The Normal Distribution & z-scores

Size: px
Start display at page:

Download "The Normal Distribution & z-scores"

Transcription

1 & z-scores

2 Distributions: Who needs them? Why are we interested in distributions? Important link between distributions and probabilities of events If we know the distribution of a set of events, then we know something about the probability that one of those events is likely to occur

3 Distributions and Probabilities Whose course would you rather take? Professor A Professor B C/C+ 30% D 8% F 5% A 19% B/B+ 38% D 4% C/C+ 22% F 7% B/B+ 35% A 32%

4 Distributions and Probabilities Whose course would you rather take? Professor A Professor B D 4% F 5% D 8% C 30% B 38% A 19% F 7% C 22% B 35% A 32%

5 A Note on Continuous Versus Discrete Distributions Y-axis represents density Probability density function Probability of any exact value is zero Y-axis represents probability Probability mass function Probability of exact values can be positive

6 The Normal Distribution Okay, distributions can be useful. But why should we care about this particular distribution? Most prominent distribution in statistics Normally distributed data Computational convenience Normality of sample means

7 Normally Distributed Data Many of the dependent variables that we deal with are approximately normally distributed in the population Originally used to describe errors in astronomical measurements Examples of normally distributed data Height Weight Normalized test scores Speed of cars on Route 18 Anything averaged across a large number of observations

8 Normally Distributed Data

9 Computational Convenience Many statistics related to the normal distribution, along with their sampling distributions are analytically tractable If we can assume that a variable is at least approximately normally distributed, then we can use standard techniques (i.e., those that make up most of this book) to make inferences about values of that variable

10 Normality of Sample Means Regardless of the distribution of the underlying variable (with limited exceptions), the distribution of sample means approaches normality as the sample size n grows. We will discuss this in greater detail later in the next lecture when we cover the central limit theorem. Generally, this means that the sampling distribution of the mean can be approximated by a normal distribution

11 The Standard Normal Distribution The Normal Distribution σ 2.1% 13.6% 34.1% 34.1% 13.6% 2.1%

12 Standardizing Normal Variables By itself, a raw score or x value provides very little information about how that particular score compares with other values in the distribution. A score of x = 53, for example, may be a relatively low score, or an average score, or an extremely high score depending on the mean and standard deviation for the distribution from which the score was obtained. If the raw score is transformed into a z-score, however, the value of the z-score tells you where the score is located relative to all the other scores in the distribution.

13 Standardizing Normal Variables To transform an x value into a z-score: z x To transform a z-score into an x value: x z

14 Standardizing Normal Variables In addition to knowing the basic definition of a z-score and the formula for a z-score, it is useful to be able to visualize z- scores as locations in a distribution. Remember, z = 0 is in the center (at the mean), and the extreme tails correspond to z-scores of approximately 2.00 on the left and on the right. 95.4% of the distribution is contained between z = -2 and z = % of the distribution is contained between z = -3 and z = 3

15 Standardizing Normal Distributions The Normal Distribution z x : x :

16 Standard Normal Tables (z-tables) Another important advantage of standardizing distributions is that it allows us to compute and use a single probability table for all normal distributions The Normal Distribution

17 Standard Normal Tables (z-tables) Upper-Tail Probabilities The Normal Distribution z

18 Standard Normal Tables: Meaning The Normal Distribution

19 Standard Normal Tables: Meaning The Normal Distribution

20 Standard Normal Tables: Meaning The Normal Distribution

21 Standard Normal Tables: Meaning The Normal Distribution

22 Standard Normal Tables: Meaning The Normal Distribution

23 Using z-tables Area under curve sums to 1 The normal distribution is symmetrical E.g., P(Z < -z) = P(Z > +z) (non-overlapping) areas sum E.g., P(0.0 < Z < 1.0) = P(Z > 0.0) P(Z > 1.0) Note: In this slide and in the rest of this lecture, I m using Z (capital) to indicate a randomly selected value of a standard normal variable, and z (lower-case) to indicate a particular value of that variable.

24 What is the probability that a randomly selected woman is taller than 5 6 (66 inches)?

25 Using z-tables to Compute Interval Probabilities Step 1: standardize value (i.e., compute z-score) z(66) 66 Step 2: Look up upper-tail area P Z z(66)

26 Standard Normal Tables (z-tables) Upper-Tail Probabilities The Normal Distribution z

27 Using z-tables to Compute Interval Probabilities Step 1: standardize value (i.e., compute z-score) z(66) Step 2: Look up upper-tail area P Z

28 What is the probability that a randomly selected woman is between 64 and 68 inches tall?

29 Using z-tables to Compute Interval Probabilities Step 1: standardize values (i.e., compute z-scores) z(64) z(68) Step 2: Look up upper-tail area(s) P Z z(64) P Z z(68) Step 3: Compute difference (64) (68) P Z P Z z P Z z

30 Standard Normal Tables (z-tables) Upper-Tail Probabilities The Normal Distribution z

31 Using z-tables to Compute Interval Probabilities Step 1: standardize values (i.e., compute z-scores) z(64) z(68) Step 2: Look up upper-tail area(s) P Z P Z Step 3: Compute difference P 0.0 Z 1.45 P Z 0.0 P Z

32 What is the probability that a randomly selected woman is between 62 and 66 inches tall?

33 Using z-tables to Compute Interval Probabilities Step 1: standardize values (i.e., compute z-scores) z(62) z(66) Step 2: Look up tail area(s) P Z 0.73 P Z 0.73 Step 3: Compute difference P 0.73 Z 0.73

34 Standard Normal Tables (z-tables) Upper-Tail Probabilities The Normal Distribution z

35 Using z-tables to Compute Interval Probabilities Step 1: standardize values (i.e., compute z-scores) z(62) z(66) Step 2: Look up tail area(s) P Z P Z 0.73 P( Z 0.73) Step 3: Compute difference P 0.73 Z P Z 0.73 P( Z 0.73) 1 2(0.2327)

The Normal Distribution & z-scores

The Normal Distribution & z-scores & z-scores Distributions: Who needs them? Why are we interested in distributions? Important link between distributions and probabilities of events If we know the distribution of a set of events, then we

More information

The Normal Distribution & z-scores

The Normal Distribution & z-scores & z-scores Distributions: Who needs them? Why are we interested in distributions? Important link between distributions and probabilities of events If we know the distribution of a set of events, then we

More information

Frequency Distributions

Frequency Distributions Displaying Data Frequency Distributions After collecting data, the first task for a researcher is to organize and summarize the data so that it is possible to get a general overview of the results. Remember,

More information

Ch6: The Normal Distribution

Ch6: The Normal Distribution Ch6: The Normal Distribution Introduction Review: A continuous random variable can assume any value between two endpoints. Many continuous random variables have an approximately normal distribution, which

More information

Lecture Slides. Elementary Statistics Twelfth Edition. by Mario F. Triola. and the Triola Statistics Series. Section 6.2-1

Lecture Slides. Elementary Statistics Twelfth Edition. by Mario F. Triola. and the Triola Statistics Series. Section 6.2-1 Lecture Slides Elementary Statistics Twelfth Edition and the Triola Statistics Series by Mario F. Triola Section 6.2-1 Chapter 6 Normal Probability Distributions 6-1 Review and Preview 6-2 The Standard

More information

Prepare a stem-and-leaf graph for the following data. In your final display, you should arrange the leaves for each stem in increasing order.

Prepare a stem-and-leaf graph for the following data. In your final display, you should arrange the leaves for each stem in increasing order. Chapter 2 2.1 Descriptive Statistics A stem-and-leaf graph, also called a stemplot, allows for a nice overview of quantitative data without losing information on individual observations. It can be a good

More information

Math 14 Lecture Notes Ch. 6.1

Math 14 Lecture Notes Ch. 6.1 6.1 Normal Distribution What is normal? a 10-year old boy that is 4' tall? 5' tall? 6' tall? a 25-year old woman with a shoe size of 5? 7? 9? an adult alligator that weighs 200 pounds? 500 pounds? 800

More information

2) In the formula for the Confidence Interval for the Mean, if the Confidence Coefficient, z(α/2) = 1.65, what is the Confidence Level?

2) In the formula for the Confidence Interval for the Mean, if the Confidence Coefficient, z(α/2) = 1.65, what is the Confidence Level? Pg.431 1)The mean of the sampling distribution of means is equal to the mean of the population. T-F, and why or why not? True. If you were to take every possible sample from the population, and calculate

More information

Density Curve (p52) Density curve is a curve that - is always on or above the horizontal axis.

Density Curve (p52) Density curve is a curve that - is always on or above the horizontal axis. 1.3 Density curves p50 Some times the overall pattern of a large number of observations is so regular that we can describe it by a smooth curve. It is easier to work with a smooth curve, because the histogram

More information

Probability and Statistics. Copyright Cengage Learning. All rights reserved.

Probability and Statistics. Copyright Cengage Learning. All rights reserved. Probability and Statistics Copyright Cengage Learning. All rights reserved. 14.6 Descriptive Statistics (Graphical) Copyright Cengage Learning. All rights reserved. Objectives Data in Categories Histograms

More information

Normal Distribution. 6.4 Applications of Normal Distribution

Normal Distribution. 6.4 Applications of Normal Distribution Normal Distribution 6.4 Applications of Normal Distribution 1 /20 Homework Read Sec 6-4. Discussion question p316 Do p316 probs 1-10, 16-22, 31, 32, 34-37, 39 2 /20 3 /20 Objective Find the probabilities

More information

IT 403 Practice Problems (1-2) Answers

IT 403 Practice Problems (1-2) Answers IT 403 Practice Problems (1-2) Answers #1. Using Tukey's Hinges method ('Inclusionary'), what is Q3 for this dataset? 2 3 5 7 11 13 17 a. 7 b. 11 c. 12 d. 15 c (12) #2. How do quartiles and percentiles

More information

Introduction to the Practice of Statistics Fifth Edition Moore, McCabe

Introduction to the Practice of Statistics Fifth Edition Moore, McCabe Introduction to the Practice of Statistics Fifth Edition Moore, McCabe Section 1.3 Homework Answers Assignment 5 1.80 If you ask a computer to generate "random numbers between 0 and 1, you uniform will

More information

Chapter 6 Normal Probability Distributions

Chapter 6 Normal Probability Distributions Chapter 6 Normal Probability Distributions 6-1 Review and Preview 6-2 The Standard Normal Distribution 6-3 Applications of Normal Distributions 6-4 Sampling Distributions and Estimators 6-5 The Central

More information

Chapter 2: The Normal Distribution

Chapter 2: The Normal Distribution Chapter 2: The Normal Distribution 2.1 Density Curves and the Normal Distributions 2.2 Standard Normal Calculations 1 2 Histogram for Strength of Yarn Bobbins 15.60 16.10 16.60 17.10 17.60 18.10 18.60

More information

Confidence Intervals: Estimators

Confidence Intervals: Estimators Confidence Intervals: Estimators Point Estimate: a specific value at estimates a parameter e.g., best estimator of e population mean ( ) is a sample mean problem is at ere is no way to determine how close

More information

6-1 THE STANDARD NORMAL DISTRIBUTION

6-1 THE STANDARD NORMAL DISTRIBUTION 6-1 THE STANDARD NORMAL DISTRIBUTION The major focus of this chapter is the concept of a normal probability distribution, but we begin with a uniform distribution so that we can see the following two very

More information

23.2 Normal Distributions

23.2 Normal Distributions 1_ Locker LESSON 23.2 Normal Distributions Common Core Math Standards The student is expected to: S-ID.4 Use the mean and standard deviation of a data set to fit it to a normal distribution and to estimate

More information

Ms Nurazrin Jupri. Frequency Distributions

Ms Nurazrin Jupri. Frequency Distributions Frequency Distributions Frequency Distributions After collecting data, the first task for a researcher is to organize and simplify the data so that it is possible to get a general overview of the results.

More information

Z-TEST / Z-STATISTIC: used to test hypotheses about. µ when the population standard deviation is unknown

Z-TEST / Z-STATISTIC: used to test hypotheses about. µ when the population standard deviation is unknown Z-TEST / Z-STATISTIC: used to test hypotheses about µ when the population standard deviation is known and population distribution is normal or sample size is large T-TEST / T-STATISTIC: used to test hypotheses

More information

Chapter 6: Continuous Random Variables & the Normal Distribution. 6.1 Continuous Probability Distribution

Chapter 6: Continuous Random Variables & the Normal Distribution. 6.1 Continuous Probability Distribution Chapter 6: Continuous Random Variables & the Normal Distribution 6.1 Continuous Probability Distribution and the Normal Probability Distribution 6.2 Standardizing a Normal Distribution 6.3 Applications

More information

Unit 5: Estimating with Confidence

Unit 5: Estimating with Confidence Unit 5: Estimating with Confidence Section 8.3 The Practice of Statistics, 4 th edition For AP* STARNES, YATES, MOORE Unit 5 Estimating with Confidence 8.1 8.2 8.3 Confidence Intervals: The Basics Estimating

More information

MAT 142 College Mathematics. Module ST. Statistics. Terri Miller revised July 14, 2015

MAT 142 College Mathematics. Module ST. Statistics. Terri Miller revised July 14, 2015 MAT 142 College Mathematics Statistics Module ST Terri Miller revised July 14, 2015 2 Statistics Data Organization and Visualization Basic Terms. A population is the set of all objects under study, a sample

More information

MATH 1070 Introductory Statistics Lecture notes Descriptive Statistics and Graphical Representation

MATH 1070 Introductory Statistics Lecture notes Descriptive Statistics and Graphical Representation MATH 1070 Introductory Statistics Lecture notes Descriptive Statistics and Graphical Representation Objectives: 1. Learn the meaning of descriptive versus inferential statistics 2. Identify bar graphs,

More information

Distributions of random variables

Distributions of random variables Chapter 3 Distributions of random variables 31 Normal distribution Among all the distributions we see in practice, one is overwhelmingly the most common The symmetric, unimodal, bell curve is ubiquitous

More information

MAT 110 WORKSHOP. Updated Fall 2018

MAT 110 WORKSHOP. Updated Fall 2018 MAT 110 WORKSHOP Updated Fall 2018 UNIT 3: STATISTICS Introduction Choosing a Sample Simple Random Sample: a set of individuals from the population chosen in a way that every individual has an equal chance

More information

Chapter 2 Modeling Distributions of Data

Chapter 2 Modeling Distributions of Data Chapter 2 Modeling Distributions of Data Section 2.1 Describing Location in a Distribution Describing Location in a Distribution Learning Objectives After this section, you should be able to: FIND and

More information

Sections 4.3 and 4.4

Sections 4.3 and 4.4 Sections 4.3 and 4.4 Timothy Hanson Department of Statistics, University of South Carolina Stat 205: Elementary Statistics for the Biological and Life Sciences 1 / 32 4.3 Areas under normal densities Every

More information

appstats6.notebook September 27, 2016

appstats6.notebook September 27, 2016 Chapter 6 The Standard Deviation as a Ruler and the Normal Model Objectives: 1.Students will calculate and interpret z scores. 2.Students will compare/contrast values from different distributions using

More information

Unit 8: Normal Calculations

Unit 8: Normal Calculations Unit 8: Normal Calculations Prerequisites This unit requires familiarity with basic facts about normal distributions, which are covered in Unit 7, Normal Curves. In addition, students need some background

More information

CHAPTER 2 Modeling Distributions of Data

CHAPTER 2 Modeling Distributions of Data CHAPTER 2 Modeling Distributions of Data 2.2 Density Curves and Normal Distributions The Practice of Statistics, 5th Edition Starnes, Tabor, Yates, Moore Bedford Freeman Worth Publishers HW 34. Sketch

More information

1. The Normal Distribution, continued

1. The Normal Distribution, continued Math 1125-Introductory Statistics Lecture 16 10/9/06 1. The Normal Distribution, continued Recall that the standard normal distribution is symmetric about z = 0, so the area to the right of zero is 0.5000.

More information

Sampling Distribution Examples Sections 15.4, 15.5

Sampling Distribution Examples Sections 15.4, 15.5 Sampling Distribution Examples Sections 15.4, 15.5 Lecture 27 Robb T. Koether Hampden-Sydney College Wed, Mar 2, 2016 Robb T. Koether (Hampden-Sydney College)Sampling Distribution ExamplesSections 15.4,

More information

Chapter 2: The Normal Distributions

Chapter 2: The Normal Distributions Chapter 2: The Normal Distributions Measures of Relative Standing & Density Curves Z-scores (Measures of Relative Standing) Suppose there is one spot left in the University of Michigan class of 2014 and

More information

adjacent angles Two angles in a plane which share a common vertex and a common side, but do not overlap. Angles 1 and 2 are adjacent angles.

adjacent angles Two angles in a plane which share a common vertex and a common side, but do not overlap. Angles 1 and 2 are adjacent angles. Angle 1 Angle 2 Angles 1 and 2 are adjacent angles. Two angles in a plane which share a common vertex and a common side, but do not overlap. adjacent angles 2 5 8 11 This arithmetic sequence has a constant

More information

CHAPTER 6. The Normal Probability Distribution

CHAPTER 6. The Normal Probability Distribution The Normal Probability Distribution CHAPTER 6 The normal probability distribution is the most widely used distribution in statistics as many statistical procedures are built around it. The central limit

More information

CHAPTER 2 DESCRIPTIVE STATISTICS

CHAPTER 2 DESCRIPTIVE STATISTICS CHAPTER 2 DESCRIPTIVE STATISTICS 1. Stem-and-Leaf Graphs, Line Graphs, and Bar Graphs The distribution of data is how the data is spread or distributed over the range of the data values. This is one of

More information

Sec 6.3. Bluman, Chapter 6 1

Sec 6.3. Bluman, Chapter 6 1 Sec 6.3 Bluman, Chapter 6 1 Bluman, Chapter 6 2 Review: Find the z values; the graph is symmetrical. z = ±1. 96 z 0 z the total area of the shaded regions=5% Bluman, Chapter 6 3 Review: Find the z values;

More information

The Normal Distribution

The Normal Distribution Chapter 6 The Normal Distribution Continuous random variables are used to approximate probabilities where there are many possibilities or an infinite number of possibilities on a given trial. One of the

More information

Chapter 5: The standard deviation as a ruler and the normal model p131

Chapter 5: The standard deviation as a ruler and the normal model p131 Chapter 5: The standard deviation as a ruler and the normal model p131 Which is the better exam score? 67 on an exam with mean 50 and SD 10 62 on an exam with mean 40 and SD 12? Is it fair to say: 67 is

More information

CHAPTER 2 Modeling Distributions of Data

CHAPTER 2 Modeling Distributions of Data CHAPTER 2 Modeling Distributions of Data 2.2 Density Curves and Normal Distributions The Practice of Statistics, 5th Edition Starnes, Tabor, Yates, Moore Bedford Freeman Worth Publishers Density Curves

More information

The Normal Distribution

The Normal Distribution The Normal Distribution Lecture 20 Section 6.3.1 Robb T. Koether Hampden-Sydney College Wed, Sep 28, 2011 Robb T. Koether (Hampden-Sydney College) The Normal Distribution Wed, Sep 28, 2011 1 / 41 Outline

More information

Data Analysis & Probability

Data Analysis & Probability Unit 5 Probability Distributions Name: Date: Hour: Section 7.2: The Standard Normal Distribution (Area under the curve) Notes By the end of this lesson, you will be able to Find the area under the standard

More information

Math 120 Introduction to Statistics Mr. Toner s Lecture Notes 3.1 Measures of Central Tendency

Math 120 Introduction to Statistics Mr. Toner s Lecture Notes 3.1 Measures of Central Tendency Math 1 Introduction to Statistics Mr. Toner s Lecture Notes 3.1 Measures of Central Tendency lowest value + highest value midrange The word average: is very ambiguous and can actually refer to the mean,

More information

Student Learning Objectives

Student Learning Objectives Student Learning Objectives A. Understand that the overall shape of a distribution of a large number of observations can be summarized by a smooth curve called a density curve. B. Know that an area under

More information

Example 1. Find the x value that has a left tail area of.1131 P ( x <??? ) =. 1131

Example 1. Find the x value that has a left tail area of.1131 P ( x <??? ) =. 1131 Section 6 4D: Finding a Value of x with a Given tail arae Label the shaded area for both graphs. Find the value for z and label the z axis. Find the value for x for the given area under the normal curve

More information

Chapter 1. Looking at Data-Distribution

Chapter 1. Looking at Data-Distribution Chapter 1. Looking at Data-Distribution Statistics is the scientific discipline that provides methods to draw right conclusions: 1)Collecting the data 2)Describing the data 3)Drawing the conclusions Raw

More information

The Normal Curve. June 20, Bryan T. Karazsia, M.A.

The Normal Curve. June 20, Bryan T. Karazsia, M.A. The Normal Curve June 20, 2006 Bryan T. Karazsia, M.A. Overview Hand-in Homework Why are distributions so important (particularly the normal distribution)? What is the normal distribution? Z-scores Using

More information

Chapter 5snow year.notebook March 15, 2018

Chapter 5snow year.notebook March 15, 2018 Chapter 5: Statistical Reasoning Section 5.1 Exploring Data Measures of central tendency (Mean, Median and Mode) attempt to describe a set of data by identifying the central position within a set of data

More information

CHAPTER 8: INTEGRALS 8.1 REVIEW: APPROXIMATING INTEGRALS WITH RIEMANN SUMS IN 2-D

CHAPTER 8: INTEGRALS 8.1 REVIEW: APPROXIMATING INTEGRALS WITH RIEMANN SUMS IN 2-D CHAPTER 8: INTEGRALS 8.1 REVIEW: APPROXIMATING INTEGRALS WITH RIEMANN SUMS IN 2-D In two dimensions we have previously used Riemann sums to approximate ( ) following steps: with the 1. Divide the region

More information

CHAPTER 2: DESCRIPTIVE STATISTICS Lecture Notes for Introductory Statistics 1. Daphne Skipper, Augusta University (2016)

CHAPTER 2: DESCRIPTIVE STATISTICS Lecture Notes for Introductory Statistics 1. Daphne Skipper, Augusta University (2016) CHAPTER 2: DESCRIPTIVE STATISTICS Lecture Notes for Introductory Statistics 1 Daphne Skipper, Augusta University (2016) 1. Stem-and-Leaf Graphs, Line Graphs, and Bar Graphs The distribution of data is

More information

Topic 5 - Joint distributions and the CLT

Topic 5 - Joint distributions and the CLT Topic 5 - Joint distributions and the CLT Joint distributions Calculation of probabilities, mean and variance Expectations of functions based on joint distributions Central Limit Theorem Sampling distributions

More information

CHAPTER 2 Modeling Distributions of Data

CHAPTER 2 Modeling Distributions of Data CHAPTER 2 Modeling Distributions of Data 2.2 Density Curves and Normal Distributions The Practice of Statistics, 5th Edition Starnes, Tabor, Yates, Moore Bedford Freeman Worth Publishers Density Curves

More information

Continuous Improvement Toolkit. Normal Distribution. Continuous Improvement Toolkit.

Continuous Improvement Toolkit. Normal Distribution. Continuous Improvement Toolkit. Continuous Improvement Toolkit Normal Distribution The Continuous Improvement Map Managing Risk FMEA Understanding Performance** Check Sheets Data Collection PDPC RAID Log* Risk Analysis* Benchmarking***

More information

Chapter 3 - Displaying and Summarizing Quantitative Data

Chapter 3 - Displaying and Summarizing Quantitative Data Chapter 3 - Displaying and Summarizing Quantitative Data 3.1 Graphs for Quantitative Data (LABEL GRAPHS) August 25, 2014 Histogram (p. 44) - Graph that uses bars to represent different frequencies or relative

More information

7.2. The Standard Normal Distribution

7.2. The Standard Normal Distribution 7.2 The Standard Normal Distribution Standard Normal The standard normal curve is the one with mean μ = 0 and standard deviation σ = 1 We have related the general normal random variable to the standard

More information

BIOL Gradation of a histogram (a) into the normal curve (b)

BIOL Gradation of a histogram (a) into the normal curve (b) (التوزيع الطبيعي ( Distribution Normal (Gaussian) One of the most important distributions in statistics is a continuous distribution called the normal distribution or Gaussian distribution. Consider the

More information

Descriptive Statistics, Standard Deviation and Standard Error

Descriptive Statistics, Standard Deviation and Standard Error AP Biology Calculations: Descriptive Statistics, Standard Deviation and Standard Error SBI4UP The Scientific Method & Experimental Design Scientific method is used to explore observations and answer questions.

More information

Data can be in the form of numbers, words, measurements, observations or even just descriptions of things.

Data can be in the form of numbers, words, measurements, observations or even just descriptions of things. + What is Data? Data is a collection of facts. Data can be in the form of numbers, words, measurements, observations or even just descriptions of things. In most cases, data needs to be interpreted and

More information

STA Module 4 The Normal Distribution

STA Module 4 The Normal Distribution STA 2023 Module 4 The Normal Distribution Learning Objectives Upon completing this module, you should be able to 1. Explain what it means for a variable to be normally distributed or approximately normally

More information

STA /25/12. Module 4 The Normal Distribution. Learning Objectives. Let s Look at Some Examples of Normal Curves

STA /25/12. Module 4 The Normal Distribution. Learning Objectives. Let s Look at Some Examples of Normal Curves STA 2023 Module 4 The Normal Distribution Learning Objectives Upon completing this module, you should be able to 1. Explain what it means for a variable to be normally distributed or approximately normally

More information

AP Statistics. Study Guide

AP Statistics. Study Guide Measuring Relative Standing Standardized Values and z-scores AP Statistics Percentiles Rank the data lowest to highest. Counting up from the lowest value to the select data point we discover the percentile

More information

Learning Objectives. Continuous Random Variables & The Normal Probability Distribution. Continuous Random Variable

Learning Objectives. Continuous Random Variables & The Normal Probability Distribution. Continuous Random Variable Learning Objectives Continuous Random Variables & The Normal Probability Distribution 1. Understand characteristics about continuous random variables and probability distributions 2. Understand the uniform

More information

Chapter 6. The Normal Distribution. McGraw-Hill, Bluman, 7 th ed., Chapter 6 1

Chapter 6. The Normal Distribution. McGraw-Hill, Bluman, 7 th ed., Chapter 6 1 Chapter 6 The Normal Distribution McGraw-Hill, Bluman, 7 th ed., Chapter 6 1 Bluman, Chapter 6 2 Chapter 6 Overview Introduction 6-1 Normal Distributions 6-2 Applications of the Normal Distribution 6-3

More information

Chapter 2 - Graphical Summaries of Data

Chapter 2 - Graphical Summaries of Data Chapter 2 - Graphical Summaries of Data Data recorded in the sequence in which they are collected and before they are processed or ranked are called raw data. Raw data is often difficult to make sense

More information

Applications of Integration. Copyright Cengage Learning. All rights reserved.

Applications of Integration. Copyright Cengage Learning. All rights reserved. Applications of Integration Copyright Cengage Learning. All rights reserved. Area of a Region Between Two Curves Copyright Cengage Learning. All rights reserved. Objectives Find the area of a region between

More information

Condence Intervals about a Single Parameter:

Condence Intervals about a Single Parameter: Chapter 9 Condence Intervals about a Single Parameter: 9.1 About a Population Mean, known Denition 9.1.1 A point estimate of a parameter is the value of a statistic that estimates the value of the parameter.

More information

The Normal Distribution. John McGready, PhD Johns Hopkins University

The Normal Distribution. John McGready, PhD Johns Hopkins University The Normal Distribution John McGready, PhD Johns Hopkins University General Properties of The Normal Distribution The material in this video is subject to the copyright of the owners of the material and

More information

CHAPTER 2: Describing Location in a Distribution

CHAPTER 2: Describing Location in a Distribution CHAPTER 2: Describing Location in a Distribution 2.1 Goals: 1. Compute and use z-scores given the mean and sd 2. Compute and use the p th percentile of an observation 3. Intro to density curves 4. More

More information

MEASURES OF CENTRAL TENDENCY

MEASURES OF CENTRAL TENDENCY 11.1 Find Measures of Central Tendency and Dispersion STATISTICS Numerical values used to summarize and compare sets of data MEASURE OF CENTRAL TENDENCY A number used to represent the center or middle

More information

Lab 4: Distributions of random variables

Lab 4: Distributions of random variables Lab 4: Distributions of random variables In this lab we ll investigate the probability distribution that is most central to statistics: the normal distribution If we are confident that our data are nearly

More information

Chapter 2: Frequency Distributions

Chapter 2: Frequency Distributions Chapter 2: Frequency Distributions Chapter Outline 2.1 Introduction to Frequency Distributions 2.2 Frequency Distribution Tables Obtaining ΣX from a Frequency Distribution Table Proportions and Percentages

More information

STANDARDS OF LEARNING CONTENT REVIEW NOTES ALGEBRA I. 4 th Nine Weeks,

STANDARDS OF LEARNING CONTENT REVIEW NOTES ALGEBRA I. 4 th Nine Weeks, STANDARDS OF LEARNING CONTENT REVIEW NOTES ALGEBRA I 4 th Nine Weeks, 2016-2017 1 OVERVIEW Algebra I Content Review Notes are designed by the High School Mathematics Steering Committee as a resource for

More information

How individual data points are positioned within a data set.

How individual data points are positioned within a data set. Section 3.4 Measures of Position Percentiles How individual data points are positioned within a data set. P k is the value such that k% of a data set is less than or equal to P k. For example if we said

More information

The first few questions on this worksheet will deal with measures of central tendency. These data types tell us where the center of the data set lies.

The first few questions on this worksheet will deal with measures of central tendency. These data types tell us where the center of the data set lies. Instructions: You are given the following data below these instructions. Your client (Courtney) wants you to statistically analyze the data to help her reach conclusions about how well she is teaching.

More information

Math 183 Statistical Methods

Math 183 Statistical Methods Math 183 Statistical Methods Eddie Aamari S.E.W. Assistant Professor eaamari@ucsd.edu math.ucsd.edu/~eaamari/ AP&M 5880A 1 / 24 Math 183 Statistical Methods Eddie Aamari S.E.W. Assistant Professor eaamari@ucsd.edu

More information

Univariate Statistics Summary

Univariate Statistics Summary Further Maths Univariate Statistics Summary Types of Data Data can be classified as categorical or numerical. Categorical data are observations or records that are arranged according to category. For example:

More information

8 2 Properties of a normal distribution.notebook Properties of the Normal Distribution Pages

8 2 Properties of a normal distribution.notebook Properties of the Normal Distribution Pages 8 2 Properties of the Normal Distribution Pages 422 431 normal distribution a common continuous probability distribution in which the data are distributed symmetrically and unimodally about the mean. Can

More information

Normal Data ID1050 Quantitative & Qualitative Reasoning

Normal Data ID1050 Quantitative & Qualitative Reasoning Normal Data ID1050 Quantitative & Qualitative Reasoning Histogram for Different Sample Sizes For a small sample, the choice of class (group) size dramatically affects how the histogram appears. Say we

More information

Normal Curves and Sampling Distributions

Normal Curves and Sampling Distributions Normal Curves and Sampling Distributions 6 Copyright Cengage Learning. All rights reserved. Section 6.2 Standard Units and Areas Under the Standard Normal Distribution Copyright Cengage Learning. All rights

More information

Descriptive Statistics Descriptive statistics & pictorial representations of experimental data.

Descriptive Statistics Descriptive statistics & pictorial representations of experimental data. Psychology 312: Lecture 7 Descriptive Statistics Slide #1 Descriptive Statistics Descriptive statistics & pictorial representations of experimental data. In this lecture we will discuss descriptive statistics.

More information

We have seen that as n increases, the length of our confidence interval decreases, the confidence interval will be more narrow.

We have seen that as n increases, the length of our confidence interval decreases, the confidence interval will be more narrow. {Confidence Intervals for Population Means} Now we will discuss a few loose ends. Before moving into our final discussion of confidence intervals for one population mean, let s review a few important results

More information

Chapter 3. Descriptive Measures. Slide 3-2. Copyright 2012, 2008, 2005 Pearson Education, Inc.

Chapter 3. Descriptive Measures. Slide 3-2. Copyright 2012, 2008, 2005 Pearson Education, Inc. Chapter 3 Descriptive Measures Slide 3-2 Section 3.1 Measures of Center Slide 3-3 Definition 3.1 Mean of a Data Set The mean of a data set is the sum of the observations divided by the number of observations.

More information

Measures of Position

Measures of Position Measures of Position In this section, we will learn to use fractiles. Fractiles are numbers that partition, or divide, an ordered data set into equal parts (each part has the same number of data entries).

More information

(Refer Slide Time: 0:38)

(Refer Slide Time: 0:38) Digital Image Processing. Professor P. K. Biswas. Department of Electronics and Electrical Communication Engineering. Indian Institute of Technology, Kharagpur. Lecture-37. Histogram Implementation-II.

More information

Learner Expectations UNIT 1: GRAPICAL AND NUMERIC REPRESENTATIONS OF DATA. Sept. Fathom Lab: Distributions and Best Methods of Display

Learner Expectations UNIT 1: GRAPICAL AND NUMERIC REPRESENTATIONS OF DATA. Sept. Fathom Lab: Distributions and Best Methods of Display CURRICULUM MAP TEMPLATE Priority Standards = Approximately 70% Supporting Standards = Approximately 20% Additional Standards = Approximately 10% HONORS PROBABILITY AND STATISTICS Essential Questions &

More information

Lecture 6: Chapter 6 Summary

Lecture 6: Chapter 6 Summary 1 Lecture 6: Chapter 6 Summary Z-score: Is the distance of each data value from the mean in standard deviation Standardizes data values Standardization changes the mean and the standard deviation: o Z

More information

Female Brown Bear Weights

Female Brown Bear Weights CC-20 Normal Distributions Common Core State Standards MACC.92.S-ID..4 Use the mean and standard of a data set to fit it to a normal distribution and to estimate population percentages. Recognize that

More information

STANDARDS OF LEARNING CONTENT REVIEW NOTES. ALGEBRA I Part II. 3 rd Nine Weeks,

STANDARDS OF LEARNING CONTENT REVIEW NOTES. ALGEBRA I Part II. 3 rd Nine Weeks, STANDARDS OF LEARNING CONTENT REVIEW NOTES ALGEBRA I Part II 3 rd Nine Weeks, 2016-2017 1 OVERVIEW Algebra I Content Review Notes are designed by the High School Mathematics Steering Committee as a resource

More information

Name Class Date. Understanding Functions

Name Class Date. Understanding Functions Name Class Date 3-2 Relations and Functions Going Deeper Essential question: How do you represent functions? F-IF.. ENGAGE Understanding Functions A set is a collection of items called elements. A function

More information

Lecture 3 Questions that we should be able to answer by the end of this lecture:

Lecture 3 Questions that we should be able to answer by the end of this lecture: Lecture 3 Questions that we should be able to answer by the end of this lecture: Which is the better exam score? 67 on an exam with mean 50 and SD 10 or 62 on an exam with mean 40 and SD 12 Is it fair

More information

Distributions of Continuous Data

Distributions of Continuous Data C H A P T ER Distributions of Continuous Data New cars and trucks sold in the United States average about 28 highway miles per gallon (mpg) in 2010, up from about 24 mpg in 2004. Some of the improvement

More information

Applied Statistics for the Behavioral Sciences

Applied Statistics for the Behavioral Sciences Applied Statistics for the Behavioral Sciences Chapter 2 Frequency Distributions and Graphs Chapter 2 Outline Organization of Data Simple Frequency Distributions Grouped Frequency Distributions Graphs

More information

IQR = number. summary: largest. = 2. Upper half: Q3 =

IQR = number. summary: largest. = 2. Upper half: Q3 = Step by step box plot Height in centimeters of players on the 003 Women s Worldd Cup soccer team. 157 1611 163 163 164 165 165 165 168 168 168 170 170 170 171 173 173 175 180 180 Determine the 5 number

More information

Downloaded from

Downloaded from UNIT 2 WHAT IS STATISTICS? Researchers deal with a large amount of data and have to draw dependable conclusions on the basis of data collected for the purpose. Statistics help the researchers in making

More information

Chapter 2 Describing, Exploring, and Comparing Data

Chapter 2 Describing, Exploring, and Comparing Data Slide 1 Chapter 2 Describing, Exploring, and Comparing Data Slide 2 2-1 Overview 2-2 Frequency Distributions 2-3 Visualizing Data 2-4 Measures of Center 2-5 Measures of Variation 2-6 Measures of Relative

More information

Econ 3790: Business and Economics Statistics. Instructor: Yogesh Uppal

Econ 3790: Business and Economics Statistics. Instructor: Yogesh Uppal Econ 3790: Business and Economics Statistics Instructor: Yogesh Uppal Email: yuppal@ysu.edu Chapter 8: Interval Estimation Population Mean: Known Population Mean: Unknown Margin of Error and the Interval

More information

Lecture 3 Questions that we should be able to answer by the end of this lecture:

Lecture 3 Questions that we should be able to answer by the end of this lecture: Lecture 3 Questions that we should be able to answer by the end of this lecture: Which is the better exam score? 67 on an exam with mean 50 and SD 10 or 62 on an exam with mean 40 and SD 12 Is it fair

More information

Developing Effect Sizes for Non-Normal Data in Two-Sample Comparison Studies

Developing Effect Sizes for Non-Normal Data in Two-Sample Comparison Studies Developing Effect Sizes for Non-Normal Data in Two-Sample Comparison Studies with an Application in E-commerce Durham University Apr 13, 2010 Outline 1 Introduction Effect Size, Complementory for Hypothesis

More information

JUST THE MATHS UNIT NUMBER STATISTICS 1 (The presentation of data) A.J.Hobson

JUST THE MATHS UNIT NUMBER STATISTICS 1 (The presentation of data) A.J.Hobson JUST THE MATHS UNIT NUMBER 18.1 STATISTICS 1 (The presentation of data) by A.J.Hobson 18.1.1 Introduction 18.1.2 The tabulation of data 18.1.3 The graphical representation of data 18.1.4 Exercises 18.1.5

More information