Point EstimationNotes of STAT 6205 by Dr. Fan
Overview• Section 6.1
• Point estimation
• Maximum likelihood estimation
• Methods of moments
• Sufficient statisticso Definition
o Exponential family
o Mean square error (how to choose an estimator)
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Big Picture• Goal: To study the unknown distribution of a
population
• Method: Get a representative/random sample and use the information obtained in the sample to make statistical inference on the unknown features of the distribution
• Statistical Inference has two parts: o Estimation (of parameters)
o Hypothesis testing
• Estimation:o Point estimation: use a single value to estimate a parameter
o Interval estimation: find an interval covering the unknown parameter
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Point Estimator• Biased/unbiased: an estimator is called unbiased if
its mean is equal to the parameter of estimate; otherwise, it is biased
• Example: X_bar is unbiased for estimating mu
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Maximum Likelihood
Estimation• Given a random sample X1, X2, …, Xn from a
distribution f(x; θ) where θ is a (unknown) value in the parameter space Ω.
• Likelihood function vs. joint pdf
• Maximum Likelihood Estimator (m.l.e.) of θ, denoted as is the value θ which maximizes the likelihood function, given the sample X1, X2, …, Xn.
∏=
=n
iixfxL
1
);();( θθ
θ
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Examples/Exercises• Problem 1: To estimate p, the true probability of heads
up for a given coin.
• Problem 2: Let X1, X2, …, Xn be a random sample from a Exp(mu) distribution. Find the m.l.e. of mu.
• Problem 3: Let X1, X2, …, Xn be a random sample from a Weibull(a=3,b) distribution. Find the m.l.e. of b.
• Problem 4: Let X1, X2, …, Xn be a random sample from a N(µ,σ^2) distribution. Find the m.l.e. of µ and σ.
• Problem 5: Let X1, X2, …, Xn be a random sample from a Weibull(a,b) distribution. Find the m.l.e. of a and b.
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Method of Moments• Idea: Set population moments = sample moments
and solve for parameters
• Formula: When the parameter θ is r-dimensional, solve the following equations for θ:
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∑=
==n
i
ki
k ,...r,knXXE1
21for /)(
Examples/ExercisesGiven a random sample from a population
• Problem 1: Find the m.m.e. of µ for a Exp(µ) population.
• Exercise 1: Find the m.m.e. of µ and σ for a N(µ,σ^2) population.
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Sufficient Statistics• Idea: The “sufficient” statistic contains all
information about the unknown parameter; no other statistic can provide additional information as to the unknown parameter.
• If for any event A, P[A|Y=y] does not depend on the unknown parameter, then the statistic Y is called “sufficient” (for the unknown parameter).
• Any one-to-one mapping of a sufficient statistic Y is also sufficient.
• Sufficient statistics do not need to be estimators of the parameter.
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Sufficient Statistics
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Examples/ExercisesLet X1, X2, …, Xn be a random sample from f(x)
Problem: Let f be Poisson(a). Prove that
1. X-bar is sufficient for the parameter a
2. The m.l.e. of a is a function of the sufficient statistic
Exercise: Let f be Bin(n, p). Prove that X-bar is sufficient for p (n is known). Hint: find a sufficient statistic Y for p and then show that X-bar is a function of Y
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Exponential Family
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Examples/Exercises
Example 1: Find a sufficient statistic for p for Bin(n, p)
Example 2: Find a sufficient statistic for a for Poisson(a)
Exercise: Find a sufficient statistic for µ for Exp(µ)
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Joint Sufficient Statistics
Example: Prove that X-bar and S^2 are joint sufficient statistics for µ and σ of N(µ, σ^2)
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Application of Sufficience
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ExampleConsider a Weibull distribution with parameter(a=2, b)
1) Find a sufficient statistic for b
2) Find an unbiased estimator which is a function of the sufficient statistic found in 1)
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Good Estimator?• Criterion: mean square error
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Example• Which of the following two estimator of variance is
better?
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