Indice

Data Mining 2018

News

Goals

Data mining and knowledge discovery techniques emerged as an alternative approach, aimed at revealing patterns, rules and models hidden in the data, and at supporting the analytical user to develop descriptive and predictive models for a number of business problems. This short course focusses on the main applications scenarios of data mining to challenging problems in the broad CRM domain - Customer Relationship Management.

Syllabus

Textbooks

Reading about the "data analyst" job

Calendar

Date Topic Learning material
01. 18.09.2018 Introduction to data mining and big data analytics. Data Understanding & Preparation 1-introduction-sa.pdf 2-dataunderstanding-sa.pdf 3-data_preparation-sa.pdf
02. 19.09.2018 knime: Data Understanding & Preparation. Clustering 4-clusteringintroduction-sa.pdf 5-kmeans-sa.pdf 6-dbscan-sa.pdf 01_titanic_data_understanding
03. 20.09.2018 Knime: Clustering. Classificazione. knime_clustering 7-classification-sa.pdf
04. 21.09.2018 Knime: Classificazione. Case Studies knime_classification calcio_infortuni.pdfmusicpref.pdf mensa.pdf

Datasets

0. Iris. (for details see https://archive.ics.uci.edu/ml/datasets/iris)

1. Human Resources. (for details see https://www.kaggle.com/ludobenistant/hr-analytics)

2. Telco Churn. (for details see http://didawiki.di.unipi.it/doku.php/dm/mains.santanna.dm4crm.2016)

3. Adult. (for details see https://archive.ics.uci.edu/ml/datasets/Adult)

4. Titanic. (for details see https://www.kaggle.com/c/titanic)