Presentation is loading. Please wait.

Presentation is loading. Please wait.

Mathematical Statistics Lecture Notes Chapter 8 – Sections 8.1-8.4.

Similar presentations


Presentation on theme: "Mathematical Statistics Lecture Notes Chapter 8 – Sections 8.1-8.4."— Presentation transcript:

1 Mathematical Statistics Lecture Notes Chapter 8 – Sections 8.1-8.4

2 General Info  I’m going to try to use the slides to help save my voice.  First homework is now posted – covers 8.1-8.5 and is due next Wednesday, Feb. 2.  We should be finished that material by Friday.  Structure of these notes: series of definitions, etc. then examples (by hand on board with more comments)

3 Chapter 8 – Estimation  What is an estimator?  A rule, often expressed as a formula, that tells how to calculate the value of an estimate based on measurements in a sample.  What estimators are you already familiar with? Two should come to mind.  If you want to estimate the proportion of Amherst College students who participated in community service over Winter Break, what estimator would you use?  If you want to estimate the average amount of money spent in traveling expenses by Amherst College students over Winter Break, what estimator would you use?

4 Questions about Estimators to Think About  What estimator should I use?  If I have multiple estimators, how do I pick one? How do we know which is best?  How do we place bounds on the estimate or the error of the estimate?  How well does the estimator perform on average?  We’ll look at all these questions in Chapter 8 and 9.  8.2 helps with question 2.  8.4 helps with question 3.

5 8.2 – Bias and Mean Square Error (MSE) of Point Estimators  What is a point estimator?  It is an estimator that is a single value (or vector). It is NOT an interval of possible values (like a confidence interval). The estimators you are familiar with are most likely point estimators.  For notation, let be the parameter to estimate and let be the estimator for a general estimation setting.

6 Definition of Bias  is an unbiased estimator for if.  The bias of a point estimator is given by:  How are we going to compute bias? We need some basic information about the distribution of. This may mean using methods of transformations (from Probability) to obtain a pdf, etc. (For reference in current text: Chapter 6)

7 Why not look at the variance of the estimator?  Well, you could.  You would want the variance of the estimator to be small.  It turns out there is a another quantity, called the mean square error that can be examined to gain information about the bias and variance of your estimator.

8 Definition of Mean Square Error (MSE)  The MSE of a point estimator is given by:  We note (as a useful result) that:  This means that if our estimator is unbiased, the MSE is equal to the variance of the estimator.

9 Proof of Useful Result  See Board  Please bear with me as I try to make notes about the computation so you can follow.

10 8.3 – Some Common Unbiased Estimators  See chart on board  Standard deviation vs. Standard error  Standard deviations involve the unknown parameters  Standard errors mean you have plugged in some logical estimators for those parameters.  Your book will use them interchangeably (more than I would like). Basically if you need an actual value for a calculation, go ahead and use the standard error.  Fortunately for us, due to large sample asymptotics, the math still works out.

11 8.4 – Definition of Error of Estimation  The error of estimation is the distance between an estimator and its target parameter:  The error of estimation is a random variable because it depends on the estimator!  The norm is usual Euclidean distance.

12 More on Error of Estimation  We can make probabilistic statements about ; well really, they are statements about the estimator and parameter. This concept leads to confidence intervals (8.5).  For example:  Set, and then find b so that (if you have the pdf of the estimator):  Could also use Tchebysheff’s.

13 Examples  See board.  Bear with me again as I try to make notes so the computation is easy to follow.


Download ppt "Mathematical Statistics Lecture Notes Chapter 8 – Sections 8.1-8.4."

Similar presentations


Ads by Google