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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scikit-learn's k-means: what does the predict method really do?

When I use scikit-learn's implementation of k-means I usually just call the fit() method and that is enough to get the cluster centers and the labels. The predict() method is used to calculate the ...
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Only zeros as assignment values in a simpleKMeans clustering

I am writing a code that uses traffic data, stores it in an OD Matrix, and displays it as a heatmap. I am trying to cluster (k-means for now) it but for some reason my instances' assignments are only ...
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How to find the cluster to which a particular data point belongs in R

I'm doing clustering in R using the kmeans() function, and I need to find the cluster corresponding to a particular data point after the clustering is done. There are more than 100000 data points so ...
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Problems in performing K means clustering

I am trying to cluster the following data from a CSV file with K means clustering. Sample1,Sample2,45 Sample1,Sample3,69 Sample1,Sample4,12 Sample2,Sample2,46 Sample2,Sample1,78 It is basically a ...
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Why KMeansModel.predict error has started to appear since Spark 1.0.1.?

I work with Scala (2.10.4 version) and Spark - I have moved to Spark 1.0.1. version and noticed one of my scripts is not working correctly now. It uses k-means method from the MLlib library in the ...
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Choosing the cluster values in k means algorithm

I'm working on writing a k means algorithm that takes in a double[][] that stores locations and returning two clusters of locations. I just have a really quick question: what is the best way to ...
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Mini-batch k-means returns less than k clusters

I've been working with mini-batch k-means using the scikit-learn implementation to cluster datasets of about 45000 observations with about 170 features each. I noticed that the algorithm has trouble ...
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25 views

Predicting algorithm performance, O-notation

I'm applying k-means based clustering on a set of text fields. The calculation completed performancewise as follows: 1.000 records ~ 4m:30s 30.000 records ~ 15m:30s 100.000 records ~ ...
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Principal component analysis (PCA) assumptions

I used PCA to reduce a 180 dimensions feature space in 3 principal components. Afterwards I used k-mean clustering to cluster the data according to the 3 principal components of PCA. I read in ...
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45 views

Benchmarking EM Soft Clustering vs K-Means?

I have two implementations one is K-Means and the other is EM doing soft clustering. But I do not know how to validate them in terms of accuracy. i.e. which one performs better by retrieving better ...
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59 views

modified k-mean algorithm for an image clustering

i m trying to implement the modified k_mean algorithm for an image clustering i.e very much similar to k-mean. Difference is only of new center calculation. Actually i have initialize the cluster ...
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23 views

MATLAB Warning - Davies-Bouldin Failing to Converge

I'm currently trying to run the Davies-Bouldin Evaluation on a dataset using the inbuilt function on the R2014a version of MATLAB. When running the function on larger sample of the data, I keep ...
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Mahout kmeans IPC server trouble in hadoop

Good day. I have trouble with running mahout procedure kmeans in cluster-mode. I use CDH-4.7 [master@Hadoop1 ~]$ mahout kmeans -i hdfs://Hadoop1.red.com:8020/kmeans/in -o ...
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2answers
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K-means metrics

I have read through the scikit learn documentation and Googled to no avail. I have 2000 data sets, clustered as the picture shows. Some of the clusters, as shown, are wrong, here the red cluster. I ...
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38 views

Clustering geo location coordinates (lat,long pairs) using KMeans algorithm with Python

Using the following code to cluster geolocation coordinates results in 3 clusters: import numpy as np import matplotlib.pyplot as plt from scipy.cluster.vq import kmeans2, whiten ...
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8 views

Finding containing polygon for point with voronoi in D3js

I'm trying to efficiently compute k-means using d3.js; I can create voronoi polygons for the current means, but how can I query which voronoi polygon each data point is contained within? I've ...
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23 views

How do I implement a K means clustering in R based on maximizing scatter between class matrix?

I need to do K means clustering with the difference that i need maximize the difference between clusters.I can't find a package to do it.Writing the package myself is difficult. Thank You
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K-means Clustering, major understanding issue

Suppose that we have a 64dim matrix to cluster, let's say that the matrix dataset is dt=64x150. Using from vl_feat's library its kmeans function, I will cluster my dataset to 20 centrers: [centers, ...
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51 views

Efficient dynamic clustering

I have a set of datapoints from the unit interval (i.e. 1-dimensional dataset with numerical values). I receive some additional datapoints online, and moreover the value of some datapoints might ...
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82 views

Kmeans with Spark

The following is a part of Kmeans algorithm which is written with Apache Spark: closest = data.map( lambda p: (closestPoint(p, kPoints), (p, 1))) pointStats = ...
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19 views

Partitioning in Kmeans algorithm

Can anyone explain to me how partitioning and shuffling are working in Kmeans algorithm? Assuming we have two clusters (0,1) with 1000 points and our Hadoop cluster has two slave nodes and one ...
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32 views

I am designing a grid-based outlier detection method in matlab.Is there a method to find number of points and store the grid points in each grid?

I am designing a grid-based outlier detection method using distance based approach and k means clustering in matlab.I have used "kmeans" function for clustering and "grid on" to show the grids. I want ...
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Variable Scoping in Python

Currently, I'm writing a simple Python program for doing the k-medians clustering, however I encountered a problem which I thought related to the variable scoping. Here is my clustering method class ...
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Clustering a scatterplot in R

I am working with binomial data (belongs to two classes). Here's what the data looks like: df <-data.frame(matrix(runif(10*100), ncol=10)) group <- c(rep("A",50),rep("B",50)) df <- ...
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mini batch kmeans in c++

How can I use mini batch kmeans with OpenCV, or in general C++. I have found a library sofia-ml which it is rather complicated, and I would prefer not to have yet another third-party library, if ...
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49 views

Probability membership values for Fuzzy K-Means with mahout and cluster visualization

I am trying to use Fuzzy K-Means with mahout and visualize the results. First I create canopy clusters and then create Fuzzy k-Means clusters as suggested in ...
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Maximizing clusters for aggregated data with attributes

I have some measures and some attributes from a business database I want to see if the data has some well defined clusters but the challenge is that the data is stored in an aggregated fashion in a ...
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scikit-learn svm module and predict function not working

I am trying to get an SVM to work using scikit-learn but cannot get the results I am expecting. I would like to use k-means to classify roughly 2-5 data clusters and then use an SVM to build a model ...
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K means In MATLAB

i want to segment image with clustering methods like this first step is convert the image to LAB color space.. second step is using k means with 3 clusters.. my question is : i want to determine the ...
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198 views

issues with bag of words model and kmeans and libsvm in opencv

I have a machine learning code for Bag of Visual Words in Python which works well and produces good and meaningful results. I need to move the code to C++. I wrote the code for C++ but I am not ...
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1answer
29 views

I don't understand the k-means scipy algorithm

I'm trying to use the scipy kmeans algorithm. So I have this really simple example: from numpy import array from scipy.cluster.vq import vq, kmeans, whiten features = ...
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23 views

kmeans clustering of images using PCA

Iam having 100 images in my database.Iam using those 100 images as both training set and also test images.I have to make 5 clusters.Iam using eigen faces(PCA) for feature extraction.What data should ...
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What data of images are given to kmeans clustering in matlab?

Iam having 100 images in my database.Iam using those 100 images as both training set and also test images.I have to make 5 clusters.Iam using eigen faces(PCA) for feature extraction.What data should ...
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38 views

Implement k-means clustering, accelerated using the triangle inequality, in Python (Scikit learn)

I am attempting to run k-means clustering on a large dataset (9106 items, 100 dimensions). This makes it very slow so I have been recommended to use the triangle inequality as described by Charles ...
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algorithm to create bounding rectangles for 2D points

The input is a series of point coordinates (x0,y0),(x1,y1) .... (xn,yn) (n is not very large, say ~ 1000). We need to create some rectangles as bounding box of these points. There's no need to find ...
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28 views

ELKI showing negative values in Pair Counting Measures

When i run some cepstral coefficient data generated from .wav files in ELKI wit Kmeans Algorithm k =32 and max iter=100 it gives negative values for the following Pair Counting Measures. ...
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20 views

Apache Mahout reports FileAlreadyExists Exception for MapReduce job

I've been trying to run Mahout Canopy and KMeans Clustering Algorithms: try { FileSystem fs = FileSystem.get(conf2); //delete the parent directory if it exists ...
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47 views

On how to apply k means clustering and outlining the clusters

I am reading about applications of clustering in human motion analysis. I started out with random numbers and applied k-means clustering algorithm but I wanted to have some graphs that circle the ...
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1answer
45 views

Mahout K Means clustering input file format

I am trying to use Mahout to run a K Means cluster algorithm. I don't know how to format the input file. The base data that I have in a table is a user id, followed by several hundred values. I know I ...
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pyflann returns negative indices for nearest neighbours on ubuntu when passed 'kmeans' parameter

Goal I'm trying to get: The approximate nearest neighbours library FLANN, and The python binding pyflann working correctly on an AWS ec2 instance, which is running Ubuntu. My aim is to compare ...
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32 views

Get the descriptor histogram from images using BOW in openCV

I have the cluster centers (vectors) which I calculated using Kmeans. And I can calculate the feature vectors of an image and store it in a matrix. My problem is, how to get the histogram of ...
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1answer
42 views

Is it possible to reverse the transformation of KMeans in sklearn?

After clustering a dataset and then transforming the data to the distance from the centroids using sklearn.cluster.KMeans, is it possible to reverse the transformation, given the centroids, getting ...
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58 views

Are k-means vectors in scikit learn normalized internally or TfidfVectorizer normalization not working?

Are the vectors in scikit-learn Kmeans internally normalized to unit L2 norm or is something wrong with TfidfVectorizer? I perform clustering on text data, which I vectorize using TF-IDF vectorizer. ...
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60 views

Bigquery - Text clustering

Does anyone knows who to run text clustering over a google's bigquery table ? I'd tried to use nltk over some small dataset (2k rows, single column) but it seems to take forever (99% CPU on a ...
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Edge Probabilty Using KL-Divergence Code in Python

Its a little complicated question, so please bear with me. I am doing Image Segmentation using Swendsen-Wang method for Image Analysis./ (stat.fsu.edu/~abarbu/papers/jcgs.pdf) I have to calculate ...
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42 views

Assign descriptors to cluster centers after creating clusters using VLFeat

I'm clustering my data using k-means, but I'm not using standard algorithm, I'm using an approximated nearest neighbours (ANN) algorithm to accelerate the sample-to-center comparisons. This can be ...
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21 views

Bag of features - Clustering and memory

I'm currently working on the bag of feature model/algorithm for scenes recognition. My question is about the vocabulary creation step where I need to cluster my descriptors. My problem is that I have ...
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1answer
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ELKI - k-means clustering.

I' like to run ELKI k-means clustering in command line. It seems that running time is too short compared with R programming. I tried to run k-means clustering in R, then It took about 100 seconds. ...
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42 views

how to do k means clustering on sift features in matlab?

I want to perform k-means clustering on sift features which is in the form of a 509X508 matrix.I got a code for k-means clustering from mathworks. But i don't know how to give input for the algorithm. ...
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39 views

Kmeans clustering and mean vector

I'm going to cluster the data into two clusters then calculate the mean vector for both clusters but I cant do it, the reason is that mean does not work with arrays that do not have regular shape, ...