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.

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MiniBatchKMeans Parameters

I am trying to cluster patches of images with Sklearn's Minibatch K-Means to reproduce the results of this paper. Here is some information on my dataset: 400,000 rows 108 dimensions 1600 clusters. ...
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68 views

Show KMeans cluster results with clusters as collumns

My data has 40+ variables and I am creating a 3 cluster model on it. I have built a kmeans model: teen_clusters <- kmeans(interests_z, 3). It works fine. It is getting an output that I can ...
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52 views

Guided document clustering

I have many documents file and have 4 distinct domain for which we have to cluster. I know some of the document should belongs to specific cluster ,as in data science document should belong to data ...
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849 views

Error in apply() : dim(X) must have a positive length

The below code gives an error. What causes the error and what can I do to solve it? # Determine number of clusters wss <- (nrow(donnees.test$y - esvr1.pred) - 1) * sum(apply(donnees.test$y ...
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190 views

NbClust - Error: cannot allocate vector of size x

I am running k-means clustering in R and would like to use NbClust to help identify the optimal number of clusters. My dataset, df, has 636,688 rows and 7 columns. When I run NbClust(df, min.nc = 2, ...
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473 views

kmeans: Quick-TRANSfer stage steps exceeded maximum

I am running k-means clustering in R on a dataset with 636,688 rows and 7 columns using the standard stats package: kmeans(dataset, centers = 100, nstart = 25, iter.max = 20). I get the following ...
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35 views

MBkmeans partial fit and select cluster member

I have 18997 docs (docs can be >100K) to cluster and make it into chunks (each 5000 docs). Then, I partail_fitted each chunk with MBKmeans.I select docs by cluster like each_chunk[labels == e]. No ...
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2answers
312 views

absolute pearson correlation distance in kmeans() MATLAB

I need to do some clustering using a correlation distance but instead of using the built-in 'distance' 'correlation' which is defined as d=1-r i need the absolute pearson distance.In my aplication ...
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35 views

Non-intruding cluster analyses of two separate group of samples

I'm having some trouble with cluster analysis. The idea is that I want to cluster two different groups of samples separately, but I want to maintain a rule: a cluster within one group can't be ...
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2answers
119 views

K-means clustering uniqueness of solution

Does the k-means clustering algorithm always yield the same solution? The initialization is supposed to be random, so does the clustering converge to the same result regardless of the initialization?
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164 views

What are some packages that implement semi-supervised (constrained) clustering?

I want to run some experiments on semi-supervised (constrained) clustering, in particular with background knowledge provided as instance level pairwise constraints (Must-Link or Cannot-Link ...
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21 views

Is there an easy way to reduce the number of rows of the ClassCenter matrix from a RandomForest?

I have this code that gets me the center's matrix centers <- classCenter(rfdata[ -which(names(rfdata) %in% c("freqsemana"))] , rfdata[,"freqsemana"], rfU$prox) I get a seven row matrix with ...
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23 views

sum and sumSquared in single-pass k-means

I'm exploring the single-pass k-means algorithm. It states when x is added: - n++ - sum = sum + x - sumSquared = sumSquared + x*x My input data is a set of points(x, y) and timestamps(t) when ...
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2answers
5k views

Implementation of k-means clustering algorithm

In my program, i'm taking k=2 for k-mean algorithm i.e i want only 2 clusters. I have implemented in a very simple and straightforward way, still i'm unable to understand why my program is getting ...
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1answer
118 views

Silhouette Index for selecting a proper number of clusters in KMeans clustering

I am using a Silhouette Index for selecting a proper number of clusters in KMeans clustering. The code of the Silhouette Index is given here. Based on this code, I created my own code (see below). ...
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1answer
314 views

MATLAB: K Means clustering With varying centroids

I'm created a code book based on k-means clustering algorithm.But the algorithm didn't converge to an optimal code book, each time, the cluster centroids are varying(because of random selection of ...
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1answer
67 views

Rank kmeans output

I am trying to find a way to rank the Kmeans () outputs. I saw some examples like the following in which some people are interested in ranking within cluster distances: x <- ...
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104 views

How to export result data from R kmeans clustering to a relational database

I have used the kmeans function i R to cluster my data. The data has been fetched from a relational database using the RODBC library. After performing the analysis I would like to export the result ...
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420 views

Getting Database Attribute From KMeans Clustering WEKA

i have function that create k-means algorithm using WEKA.jar. I have done creating function and showing the list of object in my console. But, i want to show specific attribute from k-means ...
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214 views

Estimation of number of Clusters via gap statistics and prediction strength

I am trying to translate the R implementations of gap statistics and prediction strength http://edchedch.wordpress.com/2011/03/19/counting-clusters/ into python scripts for the estimation of number of ...
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3answers
138 views

k-means initial centers determine the result?

K-means clustering is a common way for clustering. Suppose there are N points for K-means clustering, i.e., N points should be divided into K groups where points in each group have similarity with ...
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1answer
101 views

K means clustering on matrices instead of data

In matlab, I can cluster the data matrix like [centers, assignments] = vl_kmeans(da, 3); all the data points in matrix "da" will be divided into 3 clusters. But, instead of data points, I want to ...
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76 views

K-means document clustering - what next? [closed]

I am trying to learn some hands-on techniques in datamining and machine learning. I just implemented a k-means clustering algorithm, and as far as I can tell it works fine. I understand that it finds ...
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2answers
421 views

K-means with cosine distance

I have to write program that cluster using k-means. I have TF-IDF and also cosine similarity that looks like that 1.00 0.17 0.46 0.40 0.89 0.17 1.00 0.83 0.60 0.58 0.46 ...
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38 views

convert an array to list in python

my code is : km = KMeans(n_clusters=2, init='k-means++', max_iter=100, n_init=1,verbose=0) predict=[] predict.append(km.fit_predict(matrix)) the result is :[array([0,0,1,1,0])] then I want to ...
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181 views

Color Segmentation Improvement [closed]

I have a project about color and depth data segmentation. For this purposes we learnt about k-means clustering and L*a*b* color system; and when we applied it to the image, we have got following ...
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1answer
382 views

What's the difference between kmeans and kmeans2 in scipy?

I am new to machine learning and wondering the difference between kmeans and kmeans2 in scipy. According to the doc both of them are using the 'k-means' algorithm, but how to choose them?
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420 views

how to use different distance formula other than euclidean distance in k means

I am working with latitude longitude data. I have to make clusters based on distance between two points. Now distance between two different point is ...
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1answer
560 views

Simple approach to assigning clusters for new data after k-means clustering

I'm running k-means clustering on a data frame df1, and I'm looking for a simple approach to computing the closest cluster center for each observation in a new data frame df2 (with the same variable ...
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2answers
118 views

Is kdtree used for speeding k-means clustering or not?

I am doing a project by using k-means and my professor suggested kdtree. I found this implementation of kdtree in python (i know that there is also in scipy, but i couldn't find any sample ...
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1answer
57 views

Probability calculation by Proc means T-test

I need to calculate P-values linked to these t-values will reflect the probability that they are equal to 0 by using PROC Means for each visit. Also i have only one classifying(i,e Treatment ...
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1answer
678 views

K-Means: Lloyd,Forgy,MacQueen,Hartigan-Wong

I'm working with the K-Means Algorithm in R and I want to figure out the differences of the 4 Algorithms Lloyd,Forgy,MacQueen and Hartigan-Wong which are available for the function "kmeans" in the ...
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image segmentation based on colors using k means, opencv

I want to 1) Read a 3 channel image 2) Using K-Means method, create k different classes 3) I will tag pixels accordingly to show which class they belong to and store them in a matrix. 4) And ...
5
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181 views

Kmeans on a million observations in R - trouble plotting clusters

I am trying to perform KMeans clustering on over a million rows with 4 observations, all numeric. I am using the following code: ...
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1answer
297 views

Using k-means clustering on web log data

I have a data set from a access web log file which I'm interested in finding similar clusters. (I'm an absolute beginner of data mining). So far I have referred many research papers on the same ...
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196 views

Hierarchical Kmeans Clustering using Mahalanobis distance in opencv

I want to use hierarchical kmeans clustering in Opencv. However, when I used Opencv's cvflann::hierarchicalClustering() , the clusters are not as good as clusters obtained using ...
5
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1answer
855 views

Using scipy's kmeans2 function in python

I found this example for using kmeans2 algorithm in python. I can't get the following part # make some z vlues z = numpy.sin(xy[:,1]-0.2*xy[:,1]) # whiten them z = whiten(z) # let scipy do its ...
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1answer
96 views

Mahout k-means clustering command : facing Heap Space Issues

I am trying to perform k-means clustering using mahout on a 300MB dataset containing only numerical values. But I am running out of memory in the k-means command after the second iteration. Why does ...
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2answers
503 views

Which clustering algorithm is suitable for one-dimensional Lists without knowing k?

I have a one dimensional List like this public class Zeit_und_Eigenschaft { [Feature] public double Sekunden { get; set; } } //... List<Zeit_und_Eigenschaft> lzue = new ...
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123 views

python KMeans only creates two clusters regardless of k

I am trying to Implement a K-Means clustering algorithm in python and am having trouble with it. I understand the basic idea of K-Mean is to start with random or user provided center points, find ...
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1answer
328 views

Running mahout k means clustering command without converting input file to vectors

I have a dataset(300MB) on which I wish to run k means clustering using Mahout. The data is in a form of csv which contains only numerical values. Is it still necessary to input the file in vectorized ...
0
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1answer
1k views

Image clustering using matlab

I have about 400 images. 20 images that belong to 20 different categories. I need to perform automatic image clustering and display the results i.e clusters with images in a tree format. I am ...
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1answer
40 views

Color Time Series Based on The Cluster Assignment

Say I have the following Time Series: a = [1 3 1 5 1 3 5 1 5]; Now, on doing kmeans(a,3), I obtained: b = kmeans(a,3); // [1 2 1 3 1 2 3 1 3]; based on the clusters. I now wish to plot a, so that ...
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1answer
111 views

Computing k-means [closed]

How can I compute the standard k-means (Euclidean distance measure) with R? As an example the following data points are given {-3, -2, -1, 0, 2, 4,}. Using k=2 and starting with cluster seeds c1 = −1, ...
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4answers
2k views

Python Clustering Algorithms

I've been looking around scipy and sklearn for clustering algorithms for a particular problem I have. I need some way of characterizing a population of N particles into k groups, where k is not ...
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112 views

Detect main colors of object on plain background in Python

I wrote an algorithm that detects the main colors of an image with 1 object assuming the background is plain. Here are the basic steps I'm currently running: run a k-means algorithm (k = 10) on the ...
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3answers
199 views

Can we use k-means clustering on this matrix

The following rows represent temperatures from -40 to 400 degrees and the 7 columns represent type of thermocouples(B,J,K....) ![temperature vs emf matrix][1] X=[ -1.961 -1.527 -0.194 -1.475 ...
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45 views

matlab K-means using datevec

I am new to matlab and machine learning. I have some data over time and I want to use k-means. The time is in datevec format. Is it possible to perform kmeans to find the means using datevec format as ...
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2answers
810 views

Scatter plot segregate clusters by color matplotlib python

I am working on a clustering algorithm and need for all points in my scatter plot that belong to the same cluster to be marked the same color. I have a list which indicates for each point which ...
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3answers
87 views

Numpy array filtering by two criteria

I'm trying to run a custom kmeans clustering algorithm and am having trouble getting the document frequency for each column(term) of a 2-d numpy array by cluster. My current algorithm has two numpy ...