Academic year 2018/2019 |
Supervisor: | doc. RNDr. Libor Žák, Ph.D. | |||
Supervising institute: | ÚM | |||
Teaching language: | Czech | |||
Aims of the course unit: | ||||
The course objective is to make students majoring in Mathematical Engineering acquainted with methods of estimation theory, asymptotic approach to statistical hypotheses testing and prepare students for independent applications of these methods for statistical analyse of real data |
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Learning outcomes and competences: | ||||
Students acquire needed knowledge from important parts of mathematical statistics, which will enable them to evaluate and develop stochastic models of technical phenomena and processes based on these methods and realize them on PC. | ||||
Prerequisites: | ||||
Rudiments of probability theory and mathematical statistics, linear models. | ||||
Course contents: | ||||
This course is concerned with the following topics: theory of estimation, maximum likelihood, method of moments, bayesian methods of estimation, testing statistical hypotheses, nonparametric methods, exponential family of distribution, asymptotic tests. | ||||
Teaching methods and criteria: | ||||
The course is taught through lectures explaining the basic principles and theory of the discipline. Exercises are focused on practical topics presented in lectures. | ||||
Assesment methods and criteria linked to learning outcomes: | ||||
Course-unit credit requirements: active participation in seminars, mastering the subject matter, passing both written exams and semester assignment acceptance. Design and defense of the project. Writing of the classification papers (4-5 examples from the discussed topics). Evaluation by points obtained from the project (max: 20 points) and from the classification letter (maximum 80 points): excellent (90 - 100 points), very good (80 - 89 points), good (70 - 79 points), satisfactory (60 - 69 points), sufficient (50 - 59 points), failed (0 - 49 points). |
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Controlled participation in lessons: | ||||
Participation in the exercise is mandatory and the teacher decides on the compensation for absences. | ||||
Type of course unit: | ||||
Lecture | 13 × 2 hrs. | optionally | ||
Computer-assisted exercise | 13 × 1 hrs. | compulsory | ||
Course curriculum: | ||||
Lecture | Unbiased and consistent estimates Regular family of distributions, Rao - Cramér theorem, efficient estimates Fisher information and Fisher information matrix Sufficient statistics, Neuman factorization criterion Rao - Blackwell theorem and its applications Method of moments, maximum likelihood method Bayes approach Testing statistical hypotheses Principles of nonparametric methods Exponential family of distribution Asymptotic tests based on likelihood function Tests with nuisance parameters, examples Tests of hypotheses on parameters |
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Computer-assisted exercise | Survey of probability distributions, graphs of densities in MATLAB Unbiased and consistent estimates - examples of estimates and verification of their properties Computation of the lower bound for variance of unbiased estimates Determination of Fisher information and Fisher information matrix for given distributions Applications of Neuman factorization criterion Findings estimates by Rao - Blackwell theorem Estimator’s determination by method of moments and by maximum likelihood method Estimator’s determination by Bayes method Project setting - finding parameters estimates for given distribution - application at least two approaches, verification properties of the estimates and their numerical computation Verification of exponential family for given distribution Application of asymptotic tests based on likelihood function Tests with nuisance parameters, estimates of parameters for Weibull and gamma distribution Tests of hypotheses on parameters of generalized linear model |
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Literature - fundamental: | ||||
1. Anděl, J. Základy matematické statistiky. Matfyzpress. Praha 2005 | ||||
2. Hogg, V.R., McKean J.W. and Craig A.T. Introduction to Mathematical Statistics. Seventh Edition, 2013. New York : Pearson. ISBN: 978-0-321-79543-4 | ||||
Literature - recommended: | ||||
2. Militký, J.: Statistické techniky v řízení jakosti. Pardubice : TriloByte, 1996. |
The study programmes with the given course: | |||||||||
Programme | Study form | Branch | Spec. | Final classification | Course-unit credits | Obligation | Level | Year | Semester |
M2A-P | full-time study | M-MAI Mathematical Engineering | -- | GCr | 4 | Compulsory | 2 | 1 | W |
Faculty of Mechanical Engineering
Brno University of Technology
Technická 2896/2
616 69 Brno
Czech Republic
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