First we need to understand the variables. A random variable is a value of an outcome such as counting the number of heads when flipping a coin, which.

Slides:



Advertisements
Similar presentations
AP Statistics Chapter 7 – Random Variables. Random Variables Random Variable – A variable whose value is a numerical outcome of a random phenomenon. Discrete.
Advertisements

HAWKES LEARNING SYSTEMS math courseware specialists Copyright © 2010 by Hawkes Learning Systems/Quant Systems, Inc. All rights reserved. Chapter 7 Probability.
Sections 4.1 and 4.2 Overview Random Variables. PROBABILITY DISTRIBUTIONS This chapter will deal with the construction of probability distributions by.
AP Statistics Chapter 16. Discrete Random Variables A discrete random variable X has a countable number of possible values. The probability distribution.
Probability Distributions Finite Random Variables.
1 Continuous random variables f(x) x. 2 Continuous random variables A discrete random variable has values that are isolated numbers, e.g.: Number of boys.
Discrete Probability Distributions
Chapter 6 Random Variables
 The Law of Large Numbers – Read the preface to Chapter 7 on page 388 and be prepared to summarize the Law of Large Numbers.
1 Binomial Probability Distribution Here we study a special discrete PD (PD will stand for Probability Distribution) known as the Binomial PD.
Copyright © 2010 Pearson Education, Inc. Slide
PROBABILITY DISTRIBUTIONS
Random Variables A random variable A variable (usually x ) that has a single numerical value (determined by chance) for each outcome of an experiment A.
Stat 1510: Introducing Probability. Agenda 2  The Idea of Probability  Probability Models  Probability Rules  Finite and Discrete Probability Models.
Week71 Discrete Random Variables A random variable (r.v.) assigns a numerical value to the outcomes in the sample space of a random phenomenon. A discrete.
Chapter 7: Random Variables
7.1 Discrete and Continuous Random Variable.  Calculate the probability of a discrete random variable and display in a graph.  Calculate the probability.
Chapter 6: Probability Distributions
Statistics 303 Chapter 4 and 1.3 Probability. The probability of an outcome is the proportion of times the outcome would occur if we repeated the procedure.
Lesson 7 - R Review of Random Variables. Objectives Define what is meant by a random variable Define a discrete random variable Define a continuous random.
Sullivan – Fundamentals of Statistics – 2 nd Edition – Chapter 11 Section 1 – Slide 1 of 34 Chapter 11 Section 1 Random Variables.
Follow-Up on Yesterday’s last problem. Then we’ll review. Sit in the groups below Brendan and Tim are playing in an MB golf tournament. Their scores vary.
Applied Business Forecasting and Regression Analysis Review lecture 2 Randomness and Probability.
Random Variables Numerical Quantities whose values are determine by the outcome of a random experiment.
1 Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Chapter 6. Continuous Random Variables Reminder: Continuous random variable.
6-2: STANDARD NORMAL AND UNIFORM DISTRIBUTIONS. IMPORTANT CHANGE Last chapter, we dealt with discrete probability distributions. This chapter we will.
Probability Definition: randomness, chance, likelihood, proportion, percentage, odds. Probability is the mathematical ideal. Not sure what will happen.
5.3 Random Variables  Random Variable  Discrete Random Variables  Continuous Random Variables  Normal Distributions as Probability Distributions 1.
Binomial Experiment A binomial experiment (also known as a Bernoulli trial) is a statistical experiment that has the following properties:
Objectives The student will be able to: find the variance of a data set. find the standard deviation of a data set.
7.1 – Discrete and Continuous Random Variables
Mean and Standard Deviation of Discrete Random Variables.
Special Topics. Mean of a Probability Model The mean of a set of observations is the ordinary average. The mean of a probability model is also an average,
1 Since everything is a reflection of our minds, everything can be changed by our minds.
MATH 2400 Ch. 10 Notes. So…the Normal Distribution. Know the 68%, 95%, 99.7% rule Calculate a z-score Be able to calculate Probabilities of… X < a(X is.
Copyright (C) 2002 Houghton Mifflin Company. All rights reserved. 1 Understandable Statistics Seventh Edition By Brase and Brase Prepared by: Mistah Flynn.
Chapter 7 Random Variables. Usually notated by capital letters near the end of the alphabet, such as X or Y. As we progress from general rules of probability.
Statistics Chapter 6 / 7 Review. Random Variables and Their Probability Distributions Discrete random variables – can take on only a countable or finite.
Random Variables Ch. 6. Flip a fair coin 4 times. List all the possible outcomes. Let X be the number of heads. A probability model describes the possible.
+ The Practice of Statistics, 4 th edition – For AP* STARNES, YATES, MOORE Chapter 6: Random Variables Section 6.1 Discrete and Continuous Random Variables.
Lesson Discrete Random Variables. Objectives Distinguish between discrete and continuous random variables Identify discrete probability distributions.
STA 2023 Module 5 Discrete Random Variables. Rev.F082 Learning Objectives Upon completing this module, you should be able to: 1.Determine the probability.
AP Statistics Chapter 16. Discrete Random Variables A discrete random variable X has a countable number of possible values. The probability distribution.
Probability Theory Modelling random phenomena. Permutations the number of ways that you can order n objects is: n! = n(n-1)(n-2)(n-3)…(3)(2)(1) Definition:
Continuous Distributions. Continuous random variables Are numerical variables whose values fall within a range or interval Are measurements Can be described.
AP STATISTICS Section 7.1 Random Variables. Objective: To be able to recognize discrete and continuous random variables and calculate probabilities using.
1 Keep Life Simple! We live and work and dream, Each has his little scheme, Sometimes we laugh; sometimes we cry, And thus the days go by.
Binomial Distributions Chapter 5.3 – Probability Distributions and Predictions Mathematics of Data Management (Nelson) MDM 4U.
Review Know properties of Random Variables
AP Statistics Section 7.2A Mean & Standard Deviation of a Probability Distribution.
The Practice of Statistics, 5th Edition Starnes, Tabor, Yates, Moore Bedford Freeman Worth Publishers CHAPTER 6 Random Variables 6.1: Discrete and Continuous.
Combining Two Random Variables: Means and Variances Lesson
Chapter 4 - Random Variables Todd Barr 22 Jan 2010 Geog 3000.
Binomial Distributions Chapter 5.3 – Probability Distributions and Predictions Mathematics of Data Management (Nelson) MDM 4U Authors: Gary Greer (with.
7.2 Means & Variances of Random Variables AP Statistics.
Unit 4 Review. Starter Write the characteristics of the binomial setting. What is the difference between the binomial setting and the geometric setting?
Normal Distribution. Normal Distribution Curve A normal distribution curve is symmetrical, bell-shaped curve defined by the mean and standard deviation.
Copyright ©2011 Brooks/Cole, Cengage Learning Continuous Random Variables Class 36 1.
Chapter Five The Binomial Probability Distribution and Related Topics
Discrete and Continuous Random Variables
AP Statistics Chapter 16.
Chapter 4 – Part 3.
Chapter 4 Review Questions Continuous or Discrete?
Probability Review for Financial Engineers
Probability Key Questions
Review
AP Statistics Chapter 16 Notes.
ELEMENTARY STATISTICS, BLUMAN
Presentation transcript:

First we need to understand the variables. A random variable is a value of an outcome such as counting the number of heads when flipping a coin, which is an example of a discrete random variable. These variables can also be in interval form like the range of the mid 50% of SAT scores in which they are known as continuous random variables.

More on Discrete Random Variables X has a countable number of possible values Has to take in account whether or not it is asking for less or greater than and less than or equal equal to X> 2 is different from X≥ 2 The probability of X> 2 is.6 Probability of X≥ 2 is

Probability of Discrete Random Variables The probability has to be between 0 and 1 Sum of probabilities is 1 P1 + P2 + … + Pk = 1 Ex from last slide: = 1

If simpler terms don't work for you...

Another Example

Example continued: Let us say that we wanted to know X = 4, X < 4, and X ≤ 4 X = 4’s probability would be.15 since we want to know what is the probability of 4 and nothing else X < 4 is equivalent to X ≤3 since it is everything under 4. The probability of it would be.55 since 1’s probability of ’s probability of.3 + 3’s probability of.2 =.55 X≤ 4 is everything below 4 including 4 itself. So in addition of having , we include the value of 4 into the probability. The probability of X≤4 is.7

Probability Histograms Histograms can show probability distribution and distribution of data The most likely is 3 because it has the highest probability with.4 The least likely is 1 which has a probability of.1 It is easy to compare different distributions with histograms

Continuous Random Variables It takes all the numbers in an interval It ignores signs like ≤ or ≥ and treats them just like Think of it like a spinner. It doesn’t land exactly on one point, but instead there are many numbers that are in between the different numbers

Uniform Distribution and Continuous Random Variables We want all outcomes to be equally likely Can’t assign a probability to an individual outcome We assign probabilities to areas under a density curve Use ranges for probability like P(0 < X <.5) =.5 P (0 < x <.2) =.2 P(.5 < x ≤.8) =.3

ALL Individual outcomes have a probability of 0 Since it is continuous, you can’t get 1 exact point Say it was.5,.5 has no length on the uniform distribution. It only has length if it is

Normal Distributions as Probability Distributions Normal distributions are probability distribution N(μ, δ ) notation for Normal distribution μ is the mean δ is the standard deviation Formula for standardizing

Normal Distributions as Probability Distributions continued To find the probability of <x, follow the z score formula and change from z score into probability To find >x, do the z score formula, convert z score into probability and then find the complement of it ( 1 – p ) and that is the probability that it will be above

Example A radar unit is used to measure speeds of cars on a motorway. The speeds are normally distributed with a mean of 90 km/hr and a standard deviation of 10 km/hr. What is the probability that a car picked at random is travelling at more than 100 km/hr?

Example continued N(μ, δ ) = N(90, 10) Car goes on average 90 kilometers/hour with a standard deviation of 10kilometers/hour P( X > 100 ) Trying to find probability of car going faster than 100kilometers/hour Z = (100 – 90)/ 10 Z = 1 1 =.8413 Because we are trying to find greater than 100, we have to do which is.1587

X: (a value of a discrete random variable) P(x): the probability of the x value occuring To find the mean multiply X by P(x) for each pair and add the products together. The mean is represented by The mean of discrete random variables (1x.10) + (2x.30)...

Too many letters >.<

Example continued You can also do it with a calculator 2 nd, Vars, normalcdf(, For lower you would enter 100 since we are trying to find greater than 100 Upper you can basically put it as an insanely high number like μ would be 90 since that is the average speed of the cars δ you would put 10 since that is the standard deviation that was given Then paste it and hit enter and you should which is slightly different than using the z-score table, but that is due to round off error.

Simplify it further Input X in L1 and P(x) in L2 Click stat, go right to calc, select 1-Var Stats type (L1,L2) ENTER is your mean for the discrete random variables

Finding the variance of a discrete random variable The variance of discrete variables can be found by subtracting the mean of the data set from each individual variable and squaring the difference. Then multiply the result by the probability of that X value. Repeat for each variable and add each answer to eachother. ((x1-mean)^2)xP1 + ((x2-mean)^2)xP2....

Or... Just get the variance from squaring the standard deviation from 1-Var Stats (L1,L2)

Stardard deviation of discrete variables? If you don't know how to get the standard deviation from the variance Just square root the variance...

Textbook Version

The LAW of large numbers Meaning: the average of the values of X observed in many trials must approach the mean.

Rules for means Rule one: If X is a random variable and a and b are fixed numbers, then the mean of a plus b times x= a+ b times the mean of x. The face I made when I attempted to understand this formula: Rule two: If x and y are two independent random variables, then the mean of X and Y is equal to the sum of the mean of X and the sum of the mea of Y

The Rules of Variances

最终的 27 Total Brutal Hours Spent Developing this PowerPoint between our group members. This is how we prepared