Training and Research

PhD Programme Courses/classes

Academic writing in latex and academic presentation

Credits: 2.5

Language: Italian

Advanced English for Academic Skills

Credits: 2.5

Language: Italian

Agenda dell’organizzazione delle nazioni unite 2030 sullo sviluppo sostenibile, ricerca e diritto antidiscriminatorio: strumenti ed esperienze nelle università

Credits: 1

Language: Italian

Artificial intelligence, cybersecurity e diritto

Credits: 1

Language: Italian

Behavioral and Experimental Economics

Credits: 5

Language: Italian

Teacher:  Luca Zarri, Simone Quercia, Maria Vittoria Levati

Comunicare la scienza: il ruolo dei ricercatori e il rapporto tra esperti, cittadini e istituzioni

Credits: 0.5

Language: Italian

Corporate Governance

Credits: 5

Language: Italian

Teacher:  Alessandro Lai

Corso di inglese B1/certificazione B1

Credits: 2.5

Language: Italian

Corso di inglese B2/certificazione B2

Credits: 2.5

Language: Italian

Corso di inglese C1/certificazione C1

Credits: 2.5

Language: Italian

Corso di lingua italiana per stranieri

Credits: 2.5

Language: Italian

Corso di programmazione con matlab

Credits: 2

Language: Italian

Medical statistics with R

Credits: 3

Language: Italian

Basic statistics course

Credits: 2.5

Language: Italian

Intermediate statistics course

Credits: 2.5

Language: Italian

(Meta-analysis using the statistical software Stata and R

Credits: 1.5

Language: Italian

Corso teorico-pratico di microscopia di base

Credits: 1

Language: Italian

Development economics

Credits: 5

Language: Italian

Teacher:  Federico Perali

Diritto d'autore e brevetti

Credits: 1

Language: Italian

Dissemination dei risultati della ricerca

Credits: 1

Language: Italian

Econometrics for management

Credits: 7.5

Language: Italian

Teacher:  Diego Lubian, Francesca Rossi, Alessandro Bucciol

Economia dei Mercati Energetici

Credits: 5

Language: Italian

Teacher:  Luigi Grossi

English for academic presentations

Credits: 2.5

Language: Italian

English for academic writing

Credits: 2.5

Language: Italian

Finanza

Credits: 5

Language: Italian

Teacher:  Cecilia Mancini

Game Theory

Credits: 5

Language: Italian

Teacher:  Francesco De Sinopoli

Inequality

Credits: 5

Language: Italian

Teacher:  Francesco Andreoli, Claudio Zoli

Introduzione al “public speaking”

Credits: 1

Language: Italian

La mia archeologia e la mia politica culturale

Credits: 0.5

Language: Italian

Python programming language

Credits: 2.5

Language: Italian

Macro economics

Credits: 5

Language: Italian

Teacher:  Michele Imbruno, Alessia Campolmi

Mathematics

Credits: 7.5

Language: Italian

Teacher:  Letizia Pellegrini, Alberto Peretti

Microeconomics 1

Credits: 10.5

Language: Italian

Teacher:  Tamara Fioroni, Claudio Zoli, Martina Menon

Organization Theory

Credits: 5

Language: Italian

Teacher:  Cecilia Rossignoli

Political economy

Credits: 5

Language: Italian

Teacher:  Emanuele Bracco, Roberto Ricciuti, Marcella Veronesi

Presentation of Horizon Europe framework programme

Credits: 1

Language: English

Probability

Credits: 7.5

Language: Italian

Teacher:  Marco Minozzo

Project writing for beginners

Credits: 1

Language: Italian

Qualitative methodologies in management studies

Credits: 5

Language: Italian

Teacher:  Cecilia Rossignoli, Riccardo Stacchezzini

Quantitative methodologies in management studies

Credits: 5

Language: Italian

Teacher:  Riccardo Scarpa, Diego Begalli

Seminario Consigliera di fiducia

Credits: 1

Language: Italian

Software R

Credits: 2.5

Language: Italian

Teacher:  Flavio Santi

Spin off e start-up innovative

Credits: 1

Language: Italian

Statistica

Credits: 7.5

Language: Italian

Teacher:  Catia Scricciolo

Supply Chain Management

Credits: 5

Language: Italian

Teacher:  Barbara Gaudenzi

Protecting psychological well-being in the PhD program: development and enhancement of personal strategies and attitudes that predispose to professional satisfaction and ethical collaboration.

Credits: 1

Language: Italian

Credits

5

Language

Italian

Class attendance

Free Choice

Location

VERONA

Learning outcomes

This 20 hours/10 lectures PhD module combines theoretical and empirical approaches to outline economic and statistics arguments for the analysis of economic inequality.
The objective of the module is to address two key questions, raised by two of the main contributors to modern inequality analysis, that systematically emerge in public economics and in the policy literature: the first question, addressed by Amartya Sen, is “Inequality of what?”; the second question, that stems from the lifelong research of Tony Atkinson, is “What can be done?”
The first part of the module focuses on the first question. We will define and document evidence about different notions of inequality that are intertwined with micro- and macroeconomic analysis: inequality of income, inequality across the life-cycle, inequality across and within groups (such as cohorts, generations, regions, families, genders, skills, human capital). The module will then survey and organize result son the normative underpinnings of measurement and analysis of inequality and related concepts, such as poverty, and social welfare. Empirical issues arising when implementing these models (data and inference) will be also discussed. The presentation will emphasize differences between unidimensional (such as in income or in health) and multidimensional inequality (based on the joint distribution of income and health, or inequality of income along the life course) and will investigate related phenomena, such as (ethnic and income) polarization, segregation, mobility, equality of opportunity.
The second part of the module will move from the analysis of distributions to that of redistribution of income or of endowments. The theory of (optimal) redistribution will be reviewed, drawing distinctions between implementation and expected effects on inequality of taxation and of targeted and universal (in kind and in cash) transfers. The module will focus on ex-post evaluation of the distributional impact of policies. We will review the identification of causal treatment effects along the whole distribution of an outcome, as well discuss implementation using distribution regression methods. Selected applications of these methods to the evaluation of the effects of early intervention (i.e. education and human capital reforms, the so-called “pre-distribution”) on inequality will be presented.

Program

Outline of the module:

1) Inequality of what? This lecture introduces evidence about inequalities related to income (cardinal variable), education (discrete variable) and skills (ordinal variable) across individuals and families, along the lifecycle, and across groups defined by the cohort, the region of residence, the family background, gender. Additional estimates of inequality across generations (intergenerational persistence in income, siblings correlations, mobility matrices, inequality of opportunity measures) will be also discussed. Estimators and outcomes will be presented in this lecture benefitting from a sample (drawn from administrative records) covering 35% of the Swedish population born 1941-1965 for which income observations of parents, siblings and relatives are available for the period 1968-2007. Empirical inequality analysis: data issues and testing. This lecture will outline the most important data sources referenced in applied distributional analysis. The lecture will discuss differences between register, administrative and survey data, and will outline the most important findings (and literature) and difficulties related to some widely used databases. Sampling issues related to measurement and testing of various inequality criteria will be discussed, and the relevant inferential strategies proposed in the literature will be surveyed.

2) Univariate inequality, social welfare and poverty: measurement theory. The lecture will illustrates the basic principle behind the measurement of inequality and some of the more common criteria adopted in this framework.

3) From unidimensional to multidimensional inequality. Will be highlighted the main challenges related to the extension of the framework of analysis to multidimensional distribution. This is the case for instance when considering distributions of bundles of different goods or, as is the case for the Human Development Index, when combining evaluations based on the distribution of income, health and education across the population.

4) Inequality of opportunity: theory and measurement. Inequality of opportunity, as opposed to inequality of outcomes, draws a distinction between unfair inequality (that deserve a compensation) and just inequalities (such as those stemming from effort choices of healthy habits). This lecture will introduce the normative underpinning of the measurement of inequality of opportunity, a multidimensional phenomenon, and will show how this form of inequality can be measured empirically. The lecture will proceed by presenting data sources and empirical results produced in the recent years, including a discussion about the relation between inequality, mobility and equality of opportunity (represented by the so-called Great Gatsby curve).

5) Causal analysis of intervention: from average to distributional impacts of intervention. This lecture will discuss the fundamental problem of causal identification and will outline the most interesting theoretical effects for policy evaluation (ATE, CATE, ATT, LATE, ITT and QTE). Identification results for these effects will be presented, with a specific focus on implementation using distributional regression methods (DiD, CiC, RIF, RIF-DiD, Quantile Regression). Reweighing methods for counterfactual analysis will be introduced. Inequality, human capital and redistribution: This lecture will present and discuss selected applications of the empirical methods presented in the previous lectures to the analysis of distributional effects of pre-distribution of human capital. A specific focus will be given on evaluation of education expansion policies and pre-school programs.

Examination Methods

Assessments of students will be based on the development of a joint collaborative research project that investigates in details some subjects discussed in the module. The project could consider empirical and theoretical analysis or focus on one of the two perspectives.

Students with disabilities or specific learning disorders (SLD), who intend to request the adaptation of the exam, must follow the instructions given HERE