11 Confidence Intervals – Introduction A point estimate provides no information about the precision and reliability of estimation. For example, the sample.

Slides:



Advertisements
Similar presentations
Estimation of Means and Proportions
Advertisements

Estimating a Population Proportion
Sampling: Final and Initial Sample Size Determination
Objectives Look at Central Limit Theorem Sampling distribution of the mean.
Confidence Intervals for Proportions
1 Business 90: Business Statistics Professor David Mease Sec 03, T R 7:30-8:45AM BBC 204 Lecture 23 = Finish Chapter “Confidence Interval Estimation” (CIE)
Business Statistics: A Decision-Making Approach, 6e © 2005 Prentice-Hall, Inc. Chap 7-1 Introduction to Statistics: Chapter 8 Estimation.
Fall 2006 – Fundamentals of Business Statistics 1 Business Statistics: A Decision-Making Approach 6 th Edition Chapter 7 Estimating Population Values.
Copyright © 2005 Brooks/Cole, a division of Thomson Learning, Inc Chapter 10 Introduction to Estimation.
BCOR 1020 Business Statistics Lecture 18 – March 20, 2008.
Chapter 7 Estimating Population Values
BCOR 1020 Business Statistics
BA 275 Quantitative Business Methods
Copyright (c) 2004 Brooks/Cole, a division of Thomson Learning, Inc. Chapter 7 Statistical Intervals Based on a Single Sample.
QM-1/2011/Estimation Page 1 Quantitative Methods Estimation.
Standard error of estimate & Confidence interval.
Statistics for Managers Using Microsoft® Excel 7th Edition
© 2010 Pearson Prentice Hall. All rights reserved Chapter Estimating the Value of a Parameter Using Confidence Intervals 9.
Review of normal distribution. Exercise Solution.
Common Probability Distributions in Finance. The Normal Distribution The normal distribution is a continuous, bell-shaped distribution that is completely.
Confidence Interval Estimation
1 BIOSTAT 6 - Estimation There are two types of inference: estimation and hypothesis testing; estimation is introduced first. The objective of estimation.
Basic Business Statistics, 11e © 2009 Prentice-Hall, Inc. Chap 8-1 Confidence Interval Estimation.
Lecture 14 Sections 7.1 – 7.2 Objectives:
Chapter 8 Introduction to Inference Target Goal: I can calculate the confidence interval for a population Estimating with Confidence 8.1a h.w: pg 481:
ESTIMATION. STATISTICAL INFERENCE It is the procedure where inference about a population is made on the basis of the results obtained from a sample drawn.
Copyright © 2005 Brooks/Cole, a division of Thomson Learning, Inc Chapter 10 Introduction to Estimation.
Chapter 7. Statistical Intervals Based on a Single Sample Weiqi Luo ( 骆伟祺 ) School of Software Sun Yat-Sen University : Office.
RDPStatistical Methods in Scientific Research - Lecture 11 Lecture 1 Interpretation of data 1.1 A study in anorexia nervosa 1.2 Testing the difference.
Statistical Interval for a Single Sample
Statistical Methods Introduction to Estimation noha hussein elkhidir16/04/35.
1 Estimation From Sample Data Chapter 08. Chapter 8 - Learning Objectives Explain the difference between a point and an interval estimate. Construct and.
Chapter 10 Introduction to Estimation Sir Naseer Shahzada.
Statistical estimation, confidence intervals
Topic 6 - Confidence intervals based on a single sample Sampling distribution of the sample mean - pages Sampling distribution of the.
Sample Variability Consider the small population of integers {0, 2, 4, 6, 8} It is clear that the mean, μ = 4. Suppose we did not know the population mean.
Basic Business Statistics, 10e © 2006 Prentice-Hall, Inc. Chap 8-1 Confidence Interval Estimation.
11 Confidence Intervals – Introduction A point estimate provides no information about the precision and reliability of estimation. For example, the sample.
Chapter 10: Confidence Intervals
Week 91 Simple versus Composite Hypothesis Recall, a simple hypothesis completely specifies the distribution. A composite does not. When testing a simple.
Chapter 7. Statistical Intervals Based on a Single Sample Weiqi Luo ( 骆伟祺 ) School of Software Sun Yat-Sen University : Office.
Copyright ©2013 Pearson Education, Inc. publishing as Prentice Hall
Mystery 1Mystery 2Mystery 3.
Section 9.2: Large-Sample Confidence Interval for a Population Proportion.
Confidence Intervals – Introduction
Lecture 4 Confidence Intervals. Lecture Summary Last lecture, we talked about summary statistics and how “good” they were in estimating the parameters.
1 Probability and Statistics Confidence Intervals.
Estimation by Intervals Confidence Interval. Suppose we wanted to estimate the proportion of blue candies in a VERY large bowl. We could take a sample.
CHAPTER 10 DAY 1. Margin of Error The estimate is our guess for the value of the unknown parameter. The margin of error shows how accurate we believe.
10.1 – Estimating with Confidence. Recall: The Law of Large Numbers says the sample mean from a large SRS will be close to the unknown population mean.
Week 111 Review - Sum of Normal Random Variables The weighted sum of two independent normally distributed random variables has a normal distribution. Example.
Chapter 8 Estimation ©. Estimator and Estimate estimator estimate An estimator of a population parameter is a random variable that depends on the sample.
Estimating a Population Proportion ADM 2304 – Winter 2012 ©Tony Quon.
Copyright (c) 2004 Brooks/Cole, a division of Thomson Learning, Inc. Chapter 7 Inferences Concerning Means.
Probability & Statistics Review I 1. Normal Distribution 2. Sampling Distribution 3. Inference - Confidence Interval.
Week 101 Test on Pairs of Means – Case I Suppose are iid independent of that are iid. Further, suppose that n 1 and n 2 are large or that are known. We.
Week 2 SIN502S.
ESTIMATION.
ECO 173 Chapter 10: Introduction to Estimation Lecture 5a
Introduction to Estimating Population Means
Confidence Intervals – Introduction
Week 10 Chapter 16. Confidence Intervals for Proportions
ECO 173 Chapter 10: Introduction to Estimation Lecture 5a
CI for μ When σ is Unknown
Confidence Interval Estimation and Statistical Inference
CONCEPTS OF ESTIMATION
Statistical Model A statistical model for some data is a set of distributions, one of which corresponds to the true unknown distribution that produced.
Section 7.7 Introduction to Inference
Confidence Interval.
Interval Estimation Download this presentation.
Presentation transcript:

11 Confidence Intervals – Introduction A point estimate provides no information about the precision and reliability of estimation. For example, the sample mean is a point estimate of the population mean μ but because of sampling variability, it is virtually never the case that A point estimate says nothing about how close it might be to μ. An alternative to reporting a single sensible value for the parameter being estimated it to calculate and report an entire interval of plausible values – a confidence interval (CI).

2week 52 Confidence level A confidence level is a measure of the degree of reliability of a confidence interval. It is denoted as 100(1-α)%. The most frequently used confidence levels are 90%, 95% and 99%. A confidence level of 100(1-α)% implies that 100(1-α)% of all samples would include the true value of the parameter estimated. The higher the confidence level, the more strongly we believe that the true value of the parameter being estimated lies within the interval.

3week 53 CI for μ When σ is Known Suppose X 1, X 2,…,X n are random sample from N(μ, σ 2 ) where μ is unknown and σ is known. A 100(1-α)% confidence interval for μ is, Proof:

4week 54 Example The National Student Loan Survey collected data about the amount of money that borrowers owe. The survey selected a random sample of 1280 borrowers who began repayment of their loans between four to six months prior to the study. The mean debt for the selected borrowers was $18,900 and the standard deviation was $49,000. Find a 95% for the mean debt for all borrowers.

5week 55 Width and Precision of CI The precision of an interval is conveyed by the width of the interval. If the confidence level is high and the resulting interval is quite narrow, the interval is more precise, i.e., our knowledge of the value of the parameter is reasonably precise. A very wide CI implies that there is a great deal of uncertainty concerning the value of the parameter we are estimating. The width of the CI for μ is ….

6week 56 Important Comment Confidence intervals do not need to be central, any a and b that solve define 100(1-α)% CI for the population mean μ.

7week 57 One Sided CI CI gives both lower and upper bounds for the parameter being estimated. In some circumstances, an investigator will want only one of these two types of bound. A large sample upper confidence bound for μ is A large sample lower confidence bound for μ is

8 CI for μ When σ is Unknown Suppose X 1, X 2,…,X n are random sample from N(μ, σ 2 ) where both μ and σ are unknown. If σ 2 is unknown we can estimate it using s 2 and use the t n-1 distribution. A 100(1-α)% confidence interval for μ in this case, is … week 58

9 9 Large Sample CI for μ Recall: if the sample size is large, then the CLT applies and we have A 100(1-α)% confidence interval for μ, from a large iid sample is If σ 2 is not known we estimate it with s 2.

10 Example – Binomial Distribution Suppose X 1, X 2,…,X n are random sample from Bernoulli(θ) distribution. A 100(1-α)% CI for θ is…. Example… week 510