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Crash course in probability theory and
         statistics – part 2




         Machine Learning, Wed Apr 16, 2008
Motivation
All models are wrong, but some are useful.

This lecture introduces distributions that have proven
useful in constructing models.
Densities, statistics and estimators
A probability (density) is any function X a p(X ) that
satisfies the probability theory axioms.

A statistic is any function of observed data x a f(x).

An estimator is a statistic used for estimating a parameter
of the probability density x a m.
Estimators
Assume D = {x1,x2,...,xN} are independent, identically
distributed (i.i.d) outcomes of our experiments
(observed data).

Desirable properties of an estimator are:

                                            for N®¥

and
                                            (unbiased)
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2

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Crash course in probability theory and statistics – part 2

  • 1. Crash course in probability theory and statistics – part 2 Machine Learning, Wed Apr 16, 2008
  • 2. Motivation All models are wrong, but some are useful. This lecture introduces distributions that have proven useful in constructing models.
  • 3. Densities, statistics and estimators A probability (density) is any function X a p(X ) that satisfies the probability theory axioms. A statistic is any function of observed data x a f(x). An estimator is a statistic used for estimating a parameter of the probability density x a m.
  • 4. Estimators Assume D = {x1,x2,...,xN} are independent, identically distributed (i.i.d) outcomes of our experiments (observed data). Desirable properties of an estimator are: for N®¥ and (unbiased)