Normal Distribution A random variable X having a probability density function given by the formula is said to have a Normal Distribution with parameters.

Slides:



Advertisements
Similar presentations
Chapter 2: The Normal Distributions
Advertisements

Chapter 7 The Normal Probability Distribution
5-Minute Check on Activity 7-10 Click the mouse button or press the Space Bar to display the answers. 1.State the Empirical Rule: 2.What is the shape of.
5 Normal Probability Distributions
Copyright ©2006 Brooks/Cole A division of Thomson Learning, Inc. Introduction to Probability and Statistics Twelfth Edition Robert J. Beaver Barbara M.
Lesson 7 - QR Quiz Review.
Section 5.3 Normal Distributions: Finding Values 1Larson/Farber 4th ed.
Quantitative Analysis (Statistics Week 8)
Finding Z – scores & Normal Distribution Using the Standard Normal Distribution Week 9 Chapter’s 5.1, 5.2, 5.3.
Copyright © 2011 Pearson Education, Inc. Putting Statistics to Work.
Measures of Dispersion. Here are two sets to look at A = {1,2,3,4,5,6,7} B = {8,9,10,11,12,13,14} Do you expect the sets to have the same means? Median?
The Normal Curve. Introduction The normal curve Will need to understand it to understand inferential statistics It is a theoretical model Most actual.
Normal Probability Distributions
Normal Probability Distributions 1 Chapter 5. Chapter Outline Introduction to Normal Distributions and the Standard Normal Distribution 5.2 Normal.
Section 5.1 Introduction to Normal Distributions and the Standard Normal Distribution.
Normal distribution. An example from class HEIGHTS OF MOTHERS CLASS LIMITS(in.)FREQUENCY
Random Variables zDiscrete Random Variables: a random variable that can assume only a countable number of values. The value of a discrete random variable.
Some Continuous Probability Distributions
Discrete and Continuous Random Variables Continuous random variable: A variable whose values are not restricted – The Normal Distribution Discrete.
Chapter 13 Statistics © 2008 Pearson Addison-Wesley. All rights reserved.
§ 5.2 Normal Distributions: Finding Probabilities.
© Copyright McGraw-Hill CHAPTER 6 The Normal Distribution.
HAWKES LEARNING SYSTEMS math courseware specialists Copyright © 2010 by Hawkes Learning Systems/Quant Systems, Inc. All rights reserved. Chapter 8 Continuous.
CHAPTER FIVE SOME CONTINUOUS PROBABILITY DISTRIBUTIONS.
CONTINUOUS RANDOM VARIABLES AND THE NORMAL DISTRIBUTION.
Copyright © Cengage Learning. All rights reserved. 6 Normal Probability Distributions.
Chapter Normal Probability Distributions 1 of © 2012 Pearson Education, Inc. All rights reserved. Edited by Tonya Jagoe.
© 2008 Pearson Addison-Wesley. All rights reserved Chapter 1 Section 13-5 The Normal Distribution.
Normal distribution and intro to continuous probability density functions...
JMB Ch6 Lecture2 Review EGR 252 Spring 2011 Slide 1 Continuous Probability Distributions Many continuous probability distributions, including: Uniform.
Normal Probability Distributions Larson/Farber 4th ed 1.
Normal Curves and Sampling Distributions Chapter 7.
Normal Distributions.  Symmetric Distribution ◦ Any normal distribution is symmetric Negatively Skewed (Left-skewed) distribution When a majority of.
NORMAL DISTRIBUTION Chapter 3. DENSITY CURVES Example: here is a histogram of vocabulary scores of 947 seventh graders. BPS - 5TH ED. CHAPTER 3 2 The.
CHAPTER FIVE SOME CONTINUOUS PROBABILITY DISTRIBUTIONS.
Chapter 6 The Normal Distribution.  The Normal Distribution  The Standard Normal Distribution  Applications of Normal Distributions  Sampling Distributions.
Copyright © 2013, 2010 and 2007 Pearson Education, Inc. Chapter The Normal Probability Distribution 7.
Standard Normal Distribution
Chapter 5 Normal Probability Distributions 1 Larson/Farber 4th ed.
Normal Probability Distributions Chapter 5. § 5.1 Introduction to Normal Distributions and the Standard Distribution.
The Normal Distribution: Comparing Apples and Oranges.
Chapter 7 The Normal Probability Distribution 7.1 Properties of the Normal Distribution.
Chapter 6: The Normal Distribution
Copyright © 2015, 2012, and 2009 Pearson Education, Inc. 1 Chapter Normal Probability Distributions 5.
Section 5.1 Introduction to Normal Distributions © 2012 Pearson Education, Inc. All rights reserved. 1 of 104.
Chapter Normal Probability Distributions 1 of 25 5  2012 Pearson Education, Inc. All rights reserved.
Introduction to Normal Distributions
Chapter 5 Normal Probability Distributions.
Properties of the Normal Distribution
Chapter 12 Statistics 2012 Pearson Education, Inc.
Elementary Statistics: Picturing The World
The Normal Probability Distribution
ANATOMY OF THE STANDARD NORMAL CURVE
12/1/2018 Normal Distributions
5.4 Finding Probabilities for a Normal Distribution
Normal Probability Distributions
Normal Probability Distributions
7-7 Statistics The Normal Curve.
Chapter 6: Normal Distributions
10-5 The normal distribution
Sec Introduction to Normal Distributions
Section 13.6 The Normal Curve
Introduction to Normal Distributions
Chapter 5 Normal Probability Distributions.
Chapter 5 Normal Probability Distributions.
Chapter 5 Continuous Random Variables and Probability Distributions
The Normal Distribution
Introduction to Normal Distributions
Chapter 12 Statistics.
Presentation transcript:

Normal Distribution A random variable X having a probability density function given by the formula is said to have a Normal Distribution with parameters  and  2. Symbolically, X ~ N( ,  2 ).

Properties of Normal Distribution 1.The curve extends indefinitely to the left and to the right, approaching the x-axis as x increases in magnitude, i.e. as x  , f(x)  0. 2.The mode occurs at x= . 3.The curve is symmetric about a vertical axis through the mean  4.The total area under the curve and above the horizontal axis is equal to 1. i.e.

Empirical Rule (Golden Rule)  The following diagram illustrates relevant areas and associated probabilities of the Normal Distribution. Approximate 68.3% of the area lies within  ± , 95.5% of the area lies within  ±2 , and 99.7% of the area lies within  ±3 .

 For normal curves with the same , they are identical in shapes but the means  are centered at different positions along the horizontal axis.

 For normal curves with the same mean , the curves are centered at exactly the same position on the horizontal axis, but with different standard deviations , the curves are in different shapes, i.e. the curve with the larger standard deviation is lower and spreads out farther, and the curve with lower standard deviation and the dispersion is smaller.

Normal Table If the random variable X ~ N( ,  2 ), then we can transform all the values of X to the standardized values Z with the mean 0 and variance 1, i.e. Z ~ N(0, 1), on letting

Standardizing Process This can be done by means of the transformation. The mean of Z is zero and the variance is respectively,

Diagrammatic of the Standardizing Process Transforms X ~ N( ,  2 ) to Z ~ N(0, 1). Whenever X is between the values x=x 1 and x=x 2, Z will fall between the corresponding values z=z 1 and z=z 2, we have P(x 1 < X < x 2 ) = P(z 1 < Z < z 2 ). It illustrates by the following diagram :

The normal table can be used to find values like P(Z > a), P(Z < b) and P(a  Z  b). We illustrate with the following examples. Example 1: P(-1.28 < Z < 0) = ? Solution:P(-1.28 < Z < 0) = P(0 < Z < 1.28) =

Example 2: P(Z < -1.28) = ? Solution: P(Z 1.28) = 0.5 – =0.1003

Example 3: P(Z > -1.28) = ? Solution:P(Z > -1.28) = P(Z < 1.28) = =

Example 4: P(-2.28 < Z < -1.28) = ? Solution: P(-2.28 < Z < -1.28) = P(1.28 < Z < 2.28) = – =

Example 5:P(-1.28 < Z < 2.28) = ? Solution: P(-1.28 < Z < 2.28) = =

Example 6:If P(Z > a) = 0.8, find the value of a? Solution: From the Normal Table A(0.84)  0.3  a 

Example 7:If P(Z < b) = 0.32, find the value of b? Solution: P(Z < b) = 0.32 P(b < Z < 0) = 0.5 – 0.32 = 0.18 From table, A(0.47)  0.18  b  -0.47

Example 8:If P(|Z  > c) = 0.1, fin the values of c? Solution: P(|Z  > c) = 0.1  P(Z > c) = 0.05  P( c > Z > 0) = 0.5 – 0.05 = 0.45 From table, A(1.645)  0.45  c  1.645

Transformation Example 9: If X ~ N(10, 4), find a)P(X  12); b)P(9.5  X  11); c)P(8.5  X  9) ?

Solution: (a) For the distribution of X with  =10,  =2

Solution: (b) For the distribution of X with  =10,  =2 P(9.5  X  11) = P(  Z  0.5) = =

Solution: (c) For the distribution of X with  =10,  =2 P(8.5  X  9) = P(  Z  - 0.5) = – =