7-1 Introduction The field of statistical inference consists of those methods used to make decisions or to draw conclusions about a population. These.

Slides:



Advertisements
Similar presentations
Copyright (c) 2004 Brooks/Cole, a division of Thomson Learning, Inc. Chapter 6 Point Estimation.
Advertisements

Point Estimation Notes of STAT 6205 by Dr. Fan.
CmpE 104 SOFTWARE STATISTICAL TOOLS & METHODS MEASURING & ESTIMATING SOFTWARE SIZE AND RESOURCE & SCHEDULE ESTIMATING.
Chapter 7. Statistical Estimation and Sampling Distributions
Chapter 7 Title and Outline 1 7 Sampling Distributions and Point Estimation of Parameters 7-1 Point Estimation 7-2 Sampling Distributions and the Central.
Statistical Estimation and Sampling Distributions
Estimation  Samples are collected to estimate characteristics of the population of particular interest. Parameter – numerical characteristic of the population.
Chapter 7 Introduction to Sampling Distributions
Today Today: Chapter 9 Assignment: Recommended Questions: 9.1, 9.8, 9.20, 9.23, 9.25.
Chapter 6 Introduction to Sampling Distributions
Statistical Inference Chapter 12/13. COMP 5340/6340 Statistical Inference2 Statistical Inference Given a sample of observations from a population, the.
Part 2b Parameter Estimation CSE717, FALL 2008 CUBS, Univ at Buffalo.
Fall 2006 – Fundamentals of Business Statistics 1 Chapter 6 Introduction to Sampling Distributions.
Estimation of parameters. Maximum likelihood What has happened was most likely.
CSE 221: Probabilistic Analysis of Computer Systems Topics covered: Statistical inference (Sec. )
CSE 221: Probabilistic Analysis of Computer Systems Topics covered: Statistical inference.
SAMPLING DISTRIBUTIONS. SAMPLING VARIABILITY
2. Point and interval estimation Introduction Properties of estimators Finite sample size Asymptotic properties Construction methods Method of moments.
PROBABILITY AND SAMPLES: THE DISTRIBUTION OF SAMPLE MEANS.
1 Inference About a Population Variance Sometimes we are interested in making inference about the variability of processes. Examples: –Investors use variance.
Chapter 7 Probability and Samples: The Distribution of Sample Means
Sampling Distributions & Point Estimation. Questions What is a sampling distribution? What is the standard error? What is the principle of maximum likelihood?
Chapter 6: Sampling Distributions
Chapter 8 Introduction to Hypothesis Testing
Copyright © 2013 Pearson Education, Inc. All rights reserved Chapter 6 Sampling Distributions.
Random Sampling, Point Estimation and Maximum Likelihood.
Lecture 12 Statistical Inference (Estimation) Point and Interval estimation By Aziza Munir.
7-1 Introduction The field of statistical inference consists of those methods used to make decisions or to draw conclusions about a population. These.
Chapter 7 Point Estimation
Chapter 7 Sampling and Point Estimation Sample This Chapter 7A.
1 Lecture 16: Point Estimation Concepts and Methods Devore, Ch
July, 2000Guang Jin Statistics in Applied Science and Technology Chapter 7 - Sampling Distribution of Means.
6 - 1 © 1998 Prentice-Hall, Inc. Chapter 6 Sampling Distributions.
OPENING QUESTIONS 1.What key concepts and symbols are pertinent to sampling? 2.How are the sampling distribution, statistical inference, and standard.
8 Sampling Distribution of the Mean Chapter8 p Sampling Distributions Population mean and standard deviation,  and   unknown Maximal Likelihood.
Chapter 8 : Estimation.
Chapter 7 Point Estimation of Parameters. Learning Objectives Explain the general concepts of estimating Explain important properties of point estimators.
1 Standard error Estimated standard error,s,. 2 Example 1 While measuring the thermal conductivity of Armco iron, using a temperature of 100F and a power.
Ex St 801 Statistical Methods Inference about a Single Population Mean.
Confidence Interval & Unbiased Estimator Review and Foreword.
Week 41 How to find estimators? There are two main methods for finding estimators: 1) Method of moments. 2) The method of Maximum likelihood. Sometimes.
Point Estimation of Parameters and Sampling Distributions Outlines:  Sampling Distributions and the central limit theorem  Point estimation  Methods.
Chapter 5 Sampling Distributions. The Concept of Sampling Distributions Parameter – numerical descriptive measure of a population. It is usually unknown.
Copyright © 2010 Pearson Addison-Wesley. All rights reserved. Chapter 9 One- and Two-Sample Estimation Problems.
Review of Statistical Terms Population Sample Parameter Statistic.
Lecture 5 Introduction to Sampling Distributions.
Statistics Sampling Distributions and Point Estimation of Parameters Contents, figures, and exercises come from the textbook: Applied Statistics and Probability.
6 - 1 © 2000 Prentice-Hall, Inc. Statistics for Business and Economics Sampling Distributions Chapter 6.
Ex St 801 Statistical Methods Inference about a Single Population Mean (CI)
Parameter Estimation. Statistics Probability specified inferred Steam engine pump “prediction” “estimation”
Week 21 Statistical Model A statistical model for some data is a set of distributions, one of which corresponds to the true unknown distribution that produced.
LEARNING OBJECTIVES After careful study of this chapter you should be able to do the following: 1.Explain the general concepts of estimating the parameters.
Stat 223 Introduction to the Theory of Statistics
Chapter 6: Sampling Distributions
Sampling Distributions
STATISTICAL INFERENCE
Stat 223 Introduction to the Theory of Statistics
Math 4030 – 10b Inferences Concerning Variances: Hypothesis Testing
7-1 Introduction The field of statistical inference consists of those methods used to make decisions or to draw conclusions about a population. These.
Chapter 6: Sampling Distributions
STATISTICAL INFERENCE PART I POINT ESTIMATION
Behavioral Statistics
Statistics in Applied Science and Technology
POINT ESTIMATOR OF PARAMETERS
Stat 223 Introduction to the Theory of Statistics
Statistical Inference
Statistical Model A statistical model for some data is a set of distributions, one of which corresponds to the true unknown distribution that produced.
Statistical Model A statistical model for some data is a set of distributions, one of which corresponds to the true unknown distribution that produced.
Applied Statistics and Probability for Engineers
How Confident Are You?.
Presentation transcript:

7-1 Introduction The field of statistical inference consists of those methods used to make decisions or to draw conclusions about a population. These methods utilize the information contained in a sample from the population in drawing conclusions. Statistical inference may be divided into two major areas: Parameter estimation Hypothesis testing

7-1 Introduction Definition

7-1 Introduction

7-1 Introduction

7-2 General Concepts of Point Estimation 7-2.1 Unbiased Estimators Definition

7-2 General Concepts of Point Estimation Example 7-1

7-2 General Concepts of Point Estimation Example 7-1 (continued)

7-2 General Concepts of Point Estimation 7-2.3 Variance of a Point Estimator Definition Figure 7-1 The sampling distributions of two unbiased estimators

7-2 General Concepts of Point Estimation 7-2.3 Variance of a Point Estimator Theorem 7-1

7-2 General Concepts of Point Estimation 7-2.4 Standard Error: Reporting a Point Estimate Definition

7-2 General Concepts of Point Estimation 7-2.4 Standard Error: Reporting a Point Estimate

7-2 General Concepts of Point Estimation Example 7-2

7-2 General Concepts of Point Estimation Example 7-2 (continued)

7-2 General Concepts of Point Estimation 7-2.6 Mean Square Error of an Estimator Definition

7-2 General Concepts of Point Estimation 7-2.6 Mean Square Error of an Estimator

7-2 General Concepts of Point Estimation 7-2.6 Mean Square Error of an Estimator Figure 7-2 A biased estimator that has smaller variance than the unbiased estimator

7-3 Methods of Point Estimation Definition Definition

7-3 Methods of Point Estimation Example 7-4

7-3 Methods of Point Estimation 7-3.2 Method of Maximum Likelihood Definition

7-3 Methods of Point Estimation Example 7-6

7-3 Methods of Point Estimation Example 7-6 (continued)

7-3 Methods of Point Estimation Figure 7-3 Log likelihood for the exponential distribution, using the failure time data. (a) Log likelihood with n = 8 (original data). (b) Log likelihood if n = 8, 20, and 40.

7-3 Methods of Point Estimation Example 7-9

7-3 Methods of Point Estimation Example 7-9 (continued)

7-3 Methods of Point Estimation Properties of the Maximum Likelihood Estimator

7-3 Methods of Point Estimation The Invariance Property

7-3 Methods of Point Estimation Example 7-10

7-3 Methods of Point Estimation Complications in Using Maximum Likelihood Estimation It is not always easy to maximize the likelihood function because the equation(s) obtained from dL()/d = 0 may be difficult to solve. It may not always be possible to use calculus methods directly to determine the maximum of L().

7-3 Methods of Point Estimation Example 7-11

7-3 Methods of Point Estimation Figure 7-4 The likelihood function for the uniform distribution in Example 7-11.

7-4 Sampling Distributions Statistical inference is concerned with making decisions about a population based on the information contained in a random sample from that population. Definition

7-5 Sampling Distributions of Means Theorem 7-2: The Central Limit Theorem

7-5 Sampling Distributions of Means Figure 7-6 Distributions of average scores from throwing dice. [Adapted with permission from Box, Hunter, and Hunter (1978).]

Example 7-13

7-5 Sampling Distributions of Means Figure 7-7 Probability for Example 7-13.

7-5 Sampling Distributions of Means Definition