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PA - C8 - ECO680 : Big Data

Domaine > Economie.

Descriptif

BIG DATA and MACHINE LEARNING in Econometrics

Instructor: Anna Simoni

18 hours

 

The goal of this course is to give an introduction to High Dimensional models and Machine Learning in Econometrics. We will analyze methods for making both prediction and causal inference in economic settings where the effects of counterfactual policies are of interest, like the effects of introducing a new product, of advertisement, of implementing a government policy. The methods that will be presented in the course are well suited to datasets with many observations and/or many covariates and will be based on supervised and unsupervised machine learning approaches to model selection and prediction. We will also see how standard methods in machine learning have to be modified and extended to adapt them to causal inference and provide statistical theory for hypothesis testing.

All along the course, the different models will be illustrated through applications and case studies. The applications will be developed by using as statistical software package either R or Matlab.

 

Syllabus:

  1. Introduction to Statistical Learning, review of linear regression and least squares. Introduction to R (and maybe to Matlab).
  2. Linear Regression Model with many covariates: subset selection, shrinkage methods (Ridge regression, Lasso), dimension reduction methods (PCA and sparse PCA). Inference: Post-Lasso and debiased Lasso.
  3. Extension of the linear model: polynomial regression, regression splines, smoothing splines, local regression, generalized additive models.
  4. High-Dimensional Instrumental Variables for causal inference.
  5. Tree-Based methods for regression, treatment effects and classification: bagging, random forest, boosting.
  6. Support Vector Machine.
  7. Case Studies based on research articles. Some examples include: impact of internet and social media on news, search advertising, estimation of treatment effects.
  8. Estimation of large covariance and precision matrices with applications in portfolio management and risk assessment.

 

References:

G. James, D. Witten, T. Hastie and R. Tibshirani, “An Introduction to Statistical Learning with applications in R”, 2013, Springer.

Other references to journal articles will be provided during the course.

Format des notes

Numérique sur 20

Littérale/grade réduit

Pour les étudiants du diplôme Echanges PEI

Le rattrapage est autorisé (Note de rattrapage conservée)
    L'UE est acquise si note finale transposée >= C
    • Crédits ECTS acquis : 4 ECTS

    Pour les étudiants du diplôme Economics, Data Analytics and Corporate Finance

    Le rattrapage est autorisé (Note de rattrapage conservée)
      L'UE est acquise si note finale transposée >= C
      • Crédits ECTS acquis : 4 ECTS

      La note obtenue rentre dans le calcul de votre GPA.

      Pour les étudiants du diplôme Smart Cities and Urban Policy

      Le rattrapage est autorisé (Note de rattrapage conservée)
        L'UE est acquise si note finale transposée >= C
        • Crédits ECTS acquis : 4 ECTS

        La note obtenue rentre dans le calcul de votre GPA.

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