Course detail
Numerical and Statistical Treatment of Experimental Data
FCH-BC_ZDZAcad. year: 2022/2023
Basic statistical procedures and moderately advanced methods of processing of analytical data.
Principles of deskriptive statistics and basics of multivariate data analysis.
Language of instruction
Czech
Number of ECTS credits
3
Mode of study
Not applicable.
Learning outcomes of the course unit
Students will acquire new knowledge and experience in the following areas:
1. Basic statistical methods of experimental data analysis, basic statistical analysis of analysis results.
2. Method of numerical processing of one-dimensional data, basics of descriptive statistics
3. Testing statistical hypotheses
4. Confirmatory analysis methods (eg confidence intervals, regression analysis, etc.) and exploration analyzes (eg cluster analysis, exploration factor analysis, PCA,
5. Fundamentals of multidimensional analysis
6. Practical use of acquired knowledge in processing of experimental data from selected thematic circuits in MS-Excel environment. or Statistics
1. Basic statistical methods of experimental data analysis, basic statistical analysis of analysis results.
2. Method of numerical processing of one-dimensional data, basics of descriptive statistics
3. Testing statistical hypotheses
4. Confirmatory analysis methods (eg confidence intervals, regression analysis, etc.) and exploration analyzes (eg cluster analysis, exploration factor analysis, PCA,
5. Fundamentals of multidimensional analysis
6. Practical use of acquired knowledge in processing of experimental data from selected thematic circuits in MS-Excel environment. or Statistics
Prerequisites
Basic knowledge of mathematical statistics and number of probabilities in the range of secondary education, ability to work in MS Excel environment.
Co-requisites
Not applicable.
Planned learning activities and teaching methods
Learning outcomes of the course unit: Lecture - 2 lessons per week. The LMS Moodle e-learning system is available to lecturers and students.
Assesment methods and criteria linked to learning outcomes
Successful passing the credit test and submitting a suitable seminar paper.
Course curriculum
1. Introduction, basic concepts, results errors.
2. Descriptive characteristics of statistical files (arithmetic mean, modus, median, range, variance, standard deviation, variation coefficient)
3. Probability and statistics.
4. Basics of statistical induction - Point estimation, Interval estimation, Statistical hypothesis tests, parametric and nonparametric tests (one-sampleT-test, two-sample T-test, paired T-test, nonparametric tests).
5. Regression analysis. Regression models. Regression functions. Linear regression functions of interpreting their parameters.
6. Correlation analysis: principles, correlation models, correlation coefficients.
7. Multivariate Statistical Methods - Factor Analysis (FA), Cluster Analysis, Discrimination Analysis (DA), Correspondence Analysis (CA), Principal Component Analysis (PCA).
8. Summary of Application of Multidimensional Methods in Data Analysis.
9. Practical use of acquired knowledge in processing of experimental data using MS-Excel, Statistics.
10. Working with MS-Excel, SW Statistica - basics
11. Descriptive statistics - SW Statistica
12. Regression and correlation analysis - SW Statistica
13. Examples of multivariate analysis - SW Statistica
2. Descriptive characteristics of statistical files (arithmetic mean, modus, median, range, variance, standard deviation, variation coefficient)
3. Probability and statistics.
4. Basics of statistical induction - Point estimation, Interval estimation, Statistical hypothesis tests, parametric and nonparametric tests (one-sampleT-test, two-sample T-test, paired T-test, nonparametric tests).
5. Regression analysis. Regression models. Regression functions. Linear regression functions of interpreting their parameters.
6. Correlation analysis: principles, correlation models, correlation coefficients.
7. Multivariate Statistical Methods - Factor Analysis (FA), Cluster Analysis, Discrimination Analysis (DA), Correspondence Analysis (CA), Principal Component Analysis (PCA).
8. Summary of Application of Multidimensional Methods in Data Analysis.
9. Practical use of acquired knowledge in processing of experimental data using MS-Excel, Statistics.
10. Working with MS-Excel, SW Statistica - basics
11. Descriptive statistics - SW Statistica
12. Regression and correlation analysis - SW Statistica
13. Examples of multivariate analysis - SW Statistica
Work placements
Not applicable.
Aims
The aim is to deepen and doplninění knowledge in the field of statistics, methods of descriptive statistics, results processing and statistical analysis methods. Introduction to the specific processing of results in analytical chemistry, environmental chemistry.
Specification of controlled education, way of implementation and compensation for absences
Attendance at lectures is recommended but not checked. For students of the combined form, consultations are organized in the scope of lectures for students of the day form of study.
Consultations are also provided to students of daily study on demand.
An integral part of the teaching and the combined form of teaching is the e-learning course, divided into blocks within which students are available to support learning, including electronic textbooks, presentations, lectures and other supplementary materials.
Consultations are also provided to students of daily study on demand.
An integral part of the teaching and the combined form of teaching is the e-learning course, divided into blocks within which students are available to support learning, including electronic textbooks, presentations, lectures and other supplementary materials.
Recommended optional programme components
Not applicable.
Prerequisites and corequisites
Not applicable.
Basic literature
M. Meloun, J. Militký, Kompendium statistického zpracování dat. Academia 2001, ISBN 80-200-1008-4
Doležalová: Studijní opory.https://www.vutbr.cz/elearning/course (CS)
Hebák,P., Hustopecký, J. et al.:Vícerozměrné statistické metody. Praha: Informatorium, 2004. (CS)
J. Pavlík a kol., Aplikovaná statistika, VŠCHT Praha, 2005, ISBN 80-7080-569-2
Miller J.N., Miller J.C.: Statistics and Chemometrics for Analytical Chemistry. Pearson, Harlow 2005 (CS)
Richard C. Graham: Data Analysis for the Chemical Sciences. VCH Publishers, Inc., New York, 1993, ISBN 1-56081-048-3 (CS)
Doležalová: Studijní opory.https://www.vutbr.cz/elearning/course (CS)
Hebák,P., Hustopecký, J. et al.:Vícerozměrné statistické metody. Praha: Informatorium, 2004. (CS)
J. Pavlík a kol., Aplikovaná statistika, VŠCHT Praha, 2005, ISBN 80-7080-569-2
Miller J.N., Miller J.C.: Statistics and Chemometrics for Analytical Chemistry. Pearson, Harlow 2005 (CS)
Richard C. Graham: Data Analysis for the Chemical Sciences. VCH Publishers, Inc., New York, 1993, ISBN 1-56081-048-3 (CS)
Recommended reading
Not applicable.
Elearning
eLearning: currently opened course
Classification of course in study plans
- Programme BPCP_ECHBM Bachelor's 3 year of study, summer semester, compulsory-optional
- Programme BKCP_ECHBM Bachelor's 3 year of study, summer semester, compulsory-optional
Type of course unit
Elearning
eLearning: currently opened course