(Confidence Intervals, and how to get them via Chebyshev)
Line 35: Line 35:
 
The weak law of large numbers states that the sample average converges in probability towards the expected value
 
The weak law of large numbers states that the sample average converges in probability towards the expected value
 
:<math>\overline{X}_n \, \xrightarrow{P} \, \mu \qquad\textrm{for}\qquad n \to \infty.</math>
 
:<math>\overline{X}_n \, \xrightarrow{P} \, \mu \qquad\textrm{for}\qquad n \to \infty.</math>
 +
 +
Mn = (X1 + ... + Xn)/n = X1/n + ... + Xn/n
 +
 +
E[Mn] = nE[X]/n = E[X]
 +
 +
Var[Mn] = Var(X1/n) + ... + Var(Xn/n) = Var(X)/n
 +
 +
Pr[ |Mn - E[X]| >= Var(Mn)/<math> \sigma^2 = Var(X)/n\sigma^2 </math>
  
 
==ML Estimation Rule==
 
==ML Estimation Rule==

Revision as of 04:07, 19 November 2008

Covariance

  • $ COV(X,Y)=E[(X-E[X])(Y-E[Y])]\! $
  • $ COV(X,Y)=E[XY]-E[X]E[Y]\! $

X and Y are uncorrelated if cov(X,Y) = 0

Correlation Coefficient

$ \rho(X,Y)= \frac {cov(X,Y)}{\sqrt{var(X)} \sqrt{var(Y)}} \, $

Markov Inequality

Loosely speaking: In a nonnegative RV has a small mean, then the probability that it takes a large value must also be small.

  • $ P(X \geq a) \leq E[X]/a\! $

for all a > 0


EXAMPLE:

On average it takes 1 hour to catch a fish. What is (an upper bound) the probability it will take 3 hours?

SOLUTION:

Using Markov's inequality, where E[X] = 1 and a = 3.

$ P(X \geq 3) \leq \frac {E[X]}{3} = \frac{1}{3} $

so 1/3 is the upper bound to the probability that it will take more than 3 hours to catch a fish.

Chebyshev Inequality

"Any RV is likely to be close to its mean"

$ \Pr(\left|X-E[X]\right|\geq C)\leq\frac{var(X)}{C^2}. $

Weak Law of Large Numbers

The weak law of large numbers states that the sample average converges in probability towards the expected value

$ \overline{X}_n \, \xrightarrow{P} \, \mu \qquad\textrm{for}\qquad n \to \infty. $

Mn = (X1 + ... + Xn)/n = X1/n + ... + Xn/n

E[Mn] = nE[X]/n = E[X]

Var[Mn] = Var(X1/n) + ... + Var(Xn/n) = Var(X)/n

Pr[ |Mn - E[X]| >= Var(Mn)/$ \sigma^2 = Var(X)/n\sigma^2 $

ML Estimation Rule

$ \hat a_{ML} = \text{max}_a ( f_{X}(x_i;a)) $ continuous

$ \hat a_{ML} = \text{max}_a ( Pr(x_i;a)) $ discrete


If X is a binomial (n,p), where is X is number of heads n tosses, Then, for any fixed k-value;

$ \hat p_{ML}(k) = k/n $

MAP Estimation Rule

$ \hat \theta_{MAP} = \text{argmax}_\theta ( f_{\theta|X}(\theta|x)) $

Which can be expanded and turned into the following (if I am not mistaken):

$ \hat \theta_{MAP} = \text{argmax}_\theta ( f_{X|\theta}(x|\theta)f_{\theta}(\theta)) $

Bias of an Estimator, and Unbiased estimators

An estimator is unbiased if: $ E[\hat a_{ML}] = a $ for all values of a

Confidence Intervals, and how to get them via Chebyshev

$ \theta \text{ is unknown and fixed} $

$ \hat \theta \text{ is random and should be close to } \theta \text{ most of the time} $

$ if Pr[|\hat \theta \text{-} \theta|] <= (1-a) \text { then we say we have (1-a) confidence in the interval } [\hat \theta - E, \hat \theta + E] $


Confidence level of $ (1-a) $ if $ Pr[\hat \theta \text{-} \delta < \theta < \hat \theta + \delta] >= (1-a) for all \theta $

Alumni Liaison

BSEE 2004, current Ph.D. student researching signal and image processing.

Landis Huffman