Počet kreditů 5
Vyučováno v Winter
Rozsah výuky 2p+2c
Garant předmětu
Přednášející
Cvičící

In the course of subject "Experimental Data Analysis", students will acquire knowledge regarding fundamental methods for data analysis and machine learning for evaluation and interpretation of data. In the course of practical lectures, students will solve individual tasks using real data from signal processing in neuroscience research. In the course of semestral project, student will solve complex task and present obtained results. The aim of the subject is to introduce practical application of fundamental statistical methods as well as to teach students to use critical thinking and to acquire additional knowledge in solution of practical tasks.

1. Introduction to the subject "Experimental Data Analysis", introduction to data

2. Introduction to the statistics, probability distributions, and plotting statistical data

3. Hypothesis testing, group differences, paired test, effect size

4. Correlations, normality of data testing, parametric vs. non-parametric tests

5. Analysis of variance, post-hoc testing

6. Type I & Type II errors, multiple comparisons, sample size estimation

7. Factorial analysis of variance

8. Introduction to models, regression analysis

9. Supervised classification

10. Model validation

11. Unsupervised classification

12. Dimensionality reduction, data interpretation

13. Reserve, consultation of semestral projects

14. Presentation of obtained results

1. Introduction to Matlab

2. Introduction to the statistics, probability distributions, and plotting statistical data

3. Hypothesis testing, group differences, paired test, effect size

4. Correlations, normality of data testing, parametric vs. non-parametric tests

5. Analysis of variance, post-hoc testing

6. Type I & Type II errors, multiple comparisons, sample size estimation

7. Factorial analysis of variance

8. Introduction to models, regression analysis

9. Supervised classification

10. Model validation

11. Unsupervised classification

12. Dimensionality reduction, data interpretation

13. Reserve, consultation of semestral projects

14. Presentation of obtained results

[1] Vidakovic B. Statistics for bioengineering sciences: with Matlab and WinBUGS support. New Yourk: Springer, 2011.

[2] Hastie T, Tibshirani R, Friedman JH. The elements of statistical learning : data mining, inference, and prediction: with 200 full-color illustrations. New York: Springer, 2001.

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