In statistics and data mining, k-means clustering is a method of cluster analysis which aims to partition n observations into k clusters in which each observation belongs to the cluster with the nearest mean (least squares).

learn more… | top users | synonyms

-1
votes
1answer
9 views

How can I apply KMEANS algorithm with determined cluster position which has specified from PSO algorith?

How can I apply KMEANS algorithm with determined cluster position which has specified from PSO algorithm ??
-1
votes
0answers
9 views

Understanding the LogLikelihood L(X|C) in the BIC function is as follows: BIC(C | X) = L(X | C) - (p / 2) * log n?

One of the standard procedure to compute a good number of clusters k using K-Means algorithm is to use the BIC score. BIC score is given by the following :BIC(C | X) = L(X | C) - (p / 2) * log n where ...
0
votes
0answers
13 views

Is it possible to rank results from GAP clustering criterion?

Is it possible to rank the GAP criterion values for a given range of k? For instance, having k = 2:20, the Criterion values I get from MatLab are the following: 0.7751 0.8210 0.8077 0.8075 ...
1
vote
1answer
9 views

ClusterLongData kml package export to scv

I am clustering time series in R using package KmL. I have read both manual and paper how to use this package, but Im not very clear how to export the results (data frame, where each trajectories are ...
2
votes
2answers
20 views

SPSS - Using K-means clustering after factor analysis

I am a developer that has been tasked with working out how previous results using SPSS were gathered, so we can repeat the process with some new data. We can't ask the person who did the original ...
0
votes
0answers
38 views

K means clustering on image processing not working

I have tried the following code. he = imread('hestain.png'); imshow(he), title('H&E image'); cform = makecform('srgb2lab'); lab_he = applycform(he,cform); ab = double(lab_he(:,:,2:3)); nrows = ...
1
vote
1answer
17 views

Octave: Kmeans clustering not working on an image matrix

I have tried the following code. img=imread("test1.jpg"); gimg=rgb2gray(img); imshow(gimg); bw = gimg < 255; L = bwlabel(bw); imshow(label2rgb(L, @jet, [.7 .7 .7])) s = regionprops(L, ...
0
votes
1answer
35 views

Python scikit-learn KMeans is being killed (9) while computing silhouette score

I'm currently working on an image dataset (250 000 images, so just as much as features vectors, everyone of them composed of 132 features) and trying to use the KMeans function provided by sklearn. I ...
0
votes
1answer
16 views

k-means core function for temporal geo data

I want cluster geo data (lat,long,timestamp) with k-means. I'm searching for a good core function, I can't find good paper or other sources for that. To time I multiplicate the time and the space ...
-1
votes
1answer
27 views

Assign class to data frame after clustering

I used k-means cluster algorithm on a data-frame df1 and the result is shown in the picture below. library(ade4) df1 <- data.frame(x=runif(100), y=runif(100)) plot(df1) km <- kmeans(df1, ...
-1
votes
1answer
11 views

Clustering Using MapReduce

I have unstructured twitter data which is retrieved by the apache flume and stored it into the HDFS. So now I want to convert this unstructured data into structured one using the mapreduce. Task ...
0
votes
1answer
16 views

R - cluster analysis on binary weblog data

I have a web data that looks similar to the sample below. It simply has the user and binary value for whether that user cliked on a particular link within a website. I wanted to do some clustering of ...
2
votes
1answer
24 views

Vectorizing text file in java for kmeans clustering java encog

I am using java encog machine learning library for running kmeans clustering. The problem is that it is possible only on numeric data. Is there a way to vectorize the text file(data) so that I can ...
0
votes
1answer
26 views

Clustering Categorical data-set with distance based approach

I want to compare the ROCK clustering algorithm to a distance based algorithm. Let say we have (m) training examples and (n) features ROCK: From what I understand ROCK does is that 1. It ...
-1
votes
1answer
28 views

k mean clustering for mixed categorical and numeric value

Any help please i want to provide a simple framework for identifying and cleaning duplicates data in the context big data . This pretreatment must be performed in real time (streaming). we ...
-4
votes
0answers
13 views

Can anyone help me with Matlab code for Kmeans after feature extraction in CBIR?

I had extracted color ,shape, texture feature and combined these features to calculate similarity between images in database now I want to perform with KMEANS can anyone provide me matlab code for ...
0
votes
1answer
16 views

How does sklearn.cluster.KMeans handle an init ndarray parameter with missing centroids (available centroids less than n_clusters)?

In Python sklearn KMeans (see documentation), I was wondering what happens internally when passing an ndarray of shape (n, n_features) to the init parameter, When n<n_clusters Does it drop the ...
2
votes
4answers
40 views

Using k-means for document clustering, should clustering be on cosine similarity or on term vectors?

Apologies if the answer to this is obvious, please be kind, this is my first time on here :-) I would gratefully appreciate if someone could give me a steer on the appropriate input data structure ...
0
votes
0answers
14 views

Finding intra cluster and inter cluster distance in Python

I have a data set that contains sensor values over a time period for 42 sensors. Each sensor has [14089x1] values. I have found the kmeans cluster using this code clusterid, error, nfound = ...
0
votes
1answer
27 views

3D SIFT for human activity classification in videos. NOT GETTING GOOD ACCURACY.

I am trying to classify human activities in videos(six classes and almost 100 videos per class, 6*100=600 videos). I am using 3D SIFT(both xy and t scale=1) from UCF. for f= 1:20 f offset = 0; ...
0
votes
1answer
21 views

How to do column wise intersection with itertools

When I calculate the jaccard similarity between each of my training data of (m) training examples each with 6 features (Age,Occupation,Gender,Product_range, Product_cat and Product) forming a (m*m) ...
4
votes
1answer
38 views

Summarize variable variations in clusters (k-means) using R

I have a df that I got after implementing k-means clustering on my original dataset. I have 4 different clusters here and what I would like to know is how much is the variation of the 4 variables (V1 ...
1
vote
2answers
74 views

Clustering Categorical data using jaccard similarity

I am trying to build a clustering algorithm for categorical data. I have read about different algorithm's like k-modes, ROCK, LIMBO, however I would like to build one of mine and compare the ...
0
votes
1answer
38 views

Analysis of k-means results in R

I have performed k-means clustering in R, and I am having trouble analyzing the results. I am simply trying to create a data frame containing the imported data frame together with the cluster ID and ...
0
votes
1answer
10 views

Is it possible for K Mean cluster has no member?

I'm currently using K Mean for clustering files. Some question occur to me, is it possible that the cluster has no member at all? If so, what is happen to the centroid of the cluster? Is it equal as ...
0
votes
1answer
34 views

I get inconsistent results with Accord.Net K-Means classification

I have a test program that does not give consistent results for Accord.Net K-Means. I am enclosing a reproducible test program that can be run in Visual Studio 2013. The program is a console ...
0
votes
1answer
19 views

Clustering Textentities with Radpiminer

I have cloud tags A,B,C. each cloud tag consists of entities (words) e,f,g ... i want to find good words that seperates cloud tags into (mostly) independent clusters. like for example: word e is ...
0
votes
2answers
27 views

Got java heap size error when trying to cluster 15980 documents via carrot2workbench

My environment: 8GB Ram Notebook with Ubuntu 14.04, Solr 4.3.1, carrot2workbench 3.10.0 My Solr Index: 15980 documents My Problem: Cluster all documents with the kmeans algorithm When I drop off ...
-1
votes
0answers
51 views

R - 3D k-means clustering

I need to classify two events from two variables. We can named these variables X1 and X2, the values of X1 goes from 1 to 10 while X2 goes from 1 to 180. Right know I'm using two k-means for each ...
3
votes
0answers
45 views

Matlab: kmeans clustering gives unexpected clusters

Example: load kmeansdata %provides X variable Y=bsxfun(@minus,X,mean(X,2))'/sqrt(size(X,2)-1); %normalized and means adjusted [~,~,PC] = svd(Y); % plot(PC(:,1),PC(:,2),'m.','markersize',15) plot ...
0
votes
0answers
23 views

Visualize Voronoi Diagram using gnuplot

I want to visualize the individual clusters (generated by K-means clustering algorithm) through voronoi diagrams using gnuplot. Can anyone please point to relevant gnuplot resources? thanks
1
vote
0answers
16 views

Python - Stratified Sampling with MiniBatch k-means

I'm trying to cluster about a million objects, that each have a varying length of datapoints, generally less than 100. The features would be the date of the observations and the ID value of each ...
-1
votes
1answer
24 views

can Hadoop works with something else but eclips (java)?

can Hadoop works with something else but eclipse (java) ? I run Hadoop at my laptop and deal with it using K-means java code (eclipse) but it stop running can I use something else to solve the ...
-1
votes
1answer
15 views

How to do javascript online k-means clustering for many dimensions

I found many examples of javascript online k-means clustering, but all of the are for 2 dimensions. If I have 56 dimensions (for example), how can I do the clustering? Bonus question: Could it be ...
0
votes
0answers
26 views

Understanding how to use k-means in JavaScript

I'm noob to k-means, but I need to predict some data using k-means in javaScript. I found some example codes here and here and here. As you can see, I have no problem with code, but with how to use ...
0
votes
0answers
30 views

Cluster Analysis: effectiveness of k means results and alternative methods [migrated]

I have to separate 425 observations based on certain variables numbering 32. 1)I used PCA to reduce the dimensionality of Data, which gave me 32 components out of which 5 components accounted for 75% ...
2
votes
1answer
52 views

Combining clustering algorithms in MapReduce

For my college project, I initially thought to implement a combined clustering algorithm on MapReduce. I have finished with KMeans. Now my questions are: Can any other clustering algorithm be ...
0
votes
1answer
26 views

Displaying kmean result with specific colors to specific clusters

I applied k-mean clustering on a preprocessed image using the following matlab code %B - input image C=rgb2gray(B); [idx centroids]=kmeans(double(C(:)),4); imseg = zeros(size(C,1),size(C,2)); for ...
1
vote
0answers
33 views

Visualize multi attribute data in a 2D plane

I have a dataset having 32 attributes. I am applying K-Means clustering on the dataset to find out the clusters. Now I want to visualize the data points. The challenge in visualization of these ...
-2
votes
0answers
14 views

kmeans cluster vector starts at 1+nrow(dataframe) instead of 1

My code is shown below. I've also shown the first line of output. My dataframe has 844 rows. Why are 845 , 846 .. the first figures rather than 1, 2 ,etc ? Grateful for any help with this. ...
-1
votes
1answer
24 views

How to print result of clustering in sklearn

I have a sparse matrix from scipy.sparse import * M = csr_matrix((data_np, (rows_np, columns_np))); then I'm doing clustering that way from sklearn.cluster import KMeans km = KMeans(n_clusters=n, ...
1
vote
0answers
24 views

Square error clustering for Texture Segmentation

I am doing Texture Segmentation in Images Using Gabor Filters. I have generated Feature images and now i want to cluster them using square clustering or K-means. Since i am working in MATLAB, I am ...
3
votes
1answer
89 views

grayscale image processing using k-mean

I am trying to convert the rgb image into a grayscale and then cluster it using kmean function of matlab . here is my code he = imread('tumor2.jpg'); %convert into a grayscale image ...
0
votes
1answer
69 views

Applying K-means clustering on Z-score Normalized Data

I've been working to understand how to apply k-means clustering to a small set of data for a list of companies. The mean and standard deviation is given so that I can determine the normalized data. ...
-1
votes
1answer
25 views

Finding accuracy after convergence is met

I've completed coding a part for k-means clustering and its enhanced version. My question is: after the clustering part, how do we find the accuracy? I've googled for it but was of no use. I've ...
1
vote
0answers
33 views

How to extract points from clusplot graph?

I’m trying to extract the points (IDs) that occur in both ellipses from the graph produced by the function clusplot below. library(cluster) # Creates a sample data set. y <- ...
-3
votes
0answers
18 views

k-means clustering BSP vs MapReduce

Why BSP framework is Better than Mapreduce framework to reolve k-means clustering and how i can demontrate that Bsp is better to resolve k-means clusterig than MapReduce ? Thnx
0
votes
0answers
65 views

c++ openCv kMeans Assertion failed

I am running openCv kMeans on a vector of centre-points of contours. Like this: /// Load source image src = imread("image.jpg", 1); /// Convert image to gray and blur it cvtColor(src, ...
0
votes
2answers
60 views

K-means clustering on text data?

For simpler understanding I am explaining with smaller example. I have 2 sets : I have 10 unique string ids. id1,id2,id3,id4,id5... id10 I have 3 unique c-ids: cid1,cid2,cid3 There is a mapping ...
0
votes
0answers
11 views

How can I make a Weka instance object from a Weka matrix, instead of a data file?

I'm basically using Weka to try and apply the K-Means clustering algorithm on a dataset which I have in the matrix form. I wish to directly create a Weka.core.Instaces object for my matrix, rather ...