Basic Concepts of Probability CEE 431/ESS465. Basic Concepts of Probability Sample spaces and events Venn diagram  A Sample space,  Event, A.

Slides:



Advertisements
Similar presentations
Continuous Random Variables Chapter 5 Nutan S. Mishra Department of Mathematics and Statistics University of South Alabama.
Advertisements

CS433: Modeling and Simulation
Chapter 4 Probability and Probability Distributions
DEPARTMENT OF HEALTH SCIENCE AND TECHNOLOGY STOCHASTIC SIGNALS AND PROCESSES Lecture 1 WELCOME.
Continuous Random Variable (1). Discrete Random Variables Probability Mass Function (PMF)
Review of Basic Probability and Statistics
Continuous Random Variables. For discrete random variables, we required that Y was limited to a finite (or countably infinite) set of values. Now, for.
Probability Theory Part 2: Random Variables. Random Variables  The Notion of a Random Variable The outcome is not always a number Assign a numerical.
Probability Densities
1 STAT 6020 Introduction to Biostatistics Fall 2005 Dr. G. H. Rowell Class 2.
Probability and Statistics Review
1 Chapter 7 Probability Basics. 2 Chapter 7 Introduction to Probability Basics Learning Objectives –Probability Theory and Concepts –Use of probability.
Probability Review (many slides from Octavia Camps)
Mutually Exclusive: P(not A) = 1- P(A) Complement Rule: P(A and B) = 0 P(A or B) = P(A) + P(B) - P(A and B) General Addition Rule: Conditional Probability:
Probability Rules l Rule 1. The probability of any event (A) is a number between zero and one. 0 < P(A) < 1.
Section 5.2 The Addition Rule and Complements
Sampling Distributions  A statistic is random in value … it changes from sample to sample.  The probability distribution of a statistic is called a sampling.
Probability and Statistics Dr. Saeid Moloudzadeh Axioms of Probability/ Basic Theorems 1 Contents Descriptive Statistics Axioms of Probability.
L7.1b Continuous Random Variables CONTINUOUS RANDOM VARIABLES NORMAL DISTRIBUTIONS AD PROBABILITY DISTRIBUTIONS.
Short Resume of Statistical Terms Fall 2013 By Yaohang Li, Ph.D.
TELECOMMUNICATIONS Dr. Hugh Blanton ENTC 4307/ENTC 5307.
Continuous Probability Distributions  Continuous Random Variable  A random variable whose space (set of possible values) is an entire interval of numbers.
Statistics for Engineer Week II and Week III: Random Variables and Probability Distribution.
10/1/20151 Math a Sample Space, Events, and Probabilities of Events.
Ex St 801 Statistical Methods Probability and Distributions.
Theory of Probability Statistics for Business and Economics.
QBM117 Business Statistics Probability and Probability Distributions Continuous Probability Distributions 1.
Biostat. 200 Review slides Week 1-3. Recap: Probability.
LECTURE IV Random Variables and Probability Distributions I.
 Review Homework Chapter 6: 1, 2, 3, 4, 13 Chapter 7 - 2, 5, 11  Probability  Control charts for attributes  Week 13 Assignment Read Chapter 10: “Reliability”
Probability theory Petter Mostad Sample space The set of possible outcomes you consider for the problem you look at You subdivide into different.
Appendix : Probability Theory Review Each outcome is a sample point. The collection of sample points is the sample space, S. Sample points can be aggregated.
CS433 Modeling and Simulation Lecture 03 – Part 01 Probability Review 1 Dr. Anis Koubâa Al-Imam Mohammad Ibn Saud University
Dr. Ahmed Abdelwahab Introduction for EE420. Probability Theory Probability theory is rooted in phenomena that can be modeled by an experiment with an.
 Random variables can be classified as either discrete or continuous.  Example: ◦ Discrete: mostly counts ◦ Continuous: time, distance, etc.
Lecture V Probability theory. Lecture questions Classical definition of probability Frequency probability Discrete variable and probability distribution.
MATH 4030 – 4B CONTINUOUS RANDOM VARIABLES Density Function PDF and CDF Mean and Variance Uniform Distribution Normal Distribution.
Math 4030 Midterm Exam Review. General Info: Wed. Oct. 26, Lecture Hours & Rooms Duration: 80 min. Close-book 1 page formula sheet (both sides can be.
Random Variables (1) A random variable (also known as a stochastic variable), x, is a quantity such as strength, size, or weight, that depends upon a.
Probability theory Tron Anders Moger September 5th 2007.
2. Introduction to Probability. What is a Probability?
1 Probability: Liklihood of occurrence; we know the population, and we predict the outcome or the sample. Statistics: We observe the sample and use the.
Exam 2: Rules Section 2.1 Bring a cheat sheet. One page 2 sides. Bring a calculator. Bring your book to use the tables in the back.
Copyright © 2006 The McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin Review of Statistics I: Probability and Probability Distributions.
CONTINUOUS RANDOM VARIABLES
Discrete and Continuous Random Variables. Yesterday we calculated the mean number of goals for a randomly selected team in a randomly selected game.
Random Variables. Numerical Outcomes Consider associating a numerical value with each sample point in a sample space. (1,1) (1,2) (1,3) (1,4) (1,5) (1,6)
Review of Probability Concepts Prepared by Vera Tabakova, East Carolina University.
Welcome to MM305 Unit 3 Seminar Prof Greg Probability Concepts and Applications.
CHAPTER Discrete Models  G eneral distributions  C lassical: Binomial, Poisson, etc Continuous Models  G eneral distributions 
1 STAT 6020 Introduction to Biostatistics Fall 2005 Dr. G. H. Rowell Class 1b.
Random Variables By: 1.
MECH 373 Instrumentation and Measurements
Math a - Sample Space - Events - Definition of Probabilities
Welcome to MM305 Unit 3 Seminar Dr
Continuous Random Variable
Chapter 3 Probability.
CONTINUOUS RANDOM VARIABLES
Chapter 7: Sampling Distributions
Review of Probability Theory
Basic Probability aft A RAJASEKHAR YADAV.
Chapter 4 – Part 3.
Advanced Artificial Intelligence
Chapter 2 Notes Math 309 Probability.
Probability, Statistics
Statistics Lecture 12.
Chapter 3 : Random Variables
Probability Rules Rule 1.
Notes 13-4: Probabilities of Compound Events
Experiments, Outcomes, Events and Random Variables: A Revisit
Presentation transcript:

Basic Concepts of Probability CEE 431/ESS465

Basic Concepts of Probability Sample spaces and events Venn diagram  A Sample space,  Event, A

Intersection of sets  A Sample space,  B A B U Basic Concepts of Probability Sample spaces and events

Union of sets  A Sample space,  B A B U Basic Concepts of Probability Sample spaces and events

The probability of an even is represented by a number greater than or equal to zero but less than or equal to 1: 0 < P[A] < 1 The probability of an event equal to the entire sample space is 1 P[  ] = 1 The probability of an event representing the union of two mutually exclusive events is equal to the sum of the probabilities of the two events P[A U B] = P[A] + P[B] Basic Concepts of Probability Axioms of probability

P[A U B] = P[A] + P[B] - P[A B]  A Sample space,  B A B U U Basic Concepts of Probability Probabilities of events

P[A | B] =  A Sample space,  B U P[A B] P[B] Basic Concepts of Probability Conditional probability So, P[A B] U = P[A | B] P[B]

P[A] = P[A] = P[A|B 1 ]P[B 1 ] + P[A|B 2 ]P[B 2 ] + … + P[A|B N ]P[B N ] B1B1 B2B2 B3B3 B4B4 B5B5 A U P[A B 1 ] + U P[A B 2 ] + … + U P[A B N ] Basic Concepts of Probability Conditional probability

Basic Concepts of Probability Random Variables Quantities that can take on many values Discrete random variables - finite number of values Number of borings encountering peat at a site Date of birth Continuous random variables - infinite number of values Undrained strength of a clay layer Weight

Basic Concepts of Probability Continuous Random Variables Distribution of values described by probability density function (pdf) that satisfies the following conditions: The probability that X is between a and b is equal to the area under the pdf between a and b The probability that X is between a and b is equal to the area under the pdf between a and b

Basic Concepts of Probability Continuous Random Variables Distribution of values can also be described by a cumulative distribution function (CDF), which is related to the pdf according to

Basic Concepts of Probability Statistical Characterization of Random Variables Distribution of values can also be characterized by statistical descriptors Mean Variance Standard deviation Standard deviation

Basic Concepts of Probability Common Probability Distributions Uniform distribution f X (x) = 0 for x < a 0 for x > b 1/(b - a) for a < x < b a b fX(x)fX(x)FX(x)FX(x) xabx 1.0

Basic Concepts of Probability Common Probability Distributions Normal distribution fX(x)fX(x)FX(x)FX(x) xx 1.0 x x

Basic Concepts of Probability Common Probability Distributions Standard normal distribution Mean = 0 Standard deviation = 1 Values of standard normal CDF commonly tabulated

Basic Concepts of Probability Common Probability Distributions Standard normal distribution Mapping from random variable to standard normal random variable Compute Z, then use tabulated values of CDF

Basic Concepts of Probability Common Probability Distributions Example: Given a normally distributed random variable, X, with x = 270 and  x = 40, compute the probability that X < 300 Looking up Z = 0.75 in CDF table, F Z (0.75) = 1 - F Z (-0.75) =

Basic Concepts of Probability Common Probability Distributions Lognormal distribution fX(x)fX(x)fX(x)fX(x) ln xx 1.0 ln x