Subjective Well-Being and Social Media

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A01=Giuseppe Porro
A01=Stefano M. Iacus
Area Level Model
Author_Giuseppe Porro
Author_Stefano M. Iacus
Basic Area Model
Cart Technique
Category=PBT
Classical OLS
COVID-19 impact on mental health
cross-country well-being comparison
data science methodology
Elastic Net
Elastic Net Model
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
FH Model
Gallup World Poll
Gdp Growth
Gdp Loss
GNH
GNH Index
HDI
health economics research
Main Stock Market Indexes
Maximum Margin Hyperplane
Official statistics and big data
psychological stress analysis
R programming applications
Selection bias in social media
Sentiment analysis
small area estimation
SNS Data
SNS Message
SNS Post
Stream Twitter API
Subjective Well-being
SWB Index
Twitter analysis
Twitter API
Twitter Search API
UK Migrant
Unit Level Models
Variable Gdp Growth
Welfare measurement

Product details

  • ISBN 9781032043166
  • Weight: 100g
  • Dimensions: 156 x 234mm
  • Publication Date: 25 Sep 2023
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
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Subjective Well-Being and Social Media shows how, by exploiting the unprecedented amount of information provided by the social networking sites, it is possible to build new composite indicators of subjective well-being. These new social media indicators are complementary to official statistics and surveys, whose data are collected at very low temporary and geographical resolution.

The book also explains in full details how to solve the problem of selection bias coming from social media data. Mixing textual analysis, machine learning and time series analysis, the book also shows how to extract both the structural and the temporary components of subjective well-being.

Cross-country analysis confirms that well-being is a complex phenomenon that is governed by macroeconomic and health factors, ageing, temporary shocks and cultural and psychological aspects. As an example, the last part of the book focuses on the impact of the prolonged stress due to the COVID-19 pandemic on subjective well-being in both Japan and Italy. Through a data science approach, the results show that a consistent and persistent drop occurred throughout 2020 in the overall level of well-being in both countries.

The methodology presented in this book:

    • enables social scientists and policy makers to know what people think about the quality of their own life, minimizing the bias induced by the interaction between the researcher and the observed individuals;
    • being language-free, it allows for comparing the well-being perceived in different linguistic and socio-cultural contexts, disentangling differences due to objective events and life conditions from dissimilarities related to social norms or language specificities;
    • provides a solution to the problem of selection bias in social media data through a systematic approach based on time-space small area estimation models.

The book comes also with replication R scripts and data.

Stefano M. Iacus is full professor of Statistics at the University of Milan, on leave at the Joint Research Centre of the European Commission. Former R-core member (1999-2017) and R Foundation Member.

Giuseppe Porro is full professor of Economic Policy at the University of Insubria.

An earlier version of this project was awarded the Italian Institute of Statistics-Google prize for "official statistics and big data".

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