The Central Limit Theorem

Similar documents
Probability and Samples. Sampling. Point Estimates

7.1 Sampling Error The Need for Sampling Distributions

Question. z-scores. What We Will Cover in This Section. On which of the following tests did Pat do best compared to the other students?

Review. A Bernoulli Trial is a very simple experiment:

TEST 1 M3070 Fall 2003

Section 9 1B: Using Confidence Intervals to Estimate the Difference ( p 1 p 2 ) in 2 Population Proportions p 1 and p 2 using Two Independent Samples

Test 3 SOLUTIONS. x P(x) xp(x)

Chapter 18. Sampling Distribution Models. Bin Zou STAT 141 University of Alberta Winter / 10

Negative z-scores: cumulative from left. x z

In this chapter, you will study the normal distribution, the standard normal, and applications associated with them.

Math/Stat 352 Lecture 10. Section 4.11 The Central Limit Theorem

Quiz 2 covered materials in Chapter 5 Chapter 6 Chapter 7. Normal Probability Distribution. Continuous Probability. distribution 11/9/2010.

Continuous Probability Distributions

The area under a probability density curve between any two values a and b has two interpretations:

Math 1342 Test 2 Review. Total number of students = = Students between the age of 26 and 35 = = 2012

Sampling distributions:

Probability Distribution for a normal random variable x:

The Chi-Square Distributions

Sampling Distributions and the Central Limit Theorem. Definition

The Chi-Square Distributions

Section 5.1: Probability and area

Introduction to Statistics for the Social Sciences Review for Exam 4 Homework Assignment 27

Section 6-1 Overview. Definition. Definition. Using Area to Find Probability. Area and Probability

Chapter 3 Probability Chapter 3 Probability 3-1 Overview 3-2 Fundamentals 3-3 Addition Rule 3-4 Multiplication Rule: Basics

Math 2311 Sections 4.1, 4.2 and 4.3

Unit 5: Regression. Marius Ionescu 09/22/2011

Probably About Probability p <.05. Probability. What Is Probability?

Math 2311 Test 1 Review. 1. State whether each situation is categorical or quantitative. If quantitative, state whether it s discrete or continuous.

1,1 1,2 1,3 1,4 1,5 1,6 2,1 2,2 2,3 2,4 2,5 2,6 3,1 3,2 3,3 3,4 3,5 3,6 4,1 4,2 4,3 4,4 4,5 4,6 5,1 5,2 5,3 5,4 5,5 5,6 6,1 6,2 6,3 6,4 6,5 6,6

Homework 4 Solutions Math 150

Unit 4 Probability. Dr Mahmoud Alhussami

Practice Final Exam ANSWER KEY Chapters 7-13

CS Homework 2: Combinatorics & Discrete Events Due Date: September 25, 2018 at 2:20 PM

6.3 Use Normal Distributions. Page 399 What is a normal distribution? What is standard normal distribution? What does the z-score represent?

COSC 341 Human Computer Interaction. Dr. Bowen Hui University of British Columbia Okanagan

Dynamics in Social Networks and Causality

Sampling. Benjamin Graham

6 THE NORMAL DISTRIBUTION

Normal Distribution. Distribution function and Graphical Representation - pdf - identifying the mean and variance

4.2 Probability Models

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

MTH302 Long Solved Questions By

Definition of a function. Elementary Functions. A function machine. Inputs and unique outputs of a function. Sam Houston State University

EQ: What is a normal distribution?

Solutions to Additional Questions on Normal Distributions

Twelfth Problem Assignment

Business Statistics: A First Course

STA 218: Statistics for Management

Final Practice 1 Date: Section: Name: . Find: n(a) 2) na= ( ) 25

Producing data Toward statistical inference. Section 3.3

Chapter 15. Correlation and Regression

The t-statistic. Student s t Test

2014 SM4 Revision Questions Distributions

9. DISCRETE PROBABILITY DISTRIBUTIONS

Chapter 15 Sampling Distribution Models

1/18/2011. Chapter 6: Probability. Introduction to Probability. Probability Definition


Outline. Probability. Math 143. Department of Mathematics and Statistics Calvin College. Spring 2010

Discrete Mathematics and Probability Theory Summer 2014 James Cook Midterm 1

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

QUIZ 4 (CHAPTER 7) - SOLUTIONS MATH 119 SPRING 2013 KUNIYUKI 105 POINTS TOTAL, BUT 100 POINTS = 100%

9/19/2012. PSY 511: Advanced Statistics for Psychological and Behavioral Research 1

Geometric Distribution The characteristics of a geometric experiment are: 1. There are one or more Bernoulli trials with all failures except the last

Exercise 1. Exercise 2. Lesson 2 Theoretical Foundations Probabilities Solutions You ip a coin three times.

Examine characteristics of a sample and make inferences about the population

STATPRO Exercises with Solutions. Problem Set A: Basic Probability

HYPOTHESIS TESTING: SINGLE MEAN, NORMAL DISTRIBUTION (Z-TEST)

Lab #12: Exam 3 Review Key

UNIVERSITY OF MASSACHUSETTS Department of Biostatistics and Epidemiology BE540w - Introduction to Biostatistics Fall 2004

Conditional Probability Solutions STAT-UB.0103 Statistics for Business Control and Regression Models

8. f(x)= x 3 + 9x 2 + 6x 56

(i) The mean and mode both equal the median; that is, the average value and the most likely value are both in the middle of the distribution.

FREQUENCY DISTRIBUTIONS AND PERCENTILES

Common Core State Standards for Mathematical Practice (6-8)

Final Review. Non-calculator problems are indicated. 1. (No calculator) Graph the function: y = x 3 + 2

Chapter 5 Least Squares Regression

Normal Distribution: Calculations of Probabilities

1 Descriptive statistics. 2 Scores and probability distributions. 3 Hypothesis testing and one-sample t-test. 4 More on t-tests

Let us think of the situation as having a 50 sided fair die; any one number is equally likely to appear.

Propositional Logic Not Enough

6.2b Homework: Fit a Linear Model to Bivariate Data

Notes 3: Statistical Inference: Sampling, Sampling Distributions Confidence Intervals, and Hypothesis Testing

Math/Stat 352 Lecture 9. Section 4.5 Normal distribution

QUIZ 1 (CHAPTERS 1-4) SOLUTIONS MATH 119 FALL 2012 KUNIYUKI 105 POINTS TOTAL, BUT 100 POINTS

Lesson 1: What s My Rule?

The Standard Deviation as a Ruler and the Normal Model

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

HYPOTHESIS TESTING. Hypothesis Testing


Chapter. Probability

H2 Mathematics Probability ( )

Section 9 2B:!! Using Confidence Intervals to Estimate the Difference ( µ 1 µ 2 ) in Two Population Means using Two Independent Samples.

Statistical Inference for Means

Thirty-third Annual Columbus State Invitational Mathematics Tournament. Instructions

Instructions. Do not open your test until instructed to do so!

Two-sample inference: Continuous data

Chapter 3: Probability 3.1: Basic Concepts of Probability

Computations - Show all your work. (30 pts)

ECO220Y Continuous Probability Distributions: Uniform and Triangle Readings: Chapter 9, sections

Tribhuvan University Institute of Science and Technology 2065

Transcription:

- The Central Limit Theorem Definition Sampling Distribution of the Mean the probability distribution of sample means, with all samples having the same sample size n. (In general, the sampling distribution of any statistic is the probability distribution of that statistic.) Given: Central Limit Theorem. The random variable x has a distribution (which may or may not be normal) with mean µ and standard deviation σ.. Simple random samples all of the same size n are selected from the population. (The samples are selected so that all possible samples of size n have the same chance of being selected.)

Central Limit Theorem Conclusions:. The distribution of sample means x will, as the sample size increases, approach a normal distribution.. The mean of the sample means will be the population mean µ.. The standard deviation of the sample means will approach σ/ n. Practical Rules Commonly Used:. For samples of size n larger than, the distribution of the sample means can be approximated reasonably well by a normal distribution. The approximation gets better as the sample size n becomes larger.. If the original population is itself normally distributed, then the sample means will be normally distributed for any sample size n (not just the values of n larger than ). Notation the mean of the sample means µ x = µ the standard deviation of sample means σ x = σ n (often called standard error of the mean)

SSN digits x................... Distribution of digits from Social Security Numbers (Last digits from students) Frequency Distribution of digits Distribution of Sample Means for Students Frequency

As the sample size increases, the sampling distribution of sample means approaches a normal distribution. distributed weights with a mean of lb and a standard deviation of lb, that his weight is greater than lb. b) if different men are randomly selected, find the probability that their mean weight is greater than lb. distributed weights with a mean of lb. and a standard deviation of lb, that his weight is greater than lb. z = =.

distributed weights with a mean of lb. and a standard deviation of lb, that his weight is greater than lb. The probability that one man randomly selected has a weight greater than lb. is. distributed weights with a mean of lb. and a standard deviation of lb, b.) if different men are randomly selected, find the probability that their mean weight is greater than lb. z = =. distributed weights with a mean of lb. and a standard deviation of lb, b.) if different men are randomly selected, find the probability that their mean weight is greater than lb. The probability that the mean weight of randomly selected men is greater than lb. is..

distributed weights with a mean of lb and a standard deviation of lb, that his weight is greater than lb. P(x > ) =. b) if different men are randomly selected, their mean weight is greater than lb. P(x > ) =. It is much easier for an individual to deviate from the mean than it is for a group of to deviate from the mean. Sampling Without Replacement If n >. N N - n σ x = σ n N - finite population correction factor Example: IQ scores are normally distributed and have a mean of and a standard deviation of. If people are randomly selected, find the probability that their mean is at least.