Binary Variables (1) Coin flipping: heads=1, tails=0 Bernoulli Distribution

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Binary Variables (1)

Coin flipping: heads=1, tails=0

Bernoulli Distribution

Binary Variables (2)

N coin flips:

Binomial Distribution

Binomial Distribution

The Multinomial DistributionMultinomial distribution is a generalization of the binominal distribution. Differentfrom the binominal distribution, where the RV assumes two outcomes, the RV formulti-nominal distribution can assume k (k>2) possible outcomes.

Let N be the total number of independent trials, mi, i=1,2, ..k, be the number of timesoutcome i appears. Then, performing N independent trials, the probability that outcome 1 appears m1, outcome 2, appears m2, …,outcome k appears mk times is

The Gaussian Distribution

Moments of the Multivariate Gaussian (1)

thanks to anti-symmetry of z

Moments of the Multivariate Gaussian (2)

Central Limit Theorem

The distribution of the sum of N i.i.d. random variables becomes increasingly Gaussian as N grows.Example: N uniform [0,1] random variables.

Beta DistributionBeta is a continuous distribution defined on the interval of 0 and 1, i.e.,

parameterized by two positive parameters a and b.

where T(*) is gamma function. beta is conjugate to the binomial and Bernoulli distributions

Beta Distribution

The Dirichlet Distribution

Conjugate prior for the multinomial distribution.

The Dirichlet distribution is a continuous multivariate probability distributions parametrized by a vector of positive reals a. It is the multivariate generalization of the beta distribution.

Mixtures of Gaussians (1)

Old Faithful data set

Single Gaussian Mixture of two Gaussians

Mixtures of Gaussians (2)

Combine simple models into a complex model:

Component

Mixing coefficientK=3

Mixtures of Gaussians (3)

The Exponential Family (1)

where ´ is the natural parameter and

so g(´) can be interpreted as a normalization coefficient.

The Exponential Family (2.1)

The Bernoulli Distribution

Comparing with the general form we see that

and so

Logistic sigmoid

The Exponential Family (2.2)

The Bernoulli distribution can hence be written as

where

The Exponential Family (3.1)

The Multinomial Distribution

where, , and

NOTE: The ´ k parameters are not independent since the corresponding ¹k must satisfy

The Exponential Family (3.2)

Let . This leads to

and

Here the ´ k parameters are independent. Note that

and

Softmax

The Exponential Family (3.3)

The Multinomial distribution can then be written as

where

The Exponential Family (4)

The Gaussian Distribution

where

Conjugate priors

For any member of the exponential family, there exists a prior

Combining with the likelihood function, we get posterior

The likelihood and the prior are conjugate if the prior and posterior have the same distribution.

Conjugate priors (cont’d)

• Beta prior is conjugate to the binomial and Bernoulli distributions

• Dirichlet prior is conjugate to the multinomial distribution.

• Gaussian prior is conjugate to the Gaussian distribution

Noninformative Priors (1)

With little or no information available a-priori, we might choose uniform prior.• ¸ discrete, K-nomial :• ¸2[a,b] real and bounded: • ¸ real and unbounded: improper!

Nonparametric Methods (1)

Parametric distribution models are restricted to specific forms, which may not always be suitable; for example, consider modelling a multimodal distribution with a single, unimodal model.

Nonparametric approaches make few assumptions about the overall shape of the distribution being modelled.

Nonparametric Methods (2)

Histogram methods partition the data space into distinct bins with widths ¢i and count the number of observations, ni, in each bin.

• Often, the same width is used for all bins, ¢i = ¢.

• ¢ acts as a smoothing parameter.

•In a D-dimensional space, using M bins in each dimen-sion will require MD bins!

Nonparametric Methods (3)

Let (x1, x2, …, xn) be an iid sample drawn from some distribution with an unknown density p(x) (Parzen window)

It follows that

Kernel Density Estimation: is a non-parametric way of estimating the probability density function of a random variable

k() is the kernel function and h is bandwith, serving as a smoothing parameter. The onlyparameter is h.

2/1||1

,0)( h

xx

elsen

n

h

xxk

N

n

n

h

xxk

Nhxp

1

)(1

)(

Nonparametric Methods (4)

To avoid discontinuities in p(x), use a smooth kernel, e.g. a Gaussian

Any kernel such that

will work.h acts as a smoother.

Nonparametric Methods (5)

Nonparametric models (not histograms) requires storing and computing with the entire data set.

Parametric models, once fitted, are much more efficient in terms of storage and computation.

K-Nearest-Neighbours for Classification

K = 1K = 3

The k-nearest neighbors algorithm (k-NN) is a method for classifying objects based on closest training examples in the feature space.

K-Nearest-Neighbours for Classification

The best choice of k depends upon the data; larger values of k reduce the effect of noise on the classification, but make boundaries between classes less distinct. A good k can be selected by cross-validation.

K-Nearest-Neighbours for Classification (3)

• K acts as a smother• For , the error rate of the 1-nearest-neighbour classifier is never more

than twice the optimal error (obtained from the true conditional class distributions).

Parametric Estimation

Basic building blocks:Need to determine given

Maximum Likelihood (ML)

Maximum Posterior Probability (MAP))|,...,,(maxarg* 21

Nxxxp

),...,,|(maxarg* 21 Nxxxp

ML Parameter Estimation

)|()|,...,,()( 21 n

nN xpxxxpL

)|()( n

nxpLogL

Since samples x1, x2, ..,xn are IID, we have

The log likelihood can be obtained as

q can be obtained by taking the derivative of the Log likelihood with respect to q and setting it to zero

0)|()(

n

nxpLogL

Parameter Estimation (1)

ML for BernoulliGiven:

Maximum Likelihood for the Gaussian

Given i.i.d. data , the log likeli-hood function is given by

Sufficient statistics

Maximum Likelihood for the Gaussian

Set the derivative of the log likelihood function to zero,

and solve to obtain

Similarly

MAP Parameter Estimation

)|()(

)|,...,,()(

),...,,|(

21

21

nn

N

N

xpP

xxxpP

xxxp

Since samples x1, x2, ..,xn are IID, we have

)|(log)(

),...,,|( 21

n

n

N

xpLogPLog

xxxpLog

Taking the log yields posterior

q can be solved by maximizing the log posterior. P(q) is typically chosen to be the conjugate of the likelihood.

Bayesian Inference for the Gaussian (1)

Assume ¾2 is known. Given i.i.d. data , the likelihood function for¹ is given by

This has a Gaussian shape as a function of ¹ (but it is not a distribution over ¹).

Bayesian Inference for the Gaussian (2)

Combined with a Gaussian prior over ¹,

this gives the posterior

Completing the square over ¹, we see that

Bayesian Inference for the Gaussian (3)

… where

Note:

Bayesian Inference for the Gaussian (4)

Example: for N = 0, 1, 2 and 10.

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