| province | R Documentation |
Province dataset example
province
This data set allows to estimate the relationships among Health (HEALTH),
Education and training (EDU) and Economic well-being (ECOW)
in the Italian provinces using a subset of the indicators collected by the Italian Statistical
Institute (ISTAT) to measure equitable and sustainable well-being (BES, from the Italian Benessere
Equo e Sostenibile) in territories. Data refers to the 2019 edition of the BES report (ISTAT, 2018,
2019a, 2019b). A subset of 16 indicators (manifest variables) are observed on the 110 Italian provinces
and metropolitan cities (i.e. at NUTS3 level) to measure the latent variables HEALTH, EDU
and ECOW. The interest in such an application concerns both advances in knowledge
about the dynamics producing the well-being outcomes at local level (multiplier effects or trade-offs)
and a more complete evaluation of regional inequalities of well-being.
Data Strucuture
A data frame with 110 Italian provinces and metropolitan cities and 16 variables (i.e., indicators) related to three latent variables: Health (3 indicators), Education and training (7 indicators), and Economic well-being (6 indicators).
Manifest variables description for each latent variable:
Education and training (EDU)
EDU1(O.2.2):people with at least upper secondary education level (25-64 years old)
EDU2(O.2.3):people having completed tertiary education (30-34 years old)
EDU3(O.2.4):first-time entry rate to university by cohort of upper secondary graduates
EDU4(O.2.5aa):people not in education, employment or training (Neet)
EDU5(O.2.6):ratio of people aged 25-64 years participating in formal or non-formal education to the total people aged 25-64 years
EDU6(O_2.7_2.8):scores obtained in the tests of functional skills of the students in the II classes of upper secondary education
EDU7(O_2.7_2.8_A):Differences between males and females students in the level of numeracy and literacy
Economic wellbeing (ECOW)
ECOW1(O.4.1):per capita disposable income
ECOW2(O.4.4aa):pensioners with low pension amount
ECOW3(O.4.5):per capita net wealth
ECOW4(O.4.6aa):rate of bad debts of the bank loans to families
ECOW5(O.4.2):average annual salary of employees
ECOW6(O.4.3):average annual amount of pension income per capita
#'
Health (HEALTH)
HEALTH1(O.1.1F):life expectancy at birth of females
HEALTH2(O.1.1M):life expectancy at birth of males
HEALTH3(O.1.2.MEAN_aa):infant mortality rate
For a full description of the variables, see table 3 of Davino et al. (2020).
Davino, C., Dolce, P., Taralli, S. and Vistocco, D. (2020). Composite-based path modeling for conditional quantiles prediction. An application to assess health differences at local level in a well-being perspective. Social Indicators Research, doi:10.1007/s11205-020-02425-5.
Davino, C., Dolce, P., Taralli, S., Esposito Vinzi, V. (2018). A quantile composite-indicator approach for the measurement of equitable and sustainable well-being: A case study of the italian provinces. Social Indicators Research, 136, pp. 999–1029, doi: 10.1007/s11205-016-1453-8
Davino, C., Dolce, P., Taralli, S. (2017). Quantile composite-based model: A recent advance in pls-pm. A preliminary approach to handle heterogeneity in the measurement of equitable and sustainable well-being. In Latan, H. and Noonan, R. (eds.), Partial Least Squares Path Modeling: Basic Concepts, Methodological Issues and Applications (pp. 81–108). Cham: Springer.
ISTAT. (2019a). Misure del Benessere dei territori. Tavole di dati. Rome, Istat.
ISTAT. (2019b). Le differenze territoriali di benessere - Una lettura a livello provinciale. Rome, Istat.
ISTAT. (2018). Bes report 2018: Equitable and sustainable well-being in Italy. Rome, Istat.
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.