1 / 26

Review of Probability Theory

Review of Probability Theory. Review Session 1 EE384X. Random Variable. A random experiment with set of outcomes Random variable is a function from set of outcomes to real numbers. Example. Indicator random variable: A : A subset of is called an event. CDF and PDF.

Download Presentation

Review of Probability Theory

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Review of Probability Theory Review Session 1 EE384X EE384x

  2. Random Variable • A random experiment with set of outcomes • Random variable is a function from set of outcomes to real numbers EE384x

  3. Example • Indicator random variable: • A : A subset of is called an event EE384x

  4. CDF and PDF • Discrete random variable: • The possible values are discrete (countable) • Continuous random variable: • The rv can take a range of values in R • Cumulative Distribution Function (CDF): • PDF and PMF: EE384x

  5. Expectation and higher moments • Expectation (mean): • if X>0 : • Variance: EE384x

  6. Two or more random variables • Joint CDF: • Covariance: EE384x

  7. Independence • For two events A and B: • Two random variables • IID : Independent and Identically Distributed EE384x

  8. Useful Distributions EE384x

  9. Bernoulli Distribution • The same as indicator rv: • IID Bernoulli rvs (e.g. sequence of coin flips) EE384x

  10. Binomial Distribution • Repeated Trials: • Repeat the same random experiment n times. (Experiments are independent of each other) • Number of times an event A happens among n trials has Binomial distribution • (e.g., number of heads in n coin tosses, number of arrivals in n time slots,…) • Binomial is sum of n IID Bernouli rvs EE384x

  11. Mean of Binomial • Note that: EE384x

  12. Binomial - Example n=4 p=0.2 n=10 n=20 n=40 EE384x

  13. Binomial – Example (ball-bin) • There are B bins, n balls are randomly dropped into bins. • : Probability that a ball goes to bin i • : Number of balls in bin i after n drops EE384x

  14. Multinomial Distribution • Generalization of Binomial • Repeated Trails (we are interested in more than just one event A) • A partition of W into A1,A2,…,Al • Xi shows the number of times Ai occurs among n trails. EE384x

  15. Poisson Distribution • Used to model number of arrivals EE384x

  16. Poisson Graphs l=.5 l=1 l=4 l=10 EE384x

  17. Poisson as limit of Binomial • Poisson is the limit of Binomial(n,p) as • Let EE384x

  18. Poisson and Binomial n=5,p=4/5 Poisson(4) n=10,p=.4 n=20, p=.2 n=50,p=.08 EE384x

  19. Geometric Distribution • Repeated Trials: Number of trials till some event occurs EE384x

  20. Exponential Distribution • Continuous random variable • Models lifetime, inter-arrivals,… EE384x

  21. Minimum of Independent Exponential rvs • : Independent Exponentials EE384x

  22. Memoryless property • True for Geometric and Exponential Dist.: • The coin does not remember that it came up tails l times • Root cause of Markov Property. EE384x

  23. Proof for Geometric EE384x

  24. Characteristic Function • Moment Generating Function (MGF) • For continuous rvs (similar to Laplace xform) • For Discrete rvs (similar to Z-transform): EE384x

  25. Characteristic Function • Can be used to compute mean or higher moments: • If X and Y are independent and T=X+Y EE384x

  26. Useful CFs • Bernoulli(p) : • Binomial(n,p) : • Multinomial: • Poisson: EE384x

More Related