Hi im trying to cluster some data I have from the kdd 1999 cup dataset
the output from the file looks like this:
with 48 thousand different records in that format. I have cleaned the data up and removed the text keeping only the numbers. The output looks like this now:
I created a comma dillemated file in excel and saved as a csv file then created a data source from the csv file in matlab, ive tryed running it through the fcm toolbox in matlab (findcluster outputs 38 data types which is expected with 38 columns).
The clusters however dont look like clusters or its not accepting and working the way I need it to.
Could anyone help finding the clusters? Im new to matlab so dont have any experience and Im also new to clustering.
- Chose number of clusters (K)
- Initialize centroids (K patterns randomly chosen from data set)
- Assign each pattern to the cluster with closest centroid
- Calculate means of each cluster to be its new centroid
- Repeat step 3 until a stopping criteria is met (no pattern move to another cluster)
This is what I'm trying to achieve:
This is what im getting:
load kddcup1.dat plot(kddcup1(:,1),kddcup1(:,2),'o') [center,U,objFcn] = fcm(kddcup1,2); Iteration count = 1, obj. fcn = 253224062681230720.000000 Iteration count = 2, obj. fcn = 241493132059137410.000000 Iteration count = 3, obj. fcn = 241484544542298110.000000 Iteration count = 4, obj. fcn = 241439204971005280.000000 Iteration count = 5, obj. fcn = 241090628742523840.000000 Iteration count = 6, obj. fcn = 239363408546874750.000000 Iteration count = 7, obj. fcn = 238580863900727680.000000 Iteration count = 8, obj. fcn = 238346826370420990.000000 Iteration count = 9, obj. fcn = 237617756429912510.000000 Iteration count = 10, obj. fcn = 226364785036628320.000000 Iteration count = 11, obj. fcn = 94590774984961184.000000 Iteration count = 12, obj. fcn = 2220521449216102.500000 Iteration count = 13, obj. fcn = 2220521273191876.200000 Iteration count = 14, obj. fcn = 2220521273191876.700000 Iteration count = 15, obj. fcn = 2220521273191876.700000 figure plot(objFcn) title('Objective Function Values') xlabel('Iteration Count') ylabel('Objective Function Value') maxU = max(U); index1 = find(U(1, :) == maxU); index2 = find(U(2, :) == maxU); figure line(kddcup1(index1, 1), kddcup1(index1, 2), 'linestyle',... 'none','marker', 'o','color','g'); line(kddcup1(index2,1),kddcup1(index2,2),'linestyle',... 'none','marker', 'x','color','r'); hold on plot(center(1,1),center(1,2),'ko','markersize',15,'LineWidth',2) plot(center(2,1),center(2,2),'kx','markersize',15,'LineWidth',2)