Cluster analysis is the process of grouping "similar" objects into groups known as "clusters", along with the analysis of these results.

learn more… | top users | synonyms (2)

0
votes
1answer
218 views

How to use subclust in matlab

I have a question: how to use subclust() function in matlab with an image loaded with imread() function? I have a code rgb = imread('6_rubets.jpg'); gr = rgb2gray(rgb); [c, s] = subclust(gr, 0.3); ...
0
votes
0answers
39 views

Numbers on clusters aren't displayed

I am developing an app using OpenLayers. In the loading process I am running the app and everything is going fine. However, the labels on the clusters that show the number of crimes on each cluster ...
0
votes
1answer
31 views

Generate multivariate gaussian and plot them

I am using the multivariate function from numpy.random to generate few clusters. All these clusters, which have the same sigma value, would be plotted in the same graph that has a center point (x,y). ...
0
votes
1answer
364 views

Clustering algorithm for detecting colored objects

Is it possible to use any clustering algorithm, to divide objects into 2 clusters based on their colours using opencv, to be able to count number of 2 different colored(colors are not exactly same for ...
2
votes
2answers
182 views

Speed up creating a graph from 2.92M data points

I have 2.92M data points in a 3.0GB CSV file and I need to loop through it twice to create a graph which I want to load into NetworkX. At the current rate it will take me days to generate this graph. ...
-3
votes
1answer
47 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 ...
0
votes
1answer
31 views

How to cluster documents based on overlapping identifiers?

I have 3.5M documents and each document has k unique identifiers. I need to cluster documents based on their similarity. Two documents are similar if they have m overlapping identifiers. m < k If ...
0
votes
1answer
311 views

Error in PAM function using R: NA values in the dissimilarity matrix not allowed

I created a dissimilarity matrix using daisy then tried clustering using the PAM function, but got an error. The clustering method is used for a marketing segmentation study on consumer demographics. ...
-1
votes
1answer
224 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 ...
0
votes
1answer
273 views

How to find clusters of values in numpy array

I have an array (M x N) of air pressure data (gridded model data). There's also two arrays (also M x N) for latitudes and longitudes. To build a GeoJSON of isobars (surfaces of equal pressure) I need ...
0
votes
1answer
24 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 ...
0
votes
1answer
388 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 ...
5
votes
4answers
826 views

How to find cluster sizes in 2D numpy array?

My problem is the following, I have a 2D numpy array filled with 0 an 1, with an absorbing boundary condition (all the outer elements are 0) , for example: [[0 0 0 0 0 0 0 0 0 0] [0 0 1 0 0 0 0 0 ...
0
votes
1answer
2k views

K means clustering for multidimensional data

if the data set has 440 objects and 8 attributes (dataset been taken from UCI machine learning repository). Then how do we calculate centroids for such datasets. (wholesale customers data) ...
0
votes
1answer
170 views

grouping using dendrogram matlab

I have a matrix A composed by 4 vectors (columns) of 12 elements each A = [ 0 0 0 0; 0.0100 0.0100 0.0100 0; 0.3000 0.2700 0.2400 0.2400; ...
1
vote
1answer
145 views

How can GridSearchCV be used for clustering (MeanShift or DBSCAN)?

I'm trying to cluster some text documents using scikit-learn. I'm trying out both DBSCAN and MeanShift and want to determine which hyperparameters (e.g. bandwidth for MeanShift and eps for DBSCAN) ...
-1
votes
1answer
160 views

Error calculating distances with CLARA function in R

I am creating a market segmentation of consumers by clustering in 3 categories. I am using the cluster CRAN package with the CLARA clustering algorithm. The data has 12901 observations with 34 ...
0
votes
0answers
50 views

In R, Why my hierarchy clustering plot looks so strange?

Here is my data: Friendly<-c(0.533,0.854,0.9585,0.925,0.9125,0.9815,0.9645,0.981,0.9935,0.9585,0.996,0.956,0.9415) ...
0
votes
1answer
179 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 ...
0
votes
1answer
71 views

Mahout clustered points

When I run kmeans clustering in Mahoot I get two folders, clusters-x and clusteredPoints. I have read cluster centers using cluster dumper, but I somehow can't get to clusteredPoints? Concretely, I ...
0
votes
0answers
163 views

R codes for variation of information criterion using “mclust”

I am developing model-based clustering. First, I developed model-based clustering in R using "mclust." Next, I wanted to take 75% of the sample, re-run model-based clustering and compare the results ...
1
vote
2answers
741 views

Clustering documents Lucene

I would like to implement an algorithm for clustering and implement it in Lucene. For that, I need the tf-idf term vector that represents the document, so I could represent the centroids the same way ...
2
votes
2answers
285 views

How to cluster multivariate angular data? Distance measures and algorithms

I'd like to cluster a set of multidimensional vectors (n > 10) in which each attribute is an angle. What distance measures and algorithms can I use? I thought of: - manhattan distance - taking ...
0
votes
1answer
236 views

Phase based event detection from time-series data

I have a large time series data(1D floating point array) which represents various events. Similar events have similar phases. However, I don't know the number of events occurred during that time. Is ...
0
votes
2answers
99 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, ...
2
votes
2answers
473 views

Hadoop Java vs C/C++ on cpu-intensive tasks

I am new to Hadoop. I want to cluster ~150 million items with each of them having ~30 attributes using Hierarchical Clustering. Total number of dimensions/attributes is ~5000. I have designed a ...
1
vote
1answer
2k views

Inter-Cluster and Intra-Cluster distances

I have found the following formulas for Inter-Cluster and Intra-Cluster distances and I am not sure I understand how they work. Inter-Cluster Distance Shouldn't there be a square root in ...
0
votes
0answers
114 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 ...
8
votes
2answers
2k views

Extract labels membership / classification from a cut dendrogram in R (i.e.: a cutree function for dendrogram)

I'm trying to extract a classification from a dendrogram in R that I've cut at a certain height. This is easy to do with cutree on an hclustobject, but I can't figure out how to do it on a dendrogram ...
0
votes
1answer
337 views

Which unsupervised clustering algorithm from the sklearn library can I use with custom distance?

I have a function that takes as input two samples and return their distance and from this function I have defined a metric def TwoPointsDistance(x1, x2): cord1 = f.rf.apply(x1) cord2 = ...
2
votes
1answer
398 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 ...
0
votes
1answer
329 views

Geo location clustering

Problem: Need to identify the home location of the IMEI no (User's home location). I have a set of lat and long,imei and time it was recorded; Note: 1.Recorded IMEI locations are not periodic. ...
1
vote
1answer
431 views

Clustering Latitude Longitude data in MySQL Database

I have a database with Latitude and Longitude values. What I want to do is to cluster these data in order to get less results every time that I search the database. Any ideas how to implement this? ...
2
votes
1answer
78 views

ELKI: Implementing a custom ResultHandler

I need to implement a custom ResultHandler but I am confused about how to actually integrate my custom class into the software package. I have read this: ...
2
votes
1answer
2k 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 ...
0
votes
1answer
164 views

algorithm to compare coordinate paths

I'm working on a project that is working with paths in 2 dimensional space. The paths are lists of coordinate pairs (x,y) that trace out a route a user has taken, for instance the path of a mouse on ...
2
votes
1answer
163 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.). ...
0
votes
1answer
100 views

Assigning pixels to their local maximum matlab

I need to assign pixels to their local maximum in matlab. I can easily find the local maxima in matlab using imregional max or other derivatives such as extrema2. However, I also want to cluster the ...
0
votes
0answers
445 views

Error in clusplot function in R: Missing values were displaced by median of corresponding variables

My purpose involves creating a plot showing the results of the CLARA clustering algorithm in R using clusplot. I cannot get the clusplot function to plot anything. Problem: Error on the clusplot ...
-1
votes
1answer
221 views

Python hierarchical clustering visualization dump [scipy]

Recently I was visualizing my datasets using python modules scikit and scipy hierarchical clustering and dendrogram. Dendrogram method drawing me a graph and now I need to export this tree as a graph ...
1
vote
1answer
133 views

Evaluation of Clustering in Scikit-learn According to Pairs

I use scikit-learn to cluster my data, and wish to evaluate the results. I wonder if there is a built-in function that calculates TP, TN, FP, FN according to pairs of documents, as explained in ...
5
votes
3answers
628 views

Clustering of news articles

My scenario is pretty straightforwrd: I have a bunch of news articles (~1k at the moment) for which I know that some cover the same story/topic. I now would like to group these articles based on ...
6
votes
2answers
2k views

scikit-learn: clustering text documents using DBSCAN

I'm tryin to use scikit-learn to cluster text documents. On the whole, I find my way around, but I have my problems with specific issues. Most of the examples I found illustrate clustering using ...
2
votes
2answers
203 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 ...
6
votes
3answers
2k 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 ...
0
votes
1answer
447 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 ...
1
vote
1answer
103 views

R - Sliding Door Analysis # of events in time period

I am reposting this question as I thought I needed a cluster type analysis but what is required is more of a 'sliding window' analysis. I have a dataset that has 59k entries recorded over 63 years, I ...
0
votes
1answer
197 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 ...
3
votes
2answers
385 views

Unsupervised Random Forest Proximities in Python

I am currently re-visiting a random forests project I performed a few years back using the R-language, to: generate a proximity matrix of the data inputs using unsupervised RandomForest calculate ...
0
votes
1answer
136 views

how do I generate a single partitioned image using MATLABs kmeans function on a jpeg image?

My question is similar this one, except the recommended way to visualise the segmentation didn't work for me. What I want to do is use MATLAB's k-means code to partition a jpeg image and then ...