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10616-01 - Lecture: Machine Learning 3 CP

Semester spring semester 2020
Course frequency Every spring sem.
Lecturers Dietmar Maringer (dietmar.maringer@unibas.ch, Assessor)
Content To counter-act the "data-rich, information-poor" ("drip") syndrome, this course covers concepts and techniques that aim at explorative analysis: finding structure within data, and, ideally, extracting information. These methods have their origins in areas such as machine learning, statistical learning, or data mining. These include (but are not limited to) non-linear regression methods, perceptrons and neural networks, support vector machines, tree-based methods, kernel-based methods, or rule-based methods. Typical applications are classification, prediction, clustering, or dimension reduction.

Theoretical presentations are complemented with hands-on examples using the software package R and relevant toolboxes. Furthermore, we will discuss issues such as data preprocessing and data management.
Bibliography T. Hastie, R. Tibshirani, J. Friedman, The Elements of Statistical Learning: Data Mining, Inference, and Prediction, 2nd ed., Springer 2009.

E. Alpaydin, Introduction to Machine Learning, 2nd ed., MIT Press 2010.

I.H. Witten, E. Frank, M.A. Hall, Data Mining: Practical Machine Learning Tools and Techniques, 3rd ed., Elsevier 2011.

additional literature will be announced in the lectures
Weblink Weblink on ADAM

 

Admission requirements completed BA in Business and Economics and following lecture: 12036 Econometrics
Course application Registration: Please enrol in MOnA. EUCOR-Students and students of other Swiss Universities have to enrol at the students administration office (studseksupport1@unibas.ch) within the official enrolment period. Enrolment = Registration for the exam!
Language of instruction English
Use of digital media Online, optional

 

Interval Weekday Time Room

No dates available. Please contact the lecturer.

Modules Module: Core Competences in Economics (Master's Studies: Sustainable Development)
Module: Non-Life Insurance (Master's Studies: Actuarial Science)
Module: Statistics and Computational Science (Master's Studies: Actuarial Science)
Specialization Module: Marketing and Strategic Management (Master's Studies: Business and Economics)
Specialization Module: Quantitative Methods (Master's Studies: Business and Economics)
Assessment format end-of-semester examination
Assessment details Active participation and engagement during the lectures; written assignments (upon agreement); and
online exam: April 30, 8:00-9:00. Details will be communicated via emails.
Assessment registration/deregistration Registration: 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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