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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Modifying k-means package in R

Is it possible to modify the notion of distance in the kmeans package? I have cyclical data and want to use an alternative notion of distance as such.
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document clustering in python

I am new to both python and scikit-learn, I am going to cluster bunch of text files ( body of NEWS) , I am using the following code : #!/usr/bin/env python # -*- coding: utf-8 -*- from __future__ ...
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17 views

K-means clustering by spark

I have generated a sparse matrix by python, which has the size of 4000*174000 (.pkl), the following is a small part of this matrix : 0, 338) 0.0242290824012 (0, 43) 0.0242290824012 (0, 443) ...
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41 views

Finding clusters in matrices

I am trying to learn about patterns in matrices. I think clustering is appropriate for such task, but not sure which clustering techniques (k-mean, hierachy, dbscan etc) are effective. Here are some ...
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2answers
60 views

How to find the right cluster algorithm?

I would like to find the algorithm which circumvent some drawbacks of k-Means: Given: x<- c(4,4,5,5,6,7,8,9,9,10,2,3,3,4,5,6,6,7,8,8) y<- c(2,3,3,4,4,5,5,7,6,8,4,5,6,5,7,8,9,9,9,10) ...
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1answer
39 views

Clustering In Python with Documents

I am new to clustering and need some advice on how to approach this problem.. Lets say I have thousands of sentences, but a few from the sample could be Experience In Networking STRONG Sales ...
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1answer
32 views

Practical use cases for machine learning algorithms

I am just starting out studying machine learning and currently doing Andrew Ng's course on Coursera. I am going through the course but am a bit lost. It will make studying all those algorithms/theory ...
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1answer
26 views

How to find the decision boundary for two set of data for knn classifier

I have two sets, N1 = 10; N2 = 15; % Class sizes set1=[0.333; 0.509; 0.607; 1.172; 0.275; 0.762; 0.850; 0.920; 0.556; -0.046]; set2=[ 0.295; -0.203; -0.097; 0.633; 0.147; 0.356; 0.235; -0.054; ...
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1answer
74 views

How to compute distances between centroids and data matrix (for kmeans algorithm)

I am a student of clustering and R. In order to obtain a better grip of both I would like to compute the distance between centroids and my xy-matrix for each iteration till it "converges". How can I ...
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1answer
47 views

How to visualize k-means centroids for each iteration?

I would like to graphically demostrate the behavior of k-means by plotting iterations of the algorithm from a starting value (at (3,5),(6,2),(8,3)) of initial cluster till the cluster centers. Each ...
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2answers
75 views

Optimizing K-means algorithm

Am trying to follow a paper called An Optimized Version of K-Means Algorithm. I have the idea on how K-Means algorithm works. That is, grouping the tuples/points into clusters and updating the ...
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18 views

Set Minimum Observation Per Cluster in R

I am new to R, I would like to ask if there is a way to set the minimum number of observation per cluster in R. I am currently using k-means. Sometimes my cluster, looks like this: Clusers: 1 2 ...
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1answer
25 views

Weighting k Means Clustering by number of observations

I would like to cluster some data using k Means in R that looks as follows. ADP NS CNTR PP2V EML PP1V ADDPS FB PP1D ADR ISV PP2D ADSEM SUMALL CONV 2 0 0 1 0 0 0 0 ...
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1answer
43 views

K-means clustering by using Apache Spark

I would like to do "text clustering" using k-means and Spark on a massive dataset. As you know, before running the k-means, I have to do pre-processing methods such as TFIDF and NLTK on my big ...
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2answers
22 views

get the ith cluster after performing K-means algorithm in python

I have multiple points in a matrix that I tried to classify using K-means algorithm using 'scikit-learn' library in Python. Here is what I've done so far : k_means = KMeans(init='k-means++', k=5, ...
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1answer
23 views

How to choose the initial clusters for K-mean from Tf-IDF vectors

I'm working with text clustering. I want to select specific documents (as a vector) to be a centroID fo k-means. I have created the TF-IDF for my dataset by using Mahout, and I would like to ...
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8 views

Printing ClusterID and its elements using Spark KMeans algo.

I have this program which prints the MSSE of Kmeans algorithm on apache-spark. There are 20 clusters generated. I am trying to print the clusterID and the elements that got assigned to respective ...
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1answer
35 views

Sklearn Pipeline: How to build for kmeans, clustering text?

I have text as shown : list1 = ["My name is xyz", "My name is pqr", "I work in abc"] The above will be training set for clustering text using kmeans. list2 = ["My name is xyz", "I work in abc"] ...
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3answers
69 views

K means clustering of variable with multiple values

I have a sample data below that is from a large data set, where each participant is given multiple condition for scoring. Participant<-c("p1","p1","p2","p2","p3","p3") Condition<-c( ...
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34 views

Kmeans in python

I have the following code provided from an assignment: from sklearn import metrics from sklearn import datasets from sklearn.cluster import KMeans from sklearn.decomposition import PCA iris_data = ...
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23 views

Compute the CH index and chose the number of clusters k that yields the highest CH index?

I have the following code provided from an assignment: from sklearn import metrics from sklearn import datasets from sklearn.cluster import KMeans from sklearn.decomposition import PCA iris_data = ...
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1answer
20 views

What is the effect of changing the maximum value of iterations in k-means clustering?

In Matlab, I'm creating a visual codebook using Bag of Features with the SURF features of 3913 images and k = 450. I train an SVM classifier with the visual codebook, and then use it to classify video ...
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1answer
51 views

automatically determine number of clusters k-means

I want to build a cluster model in rapid miner that can define the number of clusters automatically and then continue to the k-means algorithm. Is there any way for determine k of clustering ...
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2answers
43 views

What's a good metric to analyze the quality of the output of a clustering algorithm?

I've been trying out the kmeans clustering algorithm implementation in scipy. Are there any standard, well-defined metrics that could be used to measure the quality of the clusters generated? ie, I ...
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13 views

On the Equivalence of NMFactorization and K-means

I'm studying the publication "On the Equivalence of Nonnegative Matrix Factorization and K-means - Spectral Clustering". Let H be a non-negative indicator matrix (whose entries are given by Eq. 3), ...
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16 views

Why ELKI can Process My Dataset in clustering.Kmeans, but always kill clustering HICO.

When I was trying to run a dataset via ELKI. The dataset it self have >20000 rows, and >1400 column. I want to use 1-(correlation between each rows) as the distance I was using the clustering ...
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1answer
29 views

Clustering a long list of words

I have the following problem at hand: I have a very long list of words, possibly names, surnames, etc. I need to cluster this word list, such that similar words, for example words with similar edit ...
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2answers
21 views

how to take out the nearest 50 samples to each cluster centers using scikit-learn.k-means library?

I have train k-means algorithm with 5000+ samples using python scikit-learn library. now i want to take the 50 nearest samples to cluster centers as an output.How i perform this task?
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3answers
36 views

What can be the reasons for 90% of samples belong to one cluster when there is 8 clusters?

I use the k-means algorithm to clustering set of documents. (parameters are - number of clusters=8, number of runs for different centroids =10) The number of documents are 5800 Surprisingly the ...
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1answer
49 views

Weka always producing same clusters for different data

I'm trying to use Weka to do K-Means clustering on a set of data, examining how different weights affect different attributes. However, when I adjust the weights of each attribute, I'm not seeing any ...
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20 views

how to cluster set of documents in a ndarray using scikit learn?

I was able to successfully cluster a set of documents. I took all the documents as a list "tokenize" and "tf-idf" them into a ndarray and was able to successfully fit to the model and generate ...
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1answer
118 views

Color quantization of an image using K-means clustering (using RGB features)

Is it possible to clustering for RGB + spatial features of images with matlab? NOTE: I want to use kmeans for clustering. In fact basicly i want to do one thing, i want to get this image from ...
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1answer
12 views

Kernel Function for K-means

I am trying to write Research paper project and need some help regarding understanding of Kernel function for Clustering K- means algorithm . I cant find anything on wikipedia ...
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47 views

kmeans clustering in Apache Mahout using Synthetic data

I installed mahout in my hadoop cluster. I went through this blog. And I am trying to do kmeans clustering Once I did $MAHOUT_HOME/bin/mahout ...
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2answers
29 views

the number of input values varies

Actually what I am doing is that I want to write my own function of k-means clustering. But, for giving the initial inputs, I don't know how to do that in Matlab. What I mean is, one input of the ...
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1answer
46 views

I'm in trouble in K-Means using Mapreduce (modified)

I think my code is not wrong but, it doesn't work correctly. This is K-means clustering using mapreduce. (https://github.com/30stm/K-Means-using-mapreduce/tree/master) Make a dataset using ...
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2answers
46 views

K-Means centroids getting marginalized to having no data points [Matlab]

So I have a sort of strange problem. I have a dataset with 240 points and I'm trying to use k-means to cluster it into 100 clusters. I'm using Matlab but I don't have access to the statistics toolbox, ...
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21 views

JavaCV K Means Runtime Error

I am a beginner of JavaCV. I am trying to process K Means on a image. However, I got a runtime error from following code. I don't know how to solve it and process K Means successfully. Thanks for your ...
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56 views

Variable selection for k-means clustering

I'm wondering if there are any good methods for selecting variables for k-means algorithm. I am trying to do the market segmentation using this algorithm and have a dataset with dozens of potential ...
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1answer
48 views

Using different intensities of a specific color for contour plots

This question is in reference to visualization of EM clustering(or K-means) of 2D gaussian data. Say, I have displayed 3 clusters obtained from EM in a scatter plot with 3 different colors(say r,g,b) ...
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1answer
156 views

Apache Spark MLLib - Running KMeans with IDF-TF vectors - Java heap space

I'm trying to run a KMeans on MLLib from a (large) collection of text documents (TF-IDF vectors). Documents are sent through a Lucene English analyzer, and sparse vectors are created from ...
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8 views

Checking converge condition in KMeans Python

def has_converged(mu, oldmu): return (set([tuple(a) for a in mu]) == set([tuple(a) for a in oldmu]) For the above function to check for the converging condition of KMeans, My question is: Why ...
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54 views

KMeans parallel processing failing

I'm running k-means on a big data set. I set it up like this: from sklearn.cluster import KMeans km = KMeans(n_clusters=500, max_iter = 1, n_init=1, init = 'random', precompute_distances = 0, ...
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1answer
56 views

K-Means on MongoDB

I want to query a collection on MongoDB with K-Means. Description of my collection: Each document is a list of fields, som of strings, some of reals, some of integers, some of categorical/boolean. ...
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69 views

How do I know how long will an algorithm (e.g. k-means) take to run?

For example, I'm running the k-means algorithm on 1 million data points. Each point is 128-dimensional, and I want 1000 clusters. Wikipedia tells me that its complexity is n^(dk+1)log(n), where d is ...
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21 views

Kmeans error in estimating cell counts using Minfi

I am running a syntax using the estimateCellCounts argument in the Minfi package in R. This method estimates the different blood cell counts using DNA methylation data (480.000 CpG sites). After ...
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40 views

Clustering text data with Sklearn

I think my question is related to this one, but I couldn't understand it. My dataset is just 10 first files from 3 subdir of fro20 NewsGroups. Actually, I have two questions in this piece of code: ...
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1answer
41 views

Reading txt files with various dimensions as input for k-means algorithm program

I'm trying to develop a C++ k-means program that will be reading text files. The problem is that the text files are not uniform. For example, data1.txt looks like 0.1 3.0 0.7 0.5 0.2 1.5 ...
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1answer
21 views

Choosing Features and restoring Features using K Mean in Scikit

I want to do some K Mean Clustering in Scikit. I have 9 features, but I only want to select four of them in clustering, also since each of four clustering is measured in different metrics, I want to ...
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1answer
91 views

Multi-Data of K-means and SVM

I generate the multi data from mvnrnd. I could like use the K-means to clustering those data with 2 groups.And also want to know the accuracy of K-means,but i didn't know how to calculate that.How did ...