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Standard error

Standard error. Standard error Estimated standard error ,s ,. Example 1. While measuring the thermal conductivity of Armco iron, using a temperature of 100F and a power of 550W, the following 10 measurement of thermal conductivity ( in Btr/hr-ft-F) were obtained:

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Standard error

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  1. Standard error • 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 of 550W, the following 10 measurement of thermal conductivity ( in Btr/hr-ft-F) were obtained: 41.60 41.48 42.34 41.95 41.86 42.18 41.72 42.26 41.81 42.04 • Find point estimate of the mean conductivity and the estimated standard error.

  3. Mean square error • Definition: • Relative efficiency

  4. Maximum Likelihood Estimation • The Maximum Likelihood Estimate, of a parameter  is the numerical value of  for which the observed results in the data at hand would have the highest probability of arising.

  5. Example: Defect Rate • Suppose that we want to estimate the defect rate f in a production process. We learn that, in a random sample of 20 items that completed the process, 3 were found to be defective. Given only this outcome, we must estimate f.

  6. MLE Definition • The Maximum Likelihood Estimator, , is the value of  that maximizes L() = f(x1; ).f(x2; ). … .f(xn; ) • Example: Bernoulli • Example: Exponential • Other examples in text: Normal

  7. Properties of MLE • In general, when the sample size n is large, and if is the MLE of : • is an approx unbiased estimator for • The variance of is almost as small as that obtained by any other estimator • has an approx normal distribution

  8. The Invariance Property • Let be the MLE of 1, 2 ,…, k . Then the MLE of any function h(1, 2 ,…, k) of these parameters is the same function h( ) of the estimators.

  9. MLE vs. unbiased estimation • What is the difference between MLE and unbiased estimation? • Can a procedure meet one standard and not the other? • Example: uniform distribution on [0,a].

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