Indice

Data Mining A.A. 2025/26

DM1 - Data Mining: Foundations (6 CFU)

Instructors:

Teaching Assistant

DM2 - Data Mining: Advanced Topics and Applications (6 CFU)

Instructors:

Teaching Assistant

News

Learning Goals

Hours and Rooms

DM1

Classes

Day of Week Hour Room
Monday 09:00 - 11:00 E
Thursday 09:00 - 11:00 E

Office hours - Ricevimento:

DM 2

Classes

Day of Week Hour Room
Monday 11:00 - 13:00 E
Wednesday 09:00 - 11:00 E

Office Hours - Ricevimento:

Learning Material -- Materiale didattico

Textbook -- Libro di Testo

Slides

Software

Other softwares for Data Mining

Class Calendar (2024/2025)

First Semester (DM1 - Data Mining: Foundations)

Day Time Room Topic Material Lecturer
15.09.2024            No Lecture
18.09.2024 No Lecture
22.09.2024 No Lecture
25.09.2024 No Lecture
01. 15.09.2024 11-13 C1 Overview, Introduction Intro Pedreschi

Second Semester (DM2 - Data Mining: Advanced Topics and Applications)

Day Time Room Topic Material Lecturer
01. 18.02.2025 14-16 A1 Overview, Imbalanced Learning Introduction, Guidelines, Imbalanced Learning, Link Guidotti

Exams

How and Where: The exam will take place in oral mode only at the teacher's office or classroom previously designated. The exam will be held online on the 420AA Data Mining course channel only at the request of the student in accordance with current legislation.

When: The dates relating to the start of the three exams are/will be published on the online platform https://esami.unipi.it/. Within each session, we will identify dates and slots in order to distribute the various orals. The dates and slots to take the exam will be published on the course page by the end of May. Each student must also register on https://esami.unipi.it/. The examination can only be carried out after the delivery of the project. The project must be delivered one week before when you want to take the exam. Group oral discussions will be preferred in respect of the project groups in order to parallelize any discussion on the project. It is not mandatory to take the oral exam together with the other members of the group. In the event that the oral exam is not passed, it will not be possible to take it for 20 days. If the project is not considered sufficient, it must be carried out again on a new dataset or a very updated version of the current one.

What: The oral test will evaluate the practical understanding of the algorithms. The exam will evaluate three aspects.

  1. Understanding of the theoretical aspects of the topics addressed during the course. The student may be required to write on formulas or pseudocode. During the explanations, the student can use pen and paper.
  2. Understanding of the algorithms illustrated during the course and their practical implementation. You will be asked to perform one or more simple exercises. The text will be shown on the teacher's screen and / or copied to Miro. The student will have to use pen and paper (if online by Miro https://miro.com/ to show how the exercise is solved.
  3. Discussion of the project with questions from the teacher regarding unclear aspects,

questionable steps or choices.

Final Mark: for 12-credit exam, the final mark will be obtained as the average mark of DM1 and DM2.

* Exams Registration Instructions for DM1* - Use the Google registration form: TBD if you cannot register on Esami on Data Mining for year 2025/2026. - When the registration closes you will receive a link to the Agenda - Register on the Agenda selecting day and time (do not change you choice or cancel, if you book you want to do the exam) - Submit the project at least 1 week before the day you selected (or within 31/12 to get +0.5 extra mark)

Exam Booking Periods

Exam DM1

The exam is composed of two parts:

DM1 Project Guidelines See TBD.

Exam DM2

The exam is composed of two parts:

DM2 Project Guidelines See TBD.

Past Exams

Reading About the "Data Scientist" Job

… a new kind of professional has emerged, the data scientist, who combines the skills of software programmer, statistician and storyteller/artist to extract the nuggets of gold hidden under mountains of data. Hal Varian, Google’s chief economist, predicts that the job of statistician will become the “sexiest” around. Data, he explains, are widely available; what is scarce is the ability to extract wisdom from them.

Data, data everywhere. The Economist, Special Report on Big Data, Feb. 2010.

Previous years