- Docente: Chiara Ludovica Comolli
- Credits: 8
- SSD: SECS-S/05
- Language: Italian
- Moduli: Chiara Ludovica Comolli (Modulo 1) Lucia Zanotto (Modulo 2)
- Teaching Mode: Blended Learning (Modulo 1) Traditional lectures (Modulo 2)
- Campus: Bologna
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Corso:
First cycle degree programme (L) in
Statistical Sciences (cod. 8873)
Also valid for First cycle degree programme (L) in International Development and Cooperation (cod. 8890)
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from Feb 13, 2024 to Mar 13, 2024
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from Apr 17, 2024 to May 17, 2024
Learning outcomes
Upon completion of the course, the student will be familiar with the main official and unofficial national and international statistical sources and the main methodological and technical aspects of social research. In particular, the student will be able to: use the basic tools of quantitative analysis and verification of results in social research.
Course contents
Module I: The paradigms of social research - Quantitative vs. qualitative social research - The sources of Social Statistics - Questionnaires, interviews, research design - Questions and response alternatives - Psychological processes underlying the understanding of questions and answers - Questionnaire administration techniques - Sampling plans - Research within elusive populations.
Module II: Causal inference - counterfactual logic - Rubin's model - selection bias and spontaneous dynamics - experimental method - difference-in-differences method - matching - discontinuities around a threshold point - interrupted time series analysis - instrumental variables.
Readings/Bibliography
Mandatory readings
· Online material in Virtuale
· P. Corbetta, Metodologia e tecniche della ricerca sociale. Il Mulino (Parte I e II: Capitoli da 1 a 8, per iscritti/e SVIC anche cap. 9)
· Martini e A. Sisti. Valutare il successo delle politiche pubbliche. Economia & Management (Parte III: Capitoli 6-14)
Optional readings
· Agresti, Franklin and Klingenberg. Statistics. The art and science of learning from data. Pearson
· Stefano M. Iacus, Guido Masarotto 2021, Laboratorio di Statistica con R. McGraw-Hill Education
Teaching methods
The course participates in the teaching innovation project, combining a hybrid teaching model with integrative digital teaching (DDI).
Teaching methods include both student participation in face-to-face lectures and exercises in computer labs, and self-paced in-depth activities based on a variety of materials, such as slides, web resources, data sets, scientific articles, infographics and data visualizations, data and metadata repositories, opinion polls, and online seminars.
Through the hours of innovative teaching, students will learn how to rework and relate the content and concepts learned during lecture and exercises; they will also learn how to synthesize research questions, arguments, and analysis methodologies used in social studies.
Assessment methods
Course content will be verified by written test.
Teaching tools
Virtuale is the main medium of teaching support. Slides and videos (also in English) will be used. Lectures in computer labs will make use of Microsoft Excel, Stata 17, R studio. Hybrid teaching will make use of the Teams platform.
Office hours
See the website of Chiara Ludovica Comolli
See the website of Lucia Zanotto