edad Frequency 6.0.. 70 56. 57.4 70.5 6..5 00.0. 00.0.8 00.0 Situación laboral P8 situación laboral Frequency 64 5.0 5. 5. 4 7.6 8. 8.7 7. 8. 00.0 0 7.6 00.0.4 00.0 Horario de trabajo P tipo de horario Frequency 5 4. 4.4 4.4 0.6 0.7 54. 56 45.5 45. 00.0. 00.0.8 00.0