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).

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How to apply K-Means Algorithm for any dataset using c#? [on hold]

I want to apply K-Means algorithm on textual data (data set is in the form of string & not in numbers). Please help me to apply K-Means algorithm to such data set using c#.
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Faceting by geolocation in Elasticsearch (clustering)

I have a project that enables users to search for POIs using Elasticsearch, and they can filter by a number of different attributes, including location. I'd like to add faceting to all of the filters, ...
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Pyspark pipeline . data preparation for kmeans clustering

I'm trying to dummycode my data using OneHotEncoder and then create a pipe line before applying kmeans. Here are my questions: 1. Should kmeans also be included in the pipeline? or a model created ...
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Percentage of proximity to cluster in kmeans

I am trying to clustering in python. This is my script as follows: import scipy import numpy as np from scipy.cluster.vq import kmeans2 from collections import Counter def dist(a,b): return ...
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Error using clusterdump in mahout

I am trying to run Kmeans with cosine similarity measure on mahout with hadoop to cluster text documents. I was able to cluster the documents, however, when I tried to view the output of the clusters ...
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21 views

R k-means producing “computationally singular” error

I have a dataset with 29 observations and 15 variables. I am trying to perform k-means cluster analysis and when I try to determine the number of clusters using NbClust package, I get the following ...
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1answer
35 views

image segmentation using kmeans clustering python opencv

I've been trying to achieve similar results to this MATLAB code which gives me the result I am looking for, however, I am trying to achieve that using OpenCV 3 + Python. Here's a similar ...
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2answers
32 views

Finding the indices of all points corresponding to a particular centroid using kmeans clustering

Here is a simple implementation of kmeans clustering (with the points in cluster labelled from 1 to 500): from pylab import plot,show from numpy import vstack,array from numpy.random import rand from ...
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27 views

Why looping in Roulette Wheel Selection is stop when First Cumulative value >= Random Value

In this article Test Run K-Means++ he use C# code and Roulette Wheel Selection to get next Centroid there is a code that implement Roulette Wheel Selection while (sanity < data.Length * 2) { ...
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why use Cumulative And use Random select for choosing new centroid in K-Means++?

I have learned K-Means++ from K-Means++ The Advantages of Careful Seeding on this articel says "Take new center Ci, Choosing x with probability D(x)^2/Sigma D(x)^2" But in here ...
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Comparing k-means clustering

I have 150 images, 15 each of 10 different people. So basically I know which image should belong together, if clustered. These images are of 73 dimensions (feature-vector) and I clustered them into ...
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1answer
22 views

How to retrieve the cluster centroids in sic-kit learn's K-means?

I'm using this simple script to cluster data using sci-kit learn from sklearn.cluster import KMeans import pandas as pd import matplotlib.pyplot as plt X = pd.read_csv('TestData.csv') est = ...
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Color based image segmentation

My goal is to obtain a segmentation of an image based on colors and then to perform some basic filtering on the pixels of each region. For example, given an image acquired from a camera in sub-optimal ...
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how to get the cluster centers and counts the point of each cluster with sklearn.cluster.KMeans

I want to learn coordiante each cluster centers and counts the points of each clusters. But I could not find. Please help me? here is my code: import numpy as np import sys import math from ...
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1answer
21 views

How to display the row name in K means cluster plot in R?

I am trying to plot the K-means cluster. The below is the code i use. library(cluster) library(fpc) data(iris) dat <- iris[, -5] # without known classification # Kmeans clustre analysis clus ...
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24 views

igraph community detection result has too much overlap

I have a series of points (long, lat) 1) Found the haversine distance between all the points 2) Saved this to a csv file (source, destination, weight) 3) Read the csv file and generated weighted a ...
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43 views

Understanding D(x) in K-Means++

i have problem for understanding D(x) for choose the next center in K-Means++ and i have read K-Means++ The Advantage of Careful Seeding but i need example to understanding D(x) in K-Means++
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26 views

How to use Scikit kmeans when I have a dataframe

I have converted my dataset to dataframe. I was wondering how to use it in scikit kmeans or if any other kmeans package available. import csv import codecs import pandas as pd import sklearn from ...
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Matlab:why does my figure doesn't show

I have data points 1000 and for the first 1000 I'm using mean [-2 1] and std of 0.85 and for the other 1000 I'm using mean [4 5] and std 2 and I'm trying to plot the data I get this error Error using ...
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1answer
45 views

K-means in Matlab

I have a Knowledge Base (KB) represented by a Matrix A=(100x15) and I have to clustering this KB into 5 cluster. I used the code in Matlab: idx=kmeans(A,5) I obtained a result idx with the index ...
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1answer
46 views

At what part does the iris data receive a labeled cluster?

I'm going to be using sklearn to cluster data for a project I have with my company. For the beginning part I have to demonstrate that I am able to cluster data. In R this would be no problem for me, ...
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1answer
30 views

kmeans with sparse vectors in elki

When i try this method with dense vectors data it's run correctly, but with sparse vectors data throws java.lang.ArrayIndexOutOfBoundsException. What datasource can i use to read sparse vectors data ...
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32 views

Clustering with kmeans in R different centers after clustering

I defined centers matrix with samples of my data like above and uses this information in my kmeans function so after running kmeans I expect that after running kmeansRslt$centers. I see my center ...
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2answers
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Quickest way to exclude variables with zero variance in R

I am working with a very huge .csv dataset for an evaluation and yet I have got this error to resolve. Warning in preProcess.default(data, method = c("center", "scale")) : These variables have zero ...
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35 views

How to Plot the Results of Text K-Means Clustering?

I am using the example code provided here to implement k-means clustering. I wish to plot the result on a graph to understand the output better. How do I go about it? I find it a little difficult to ...
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clustering text test cases for prioritization

I am trying to cluster manually documented test cases so that they can be prioritized and repetitive test cases can be eliminated. Test cases which are similar can be grouped together and then running ...
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26 views

how to match the number of elements of matrix used in find function matlab

I have written a function to assign training examples to their closest centroids as part of a K-means clustering algorithm. It seems to me that the dimensions are satisfied and the code runs correctly ...
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50 views

K Means Image segmentation fail

I'm currently making an image segmentation program using the K-means Algorithm. Here is the summary of what i'm doing : Creating N Centroids with a lite spread algorithm (got better result than ...
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1answer
41 views

Clustering of images to evaluate diversity (Weka?)

Within a university course I have some features of images (as text files). I have to rank those images according to their diversity.# The idea I have in mind is to feed a k-means classifier with the ...
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1answer
37 views

scikit kmeans not accurate cost \ inertia

I want to get the k-means cost (inertia in scikit kmeans). Just to remind: The cost is the sum of squared distanctes from each point to the nearest cluster. I get a strange difference between the ...
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1answer
31 views

why can't I set epsilon=1e-4 on Spark KMeans algorithm?

I want to train a K-means model on Spark by setting epsilon=1e-4 instead of setting numIterations. In spark shell, I input: val model = KMeans.train(trainRDD, numClusters=8, runs=30, ...
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1answer
16 views

K-Means Algorithm, Working out Squared Error?

How would you work out the sqared error for this examples of using the k-mean algorithm by hand? I'm trying to work-out how to use squared error for a particular set of data. So I want to know how ...
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42 views

Kmeans clustering on large dataset in Matlab

I have epinions dataset that has 290000 columns and 22166 rows. Its large dataset and 340 MB , when I open this mat file it take about 30 min to load it on Matlab and when I run my clustering code its ...
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Empty clusters in K-means clustering

When applying K-means clustering we are picking k initial clusters and then iterating through all the points and assigning them to some cluster and also updating the centers of the clusters. ...
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20 views

Determine the cluster for a new document with Scikit

I have implemented the k-means algorithm in scikit. Therefore, I have clustered the historical documents. Now, for a new document I want to determine the cluster. How can I determine the cluster for ...
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1answer
21 views

OpenCV kmean: how to choose decent values for COUNT and EPS?

I am trying to use the kmean function in OpenCV to pre-classify 36000 sample images into 100+ classes (to reduce my work to prepare train data for supervised learning). In this function there are two ...
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KMeans|| for sentiment analysis on Spark

I'm trying to write sentiment analysis program based on Spark. To do this I'm using word2vec and KMeans clustering. From word2Vec I've got 20k word/vectors collection in 100 dimension space and now ...
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1answer
54 views

What is training and testing in image processing?

I'm implementing color quantization based on k-means clustering method on some RGB images. Then, I will determine the performance the algorithm. I found some information about training and testing. ...
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28 views

How can I avoid unnecessarily checking the same if-statement in my while loop?

I want to implement k-means clustering in MATLAB and at the moment I have a function that looks like this: function clusters = kmeans(k, data, measure) ... iterate = true; while (iterate) ... ...
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1answer
37 views

How to represent clusters in MATLAB?

Suppose I have the following data sets: A: 1 8 9 12 2 1 0 35 7 0 0 23 B: 6 3 1 9 0 7 What I want to do is for each row in B, find the smallest value and get the column index ...
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Extracting gap statistic info to identify K for Kmeans clustering

I was looking at the 'cluster' library which has the function 'clusGap' to extract the number of clusters for Kmeans clustering. This is the code: # Compute Gap statistic ...
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Knee point estimation via R code for Kmeans clustering

I have the following code using which I am able to plot the WSS curve to spot the knee so that I can choose the value of K for KMeans clustering. # To find WSS findWSS <- function(data) { if ...
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1answer
37 views

Customize Distance Formular of K-means in apache spark python

Now im using K-means for clustering and following this tutorial and API But i want to use custom formular for calculate distances. So how can i pass custom distance functions in k-means with PySpark? ...
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Plotting output of kmeans for geographic data on map in python

I am working with one application where geographic data is involved. I am clustering the lat and long with kmeans clustering algorithm with 3 clusters. here is what I am doing in python. ...
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35 views

Kmeans more centers than distinct data points

I have the following code: # Imports library(cluster) # Read input dataset from CSV file input_dataset <- ...
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45 views

Cluster Center in Spark Streaming k-means Clustering

I am using Streaming k-means to cluster some 2-dimensional stream data using the example in http://spark.apache.org/docs/latest/mllib-clustering.html#streaming-k-means. code: model = ...
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What is the fastest way to calculate position cluster centers constriant by a concave polygon

I have a distribution of weighted 2D pose estimates (position + orientation) that are samples of an unknown PDF of a systems pose. All estimates and the underlying real position are constrained by a ...
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1answer
46 views

K-mean image clustering (Matlab Code) [duplicate]

Hello every one can some help me to segment out image using K-Mean clustering i need a Hello every one can some help me to segment out image using K-Mean clustering i need a Matlab code for this ...
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R kmeans problems [duplicate]

I'm stuck with a R practice about clustering. Here is the code: social_data <- read.csv("social_network.csv") social_data$age <- ifelse(social_data$age >= 13 & social_data$age < ...
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41 views

R within group sum of squares kmeans

I have the following code, which is giving me the an error: # Read input dataset from CSV file input_dataset <- ...