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Teilleistung

Fundamentals for Financial -Quant and -Machine Learning Research [T-WIWI-111846]

Teilleistungsart
Prüfungsleistung anderer Art
Leistungspunkte
9
Turnus
siehe Anmerkungen
Version
1

Verantwortung

Einrichtung

  • KIT-Fakultät für Wirtschaftswissenschaften

Bestandteil von

Veranstaltungen

Kursnummer Name SWS Typ
SS22 2500375 Fundamentals for Financial -Quant and -Machine Learning Research 4 Vorlesung (V)
SS22 2500377 Übung zu Fundamentals for Financial -Quant and -Machine Learning Research 2 Übung (Ü)

Prüfungen

Kursnummer Name Termine
SS22 7900317 Fundamentals for Financial -Quant and -Machine Learning Research

Erfolgskontrolle(n)

Due to the professor’s research sabbatical, the BSc module “Financial Data Science” and MSc module “Foundations for Advanced Financial -Quant and -Machine Learning Research” and the MSc module “Advanced Machine Learning and Data Science” along with the respective examinations will not be offered in SS2023. Bachelor and Master thesis projects are not affected and will be supervised.

The module examination is an alternative exam assessment with a maximum score of 100 points to be achieved. These points are distributed over 4 worksheets to be submitted during the semester. The worksheets cover the respective material of the module and are handed out, worked on and assessed in lecture weeks 3 (10 points), 6 (20 points), 9 (30 points) and 12 (40 points).

The module-wide exam (all 4 worksheets) must be taken in the same semester.

The worksheets are a mixture of analytical tasks and programming tasks with financial data.

Empfehlungen

  • Strongly recommended to have good knowledge in financial econometrics (MLE, OLS, GLS, ARMA-GARCH), mathematics (differential equations, difference equations and optimization), investments (CAPM, factor models), asset pricing (SDF, SDF pricing), derivatives (Black-Scholes, risk-neutral pricing), and programming of statistical concepts (Java or R or Python or Matlab or C or ...)
  • Strongly recommended to have a strong interest for interdisciplinary research work in statistics, programming, applied math and financial economics.
  • Students lacking the prior knowledge might find the resources of the Chair helpful: www.youtube.com/c/cram-kit.

Anmerkungen

The course is offered every second year.