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Parameter Estimation 主講人:虞台文
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Contents Introduction Maximum-Likelihood Estimation
Bayesian Estimation
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Parameter Estimation Introduction
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Bayesian Rule We want to estimate the parameters of class-conditional densities if its parametric form is known, e.g.,
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Methods The Method of Moments Maximum-Likelihood Estimation
Not discussed in this course Maximum-Likelihood Estimation Assume parameters are fixed but unknown Bayesian Estimation Assume parameters are random variables Sufficient Statistics
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Maximum-Likelihood Estimation
Parameter Estimation Maximum-Likelihood Estimation
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Samples 1 2 D1 D2 The samples in Dj are drawn independently according to the probability law p(x|j). D3 Assume that p(x|j) has a known parametric form with parameter vector j. 3 e.g., j
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Goal D1 D2 D3 1 2 Use Dj to estimate the unknown parameter vector j
The estimated version will be denoted by Goal 1 2 D1 D2 D3 Use Dj to estimate the unknown parameter vector j 3
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Problem Formulation D Now the problem is:
Because each class is consider individually, the subscript used before will be dropped. Now the problem is: D Given a sample set D, whose elements are drawn independently from a population possessing a known parameter form, say p(x|), we want to choose a that will make D to occur most likely.
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Criterion of ML MLE By the independence assumption, we have
Likelihood function: MLE
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Criterion of ML Often, we resort to maximize the log-likelihood function How? MLE
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Criterion of ML Example: How?
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Differential Approach if Possible
Find the extreme values using the method in differential calculus. Let f() be a continuous function, where =(1, 2,…, n)T. Gradient Operator Find the extreme values by solving
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Preliminary Let
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Preliminary Let (xf )T
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The Gaussian Population
Two cases: Unknown Unknown and
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The Gaussian Population: Unknown
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The Gaussian Population: Unknown
Set Sample Mean
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The Gaussian Population: Unknown and
Consider univariate normal case
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The Gaussian Population: Unknown and
Consider univariate normal case unbiased Set biased
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The Gaussian Population: Unknown and
For multivariate normal case The MLE of and are: unbiased biased
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Unbiasedness Unbiased Estimator Consistent Estimator
(Absolutely unbiase) Consistent Estimator (asymptotically unbiased)
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MLE for Normal Population
Sample Mean Sample Covariance Matrix
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Parameter Estimation Bayesian Estimation
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Comparison MLE (Maximum-Likelihood Estimation) Bayesian Estimation
to find the fixed but unknown parameters of a population. Bayesian Estimation Consider the parameters of a population to be random variables.
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Heart of Bayesian Classification
Ultimate Goal: Evaluate What can we do if prior probabilities and class-conditional densities are unknown?
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Helpful Knowledge Functional form for unknown densities
e.g., Normal, exponential, … Ranges for the values of unknown parameters e.g., uniform distributed over a range Training Samples Sampling according to the states of nature.
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Posterior Probabilities from Sample
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Posterior Probabilities from Sample
Each class can be considered independently
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Problem Formulation D This the central problem of Bayesian Learning.
Let D be a set of samples drawn independently according to the fixed but known distribution p(x). We want to determine D This the central problem of Bayesian Learning.
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Parameter Distribution
Assume p(x) is unknown but knowing it has a fixed form with parameter vector . is complete known Assume is a random vector, and p() is a known a priori.
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Class-Conditional Density Estimation
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Class-Conditional Density Estimation
The posterior density we want to estimate The form of distribution is assumed known
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Class-Conditional Density Estimation
If p(|D) has a sharp peak at
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Class-Conditional Density Estimation
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The Univariate Gaussian: Unknown
distribution form is known assume is normal distributed
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The Univariate Gaussian: Unknown
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The Univariate Gaussian: Unknown
Comparison
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The Univariate Gaussian: Unknown
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The Univariate Gaussian: Unknown
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The Univariate Gaussian: p(x|D)
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The Univariate Gaussian: p(x|D)
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The Univariate Gaussian: p(x|D)
=?
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The Multivariate Gaussian: Unknown
distribution form is known assume is normal distributed
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The Multivariate Gaussian: Unknown
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The Multivariate Gaussian: Unknown
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General Theory 1. the form of class-conditional density is known. 2. knowledge about the parameter distribution is available. samples are randomly drawn according to the unknown probability density p(x). 3.
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General Theory 1. the form of class-conditional density is known. 2. knowledge about the parameter distribution is available. samples are randomly drawn according to the unknown probability density p(x). 3.
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Incremental Learning Recursive
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1. Example 2. 3.
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1. Example 2. 3. 4 2 4 6 8 10 p(|Dn) 3 2 1
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