DATA SCIENCE FOR SOCIAL RESEARCH
Channel 1
                      
                LAURA BOCCI
                Lecturers' profile
              
            Program - Frequency - Exams
Course program
Statistical sampling, and data collection techniques in social and economic research.
Matrix representations of multidimensional data. Data matrix, data cleaning, data pre-processing, covariance and correlation matrices, proximity matrices.
Graphical representations of multidimensional data.
Unsupervised learning. Multivariate statistical techniques: Cluster Analysis (hierarchical, non-hierarchical) and Segmentation; Principal Component Analysis.
Supervised learning: Multiple Linear Regression models and extensions; Logistic Regression.
Applications to real-world data using Matlab statistical software.
Case studies.
Prerequisites
Basic Statistics. 
Books
1) Gareth James, Daniela Witten, Trevor Hastie, Robert Tibshirani. Introduction to Statistical Learning with Applications to R. Springer
https://www.statlearning.com/ 
Handouts provided by the teacher
Frequency
Lecture attendance is not mandatory but is strongly recommended given the know-how-oriented course setting.
Exam mode
The evaluation is performed by a final written examination, carried out during the scheduled exam sessions (3 calls in June / July session, 1 call in the September session, 2 calls in January / February session).
The written exam consists of 15 exercises with both theoretical and practical questions. The test is intended to assess knowledge and understanding and the student's ability to apply knowledge and understanding. The student must indicate the correct answer and return the calculations necessary to obtain the indicated result. 
For completing the test, the students will have 120 minutes and can use a calculator and statistical tables.  
In itinere evaluation will be performed. The course includes one partial exam and a project work. The partial exam consists of 9 questions including both theoretical and practical (exercises) items. For the partial exam, students will have 60 minutes and may use a calculator and statistical tables.
The project work consists of applying the techniques learned to a real dataset.
The final grade is the sum of the score obtained in the partial exam and the project work. 
If a student's grade for the partial exam and project work is rejected, they must take the full exam in one of the official exam sessions.
In determining the final grade, the assessment takes into account the following elements:
1. the thought process followed by the student in solving the proposed questions;
2. the correctness of the procedure chosen by the student to get the solution;
3. the adequacy of each solution proposed by the student, considering both the type of question and his expected competences;
4. the use of a correct and proper language.
A grade of at least 18/30 is required to pass the exam. Students must demonstrate a) to have acquired a sufficient knowledge of the topics covered in the course and b) to be able to identify statistical techniques and tools - simple but adequate - for the solution of the proposed real problems. 
The grade 30/30 cum laude is assigned to those students who demonstrate an excellent knowledge of all the topics covered during the course and strong critical thinking skills. Students must also demonstrate to be able to identify the most suitable statistical techniques and tools, both simple and complex, for solving real problems.
Lesson mode
In-class sessions comprise didactic lectures, practical sessions, hands-on exercises, demonstrations, discussion.
Lectures will be aimed at stimulating both interaction with students and their problem solving skills. Therefore, each topic will be supplemented by examples and hands-on exercises in order to facilitate the understanding of statistical tools and their use in social issues.
              - Lesson code10606404
- Academic year2025/2026
- CourseSociology
- CurriculumPolitiche e Governo
- Year3rd year
- Semester2nd semester
- SSDSECS-S/01
- CFU6
 
        