Data analysis

Multilevel modeling: Analyzing complex data when one level is not enough

When individuals are nested within groups or organizations, or when repeated measures are taken from the same individuals, data points are not independent and standard techniques such as linear regression models are not suitable. Multilevel modeling (aka linear mixed-effects regression) is an extension of linear regression models that uses additional variance and covariance terms to account for the local dependencies implied by nested data structures. How do they work? How to conduct multilevel analyses?

Italian adaptation of the Warr Job-related Affective Well-being Scale. Factorial structure and relationships with the HSE Management Standards Indicator Tool

Psychometric validation of the Italian version of the Warr's Job-related Affective Well-being Scale