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16036-01 - Lecture: Microeconometrics and Statistical Learning 3 CP

Semester spring semester 2024
Course frequency Every spring sem.
Lecturers Christian Kleiber (christian.kleiber@unibas.ch, Assessor)
Content Introductory econometrics courses mainly cover the linear regression model, which is suitable for modelling response variables that may be considered as continuous. Also, the number of covariates is typically modest.

The present course has two parts:

* In the first part, the course will cover classical (nonlinear) regression models for applications where response variables are naturally discrete, e.g. binary or count data. It will use the framework of generalized linear models (GLMs), which provides a unified approach to models such as logit, probit and Poisson regression. Inference will be likelihood based.

* In the second part, there will be an introduction to the recent literature on statistical learning (aka machine learning), specifically to the notion of regularisation, with LASSO and ridge as the main examples, and mainly in the setting of linear regression.

If time permits there will also be material on finite mixture models and/or generalized additive models (GAMs).

Remarks:

* All course materials are on OLAT.

* Empirical illustrations may include data from health economics, insurance, or labor economics, among further sources. The course will make use of the R language for statistical computing and graphics, hence basic knowledge of this software (including data import, running regressions) is expected.

* In order to make room for further (regression) models, there will at most be a brief review of likelihood methods, possibly offered in digital form. Participants are expected to be familiar with these methods at the level of the compulsory MSc level Econometrics course.
Bibliography Main references:

Cameron AC, Trivedi PK (2005). Microeconometrics, Cambridge Univ. Press.
James G, Witten D, Hastie T, Tibshirani R (2021). An Introduction to Statistical Learning, 2nd ed. New York: Springer. [available in electronic form via the university library!]
Winkelmann R, Boes S (2009). Analysis of Microdata, 2nd ed, Springer.

Further (topic-specific) references will be indicated in the relevant contexts.
Comments All course materials are on OLAT and not on ADAM!
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Admission requirements Prerequisites:

* Completed Bachelor's degree (for students from Master's programmes of the Faculty of Business and Economics).

* Introduction to Econometrics [BA] (for students from other departments: regression basics).

* Econometrics [MSc] (for students from other departments: a second course in statistics, notably covering likelihood methods).
Course application Registration: Please enroll in the Online Services (services.unibas.ch);

Eucor-Students and mobility students of other Swiss Universities or the FHNW first have to register at the University of Basel BEFORE the start of the course and receive their login data by post (e-mail address of the University of Basel). Processing time up to a week! Detailed information can be found here: https://www.unibas.ch/de/Studium/Mobilitaet.html
After successful registration you can enroll for the course in the Online Services (services.unibas.ch).

Applies to everyone: Enrolment = Registration for the course and the exam!
Language of instruction English
Use of digital media No specific media used
Course auditors welcome

 

Interval Weekday Time Room
wöchentlich Wednesday 10.15-12.00 Wirtschaftswissenschaftliche Fakultät, Seminarraum S15 HG.31

Dates

Date Time Room
Wednesday 28.02.2024 10.15-12.00 Wirtschaftswissenschaftliche Fakultät, Seminarraum S15 HG.31
Wednesday 06.03.2024 10.15-12.00 Wirtschaftswissenschaftliche Fakultät, Seminarraum S15 HG.31
Wednesday 13.03.2024 10.15-12.00 Wirtschaftswissenschaftliche Fakultät, Seminarraum S15 HG.31
Wednesday 20.03.2024 10.15-12.00 Wirtschaftswissenschaftliche Fakultät, Seminarraum S15 HG.31
Wednesday 27.03.2024 10.15-12.00 Wirtschaftswissenschaftliche Fakultät, Seminarraum S15 HG.31
Wednesday 03.04.2024 10.15-12.00 Wirtschaftswissenschaftliche Fakultät, Seminarraum S15 HG.31
Wednesday 10.04.2024 10.15-12.00 Wirtschaftswissenschaftliche Fakultät, Seminarraum S15 HG.31
Wednesday 17.04.2024 10.15-12.00 Wirtschaftswissenschaftliche Fakultät, Seminarraum S15 HG.31
Wednesday 24.04.2024 10.15-12.00 Wirtschaftswissenschaftliche Fakultät, Seminarraum S15 HG.31
Wednesday 01.05.2024 10.15-12.00 Tag der Arbeit
Wednesday 08.05.2024 10.15-12.00 Wirtschaftswissenschaftliche Fakultät, Seminarraum S15 HG.31
Wednesday 15.05.2024 10.15-12.00 Wirtschaftswissenschaftliche Fakultät, Seminarraum S15 HG.31
Wednesday 22.05.2024 10.15-12.00 Wirtschaftswissenschaftliche Fakultät, Seminarraum S15 HG.31
Wednesday 29.05.2024 10.15-12.00 Wirtschaftswissenschaftliche Fakultät, Seminarraum S15 HG.31
Modules Module: Core Competences in Economics (Master's Studies: Sustainable Development)
Module: Field Electives in Economics and Public Policy (Master's Studies: Economics and Public Policy)
Module: Non-Life Insurance (Master's Studies: Actuarial Science)
Module: Preparation Master's Thesis in Economics (Master's Studies: Sustainable Development)
Module: Specific Electives in Data Science and Computational Economics (Master's Studies: Business and Economics)
Module: Specific Electives in Economics (Master's Studies: Business and Economics)
Module: Specific Electives in Marketing and Strategic Management (Master's Studies: Business and Economics)
Module: Statistics and Computational Science (Master's Studies: Actuarial Science)
Module: Technology Field (Master's Studies: Business and Technology)
Specialization Module: Areas of Specialization in International and/or Monetary Economics (Master's Studies: International and Monetary Economics)
Assessment format record of achievement
Assessment details Notes for the Assessment:
Written exam: 17.06.24; 16:10-17:40.
In addition, there will be several assignments, accounting for up to 30% of the overall grade. For the assignments, students may work in groups of two.

Depending on the number of students, the start of the exam may be moved forward or backward for 15 minutes. Exam rooms and start times will be published until 30.05.24.
You can still withdraw from the examination by submitting a completed, signed form to our office from march 26 until april 5 / 12:00 o’clock. The deregistration form and the mail address can be found on the homepage of the Dean of Studies Office: https://wwz.unibas.ch/en/studies/examinations/de-/registration-of-examinations/
Prior to march 25, please deregister only in the Online Services.
Assessment registration/deregistration Reg.: course registration, dereg: cancel course registration
Repeat examination no repeat examination
Scale 1-6 0,1
Repeated registration as often as necessary
Responsible faculty Faculty of Business and Economics , studiendekanat-wwz@unibas.ch
Offered by Faculty of Business and Economics

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