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Expectation maximization if a kind of probabilistic method to classify data. Please correct me if I am wrong if it is not a classifier.

What is an intuitive explanation of this EM technique? What is expectation here and what is being minimized?

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What is the expectation maximization algorithm?, Nature Biotechnology 26, 897–899 (2008) has a nice picture that illustrates how the algorithm works. –  chl Aug 4 '12 at 20:54
    
If your link was actually an answer, I would have accepted it as a right answer. Very nice tutorial :) Thanks! –  Abhishek Shivkumar Aug 7 '12 at 19:24
    
@chl In part b of the nice picture, how did they get the values of the probability distribution on the Z (i.e., 0.45xA, 0.55xB, etc.)? –  Noob Saibot Mar 19 '13 at 19:29
    
You can look at this question math.stackexchange.com/questions/25111/… –  v4r Mar 22 '13 at 14:01

4 Answers 4

up vote 16 down vote accepted

EM is an algorithm for maximizing a likelihood function when some of the variables in your model are unobserved (i.e. when you have latent variables).

You might fairly ask, if we're just trying to maximize a function, why don't we just use the existing machinery for maximizing a function. Well, if you try to maximize this by taking derivatives and setting them to zero, you find that in many cases the first-order conditions don't have a solution. There's a chicken-and-egg problem in that to solve for your model parameters you need to know the distribution of your unobserved data; but the distribution of your unobserved data is a function of your model parameters.

E-M tries to get around this by iteratively guessing a distribution for the unobserved data, then estimating the model parameters by maximizing something that is a lower bound on the actual likelihood function, and repeating until convergence:

The EM algorithm

Start with guess for values of your model parameters

E-step: For each datapoint that has missing values, use your model equation to solve for the distribution of the missing data given your current guess of the model parameters and given the observed data (note that you are solving for a distribution for each missing value, not for the expected value). Now that we have a distribution for each missing value, we can calculate the expectation of the likelihood function with respect to the unobserved variables. If our guess for the model parameter was correct, this expected likelihood will be the actual likelihood of our observed data; if the parameters were not correct, it will just be a lower bound.

M-step: Now that we've got an expected likelihood function with no unobserved variables in it, maximize the function as you would in the fully observed case, to get a new estimate of your model parameters.

Repeat until convergence.

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I do not understand your E-step. Part of the problem is that as I am learning this stuff, I can't find people who use the same terminology. So what do you mean by model equation? I don't know what you mean by solving for a probability distribution? –  user678392 Jun 25 '13 at 23:58

Technically the term "EM" is a bit underspecified, but I assume you refer to the Gaussian Mixture Modelling cluster analysis technique, that is an instance of the general EM principle.

Actually, EM cluster analysis is not a classifier. I know that some people consider clustering to be "unsupervised classification", but actually cluster analysis is something quite different.

The key difference, and the big misunderstanding classification people always have with cluster analysis is that: in cluster analaysis, there is no "correct solution". It is a knowledge discovery method, it is actually meant to find something new! This makes evaluation very tricky. It is often evaluated using a known classification as reference, but that is not always appropriate: the classification you have may or may not reflect what is in the data.

Let me give you an example: you have a large data set of customers, including gender data. A method that splits this data set into "male" and "female" is optimal when you compare it with the existing classes. In a "prediction" way of thinking this is good, as for new users you could now predict their gender. In a "knowledge discovery" way of thinking this is actually bad, because you wanted to discover some new structure in the data. A method that would e.g. split the data into elderly people and kids however would score as worse as it can get with respect to the male/female class. However, that would be an excellent clustering result (if the age wasn't given).

Now back to EM. Essentially it assumes that your data is composed of multiple multivariate normal distributions (note that this is a very strong assumption, in particular when you fix the number of clusters!). It then tries to find a local optimal model for this by alternatingly improving the model and the object assignment to the model.

For best results in a classification context, choose the number of clusters larger than the number of classes, or even apply the clustering to single classes only (to find out whether there is some structure within the class!).

Say you want to train a classifier to tell apart "cars", "bikes" and "trucks". There is little use in assuming the data to consist of exactly 3 normal distributions. However, you may assume that there is more than one type of cars (and trucks and bikes). So instead of training a classifier for these three classes, you cluster cars, trucks and bikes into 10 clusters each (or maybe 10 cars, 3 trucks and 3 bikes, whatever), then train a classifier to tell apart these 30 classes, and then merge the class result back to the original classes. You may also discover that there is one cluster that is particularly hard to classify, for example Trikes. They're somewhat cars, and somewhat bikes. Or delivery trucks, that are more like oversized cars than trucks.

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how is EM underspecified? –  sam boosalis Apr 12 '13 at 17:12
    
There is more than one version of it. Technically, you can call Lloyd style k-means "EM", too. You need to specify what model you use. –  Anony-Mousse Apr 13 '13 at 1:28

Here is a straight-forward recipe to understand the Expectation Maximisation algorithm:

1- Read this EM tutorial paper by Do and Batzoglou.

2- You may have question marks in your head, have a look at the explanations on this maths stack exchange page.

3- Look at this code that I wrote in Python that explains the example in the EM tutorial paper of item 1:

Warning : The code may be messy/suboptimal, since I am not a Python developer. But it does the job.

import numpy as np
import math

#### E-M Coin Toss Example as given in the EM tutorial paper by Do and Batzoglou* #### 

def get_mn_log_likelihood(obs,probs):
    """ Return the (log)likelihood of obs, given the probs"""
    # Multinomial Distribution Log PMF
    # ln (pdf)      =             multinomial coeff            *   product of probabilities
    # ln[f(x|n, p)] = [ln(n!) - (ln(x1!)+ln(x2!)+...+ln(xk!))] + [x1*ln(p1)+x2*ln(p2)+...+xk*ln(pk)]     

    multinomial_coeff_denom= 0
    prod_probs = 0
    for x in range(0,len(obs)): # loop through state counts in each observation
        multinomial_coeff_denom = multinomial_coeff_denom + math.log(math.factorial(obs[x]))
        prod_probs = prod_probs + obs[x]*math.log(probs[x])

multinomial_coeff = math.log(math.factorial(sum(obs))) -  multinomial_coeff_denom
likelihood = multinomial_coeff + prod_probs
return likelihood

# 1st:  Coin B, {HTTTHHTHTH}, 5H,5T
# 2nd:  Coin A, {HHHHTHHHHH}, 9H,1T
# 3rd:  Coin A, {HTHHHHHTHH}, 8H,2T
# 4th:  Coin B, {HTHTTTHHTT}, 4H,6T
# 5th:  Coin A, {THHHTHHHTH}, 7H,3T
# so, from MLE: pA(heads) = 0.80 and pB(heads)=0.45

# represent the experiments
head_counts = np.array([5,9,8,4,7])
tail_counts = 10-head_counts
experiments = zip(head_counts,tail_counts)

# initialise the pA(heads) and pB(heads)
pA_heads = np.zeros(100); pA_heads[0] = 0.60
pB_heads = np.zeros(100); pB_heads[0] = 0.50

# E-M begins!
delta = 0.001  
j = 0 # iteration counter
improvement = float('inf')
while (improvement>delta):
    expectation_A = np.zeros((5,2), dtype=float) 
    expectation_B = np.zeros((5,2), dtype=float)
    for i in range(0,len(experiments)):
        e = experiments[i] # i'th experiment
        ll_A = get_mn_log_likelihood(e,np.array([pA_heads[j],1-pA_heads[j]])) # loglikelihood of e given coin A
        ll_B = get_mn_log_likelihood(e,np.array([pB_heads[j],1-pB_heads[j]])) # loglikelihood of e given coin B

        weightA = math.exp(ll_A) / ( math.exp(ll_A) + math.exp(ll_B) ) # corresponding weight of A proportional to likelihood of A 
        weightB = math.exp(ll_B) / ( math.exp(ll_A) + math.exp(ll_B) ) # corresponding weight of B proportional to likelihood of B                            

        expectation_A[i] = np.dot(weightA, e) 
        expectation_B[i] = np.dot(weightB, e)

    pA_heads[j+1] = sum(expectation_A)[0] / sum(sum(expectation_A)); 
    pB_heads[j+1] = sum(expectation_B)[0] / sum(sum(expectation_B)); 

    improvement = max( abs(np.array([pA_heads[j+1],pB_heads[j+1]]) - np.array([pA_heads[j],pB_heads[j]]) ))
    j = j+1
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I find that your program will result in both A and B to 0.66, I also implement it using scala, also find that the result is 0.66, can you help check that ? –  zjffdu Nov 9 '13 at 11:09
    
Using a spreadsheet, I only find your 0.66 results if my initial guesses are equal. Otherwise, I can reproduce the output of the tutorial. –  soakley Nov 12 '13 at 18:07
    
@zjffdu, how many iterations does the EM run before returning you 0.66? If you initialise with equal values it may be getting stuck at a local maximum and you will see that the number of iterations is extremely low (since there is no improvement). –  Zhubarb Nov 13 '13 at 10:00
    
+1 - The code could be cleaned up a bit and more heavily commented. But otherwise, this is an excellent answer. –  Alex Williams Feb 7 at 4:43

EM is used to maximize the likelihood of a model Q with latent variables Z.

It's an iterative optimization.

theta <- initial guess for hidden parameters
while not converged:
    #e-step
    Q(theta'|theta) = E[log L(theta|Z)]
    #m-step
    theta <- argmax_theta' Q(theta'|theta)

e-step: given current estimation of Z calculate the expected loglikelihood function

m-step: find theta which maximizes this Q

GMM Example:

e-step: estimate label assignments for each datapoint given the current gmm-parameter estimation

m-step: maximize a new theta given the new label assigments

K-means is also an EM algorithm and there is a lot of explaining animations on K-means.

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