We investigate public trust among the society by a statistical model suitable for panel data. At this aim, using trust’s levels measured from individual items recorded through a long-term survey we dispose of key variables with appropriate meaning. We account for the repeated and missing item responses by a hidden Markov model using longitudinal sampling weights. Since trust may be conceived as a psychological unobservable process of each person that fluctuates over time we consider observed time-varying and time-fixed individual covariates. We estimate the model parameters by a weighted log-likelihood through the Expectation–Maximization algorithm by using data collected in an East-Central European country like Poland. The latter is a country where the level of support to the national and international institutions is one of the lowest among the European member states. We apply a suitable algorithm based on the posterior probabilities to predict the best allocation to each latent typology. The proposed model is validated by generating out-of-sample responses and we find reasonable predictive values. We disentangle four hidden groups of Poles: discouraged, with no opinion, with selective trust and with fully public trust. We reveal an increasing number of people that are going to trust only some selected institutions over time.

Pennoni, F., Genge, E. (2020). Analysing the course of public trust via hidden Markov models: a focus on the Polish society. STATISTICAL METHODS & APPLICATIONS, 29(2), 399-425 [10.1007/s10260-019-00483-9].

Analysing the course of public trust via hidden Markov models: a focus on the Polish society

Pennoni, F
;
2020

Abstract

We investigate public trust among the society by a statistical model suitable for panel data. At this aim, using trust’s levels measured from individual items recorded through a long-term survey we dispose of key variables with appropriate meaning. We account for the repeated and missing item responses by a hidden Markov model using longitudinal sampling weights. Since trust may be conceived as a psychological unobservable process of each person that fluctuates over time we consider observed time-varying and time-fixed individual covariates. We estimate the model parameters by a weighted log-likelihood through the Expectation–Maximization algorithm by using data collected in an East-Central European country like Poland. The latter is a country where the level of support to the national and international institutions is one of the lowest among the European member states. We apply a suitable algorithm based on the posterior probabilities to predict the best allocation to each latent typology. The proposed model is validated by generating out-of-sample responses and we find reasonable predictive values. We disentangle four hidden groups of Poles: discouraged, with no opinion, with selective trust and with fully public trust. We reveal an increasing number of people that are going to trust only some selected institutions over time.
Articolo in rivista - Articolo scientifico
Expectation–Maximization algorithm · Missing responses · Panel data · Sampling weights · Trust-building policy discussion
English
24-lug-2019
2020
29
2
399
425
partially_open
Pennoni, F., Genge, E. (2020). Analysing the course of public trust via hidden Markov models: a focus on the Polish society. STATISTICAL METHODS & APPLICATIONS, 29(2), 399-425 [10.1007/s10260-019-00483-9].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/274708
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