Probabilty Theory For EE
Course topics
The aim of the course is to study main principles of probability theory. Such themes as probability spaces, random variables, probability distributions are given in details.Some applications are also considered.1. Probability space: sample space, probability function, finite symmetric probability space, combinatorial methods, and geometrical probabilities.2. Conditional probability, independent events, total probability formula, Bayes formula. 3. Discrete random variable, special distributions: uniform, binomial, geometric, negative binomial, hypergeometric and Poisson distribution. Poisson process.4. Continuous random variable, density function, cummulative distribution function. Special distributions: uniform, exponential, gamma and normal. Transformations of random variables. Distribution of maximum and minimum. Random variable of mixed type.5. Moments of random variable. Expectation and variance. Chebyshev inequality.6. Random vector, joint probability function, joint density function, marginal distributions. Conditional density, covariance and correlation coefficient.7. Central Limit Theorem. Normal approximation. Law of Large Numbers.
Course Information
- University course catalogue:
- 201.1.9831
- Level:
- Service
- Credits:
- 3.5
Recently Given
- 2024–25–A (Dr. Natalia Gulko)
- 2023–24–B
- 2023–24–A (Dr. Motke Porat)
- 2022–23–B (Dr. Dennis Gulko)
- 2022–23–A (Dr. Dennis Gulko)
- 2021–22–B (Prof. Ariel Yadin)
- 2021–22–A (Dr. Dennis Gulko)
- 2020–21–B (Prof. Ariel Yadin)
- 2020–21–A (Dr. Dennis Gulko)
- 2019–20–B
Departments
- Physics
- Computer science
- Faculty - Engineering
- Faculty - Natural sciences
- Biomedical engineering
- Communication systems engineering