Table des matières
Course unit: Data and Decisions
Course metadata
- Title in French: Données et Décisions
- Course code: tba
- ECTS credits: 8
- Type: advanced course
- Semester 9 (Fall-Winter)
- Teaching period: Mid-November to Mid-February
- Teaching hours: 100h
- Language of instruction: French
- Coordinator: tba
- Instructor(s): François Brucker, Michaël Chalamel (L'Oréal), Franck Chevalier (EY), Emmanuel Daucé, Christophe Pouet
- Last update 04/07/2022 by C. Pouet
Brief description
This course unit is divided into four parts:
- Statistical learning (24 hours) taught by Christophe Pouet.
- Python for data science (24 hours) taught by François Brucker and Emmanuel Daucé.
- Advising using data (24 hours) taught by Michaël Chalamel and Franck Chevalier.
- Data Project: data sources and preprocessing (24 hours) taught by tba.
Learning outcomes
- Know how to model and program an estimation problem
- Know how to model and program a classification problem
- Know how to acquire and aggregate data
- Know how to use data to take decisions
- Understand the importance of data governance and data quality
Course content
Statistical learning
- Introduction
- Classical problems: regression, classification
- Supervised, unsupervised and semi-supervised learning
- Curse of dimensionality
- Regression
- Multiple linear regression, OLS method
- Shrinkage-type methods (LASSO, Ridge)
- k-nearest neighbors
- Classification
- Logistic regression
- k-nearest neighbors
- SVM
- Rosenblatt perceptron and neuronal networks
Python for data science
- Dataframe: data exploration and data description
- Spotting patterns using factor
- Principal Component Analysis
- Correspondence analysis
- Prediction using trend analysis
- Linear regression
- Logistic regression
- Data classification
- Classification using partitions
- Hierarchical methods
Data-driven decision making
- What is data?
- How do we take decision?
- Data governance and data quality
- How to develop data-based decision making?
- Data platform and data architecture
Data Project: data sources and preprocessing
tba
Bibliography
You can check the availability of the books below at Centrale Méditerranée library.
- Statistical Learning
- James G., Witten D., Hastie T. and al. (2013). An introduction to statistical learning: with applications in R. New York: Springer
- Hastie T., Tibshirani R. and Friedman J. (2013). The elements of statistical learning: data mining, inference, and prediction. New York: Springer.
- Cornillon P-A., Matzner-Løber E. et al. (2010). Régression avec R. Paris: Springer.
- Python for data science
- Jannach, D., Zanker, M., Felfernig, A. and Friedrich, G. (2010). Recommender Systems: An Introduction. Cambridge.
- Advising using data
- tba