20538 - PREDICTIVE ANALYTICS FOR DATA DRIVEN DECISIONS MAKING
CLMG - M - IM - MM - AFC - CLEFIN-FINANCE - CLELI - ACME - DES-ESS - EMIT - GIO
Department of Decision Sciences
Course taught in English
Go to class group/s: 31
CLMG (6 credits - II sem. - OP | SECS-S/01) - M (6 credits - II sem. - OP | SECS-S/01) - IM (6 credits - II sem. - OP | SECS-S/01) - MM (6 credits - II sem. - OP | SECS-S/01) - AFC (6 credits - II sem. - OP | SECS-S/01) - CLEFIN-FINANCE (6 credits - II sem. - OP | SECS-S/01) - CLELI (6 credits - II sem. - OP | SECS-S/01) - ACME (6 credits - II sem. - OP | SECS-S/01) - DES-ESS (6 credits - II sem. - OP | SECS-S/01) - EMIT (6 credits - II sem. - OP | SECS-S/01) - GIO (6 credits - II sem. - OP | SECS-S/01)
Course Director:
LUCA MOLTENI
LUCA MOLTENI
Course Objectives
The course provides an overview of the integration and analysis process of structured and unstructured data (Big Data), focusing on the most important applications of predictive analytics in managerial issues.
The goal of the course is to improve the student's skills to manage and to take advantages of the huge availability of data nowadays produced by a great variety of sources. The contents of the course covers both technical aspects of data analytics and more interpretation related topics (how to translate the analytical outputs into meaningful business insights).
The goal of the course is to improve the student's skills to manage and to take advantages of the huge availability of data nowadays produced by a great variety of sources. The contents of the course covers both technical aspects of data analytics and more interpretation related topics (how to translate the analytical outputs into meaningful business insights).
Course Content Summary
- Data management architectures: a brief overview.
- Data understanding and data preparation.
- Models and statistical techniques applied to Big Data.
- Linear and logistic regression.
- Regression and classification trees.
- Time series analysis.
- Machine learning algorithms and neural networks.
- Models' performance evaluation.
- Applications and real cases using open-source software (KNIME and R) in the following areas: internet of things, social & web content analysis, customer relationship management, fraud detection and operations.
Detailed Description of Assessment Methods
There are two distinct grading procedures, the first one restricted to attending students (at least 70% of attendance in class) and the second for not-attending students.
Not attending students:
Individual final written exam (100% weight).
Attending students:
It will be based both on a group assignment (to be developed during the course and submitted before the end of the lessons; 50% of the final grade) and on an individual final written exam (50% of the final grade), proposed in a reduced version compared to the full not-attending exam.
Not attending students:
Individual final written exam (100% weight).
Attending students:
It will be based both on a group assignment (to be developed during the course and submitted before the end of the lessons; 50% of the final grade) and on an individual final written exam (50% of the final grade), proposed in a reduced version compared to the full not-attending exam.
Textbooks
- M. Kuhn, K. Johnson, Applied predictive modeling, Springer, 2013.
Prerequisites
The course requires no prior knowledge of this methodological area, except for the data analysis fundamentals learned in a basic statistics course (undergraduate bachelor degree).
Last change 31/05/2017 12:53