Conference Agenda

Overview and details of the sessions of this conference. Please select a date or location to show only sessions at that day or location. Please select a single session for detailed view (with abstracts and downloads if available).

 
 
Session Overview
Session
New data and methods in population studies
Time:
Thursday, 05/June/2025:
4:00pm - 5:30pm

Session Chair: Fabio Aiello
Location: Aula 12

60 seats

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Presentations

Bayesian analysis of spatio-temporal patterns of mortality in Italy using the Lee-Carter model

Sara Martino, Francesca Fiori, Andrea Riebler

University of Strathclyde, UNITED KINGDOM

We extend the classical Lee-Carter model by adding spatial components to analyze subnational variation in age-specific mortality in Italy over time. A Bayesian framework is used, incorporating smoothing priors to borrow strength across regions and time periods, improving model accuracy. The model is estimated with the inlabru package, which extends the INLA methodology for non-linear models. Mortality data for males and females from 107 Italian provinces between 2002 and 2022 are analyzed, revealing significant geographical and age-specific mortality disparities. For example, the well-known North-South socio-economic divide is reflected in higher mortality rates among children aged 0-10, while elevated mortality is observed among working-age men in industrialized regions in the North-West and certain Southern provinces. The findings demonstrate how Bayesian extensions of the Lee-Carter framework can enhance understanding of variations in mortality, by explicitly incorporating a geographical component which can account for different underlying socio-economic or environmental risks. Future work may involve incorporating cause-specific mortality or including socioeconomic covariates, allowing for more targeted public health measures to address mortality disparities across Italy’s provinces.



Responding to surveys using smart devices: what do people think and do in Italy?

Monica Perez, Sandra Cipparrone, Barbara D'Amen, Federico De Cicco, Barbara Lorè, Alessandra Nuccitelli, Linda Porciani

ISTAT, ITALY

Smart surveys combine data provided by the respondent in a traditional way via a web questionnaire or app with data collected by sensors embedded in smart devices. This reduces the burden on respondents and improves the quality and timeliness of the results, especially in complex surveys.

The aim of the study is to give an overview of the main findings from an experimental survey conducted in Italy in order to assess the respondents’ attitudes towards the new ways of collecting data in smart surveys.

Logistic regression models are used to identify the factors that most influence the participation in the survey and the performance of smart tasks. The profiling of the individuals that emerges from the application of the models proves useful in defining appropriate strategies and solutions to increase both the response rate of smart surveys and the quality of the collected data.



The Dissimilarity Index Was Never Compositionally Invariant

Boris Barron1,2, Matthew Hall2, Peter Rich2, Itai Cohen2, Tomas Arias2

1Max Planck Institute for Demographic Research, GERMANY; 2Cornell University, USA

The prevailing view in segregation scholarship is that White/Black segregation in the United States has modestly declined over recent decades, while White/Hispanic and White/Asian segregation have remained stable. This consensus is based on the assumption that measures of unevenness, such as the ubiquitous dissimilarity index, are independent of underlying racial compositions, a property known as compositional invariance. This property is critical to segregation analysis as population compositions differ substantially across locations, and have undergone rapid racial change over the last several decades. In this work, we demonstrate that this common interpretation of dissimilarity's compositional invariance is fundamentally flawed and propose an easily implementable adjustment factor to facilitate meaningful segregation comparisons over space and time. The implications of this adjustment are profound: we find that White/Hispanic and White/Asian segregation have substantially decreased in the last several decades, with Hispanic segregation declining more rapidly than Black segregation.



Engaging Communities and Monitoring Climate Change Impacts: The Eco_Pop_ER Database as a Model of Open Science

Mario Marino, Nadia Barbieri, Fedele Greco, Edoardo Redivo, Rosella Rettaroli, Francesco Scalone, Francesca Tosi

Università Alma Mater Studiorum di Bologna, ITALY

The Eco_Pop_ER Database, a core component of the MEMOREC project, is an open-access resource designed to analyze the complex interplay between demographic dynamics and climate change in Emilia-Romagna. Central to the project’s philosophy is adherence to FAIR principles (Findable, Accessible, Interoperable, Reusable), promoting open science and data activism. By integrating over 5.5 million observations and 516 indicators spanning demographic, climatic, and territorial variables from 2000 to 2024, the database offers opportunities for analyses of climate impact on population trends.

Eco_Pop_ER engages diverse audiences, from researchers to the public, through its citizen science approach. Initiatives like the "Data4Resilience" challenge encourage University of Bologna students to explore the database, fostering data literacy and providing peer-reviewed feedback to enhance metadata and inclusivity.

Applications of the database include clustering analysis, principal component analysis, spatiotemporal modeling, and exposure analysis, addressing topics like climate vulnerability and hydrogeological risks. The database encompasses a wide range of indicators, such as population characteristics, climate data, environmental risks, and socioeconomic variables.

Eco_Pop_ER sets a benchmark for open-access data platforms, bridging academic research with societal impact. Future expansions will enhance data continuity and foster collaborations with local offices, ensuring the database's for climate resilience and demographic studies.



The predictive ability of fertility intentions and other fertility predictors using machine learning and survey data from various countries

Bruno Arpino1, Gaetano Tedesco1, Valeria Bordone2, Maria Rita Testa3

1Università degli Studi di Padova, ITALY; 2University of Vienna, AUSTRIA; 3Luiss University Guido Carli, ITALY

We examine the predictive power of fertility intentions using Random Forest, a robust machine learning (ML) technique. Utilizing data from the Generations and Gender Surveys, which allow us to link the intention to have a child within the next three years to actual births during that period, we estimate the predictive accuracy of short-term birth intentions compared to other determinants of fertility. We adopt a cross-country approach across nine low-fertility, high-income countries (Austria, Bulgaria, France, Germany, Georgia, Hungary, Lithuania, Netherlands, Russia). Our findings suggest that while the predictive power of fertility intentions is moderate to high, other factors such as age, household income, and gender attitudes hold greater predictive significance. In addition, fertility intentions do not consistently rank among the top predictors of fertility outcomes across countries. This empirical evidence has important implications for the utility of survey data in forecasting short-term fertility trends.



 
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