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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k-means clustering in R: improve my code

So I recently had a take home exam, and one problem was asking us to write a function in R to perform k-means clustering (obviously meaning we aren't using R's built-in function). Anyway, I treated ...
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7 views

Can I use Apache Mahout to cluster Accumulo data without using temporary files?

I'd like to use the kmeans clustering in Apache Mahout to cluster data which is stored in Accumulo, but I'm having a difficult time connecting the two without using temporary files. As near as I can ...
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55 views

How to Find Documents That are in the same Cluster with KMeans

I have clustered various articles together with the Scikit-learn framework. Below are the top 15 words in each cluster: Cluster 0: whales islands seaworld hurricane whale odile storm tropical kph mph ...
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27 views

The design of Clustering using MapReduce

I have got a similarity matrix like this: ItemA, ItemB, Similarity. I wanted it to cluster the dataset using algorithm such as Kmeans by using MapReduce. But I don't know how many MapReduces I should ...
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1answer
12 views

Affinity propagation vs basic k-means algorithm

I have a dataset consists of (700 data points x 400 dimensions) which belong to 10 classes. I did cluster this data to see how data points will fit into clusters similar to their class. I performed ...
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40 views

Error in sample.int(m, k) : cannot take a sample larger than the population

First, let me say that I'm fairly new to Machine Learning, kmeans, and r, and this project is a means to learn more about this and also to present this data to our CIO so I can use it in the ...
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1answer
8 views

Using Mahout for clustering one point

I know that Mahout is used for batch processing, but I am interested if I can use its KMeans, and how, for clustering individual points? Let's say that we have following situation Global ...
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1answer
21 views

mlpack : out of memory error

Currently I try to execute k-means clustering from mlpack, a scalable machine learning library. But when I execute bin/kmeans at the command line, I always receive the error. error: ...
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1answer
30 views

Centroids matlab without kmeans

I need a clustering algorithm that return the centroids as kmeans does. I have been trying with kmeans but I know that depending on the shape of the cluster sometimes its not good. I know matlab ...
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1answer
34 views

k-means weka java code

I read a lot of examples of use this library in Java and clustering is possible from ARFF data file and it works. But I have my own data in List of double which is generating while working my ...
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20 views

Q job not successful when I run mahout spectralkmeans with hadoop~

I used spectralkmeans for cluster ,here is the data: 0,1,0.1 0,2,0.1 1,2,0.1 1,4,0.9 1,6,0.9 3,4,0.1 3,5,0.1 4,5,0.1 4,6,0.9 6,7,0.1 6,8,0.1 7,8,0.1 while hadoop returns the error message(without ...
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33 views

array_values_database and k means

I used K-means algorithm. The function get 2 parameters: an array that consists of product average cost per user and an integer that represents the number of clusters ( kmeans($pin, 2) ). I want to ...
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Why Matlab K-means does not find the best centroids while Excel Solver does?

I have a data set as follows: Data = [4 12; 5 10; 8 7; 5 3; 5 4; 2 11; 5 4; 3 8; 6 2; 7 4; 10 8; 8 9; 10 9; 10 12] Then I proceed with: [idx,ctrs, sumD] = kmeans(Data,3) It gives me the centroids ...
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13 views

Mahout Streaming K means

Are there any examples or articles for using Mahout streaming K-means? I tried using StreamingKMeansDriver.run(conf, input, output); But no luck, it throws an exception java.lang.Exception: ...
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1answer
26 views

Unable to use precomputed distances with Elki

I am trying to use precomputed distances with Elki, but for some reason cannot get it working. I have read the instructions here: http://elki.dbs.ifi.lmu.de/wiki/HowTo/PrecomputedDistances and this ...
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9 views

Kmeans clustering from scatterplot (MATLAB)

I would like to clusterize a set of rectangles say (1 to 10).. Now, I have an array 'a' which contains the values of longer side of rectangles and an array 'b' which contains the values of shorter ...
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44 views

k-means clustering with fruit fly optimization algorithm in MATLAB

I need help implementing k-means clustering with the fruit fly optimization algorithm in MATLAB. I have k-means code and fruit fly optimization code in MATLAB, but I cannot merge them for this ...
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1answer
30 views

Cannot get clustering output Mahout

I am running kmeans in Mahout and as an output I get folders clusters-x, clusters-x-final and clusteredPoints. If I understood well, clusters-x are centroid locations in each of iterations, ...
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19 views

Streaming Kmeans Mahout

Can anyone explain to me,coceptually, how streaming kmeans algorithm works,and when would you recommend using it? I am not able to find much about it, and I would like to use Mahout implementation of ...
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12 views

How to convert file having document in each line to sequence files for mahout

I have a file which contains set of keywords equivalent to a document in each row .I am unable to use seqdirectory for creating sequence files as it expects each document a different file. Is there ...
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12 views

How to draw use case diagram for k means clustering..?

I need to submit SRS on k means clustering for project. Please help me to draw use case diagram for the same.
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29 views

some questions on cosine similarity

Yesterday I learnt that the cosine similarity, defined as can effectively measure how similar two vectors are. I find that the definition here uses the L2-norm to normalize the dot product of A ...
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82 views

c++ Finding closest four of a set of points [closed]

I have a set of points, each with an x and y coordinates. I would like to find the 4 of these points that are closest to together (if plotted all the points would be at different locations, but 4 of ...
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How do I create clusters with a completely categorical data? [migrated]

I am working on the project that requires data mining. I have been asked to use R. I have a dataset with all categorical variables and would like to form clusters on that. I am unable to figure out ...
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1answer
47 views

Trouble with scipy kmeans and kmeans2 clustering in Python

I have a question about scipy's kmeans and kmeans2. I have a set of 1700 lat-long data points. I want to spatially cluster them into 100 clusters. However, I get drastically different results when ...
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1answer
29 views

Clustering unstructured text based on similarity and calculating optimum number of clusters

I am a data mining beginner and am trying to first formulate an approach to a clustering problem I am solving. Suppose we have x writers, each with a particular style (use of unique words etc.). ...
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25 views

Minibatch K Means for large value of K?

I have decided I should use minibatch kmeans instead of the regular kmeans algorithm, since I am doing computer vision and am trying to make a codebook of 10,000 words. Form every article I've read ...
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2answers
40 views

Cylindrical Clustering in R - clustering timestamp with other data

I'm learning R and I have to cluster numeric data with a timestamp field. One of the parameters is a time, and since the data is strictly day-night dependent, I want to take into account the ...
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1answer
40 views

How does PCA gives centers for the Kmeans algorithm in scikit learn

I'm looking at this example code given on Scikit Kmeans digit example There is the following code in this script : # in this case the seeding of the centers is deterministic, hence we run the # ...
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1answer
22 views

How to do decimal encoding of DNA sequences (dataset)?

I need to perform K-means clustering and Hierarchical clustering of DNA sequences(nucleotide) sequences which i have downloaded in FASTA format. So before performing clustering I need to do DECIMAL ...
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1answer
116 views

Apache Spark - MLlib - K-Means Input format

I want to perform a K-Means task and fail training the model and get kicked out of Sparks scala shell before I get my result metrics. I am not sure if the input format is the problem or something ...
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3answers
83 views

Cosine distance as vector distance function for k-means

I have a graph of N vertices where each vertex represents a place. Also I have vectors, one per user, each one of N coefficients where the coefficient's value is the duration in seconds spent at the ...
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23 views

Associating original data with Kmeans clusters

I am using scikit-learn. Suppose we have data as follows: a = [1, 2, 3, 4, 5, 4, 3, 2, 1] b = [2, 1, 3, 4, 6, 7, 7, 4, 2] c = [2, 3, 4, 3, 5, 6, 6, 6, 4] and we run the following: temp.append(a) ...
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48 views

R skmeans package - where does this error come from: “missing value where TRUE/FALSE needed”

I tried to cluster my data in accordance with the manual provided by the skmeans packages's manual page I started by installing all required packages. I then imported my data table, and made a matrix ...
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1answer
29 views

Selecting an appropriate similarity metric of a k-means clustering model

I 'm using k-means algorithm for clustering my data. I have 5 thousand samples. .(Each of my sample is about a customer. to analyse customer value I 'm going to clustering them base on 4 behavior ...
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2answers
58 views

Using OpenCV cv::kmeans() with one-dimensional input

Although the python tutorial uses one-dimensional data, I cannot do the same with the C++ interface: int size=100; std::vector<float> data(size); for (size_t i = 0; i < size ; i++) { ...
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1answer
29 views

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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1answer
41 views

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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56 views

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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1answer
37 views

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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1answer
39 views

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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2answers
37 views

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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1answer
30 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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34 views

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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1answer
57 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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1answer
82 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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1answer
36 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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26 views

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
59 views

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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1answer
100 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 ...