SubjectsSubjects(version: 945)
Course, academic year 2023/2024
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Foundation of Regression - NMFM334
Title: Základy regrese
Guaranteed by: Department of Probability and Mathematical Statistics (32-KPMS)
Faculty: Faculty of Mathematics and Physics
Actual: from 2023
Semester: summer
E-Credits: 5
Hours per week, examination: summer s.:2/2, C+Ex [HT]
Capacity: unlimited
Min. number of students: unlimited
4EU+: no
Virtual mobility / capacity: no
State of the course: taught
Language: Czech
Teaching methods: full-time
Teaching methods: full-time
Guarantor: doc. RNDr. Michal Pešta, Ph.D.
doc. RNDr. Matúš Maciak, Ph.D.
Class: M Bc. FM
M Bc. FM > Povinně volitelné
Classification: Mathematics > Probability and Statistics
Pre-requisite : NMFM301, NMMA341
Annotation -
Last update: RNDr. Jitka Zichová, Dr. (10.05.2021)
Basic statistic course for Financial Mathematics students.
Aim of the course -
Last update: RNDr. Jitka Zichová, Dr. (04.06.2021)

To explain basics of regression models.

Course completion requirements -
Last update: doc. RNDr. Michal Pešta, Ph.D. (24.01.2022)

The subject is finalized by a course credit and exam. To be able to take exam, it is necessary to obtain a course credit first.

Course credit requirements:

  • Presence in class: at least 75%.
  • Homework assignment: Each student needs to submit, within the pre-specified deadline, a solution to the homework assignment. The solution must be graded as "acceptable" by the lecturer.

The nature of these requirements precludes any possibility of additional attempts to obtain the exercise class credit.

Literature -
Last update: doc. RNDr. Michal Pešta, Ph.D. (24.01.2022)

JAMES, G.; WITTEN, D.; HASTIE, T.; TIBSHIRANI, R. An Introduction to Statistical Learning (with Applications in R), 2nd edition. Springer: New York, NY, 2021, xv+607 s. ISBN: 978-1-0716-1417-4.

KHURI, A.I. Linear Model Methodology. Chapman & Hall/CRC: Boca Raton, 2010, xx+542 s. ISBN: 978-1-58488-481-1.

ZVÁRA, K. Regrese. Matfyzpress: Praha, 2008, 253 s. ISBN: 978-80-7378-041-8.

Teaching methods -
Last update: RNDr. Jitka Zichová, Dr. (10.05.2021)

Lecture + exercises.

Requirements to the exam -
Last update: doc. RNDr. Michal Pešta, Ph.D. (24.01.2022)

Exam is oral and it is composed of two parts:

  • questions corresponding to topics covered by lecture and exercise classes;
  • discussions about the written course credit homework.

Problems assigned during exam are based on topics presented during lectures and also correspond to topics covered by exercise classes. Assigned problems correspond to the syllabus into extent covered by lectures.

Exam grade will be based on point evaluation of the written course credit homework and evaluation of the oral part.

Syllabus -
Last update: doc. RNDr. Michal Pešta, Ph.D. (24.01.2022)

Linear regression model.

Least squares method.

Coefficient of determination.

Quantitative and qualitative regressors, interactions and their interpretations.

Analysis of residuals a regression diagnostics.

Submodel testing, model building.

Logistic regression.

Entry requirements -
Last update: doc. RNDr. Michal Pešta, Ph.D. (24.01.2022)
  • Vector spaces, matrix calculus;
  • Probability space, conditional probability, conditional distribution, conditional expectation;
  • Elementary asymptotic results (laws of large numbers, central limit theorem for i.i.d. random variables and vectors, Cramér-Wold theorem, Cramér-Slutsky theorem);
  • Foundations of statistical inference (statistical test, confidence interval, standard error, consistency);
  • Basic procedures of statistical inference (asymptotic tests on expected value, one- and two-sample t-test, one-way analysis of variance, chi-square test of independence);
  • Maximum-likelihood theory including asymptotic results and the delta method;
  • Working knowledge of R, a free software environment for statistical computing and graphics (https://www.r-project.org).

 
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