Section 7.1 How Likely are the Possible Values of a Statistic? The Sampling Distribution of the Proportion

Size: px
Start display at page:

Download "Section 7.1 How Likely are the Possible Values of a Statistic? The Sampling Distribution of the Proportion"

Transcription

1 Section 7.1 How Likely are the Possible Values of a Statistic? The Sampling Distribution of the Proportion

2 CNN / USA Today / Gallup Poll September 22-24, % of Americans describe the current economic conditions in the country as "excellent" (1%) or "good" (11%). Thirty-three percent say the economy is "only fair" and 55% say it is "poor." Quick Check: Are these numbers statistics or parameters? Results are based on telephone interviews with 1,520 national adults, aged 18 and older.

3 Sampling Variability We don t expect samples to match up with the population exactly but we hope that our sample is fairly representative and therefore that the sample statistic will fairly estimate the population parameter. The larger the sample, the better the sample should be at describing the population.

4 How can we be sure that the sample proportions from ONE sample reflect the views of all Americans? Because we know (or will shortly know) that although sample proportions vary, they vary according to a predictable pattern. The key to finding this answer will involve us knowing how do sample statistics vary from sample to sample?

5 Sample Proportions When working with a categorical variable the most common statistic computed is the sample proportion. We will denote the sample proportion by pˆ ( p-hat ) The population proportion will be denoted by p. Example: In the Gallup Poll, pˆ What is? What is p?

6 Sampling Distribution The sampling distribution of a statistic describes how the statistic would vary if the experiment were conducted many, many times, each time with the same number of subjects. What is the sampling distribution of? In other words, can you describe how you would expect values of pˆ to vary if repeated random samples of each of size n were taken from the same population. pˆ

7 Sampling Distribution of p-hat Histograms of proportions from samples tend to be roughly normally distributed.

8 Sampling Distribution of p-hat Histograms of sample proportions tend to be roughly normally distributed and centered at the proportion of the population from which the sample was drawn, p. Also, as the sample size increases the variability (or standard deviation) of the sample proportion decreases.

9 Standard Error Standard deviation of the sampling distribution is a mouthful, so we ll simply say standard error. The formula for standard error of the sample proportion is: ( 1 ) p p n where p is the population proportion and n is the sample size.

10 How varied are the sample proportions? If the histogram of the sample proportions is roughly normal then (by the empirical rule) about 68% of the sample proportions fall within 1 standard error of the center and 95% of the sample proportions fall within 2 standard errors of the center.

11 Does this bell-shaped phenomena just work in this situation? No. The bell shape that appears in histograms of proportions appears in lots of systems that involve chance. Some examples include stock prices, mortality rates, birth rates, SAT scores, etc. As long as both the population being sampled and the sample size each stay the same, as the number of samples increases, the bell shape begins to emerge.

12 Practice Problem In the 2003 recall election of CA s governor, Gray Davis, the exit poll showed that 54% of the 3160 people sampled were in favor. If the exit poll constituted a random sample, how confident would you be in predicting that more than 50% of the population voted yes? If the population proportion of those supporting the recall was 50%, would you be surprised to see an exit poll result of 54%?

13 Practice Problem In the 2003 recall election of CA s governor, Gray Davis, the exit poll showed that 54% of the 3160 people sampled were in favor. If the exit poll constituted a random sample, how confident would you be in predicting that more than 50% of the population voted yes? If the population proportion of those supporting the recall was 50%, would you be surprised to see an exit poll result of 54%?.50(1.50) 3160 = = 4.45

Theoretical Foundations

Theoretical Foundations Theoretical Foundations Sampling Distribution and Central Limit Theorem Monia Ranalli monia.ranalli@uniroma3.it Ranalli M. Theoretical Foundations - Sampling Distribution and Central Limit Theorem Lesson

More information

Statistics, continued

Statistics, continued Statistics, continued Visual Displays of Data Since numbers often do not resonate with people, giving visual representations of data is often uses to make the data more meaningful. We will talk about a

More information

Stat 135 Fall 2013 FINAL EXAM December 18, 2013

Stat 135 Fall 2013 FINAL EXAM December 18, 2013 Stat 135 Fall 2013 FINAL EXAM December 18, 2013 Name: Person on right SID: Person on left There will be one, double sided, handwritten, 8.5in x 11in page of notes allowed during the exam. The exam is closed

More information

Exam #2 Results (as percentages)

Exam #2 Results (as percentages) Oct. 30 Assignment: Read Chapter 19 Try exercises 1, 2, and 4 on p. 424 Exam #2 Results (as percentages) Mean: 71.4 Median: 73.3 Soda attitudes 2015 In a Gallup poll conducted Jul. 8 12, 2015, 1009 adult

More information

Chapter 6. Estimates and Sample Sizes

Chapter 6. Estimates and Sample Sizes Chapter 6 Estimates and Sample Sizes Lesson 6-1/6-, Part 1 Estimating a Population Proportion This chapter begins the beginning of inferential statistics. There are two major applications of inferential

More information

Sampling Distribution Models. Central Limit Theorem

Sampling Distribution Models. Central Limit Theorem Sampling Distribution Models Central Limit Theorem Thought Questions 1. 40% of large population disagree with new law. In parts a and b, think about role of sample size. a. If randomly sample 10 people,

More information

What Is a Sampling Distribution? DISTINGUISH between a parameter and a statistic

What Is a Sampling Distribution? DISTINGUISH between a parameter and a statistic Section 8.1A What Is a Sampling Distribution? Learning Objectives After this section, you should be able to DISTINGUISH between a parameter and a statistic DEFINE sampling distribution DISTINGUISH between

More information

Statistics and Quantitative Analysis U4320. Segment 5: Sampling and inference Prof. Sharyn O Halloran

Statistics and Quantitative Analysis U4320. Segment 5: Sampling and inference Prof. Sharyn O Halloran Statistics and Quantitative Analysis U4320 Segment 5: Sampling and inference Prof. Sharyn O Halloran Sampling A. Basics 1. Ways to Describe Data Histograms Frequency Tables, etc. 2. Ways to Characterize

More information

Overview. Confidence Intervals Sampling and Opinion Polls Error Correcting Codes Number of Pet Unicorns in Ireland

Overview. Confidence Intervals Sampling and Opinion Polls Error Correcting Codes Number of Pet Unicorns in Ireland Overview Confidence Intervals Sampling and Opinion Polls Error Correcting Codes Number of Pet Unicorns in Ireland Confidence Intervals When a random variable lies in an interval a X b with a specified

More information

THE SAMPLING DISTRIBUTION OF THE MEAN

THE SAMPLING DISTRIBUTION OF THE MEAN THE SAMPLING DISTRIBUTION OF THE MEAN COGS 14B JANUARY 26, 2017 TODAY Sampling Distributions Sampling Distribution of the Mean Central Limit Theorem INFERENTIAL STATISTICS Inferential statistics: allows

More information

Lab 5 for Math 17: Sampling Distributions and Applications

Lab 5 for Math 17: Sampling Distributions and Applications Lab 5 for Math 17: Sampling Distributions and Applications Recall: The distribution formed by considering the value of a statistic for every possible sample of a given size n from the population is called

More information

ACMS Statistics for Life Sciences. Chapter 13: Sampling Distributions

ACMS Statistics for Life Sciences. Chapter 13: Sampling Distributions ACMS 20340 Statistics for Life Sciences Chapter 13: Sampling Distributions Sampling We use information from a sample to infer something about a population. When using random samples and randomized experiments,

More information

ACMS Statistics for Life Sciences. Chapter 9: Introducing Probability

ACMS Statistics for Life Sciences. Chapter 9: Introducing Probability ACMS 20340 Statistics for Life Sciences Chapter 9: Introducing Probability Why Consider Probability? We re doing statistics here. Why should we bother with probability? As we will see, probability plays

More information

Chapter 18: Sampling Distributions

Chapter 18: Sampling Distributions Chapter 18: Sampling Distributions All random variables have probability distributions, and as statistics are random variables, they too have distributions. The random phenomenon that produces the statistics

More information

*Karle Laska s Sections: There is no class tomorrow and Friday! Have a good weekend! Scores will be posted in Compass early Friday morning

*Karle Laska s Sections: There is no class tomorrow and Friday! Have a good weekend! Scores will be posted in Compass early Friday morning STATISTICS 100 EXAM 3 Spring 2016 PRINT NAME (Last name) (First name) *NETID CIRCLE SECTION: Laska MWF L1 Laska Tues/Thurs L2 Robin Tu Write answers in appropriate blanks. When no blanks are provided CIRCLE

More information

Confidence Intervals for the Mean of Non-normal Data Class 23, Jeremy Orloff and Jonathan Bloom

Confidence Intervals for the Mean of Non-normal Data Class 23, Jeremy Orloff and Jonathan Bloom Confidence Intervals for the Mean of Non-normal Data Class 23, 8.05 Jeremy Orloff and Jonathan Bloom Learning Goals. Be able to derive the formula for conservative normal confidence intervals for the proportion

More information

Chapter 5 Confidence Intervals

Chapter 5 Confidence Intervals Chapter 5 Confidence Intervals Confidence Intervals about a Population Mean, σ, Known Abbas Motamedi Tennessee Tech University A point estimate: a single number, calculated from a set of data, that is

More information

Last few slides from last time

Last few slides from last time Last few slides from last time Example 3: What is the probability that p will fall in a certain range, given p? Flip a coin 50 times. If the coin is fair (p=0.5), what is the probability of getting an

More information

Introduction to Statistical Data Analysis Lecture 4: Sampling

Introduction to Statistical Data Analysis Lecture 4: Sampling Introduction to Statistical Data Analysis Lecture 4: Sampling James V. Lambers Department of Mathematics The University of Southern Mississippi James V. Lambers Statistical Data Analysis 1 / 30 Introduction

More information

Using Dice to Introduce Sampling Distributions Written by: Mary Richardson Grand Valley State University

Using Dice to Introduce Sampling Distributions Written by: Mary Richardson Grand Valley State University Using Dice to Introduce Sampling Distributions Written by: Mary Richardson Grand Valley State University richamar@gvsu.edu Overview of Lesson In this activity students explore the properties of the distribution

More information

In the previous chapter, we learned how to use the method of least-squares

In the previous chapter, we learned how to use the method of least-squares 03-Kahane-45364.qxd 11/9/2007 4:40 PM Page 37 3 Model Performance and Evaluation In the previous chapter, we learned how to use the method of least-squares to find a line that best fits a scatter of points.

More information

Chapter 15 Sampling Distribution Models

Chapter 15 Sampling Distribution Models Chapter 15 Sampling Distribution Models 1 15.1 Sampling Distribution of a Proportion 2 Sampling About Evolution According to a Gallup poll, 43% believe in evolution. Assume this is true of all Americans.

More information

Announcements. Lecture 5: Probability. Dangling threads from last week: Mean vs. median. Dangling threads from last week: Sampling bias

Announcements. Lecture 5: Probability. Dangling threads from last week: Mean vs. median. Dangling threads from last week: Sampling bias Recap Announcements Lecture 5: Statistics 101 Mine Çetinkaya-Rundel September 13, 2011 HW1 due TA hours Thursday - Sunday 4pm - 9pm at Old Chem 211A If you added the class last week please make sure to

More information

Sampling distributions and the Central Limit. Theorem. 17 October 2016

Sampling distributions and the Central Limit. Theorem. 17 October 2016 distributions and the Johan A. Elkink School of Politics & International Relations University College Dublin 17 October 2016 1 2 3 Outline 1 2 3 (or inductive statistics) concerns drawing conclusions regarding

More information

Sampling Distribution Models. Chapter 17

Sampling Distribution Models. Chapter 17 Sampling Distribution Models Chapter 17 Objectives: 1. Sampling Distribution Model 2. Sampling Variability (sampling error) 3. Sampling Distribution Model for a Proportion 4. Central Limit Theorem 5. Sampling

More information

MAT Mathematics in Today's World

MAT Mathematics in Today's World MAT 1000 Mathematics in Today's World Last Time 1. Three keys to summarize a collection of data: shape, center, spread. 2. Can measure spread with the fivenumber summary. 3. The five-number summary can

More information

Statistic: a that can be from a sample without making use of any unknown. In practice we will use to establish unknown parameters.

Statistic: a that can be from a sample without making use of any unknown. In practice we will use to establish unknown parameters. Chapter 9: Sampling Distributions 9.1: Sampling Distributions IDEA: How often would a given method of sampling give a correct answer if it was repeated many times? That is, if you took repeated samples

More information

Confidence Intervals for Normal Data Spring 2018

Confidence Intervals for Normal Data Spring 2018 Confidence Intervals for Normal Data 18.05 Spring 2018 Agenda Exam on Monday April 30. Practice questions posted. Friday s class is for review (no studio) Today Review of critical values and quantiles.

More information

Exam 1 Solutions. Problem Points Score Total 145

Exam 1 Solutions. Problem Points Score Total 145 Exam Solutions Read each question carefully and answer all to the best of your ability. Show work to receive as much credit as possible. At the end of the exam, please sign the box below. Problem Points

More information

Section 3.4 Normal Distribution MDM4U Jensen

Section 3.4 Normal Distribution MDM4U Jensen Section 3.4 Normal Distribution MDM4U Jensen Part 1: Dice Rolling Activity a) Roll two 6- sided number cubes 18 times. Record a tally mark next to the appropriate number after each roll. After rolling

More information

Econ 325: Introduction to Empirical Economics

Econ 325: Introduction to Empirical Economics Econ 325: Introduction to Empirical Economics Chapter 9 Hypothesis Testing: Single Population Ch. 9-1 9.1 What is a Hypothesis? A hypothesis is a claim (assumption) about a population parameter: population

More information

Math 138 Summer Section 412- Unit Test 1 Green Form, page 1 of 7

Math 138 Summer Section 412- Unit Test 1 Green Form, page 1 of 7 Math 138 Summer 1 2013 Section 412- Unit Test 1 Green Form page 1 of 7 1. Multiple Choice. Please circle your answer. Each question is worth 3 points. (a) Social Security Numbers are illustrations of which

More information

Intro to Confidence Intervals: A estimate is a single statistic based on sample data to estimate a population parameter Simplest approach But not always very precise due to variation in the sampling distribution

More information

4/19/2009. Probability Distributions. Inference. Example 1. Example 2. Parameter versus statistic. Normal Probability Distribution N

4/19/2009. Probability Distributions. Inference. Example 1. Example 2. Parameter versus statistic. Normal Probability Distribution N Probability Distributions Normal Probability Distribution N Chapter 6 Inference It was reported that the 2008 Super Bowl was watched by 97.5 million people. But how does anyone know that? They certainly

More information

Lecture 27. DATA 8 Spring Sample Averages. Slides created by John DeNero and Ani Adhikari

Lecture 27. DATA 8 Spring Sample Averages. Slides created by John DeNero and Ani Adhikari DATA 8 Spring 2018 Lecture 27 Sample Averages Slides created by John DeNero (denero@berkeley.edu) and Ani Adhikari (adhikari@berkeley.edu) Announcements Questions for This Week How can we quantify natural

More information

Nicole Dalzell. July 3, 2014

Nicole Dalzell. July 3, 2014 UNIT 2: PROBABILITY AND DISTRIBUTIONS LECTURE 1: PROBABILITY AND CONDITIONAL PROBABILITY STATISTICS 101 Nicole Dalzell July 3, 2014 Announcements No team activities today Labs: Individual Write-Ups Statistics

More information

Chapter 8: Confidence Intervals

Chapter 8: Confidence Intervals Chapter 8: Confidence Intervals Introduction Suppose you are trying to determine the mean rent of a two-bedroom apartment in your town. You might look in the classified section of the newspaper, write

More information

Is Yawning Contagious video

Is Yawning Contagious video Is Yawning Contagious video 10 34 =.29 P yawn seed 4 16 =.25 P yawn no seed.29.25 =.04 No, maybe this occurred purely by chance. 50 subjects Random Assignment Group 1 (34) Group 2 (16) Treatment 1 (yawn

More information

Are data normally normally distributed?

Are data normally normally distributed? Standard Normal Image source Are data normally normally distributed? Sample mean: 66.78 Sample standard deviation: 3.37 (66.78-1 x 3.37, 66.78 + 1 x 3.37) (66.78-2 x 3.37, 66.78 + 2 x 3.37) (66.78-3 x

More information

Chapter 7 Sampling Distributions

Chapter 7 Sampling Distributions Statistical inference looks at how often would this method give a correct answer if it was used many many times. Statistical inference works best when we produce data by random sampling or randomized comparative

More information

Math 223 Lecture Notes 3/15/04 From The Basic Practice of Statistics, bymoore

Math 223 Lecture Notes 3/15/04 From The Basic Practice of Statistics, bymoore Math 223 Lecture Notes 3/15/04 From The Basic Practice of Statistics, bymoore Chapter 3 continued Describing distributions with numbers Measuring spread of data: Quartiles Definition 1: The interquartile

More information

Statistics 135 Fall 2007 Midterm Exam

Statistics 135 Fall 2007 Midterm Exam Name: Student ID Number: Statistics 135 Fall 007 Midterm Exam Ignore the finite population correction in all relevant problems. The exam is closed book, but some possibly useful facts about probability

More information

Chapter 8: Sampling Distributions. A survey conducted by the U.S. Census Bureau on a continual basis. Sample

Chapter 8: Sampling Distributions. A survey conducted by the U.S. Census Bureau on a continual basis. Sample Chapter 8: Sampling Distributions Section 8.1 Distribution of the Sample Mean Frequently, samples are taken from a large population. Example: American Community Survey (ACS) A survey conducted by the U.S.

More information

Review of the Normal Distribution

Review of the Normal Distribution Sampling and s Normal Distribution Aims of Sampling Basic Principles of Probability Types of Random Samples s of the Mean Standard Error of the Mean The Central Limit Theorem Review of the Normal Distribution

More information

Keller: Stats for Mgmt & Econ, 7th Ed July 17, 2006

Keller: Stats for Mgmt & Econ, 7th Ed July 17, 2006 Chapter 17 Simple Linear Regression and Correlation 17.1 Regression Analysis Our problem objective is to analyze the relationship between interval variables; regression analysis is the first tool we will

More information

11 Correlation and Regression

11 Correlation and Regression Chapter 11 Correlation and Regression August 21, 2017 1 11 Correlation and Regression When comparing two variables, sometimes one variable (the explanatory variable) can be used to help predict the value

More information

Problems Pages 1-4 Answers Page 5 Solutions Pages 6-11

Problems Pages 1-4 Answers Page 5 Solutions Pages 6-11 Part III Practice Problems Problems Pages 1-4 Answers Page 5 Solutions Pages 6-11 1. In estimating population mean or proportion what is the width of an interval? 2. If 25 college students out of 80 graduate

More information

LECTURE 15: SIMPLE LINEAR REGRESSION I

LECTURE 15: SIMPLE LINEAR REGRESSION I David Youngberg BSAD 20 Montgomery College LECTURE 5: SIMPLE LINEAR REGRESSION I I. From Correlation to Regression a. Recall last class when we discussed two basic types of correlation (positive and negative).

More information

Linear Regression. Linear Regression. Linear Regression. Did You Mean Association Or Correlation?

Linear Regression. Linear Regression. Linear Regression. Did You Mean Association Or Correlation? Did You Mean Association Or Correlation? AP Statistics Chapter 8 Be careful not to use the word correlation when you really mean association. Often times people will incorrectly use the word correlation

More information

AP Statistics Review Ch. 7

AP Statistics Review Ch. 7 AP Statistics Review Ch. 7 Name 1. Which of the following best describes what is meant by the term sampling variability? A. There are many different methods for selecting a sample. B. Two different samples

More information

MTH135/STA104: Probability

MTH135/STA104: Probability MTH35/STA04: Probability Homework # 3 Due: Tuesday, Sep 0, 005 Prof. Robert Wolpert. from prob 7 p. 9 You roll a fair, six-sided die and I roll a die. You win if the number showing on your die is strictly

More information

Section 7.2 Homework Answers

Section 7.2 Homework Answers 25.5 30 Sample Mean P 0.1226 sum n b. The two z-scores are z 25 20(1.7) n 1.0 20 sum n 2.012 and z 30 20(1.7) n 1.0 0.894, 20 so the probability is approximately 0.1635 (0.1645 using Table A). P14. a.

More information

SHORT ANSWER. Write the word or phrase that best completes each statement or answers the question.

SHORT ANSWER. Write the word or phrase that best completes each statement or answers the question. Chapter 7 Exam A Name 1) How do you determine whether to use the z or t distribution in computing the margin of error, E = z α/2 σn or E = t α/2 s n? 1) Use the given degree of confidence and sample data

More information

AP Stats MOCK Chapter 7 Test MC

AP Stats MOCK Chapter 7 Test MC Name: Class: Date: AP Stats MOCK Chapter 7 Test MC Multiple Choice-13 questions Identify the choice that best completes the statement or answers the question. 1. A survey conducted by Black Flag asked

More information

AMS 7 Correlation and Regression Lecture 8

AMS 7 Correlation and Regression Lecture 8 AMS 7 Correlation and Regression Lecture 8 Department of Applied Mathematics and Statistics, University of California, Santa Cruz Suumer 2014 1 / 18 Correlation pairs of continuous observations. Correlation

More information

TOPIC: Descriptive Statistics Single Variable

TOPIC: Descriptive Statistics Single Variable TOPIC: Descriptive Statistics Single Variable I. Numerical data summary measurements A. Measures of Location. Measures of central tendency Mean; Median; Mode. Quantiles - measures of noncentral tendency

More information

Interpret Standard Deviation. Outlier Rule. Describe the Distribution OR Compare the Distributions. Linear Transformations SOCS. Interpret a z score

Interpret Standard Deviation. Outlier Rule. Describe the Distribution OR Compare the Distributions. Linear Transformations SOCS. Interpret a z score Interpret Standard Deviation Outlier Rule Linear Transformations Describe the Distribution OR Compare the Distributions SOCS Using Normalcdf and Invnorm (Calculator Tips) Interpret a z score What is an

More information

Business Statistics. Lecture 3: Random Variables and the Normal Distribution

Business Statistics. Lecture 3: Random Variables and the Normal Distribution Business Statistics Lecture 3: Random Variables and the Normal Distribution 1 Goals for this Lecture A little bit of probability Random variables The normal distribution 2 Probability vs. Statistics Probability:

More information

Chapter. Objectives. Sampling Distributions

Chapter. Objectives. Sampling Distributions Chapter Sampling Distributions 8 Section 8.1 Distribution of the Sample Mean Objectives 1. Describe the distribution of the sample mean: samples from normal populations 2. Describe the distribution of

More information

One-sample categorical data: approximate inference

One-sample categorical data: approximate inference One-sample categorical data: approximate inference Patrick Breheny October 6 Patrick Breheny Biostatistical Methods I (BIOS 5710) 1/25 Introduction It is relatively easy to think about the distribution

More information

Math 10 - Compilation of Sample Exam Questions + Answers

Math 10 - Compilation of Sample Exam Questions + Answers Math 10 - Compilation of Sample Exam Questions + Sample Exam Question 1 We have a population of size N. Let p be the independent probability of a person in the population developing a disease. Answer the

More information

How to Use the Internet for Election Surveys

How to Use the Internet for Election Surveys How to Use the Internet for Election Surveys Simon Jackman and Douglas Rivers Stanford University and Polimetrix, Inc. May 9, 2008 Theory and Practice Practice Theory Works Doesn t work Works Great! Black

More information

MATH 1150 Chapter 2 Notation and Terminology

MATH 1150 Chapter 2 Notation and Terminology MATH 1150 Chapter 2 Notation and Terminology Categorical Data The following is a dataset for 30 randomly selected adults in the U.S., showing the values of two categorical variables: whether or not the

More information

Chapter 6 ESTIMATION OF PARAMETERS

Chapter 6 ESTIMATION OF PARAMETERS Chapter 6 ESTIMATION OF PARAMETERS Recall that one of the objectives of statistics is to make inferences concerning a population. And these inferences are based only in partial information regarding the

More information

Chapter 5: Exploring Data: Distributions Lesson Plan

Chapter 5: Exploring Data: Distributions Lesson Plan Lesson Plan Exploring Data Displaying Distributions: Histograms Interpreting Histograms Displaying Distributions: Stemplots Describing Center: Mean and Median Describing Variability: The Quartiles The

More information

Week 11 Sample Means, CLT, Correlation

Week 11 Sample Means, CLT, Correlation Week 11 Sample Means, CLT, Correlation Slides by Suraj Rampure Fall 2017 Administrative Notes Complete the mid semester survey on Piazza by Nov. 8! If 85% of the class fills it out, everyone will get a

More information

Bootstrap and Linear Regression Spring You should have downloaded studio12.zip and unzipped it into your working directory.

Bootstrap and Linear Regression Spring You should have downloaded studio12.zip and unzipped it into your working directory. Bootstrap and Linear Regression 18.05 Spring 2014 You should have downloaded studio12.zip and unzipped it into your 18.05 working directory. January 2, 2017 2 / 14 Review: Computing a bootstrap confidence

More information

Discrete Distributions

Discrete Distributions Discrete Distributions STA 281 Fall 2011 1 Introduction Previously we defined a random variable to be an experiment with numerical outcomes. Often different random variables are related in that they have

More information

Sampling Variability and Confidence Intervals. John McGready Johns Hopkins University

Sampling Variability and Confidence Intervals. John McGready Johns Hopkins University This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike License. Your use of this material constitutes acceptance of that license and the conditions of use of materials on this

More information

FORM-20 [See Rule 56 (7) ] FINAL RESULT SHEET

FORM-20 [See Rule 56 (7) ] FINAL RESULT SHEET Election to the Lok Sabha from the 06 - BALASORE Parliamentary Constitutency PART - 1 (To be used both for Parliamentary and Assembly Elections) Total No of Electors in Assembly Constituency / Segment

More information

23. Inference for regression

23. Inference for regression 23. Inference for regression The Practice of Statistics in the Life Sciences Third Edition 2014 W. H. Freeman and Company Objectives (PSLS Chapter 23) Inference for regression The regression model Confidence

More information

Descriptive statistics

Descriptive statistics Patrick Breheny February 6 Patrick Breheny to Biostatistics (171:161) 1/25 Tables and figures Human beings are not good at sifting through large streams of data; we understand data much better when it

More information

a table or a graph or an equation.

a table or a graph or an equation. Topic (8) POPULATION DISTRIBUTIONS 8-1 So far: Topic (8) POPULATION DISTRIBUTIONS We ve seen some ways to summarize a set of data, including numerical summaries. We ve heard a little about how to sample

More information

Econ 325: Introduction to Empirical Economics

Econ 325: Introduction to Empirical Economics Econ 325: Introduction to Empirical Economics Lecture 6 Sampling and Sampling Distributions Ch. 6-1 Populations and Samples A Population is the set of all items or individuals of interest Examples: All

More information

Lecture #16 Thursday, October 13, 2016 Textbook: Sections 9.3, 9.4, 10.1, 10.2

Lecture #16 Thursday, October 13, 2016 Textbook: Sections 9.3, 9.4, 10.1, 10.2 STATISTICS 200 Lecture #16 Thursday, October 13, 2016 Textbook: Sections 9.3, 9.4, 10.1, 10.2 Objectives: Define standard error, relate it to both standard deviation and sampling distribution ideas. Describe

More information

CHAPTER 1: Preliminary Description of Errors Experiment Methodology and Errors To introduce the concept of error analysis, let s take a real world

CHAPTER 1: Preliminary Description of Errors Experiment Methodology and Errors To introduce the concept of error analysis, let s take a real world CHAPTER 1: Preliminary Description of Errors Experiment Methodology and Errors To introduce the concept of error analysis, let s take a real world experiment. Suppose you wanted to forecast the results

More information

Lesson 19: Understanding Variability When Estimating a Population Proportion

Lesson 19: Understanding Variability When Estimating a Population Proportion Lesson 19: Understanding Variability When Estimating a Population Proportion Student Outcomes Students understand the term sampling variability in the context of estimating a population proportion. Students

More information

Business Statistics: A First Course

Business Statistics: A First Course Business Statistics: A First Course 5 th Edition Chapter 7 Sampling and Sampling Distributions Basic Business Statistics, 11e 2009 Prentice-Hall, Inc. Chap 7-1 Learning Objectives In this chapter, you

More information

Survey on Population Mean

Survey on Population Mean MATH 203 Survey on Population Mean Dr. Neal, Spring 2009 The first part of this project is on the analysis of a population mean. You will obtain data on a specific measurement X by performing a random

More information

Harvard University. Rigorous Research in Engineering Education

Harvard University. Rigorous Research in Engineering Education Statistical Inference Kari Lock Harvard University Department of Statistics Rigorous Research in Engineering Education 12/3/09 Statistical Inference You have a sample and want to use the data collected

More information

3 Conditional Probability

3 Conditional Probability 3 Conditional Probability Question: What are the chances that a college student chosen at random from the U.S. population is a fan of the Notre Dame football team? Now, if the person chosen is a student

More information

Ch. 7: Estimates and Sample Sizes

Ch. 7: Estimates and Sample Sizes Ch. 7: Estimates and Sample Sizes Section Title Notes Pages Introduction to the Chapter 2 2 Estimating p in the Binomial Distribution 2 5 3 Estimating a Population Mean: Sigma Known 6 9 4 Estimating a

More information

Chapter 16. Simple Linear Regression and Correlation

Chapter 16. Simple Linear Regression and Correlation Chapter 16 Simple Linear Regression and Correlation 16.1 Regression Analysis Our problem objective is to analyze the relationship between interval variables; regression analysis is the first tool we will

More information

Chapter 7 Discussion Problem Solutions D1 D2. D3.

Chapter 7 Discussion Problem Solutions D1 D2. D3. Chapter 7 Discussion Problem Solutions D1. The agent can increase his sample size to a value greater than 10. The larger the sample size, the smaller the spread of the distribution of means and the more

More information

Lecture Slides. Elementary Statistics Eleventh Edition. by Mario F. Triola. and the Triola Statistics Series 9.1-1

Lecture Slides. Elementary Statistics Eleventh Edition. by Mario F. Triola. and the Triola Statistics Series 9.1-1 Lecture Slides Elementary Statistics Eleventh Edition and the Triola Statistics Series by Mario F. Triola Copyright 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. 9.1-1 Chapter 9 Inferences

More information

Random processes. Lecture 17: Probability, Part 1. Probability. Law of large numbers

Random processes. Lecture 17: Probability, Part 1. Probability. Law of large numbers Random processes Lecture 17: Probability, Part 1 Statistics 10 Colin Rundel March 26, 2012 A random process is a situation in which we know what outcomes could happen, but we don t know which particular

More information

( ) P A B : Probability of A given B. Probability that A happens

( ) P A B : Probability of A given B. Probability that A happens A B A or B One or the other or both occurs At least one of A or B occurs Probability Review A B A and B Both A and B occur ( ) P A B : Probability of A given B. Probability that A happens given that B

More information

Mean/Average Median Mode Range

Mean/Average Median Mode Range Normal Curves Today s Goals Normal curves! Before this we need a basic review of statistical terms. I mean basic as in underlying, not easy. We will learn how to retrieve statistical data from normal curves.

More information

Bootstrap. ADA1 November 27, / 38

Bootstrap. ADA1 November 27, / 38 The bootstrap as a statistical method was invented in 1979 by Bradley Efron, one of the most influential statisticians still alive. The idea is nonparametric, but is not based on ranks, and is very computationally

More information

Understanding Inference: Confidence Intervals I. Questions about the Assignment. The Big Picture. Statistic vs. Parameter. Statistic vs.

Understanding Inference: Confidence Intervals I. Questions about the Assignment. The Big Picture. Statistic vs. Parameter. Statistic vs. Questions about the Assignment If your answer is wrong, but you show your work you can get more partial credit. Understanding Inference: Confidence Intervals I parameter versus sample statistic Uncertainty

More information

AP Statistics Cumulative AP Exam Study Guide

AP Statistics Cumulative AP Exam Study Guide AP Statistics Cumulative AP Eam Study Guide Chapters & 3 - Graphs Statistics the science of collecting, analyzing, and drawing conclusions from data. Descriptive methods of organizing and summarizing statistics

More information

Stat 20 Midterm 1 Review

Stat 20 Midterm 1 Review Stat 20 Midterm Review February 7, 2007 This handout is intended to be a comprehensive study guide for the first Stat 20 midterm exam. I have tried to cover all the course material in a way that targets

More information

Estimation and Confidence Intervals

Estimation and Confidence Intervals Estimation and Confidence Intervals Sections 7.1-7.3 Cathy Poliak, Ph.D. cathy@math.uh.edu Office in Fleming 11c Department of Mathematics University of Houston Lecture 17-3339 Cathy Poliak, Ph.D. cathy@math.uh.edu

More information

The Normal Distribution. MDM4U Unit 6 Lesson 2

The Normal Distribution. MDM4U Unit 6 Lesson 2 The Normal Distribution MDM4U Unit 6 Lesson 2 Normal Distributions Many data sets display similar characteristics The normal distribution is a way of describing a certain kind of "ideal" data set Although

More information

Chapter 18. Sampling Distribution Models. Copyright 2010, 2007, 2004 Pearson Education, Inc.

Chapter 18. Sampling Distribution Models. Copyright 2010, 2007, 2004 Pearson Education, Inc. Chapter 18 Sampling Distribution Models Copyright 2010, 2007, 2004 Pearson Education, Inc. Normal Model When we talk about one data value and the Normal model we used the notation: N(μ, σ) Copyright 2010,

More information

(A) Incorrect! A parameter is a number that describes the population. (C) Incorrect! In a Random Sample, not just a sample.

(A) Incorrect! A parameter is a number that describes the population. (C) Incorrect! In a Random Sample, not just a sample. AP Statistics - Problem Drill 15: Sampling Distributions No. 1 of 10 Instructions: (1) Read the problem statement and answer choices carefully (2) Work the problems on paper 1. Which one of the following

More information

Occupy movement - Duke edition. Lecture 14: Large sample inference for proportions. Exploratory analysis. Another poll on the movement

Occupy movement - Duke edition. Lecture 14: Large sample inference for proportions. Exploratory analysis. Another poll on the movement Occupy movement - Duke edition Lecture 14: Large sample inference for proportions Statistics 101 Mine Çetinkaya-Rundel October 20, 2011 On Tuesday we asked you about how closely you re following the news

More information

Topic 3 Populations and Samples

Topic 3 Populations and Samples BioEpi540W Populations and Samples Page 1 of 33 Topic 3 Populations and Samples Topics 1. A Feeling for Populations v Samples 2 2. Target Populations, Sampled Populations, Sampling Frames 5 3. On Making

More information

Section 5.4. Ken Ueda

Section 5.4. Ken Ueda Section 5.4 Ken Ueda Students seem to think that being graded on a curve is a positive thing. I took lasers 101 at Cornell and got a 92 on the exam. The average was a 93. I ended up with a C on the test.

More information

Chapter 18. Sampling Distribution Models /51

Chapter 18. Sampling Distribution Models /51 Chapter 18 Sampling Distribution Models 1 /51 Homework p432 2, 4, 6, 8, 10, 16, 17, 20, 30, 36, 41 2 /51 3 /51 Objective Students calculate values of central 4 /51 The Central Limit Theorem for Sample

More information