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

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158 views

overplot multiple sets of data with hexbin

I am doing some KMeans clustering on a large and really dense data set and I am trying to figure out the best way to visualize the clusters. In 2D, it looks like hexbin would do a good job but I am ...
7
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122 views

clusplot - showing variables

I would like to add to a clusplot plot the variables used for pca as arrows. I am not sure that a way has been implemented (I can't find anything in the documentation). I have produced a clusplot ...
5
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559 views

Plot dendrogram using sklearn.AgglomerativeClustering

I'm trying to build a dendrogram using the "children_" attribute provided by AgglomerativeClustering, but so far I'm out of luck. I can't use scipy.cluster since agglomerative clustering provided in ...
5
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0answers
204 views

Clustering algorithm in R for missing categorical and numerical values

I want to perform marketing segmentation clustering on a dataset with missing categorical and numerical values in R. I cannot perform k-means clustering because of the missing values. R version ...
5
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764 views

Interfacing C code with .C Crashes R

I need to get min-cut partitions of a given graph iteratively until a subgraph has number of odes below some given threshold min_node. This will be used as a preprocessing step for the CHAMELEON ...
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270 views

DIvisive ANAlysis (DIANA) Hierarchical Clustering

(This post is continuation of my previous question on divisive hierarchical clustering algorithm.) The problem is how to implement this algorithm in Python (or any other language). Algorithm ...
3
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856 views

NbClust - Error: cannot allocate vector of size x

I am running k-means clustering in R and would like to use NbClust to help identify the optimal number of clusters. My dataset, df, has 636,688 rows and 7 columns. When I run NbClust(df, min.nc = 2, ...
3
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330 views

Clustering with CLARA in R: Mysterious dataset causes problems. Why?

I have discovered a dataset that causes R's CLARA algorithm to fail (i.e. enter an apparently infinite loop). Why does it fail? What I find strange is that the dataset is extremely boring (basically ...
3
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717 views

Estimation of number of Clusters via gap statistics and prediction strength

I am trying to translate the R implementations of gap statistics and prediction strength http://edchedch.wordpress.com/2011/03/19/counting-clusters/ into python scripts for the estimation of number of ...
3
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851 views

MeanShift in Matlab with custom kernel

Is there an implementation of MeanShift, written in Matlab, which allows to use a custom Kernel?
3
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328 views

find the nearest 'n' neighbour in clustering algorithm of mahout

When I am running the apache mahout clustering examples of DisplayDirichlet.java, DisplayClustering.java or etc. the output is in graphical format. How do I find the nearest neighbor containing 'n' ...
3
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838 views

Algorithms and techniques for “unclustering” map features with OpenLayers

I'm working with OpenLayers (though the advice I need is more general) to create an "unclustering" behavior. Instead of collapsing multiple features that are close to each other at a given zoom ...
2
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43 views

Clustering multivalue nominal attributes with different measures

I have to apply a clustering algorithm to my dataset which is composed by elements composed by attributes of different nature: A1 -> multivalued, nominal values A2 -> multivalued, nominal ...
2
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83 views

Segmentation vs Clustering

I've been working on a project which I get some information from an image and then I need to separate bunch of lines in that image. so what I get in each bunch almost looks like this: Slide 5 in this ...
2
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276 views

Using BIC,AIC for estimating number of clusters in document clustering using Kmeans

In my approach I am trying to find the optimal value of 'k' for clustering a set of documents using KMEANS algorithm. I wanted to use 'AIC' and 'BIC' information criterion function for finding the ...
2
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51 views

How can I use Prediction over clusters [R]

I have a telemetry data which consist of its position and the activity of a bird. The dataset is in the csv format which I am uploading: Lat. Long. Act Date Time 12 17 Eat 5-1-08 13:10 ...
2
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137 views

K-means clustering of spatially constrained data - skater in spdep package

I want to cluster the codebook from a self-organizing map using k-means clustering. However, given the 'spatial' nature of the data, I want to constrain the clustering so that only contiguous nodes ...
2
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0answers
143 views

How to extract points from clusplot graph?

I’m trying to extract the points (IDs) that occur in both ellipses from the graph produced by the function clusplot below. library(cluster) # Creates a sample data set. y <- ...
2
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259 views

Constrained k-medoids clustering in R

I am looking for a way to implement semi-supervised clustering, possibly constrained clustering in R, particularly the "cannot-link" part (I think - but see below). I found this question, but I don't ...
2
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127 views

Heatmap vs image function in R

I just noticed that the plots from using heatmap() function and image() function look different even though I'm using the same data matrix. I have the following code: set.seed(12345) dataMatrix <- ...
2
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91 views

python hierarchical clustering - flipping nodes while maintaining valid linkages

I am trying to cluster an nxm dataset using hierarchical clustering and display the dendrogram and heatmap. Based on examples online, the following code generates my linkage map (Y1) given the ...
2
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0answers
455 views

Data structures to Implement Hierarchical clustering

If I were to implement a Hierarchical clustering algorithm, say in C/C++ or Java - given the functions for computing distance between& within clusters - 1. what would be my choice(along with ...
2
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469 views

R: Self-Organizing Maps: Gaussian Neighborhood Function and Non Linear Learning Rate

I've been working on SOMs and how to get the best clustering results. One approach could be to try many runs and choose the clustering with the lowest within sum of squared errors. However, I do not ...
2
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741 views

Vector Quantization Algorithms used to provide observation sequences for Hidden Markov Models

I am currently building a gesture recognition application. I am extracting certain features from the hand (such as [angle of motion, width: length ratio,...]). This is my feature vector. But ...
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39 views

Finding Co-varying Regions in a 3D Matrix

I wonder if anyone has a suggestion on how to solve the following problem. I have a matrix of size n*p*t. I would like to find areas in the plane n*p, that co-vary (in the t dimension). In other ...
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355 views

Extracting bin properties of a self organizing map in R

I am trying to cluster large amount of data with SOM in R programming. The sample code is here : > library("kohonen") > data("wines") > wines.sc <- scale(wines) > set.seed(7) > ...
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81 views

Distance Based Metric For Locally Scaled Difference of Distance Between Moving Points

I am trying to form a metric to model the following scenario. Given various combinations of triples of points (calls those triples abc) in euclidean space, where all points are moving independently ...
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875 views

Denclue 2.0 in R

Has anyone successfully implemented the Denclue 2.0 algorithm in R? (or Matlab) I'm getting stuck converting the hill climbing to an EM version as outlined in the paper here I've been able to ...
2
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0answers
154 views

Hiding Info Boxes that are in MarkerClusters in Google Map API

Hi I have multiple markers with InfoBoxes attached to them that are open. I am trying to integrate MarkerClusters so that I can cluster areas with large groups of people. I can do this and it hides ...
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30 views

How to efficiently cluster binary values?

I have a large matrix. It consists of about 10.000 rows (each row one document) and 10.000 columns (each column one word). The binary value indicates if a word exists (1) in the particular document or ...
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16 views

MOA's StreamKM clustering doesn't return any result

I'm currently trying to cluster a great amount of data points into a given amount of clusters and I wanted to try MOA's streaming based k-means StreamKM. A very simple example of what I'm trying to do ...
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58 views

Grid search for hyperparameter evaluation of clustering in scikit-learn

I'm clustering a sample of about 100 records (unlabelled) and trying to use grid_search to evaluate the clustering algorithm with various hyperparameters. I'm scoring using silhouette_score which ...
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26 views

Python 2.7: Creating clustering graph

I created clustering via Affinity Propagation. The matrix of features is called here 'domains_matrix' (yep, I cluster websites). from sklearn.cluster import AffinityPropagation af = ...
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55 views

Is K-Medoids really better at dealing with outliers than K-Means? (with example showing the contrary)

K-Medoids and K-Means are two popular methods of partitional clustering. My research suggests that K-Medoids is better at clustering data when there are outliers (source). This is because it chooses ...
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142 views

How to extract clusters using OPTICS ( R package - dbscan , or alternatives )

This might be a mix of a R question and an algorithm question. The question is about both OPTICS in general and the R implementation of optics in the package "dbscan" ( ...
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88 views

Implementing a fast DBSCAN in C#

I tried to implement a DBSCAN in C# using kd-trees. I followed the implementation from: http://www.yzuzun.com/2015/07/dbscan-clustering-algorithm-and-c-implementation/ public class DBSCANAlgorithm { ...
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90 views

Select particular objects/rows from heatmap in R

I have mixed data type that contain numeric and categorical attributes to which I am planning to apply cluster algorithms. As a first step, I produced a distance matrix using the daisy() function and ...
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71 views

Mclust Output Interpretation

When I performed the mclustModel the output that was give to me was different from usual output. Usually the output is like this: $z[,1] [,2] [,3] [,4] [,5] 1 1 0 0 0 0 2 0 1 0 0 0 3 ...
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0answers
57 views

Estimating functions run time

I have a large list of 15000 elements each containing 10 numbers (data) I am doing a time series cluster analysis using distmatrix <- dist(data, method = "DTW") This has now been running for 24 ...
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30 views

Latent class clustering

I have data that contains continuous and categorical variables and I have to cluster that data using latent class analaysis - LCA. I know that LCA sometimes mean that manifest variables are ...
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46 views

Divisive clustering from scratch

I'm programming divisive (top-down) clustering from scratch. In divisive clustering we start at the top with all examples (variables) in one cluster. The cluster is than split recursively until each ...
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28 views

How to use centroids of clustering as centroids for next clustering in R

I do have the following problem: I want to do cluster analysis with k-means of two data sets. At first I want to cluster dataset 1 (a) and afterwards I want to cluster dataset 2 (b) starting from the ...
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0answers
35 views

Looking for handy way of simulating data for cluster analysis based on predefined noise parameters

I'm looking for a handy way in Matlab to simulate a dataset in an N-dimensional space to test a set of cluster validation criteria I have worked on and see if they are any good. The data I usually ...
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44 views

Clustering with maximal items per cluster?

I have N points in a 3D space. I want to find X*Y clusters where N + Y <= X * Y Maximal Y points per cluster Example: given 20 points and Y = 5, I need: 4-5 clusters each of the clusters not ...
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71 views

Clustering with weka

I have saved a google query (title and description) of 100 results. It has this format: Title Description Spain - Wikipedia Spain is a democracy organised in the form of a ...
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0answers
144 views

MinHashing vs SimHashing

Suppose I have five sets I'd like to cluster. I understand that the SimHashing technique described here: https://moultano.wordpress.com/2010/01/21/simple-simhashing-3kbzhsxyg4467-6/ could yield ...
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0answers
28 views

How do I separate a set of heterogeneous data set using genetic algorithm

I have a data set containing 3 sets of angles and I want to separate them into clusters using genetic algorithm and subsequently go for an inversion. Right now I am able to do inversion for a ...
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231 views

sklearn.mixture.DPGMM: only one cluster?

I have a dataset for which I keep getting odd results with the Dirichlet process Gaussian mixture model in sklearn. import sklearn.mixture, pandas import numpy as np from matplotlib import pyplot as ...
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72 views

Get specific elements from clustered data in R

I generate this image using the hclust function. Now I wand to ID of those elements highlighted by squares. Is there any way to get the ID and related value from the clusted datasets? Thanks EDIT ...
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49 views

locality sensitive hashing for infinite feature space

I'm trying to wrap my head around locality-senstive hashing in the case when you can not enumerate all possible features (e.g. Facebook likes when comparing users). Are there solutions adressing this ...