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So I have two methods of classification, Discriminant analysis diaglinear classification (naive bayes) and the pure Naive Bayes classifier implemented in matlab, there are 23 classes in the entire dataset. The first method discriminant analysis:

%% Classify Clusters using Naive Bayes Classifier and classify
training_data = Testdata; 
target_class = TestDataLabels;

[class, err]  = classify(UnseenTestdata, training_data, target_class,'diaglinear')

cmat1 = confusionmat(UnseenTestDataLabels, class);
acc1 = 100*sum(diag(cmat1))./sum(cmat1(:));
fprintf('Classifier1:\naccuracy = %.2f%%\n', acc1);
fprintf('Confusion Matrix:\n'), disp(cmat1)

Yields an accuracy from the confusion matrix of 81.49% with an error rate (err) of 0.5040 (not sure how to interpret that).

The second method Naive Bayes classifier:

%% Classify Clusters using Naive Bayes Classifier
training_data = Testdata; 
target_class = TestDataLabels;
%# train model
nb = NaiveBayes.fit(training_data, target_class, 'Distribution', 'mn');

%# prediction
class1 = nb.predict(UnseenTestdata); 

%# performance
cmat1 = confusionmat(UnseenTestDataLabels, class1);
acc1 = 100*sum(diag(cmat1))./sum(cmat1(:));
fprintf('Classifier1:\naccuracy = %.2f%%\n', acc1);
fprintf('Confusion Matrix:\n'), disp(cmat1)

Yields an accuracy of 81.89%.

I have only did one round of cross validation, im new at matlab and supervised/unsupervised algorithms so I did the cross validation myself I just basically take 10% of the data and keeps it aside for testing purposes, as it is a random set each time I could go through it several times and take the average accuracy but the results will do for explanation purposes.

So to my problem question.

In my literature review of current methods a lot of researchers are finding that a single classification algorithm mixed with a clustering alogorithm are yeilding better accuracy results. They do this by finding the optimal number of clusters for their data and using the partioned clusters (which should be more alike than not) run each individual cluster through a classification algorithm. A process where you can use the best parts of an unsupervised algorithm in conjunction with a supervised classification algorithm.

Now im using a dataset that has been used numerous times in literature and im attempting a not so disimilar approach to others in my quest.

I first use the simple K-Means clustering which surprisingly has a good capability to cluster my data. The output looks like so:

enter image description here

Looking at each cluster (K1, K2...K12) class labels:

%% output the class labels of each cluster
     K1 = UnseenTestDataLabels(indX(clustIDX==1),:)

I find that predominatly each cluster has one class label in 9 clusters while 3 clusters contain multiple class labels. Showing that K-means has a good fit to the data.

The problem however is once I have each cluster data (cluster1, cluster2...cluster12):

 %% output the real data of each cluster
     cluster1 = UnseenTestdata(clustIDX==1,:)

And I put each cluster through the naive bayes or discriminant analysis like so:

class1  = classify(cluster1, training_data, target_class, 'diaglinear');
class2  = classify(cluster2, training_data, target_class, 'diaglinear');
class3  = classify(cluster3, training_data, target_class, 'diaglinear');
class4  = classify(cluster4, training_data, target_class, 'diaglinear');
class5  = classify(cluster5, training_data, target_class, 'diaglinear');
class6  = classify(cluster6, training_data, target_class, 'diaglinear');
class7  = classify(cluster7, training_data, target_class, 'diaglinear');
class8  = classify(cluster8, training_data, target_class, 'diaglinear');
class9  = classify(cluster9, training_data, target_class, 'diaglinear');
class10  = classify(cluster10, training_data, target_class, 'diaglinear'); 
class11  = classify(cluster11, training_data, target_class, 'diaglinear');
class12  = classify(cluster12, training_data, target_class, 'diaglinear');

The accuracy becomes horrifying, 50% of the clusters are classifyed with 0% accuracy, each classified cluster (acc1, acc2,...acc12) has its own corresponding confusion matrix you can see the accuracy of each cluster here:

enter image description here

So my problem/question is where am I going wrong, I first thought maybe I have the data/labels mixed up for the clusters, but what I posted above looks correct I cant see an issue with it.

Why is the data that is the exact same unseen 10% data used in the first experiment yielding such strange results for the same unseen clustered data? I mean it should be noted that NB is a stable classifier and shouldnt overfit easily and seeing as the training data is vast while the clusters to be classified are concurrent overfitting shouldnt happen?

EDIT:

As requested from comments I have included the cmat file for the first example of testing which gives an accuracy of 81.49% and an err of 0.5040:

enter image description here

Also requested was the a snippet of K, class and the related cmat in this example (cluster4) the accuracy is 3.03%:

enter image description here

Seeing as there was a large number of classes (23 in total) I decided to reduce the classes as outlined in the 1999 KDD Cup this is just applying abit of domain knowledge as some of the attacks are more alike than others and come under one umbrella term.

I then trained the classifier with 444 thousand records while holding back 10% for testing purposes.

The accuracy was worse 73.39% the error rate was also worse 0.4261

enter image description here

The unseendata broken down into its classes:

DoS: 39149
Probe: 405
R2L: 121
U2R: 6
normal.: 9721

The class or classified labels (outcome of discriminant analysis)

DoS: 28135
Probe: 10776
R2L: 1102
U2R: 1140
normal.: 8249

The training data is made up of:

DoS: 352452
Probe: 3717
R2L: 1006
U2R: 49
normal.: 87395

I fear if I lower the training data to have a similar percetange of malicious activity, then the classifier wont have enough predictive power to distinguish between classes, however looking at some other literature I have noticed that some researchers remove U2R as there isnt enough data for successful classifiction.

Methods I have tryed so far are one class classifiers where I train the classifier to only predict one class (not effective), classifying indivdual clusters (worse accuracy yet), reducing the class labels (2nd best) and keeping the full 23 class labels (best accuracy).

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1  
+1 Nice question! –  Kirsty White Nov 18 '12 at 7:37
    
What are the class sizes in the whole data set and in each cluster? –  Anony-Mousse Nov 18 '12 at 8:42
    
Updated question. –  Garrith Graham Nov 18 '12 at 9:54
    
I'm not exactly sure what's in training_data, but it sounds like your training and testing data don't have any classes that overlap. if your training data does not include many instances of the class in the testing cluster, it will not be able to label them properly. –  Jeff Nov 18 '12 at 10:40
    
Whats in training_data... it says it in the code training_data = Testdata; test data is 90% (444 thousand records) I hold back 10% of this (44 thousand records) which is the UnseenTestdata this becomes the clustered data and each cluster is classified. So no Jeff your way off. –  Garrith Graham Nov 18 '12 at 10:43

5 Answers 5

up vote 1 down vote accepted
+100

As others have correctly pointed out, at least one problem here is on these lines:

class1  = classify(cluster1, training_data, target_class, 'diaglinear');
...

You are training the classifier using all the training_data, but evaluating it on only the sub-clusters. For clustering the data to have any effect, you need to train a different classifier within each of the sub-clusters. Sometimes this can be very difficult - e.g., there may be very few (or no!) examples in cluster C from class Y. That's inherent to trying to do joint clustering and learning.

The general framework for your problem is as follows:

Training data:
   Cluster into C clusters
   Within each cluster, develop a classifier

Testing data:
   Assign observation into one of the C clusters (either "hard", or "soft")
   Run the correct classifier (corresponding to that cluster)

This

class1  = classify(cluster1, training_data, target_class, 'diaglinear');

Does not do that.

share|improve this answer
    
"Within each cluster, develop a classifier" it is almost impossible to develop this with the darpa dataset so much so that if you try, your simply fitting the training data. For instance one cluster has normal and dos classes, if I create a classifier either 50:50 or 70:30 whatever is represented as the majority in the cluster and I train NB with this to predict the cluster classes, its accuracy falls way short in comparison to the accuracy of my first example. –  Garrith Graham Nov 21 '12 at 17:42
    
Then the proposed approach is not relevant to the problem at hand. That will happen. There's not much that can be done about it, except try an alternate approach. –  Pete Nov 21 '12 at 19:33
    
Thanks Pete I think at the moment you are correct. –  Garrith Graham Nov 25 '12 at 11:47

Here's a very simple example that shows exactly how this is supposed to work and what is wrong

%% Generate data and labels for each class
x11 = bsxfun(@plus,randn(100,2),[2 2]);
x10 = bsxfun(@plus,randn(100,2),[0 2]);

x21 = bsxfun(@plus,randn(100,2),[-2 -2]);
x20 = bsxfun(@plus,randn(100,2),[0 -2]);

%If you have the PRT (shameless plug), this looks nice:
%http://www.mathworks.com/matlabcentral/linkexchange/links/2947-pattern-recognition-toolbox
% ds = prtDataSetClass(cat(1,x11,x21,x10,x20),prtUtilY(200,200));

x = cat(1,x11,x21,x10,x20);
y = cat(1,ones(200,1),zeros(200,1));

clusterIdx = kmeans(x,2); %make 2 clusters
xCluster1 = x(clusterIdx == 1,:);
yCluster1 = y(clusterIdx == 1);
xCluster2 = x(clusterIdx == 2,:);
yCluster2 = y(clusterIdx == 2);


%Performance is terrible:
yOut1  = classify(xCluster1, x, y, 'diaglinear');
yOut2  = classify(xCluster2, x, y, 'diaglinear');

pcCluster = length(find(cat(1,yOut1,yOut2) == cat(1,yCluster1,yCluster2)))/size(y,1)

%Performance is Good:
yOutCluster1  = classify(xCluster1, xCluster1, yCluster1, 'diaglinear');
yOutCluster2  = classify(xCluster2, xCluster2, yCluster2, 'diaglinear');

pcWithinCluster = length(find(cat(1,yOutCluster1,yOutCluster2) == cat(1,yCluster1,yCluster2)))/size(y,1)

%Performance is Bad (using all data):
yOutFull  = classify(x, x, y, 'diaglinear');
pcFull = length(find(yOutFull == y))/size(y,1)
share|improve this answer
    
You use the same training data as the testing data classify(xCluster1, xCluster1 but in your other example you dont classify(xCluster1, x what happens if you try classify(x, x I bet you get the same results as yOutCluster1 –  Garrith Graham Nov 21 '12 at 17:36
    
Yes, I did not try cross-validating this. You can. You will see similar results to the ones I presented. You can also try "yOutFull = classify(x, x, y, 'diaglinear');" and see that the performance is quite poor. Not like the results from yOutCluster2. This is easy to verify with the code provided –  Pete Nov 21 '12 at 19:35
    
I edited the code snipped to include the above example. It illustrates the point quite clearly. –  Pete Nov 21 '12 at 19:44

Look at your cmat1 data of first example (with accuracy of 81.49%), the main reason that you get high accuracy is that your classifier get large amount of class 1 and class 4 correct. almost all the other classes perform badly(getting zero correct predictions). And this is consistent with your last example(using k-means first), where for cluster7 you get acc7 of 56.9698.

EDIT: It seems that in cmat1, we do not have testing data for more that half of the classes(looking at the all-zero lines). So you can only know the general performance for classes like 1 and 4 is good, and will get similar performance if you do clustering first. But for other classes, this is no evidence that it works ok.

share|improve this answer
    
I already know this, you havent mentioned anything knew and infact your answer is wrong in regards to the clustered data. K-means successfully clusters DoS and Normal however classifying these does not produce the same results as in the first example or anywhere near the accuracy, of which it was good at predicting. Also please read the bounty description in regards to an answer. –  Garrith Graham Nov 20 '12 at 13:45
    
Also what do you mean by we do not have testing data for more that half of the classes(looking at the all-zero lines) –  Garrith Graham Nov 20 '12 at 14:07
    
I may misunderstood your problem. I am pointing out that your NB classifier does not perform that well. The accuracy(81.49%) comes from the total testing instance(49402) divided by the summation of all diagonal terms of confusion matrix(2802+9+1669+10139+...=40259). As you can see, two classes(1 and 4) contribute to the most of the accuracy, and large amount of classes has no correct prediction at all. This problem is due to the imbalance of dataset, since the instances for these two classes are too many. And there is no surprise that later you get many 0% accuracy for individual clusters. –  Chunliang Lyu Nov 20 '12 at 14:53
    
Dataset balance is important for classifiers such as Naive Bayes, and you cannot simply use NB if your dataset is unbalanced. Search on Google and you may find many papers dealing with this problem. –  Chunliang Lyu Nov 20 '12 at 15:04

After you cluster your data, are you traning a classifier for each cluster? If you are not doing this, then this may be your problem.

Try doing this. First, cluster your data and keep the centroids. Then, using the training data, train a classifier per clusters. For the classification phase, find the nearest centroid of the object you want to classify and use the corresponding classifier.

A single classifier is not a good idea because it learns patterns of the whole dataset. However, what you want when you cluster is to learn the local patterns that describes each cluster.

share|improve this answer
    
That doesnt make sense. When you train a classifier in this instance naive bayes you train it on as many samples as you can or on a balanced dataset that describes the classes, when testing the accuracy in my circumstance you test it on the unseen clustered testdata i.e each cluster. –  Garrith Graham Nov 20 '12 at 17:40
    
Also note each cluster has its own training and classification but each cluster is trained on the same training data. So im not sure if you read the question? –  Garrith Graham Nov 20 '12 at 17:47
    
In your question you say "...run each individual cluster through a classification algorithm." How do you train this classifier? That is, which instances do you use to train it. Is it the whole dataset or only instances that belong to the cluster? –  Alceu Costa Nov 20 '12 at 17:53
    
As explained in the question, I break the dataset into two parts. 90% of the dataset is used for training, the remaining 10% is used for testing. The testing part is first clustered and each cluster is classifyed using the training data. –  Garrith Graham Nov 20 '12 at 18:01

Consider this function call:

classify(cluster1, training_data, target_class, 'diaglinear');

training_data is a sample of the whole feature space. What that means? The classification model that you are training will try to maximize the classification accuracy for the whole feature space. That means that if you show test samples that have the same behavior as your training data, you will get classification results.

The point is that you are not showing test samples that have the same behavior as your training data. In fact cluster1 is a sample of only a partition of your feature space. More specifically, the instances in cluster1 corresponds to samples of your feature space that are closer to the centroid of cluster1 than the remaining centroids and this may be degrading your classifier performance.

So I suggest you the following:

  1. Cluster your training set and keep the centroids
  2. Using the training data, train a classifier per cluster. That is, use only instances that belong to that cluster to train the classifier.
  3. For the classification phase, find the nearest centroid of the object you want to classify and use the corresponding classifier.
share|improve this answer
    
So if I cluster the training data and keep the average mean of lets say cluster 1 which is "normal" classes, I then use this as the training data for NB, I then cluster my unseen data and I find that either none of the clusters have the same average mean or they do but when I try to classify based on the training examples I find that NB has only one class to train on and has hugely overfit the data and is bias to only one class (normal in this example)? –  Garrith Graham Nov 21 '12 at 6:03
    
Note that you should not cluster the test data. –  Alceu Costa Nov 21 '12 at 9:39
    
Well I had thought that if I cluster the entire dataset then take out 10% of each cluster for training the classifier on for each of those matching clusters, this would be the only way it would work with your proposed method. Because note that if I cluster both training and testing seperately and take only the centroids of training data and the centroids of testing data, then they do not match. The numbers are completely different. –  Garrith Graham Nov 21 '12 at 10:21

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