Hierarchical clustering is a clustering technique that generates clusters at multiple hierarchical levels, thereby generating a tree of clusters. Hierarchical clustering provides advantages to analysts with its visualization potential.

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Duelling dendrograms in r (Placing dendrograms back to back in r)

Is there any fairly straight forward way of placing two dendrogram 'back to back' in r? The two dendrograms contain the same objects but are clustered in slightly different ways. I need to emphasise ...
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1answer
244 views

CSV of Distances to Triangular Distance Matrix in Python

I have a large csv of similarities between keywords that I would like to convert it to a triangular distance matrix (because it is very large and sparse would be even better) to perform hierarchical ...
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1answer
657 views

Hierarchical Clustering Large Sparse Distance Matrix R

I am attempting to perform fastclust on a very large set of distances, but running into a problem. I have a very large csv file (about 91 million rows so a for loop takes too long in R) of ...
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2answers
197 views

Determining groups in a hierarchical cluster

I have an algorithm that can group data into a hierarchical cluster tree. The algorithm is the one described in Toby Seagram's Programming Collective Intelligence. The tree output is a binary tree ...
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0answers
129 views

Clustering text documents on the GPU using CUDA

I have a list of text documents, say around 100 text documents. Now, I want to cluster these documents such that documents specific to a particular topic are clustered together. I was wondering are ...
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1answer
227 views

IllegalArgumentException when using weka.clusterers.HierarchicalClusterer

I searched a lot, but I was not able to find any example code, which describes how to use the WEKA HierarchicalClusterer. Using the following C#-code gives me an IllegalArgumentException at ...
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1answer
256 views

How does the link type “adjusted complete” work for agglomerative hierachical clustering in WEKA?

The only descriptions I can find about "adjusted complete" linkage say something like: "same as complete linkage, but with largest within cluster distance" What is meant by "within cluster distance"? ...
3
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1answer
4k views

Generating a heatmap that depicts the clusters in a dataset using hierarchical clustering in R

I am trying to take my dataset which is made up of protein dna interaction, cluster the data and generate a heatmap that displays the resulting data such that the data looks clustered with the ...
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400 views

Deconflicting markers in map overlays

I need to solve the problem of marking thousands of items on a map in a way that's accurate and readable and fast even when the user zooms out so that markers would overlap in confusing ways. It's an ...
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1answer
829 views

Why do cluster plot labels use rows instead of names from ID column?

I am working with a data set (column 1=gene names and column 2 = expression values) and I'm trying to do a cluster plot but what I find is that the branches are labeled by row number rather than the ...
3
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2answers
179 views

clustering with limited maximum size

I want to cluster some data points but the maximum number of points per cluster is limited. So there is a maximum size per cluster. Is there any clustering algorithm for that? Also Can I define my ...
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0answers
242 views

multi level hierarchical clustering selection

I have hierarchical clustering tree (using linkage). Each cluster has its own level in the dendrogram which corresponds to the cost of that cluster. I have budget for n1 clusters with cost c1, n2 ...
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1answer
233 views

The right steps to enter a value in the arguments x and y in Adjusted Rand Index?

Im attempting to use the Adjusted Rand Index to compare clustering results. Here, I use Iris data set as an example. These are the code: iris.data=subset(iris, select=-Species) iris.eucdist <- ...
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1answer
39 views

Clustering with varying dimensions

In my clustering problem, not only the points can come and go but also the features can be removed or added. Is there any clustering algorithm for my problem. Specifically I am looking for an ...
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0answers
84 views

Decision tree from Image clusters

I have image clusters based on color and edge segmentation. I want to create a decision tree classifier to predict the the output from these clustered images. I am confused how to begin with it? ...
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1answer
965 views

How to know about group information in cluster analysis (hierarchical)?

I have problem about group in cluster analysis(hierarchical cluster). As example, this is the dendrogram of complete linkage of Iris data set. After I use > table(cutree(hc, 3), iris$Species) ...
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1answer
1k views

cluster presentation dendrogram alternative in r

I know dendrograms are quite popular. However if there are quite large number of observations and classes it hard to follow. However sometime I feel that there should be better way to present the same ...
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1answer
46 views

Is it possible to use a support vector machine in combination with agglomerative clusterer?

Is it possible to use support vector machine in combination with a clustering algorithm somehow? What is a sample use-case where both of them need to communicate with each other?
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1answer
186 views

Custom distance metric in R for Agglomerative clustering

Is it possible for us to define a custom distance function for agglomerative clustering in R? Also, I would like to prevent two clusters from being merged when a certain condition is not satisfied. Is ...
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1answer
397 views

Parallel construction of a distance matrix

I work on hierarchical agglomerative clustering on large amounts of multidimensional vectors, and I noticed that the biggest bottleneck is the construction of the distance matrix. A naive ...
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2answers
570 views

Extracting the tree structure in text from hclust in R

In the scope of a demand forecasting project, I would like to determine the best way to group time series that have similarity with each other so I can apply a Top Down forecasting algorithm. At the ...
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2answers
202 views

How to select closest representative to the center in each cluster in scipy-cluster?

So basically, I use the Python module scipy-cluster to plot a lot of data points. Is there are way/function that give the representative of each cluster if given the threshold, or the number of ...
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0answers
273 views

output scipy dendrograms to TreeView files

I've written a python script using pylab and scipy to output hierarchical cluster heatmaps and dendrograms from an expression matrix based on this post: plotting results of hierarchical clustering ...
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1answer
955 views

Pruning dendrogram in scipy (hierarchical clustering)

I have a distance matrix with about 5000 entries, and use scipy's hierarchical clustering methods to cluster the matrix. The code I use for this is the following snippet: Y = fastcluster.linkage(D, ...
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4answers
682 views

Best way to test a clustering algorithm

What is the best way to test a clustering algorithm? I am using an agglomerative clustering algorithm with a stop criterion. How do I test if the clusters are formed correctly or not?
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2answers
178 views

Randomizations and hierarchical tree

I am trying to permute (column-wise only) my data matrix a 1000 times and then do hierarchical clustering in "R" so I have the final tree on my data after 1000 randomizations. This is where I am ...
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1answer
270 views

permuting columns of a matrix with replacement and clustering

How can I permute the columns of a matrix with replacement in R? I found one function called rmperm {sna} but it permutes both columns and rows whereas I just want to permute my columns. Edit: I have ...
3
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1answer
2k views

Can't get scipy hierarchical clustering to work

I wrote a simple script that is intended to do hierarchical clustering on a simple test dataset. I found the function fclusterdata to be a candidate to cluster my data into two clusters. It takes ...
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2answers
868 views

Strange error of Hierarchical Clustering in R

My R program is as below: hcluster <- function(dmatrix) { imatrix <- NULL hc <- hclust(dist(dmatrix), method="average") for(h in sort(unique(hc$height))) { hc.index <- ...
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2answers
923 views

How to get centroids from SciPy's hierarchical agglomerative clustering?

I am using SciPy's hierarchical agglomerative clustering methods to cluster a m x n matrix of features, but after the clustering is complete, I can't seem to figure out how to get the centroid from ...
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2answers
4k views

Hierarchical clustering of 1 million objects

Can anyone point me to a hierarchical clustering tool (preferable in python) that can cluster ~1 Million objects? I have tried hcluster and also Orange. hcluster had trouble with 18k objects. Orange ...
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1answer
645 views

How to do overlapping cluster analysis in Matlab or R?

I have a binary matrix of size 20 by 300. I want to cluster the 20 variables into five or six groups. So far I used kmeans and hierarchical clustering algorithms in matlab with different distance ...
0
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1answer
341 views

clusterdata Matlab function

I am using Matlab clusterdata function to classify my data (noise and non-noise) into 2 categories: noise and non-noise groups. The function works well except that sometimes it names all noise data as ...
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349 views

How to persist community information in a graph

I have some graph databases (friends networks, purchasing history, etc.) that I persist with Neo4j. I plan to analyze these with community detection algorithms such as Girvan Newman. These algorithms ...
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1answer
610 views

Hierarchical clustering for bitsequences

This is a homework problem and I'm facing some difficulties to understand it. The home work question is Cluster the following bitsequences using hierarchical clustering. If d(:,:) defines the ...
9
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1answer
4k views

How to get flat clustering corresponding to color clusters in the dendrogram created by scipy

Using the code posted here, I created a nice hierarchical clustering: Let's say the the dendrogram on the left was created by doing something like Y = sch.linkage(D, method='average') # D is a ...
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2answers
1k views

Map with more than 1 million markers, issue at high zoom level

Context: Google Map with 1 million markers (object with a lat/long) to display. We use Fluster 2 for clustering. For zoom level 11 to 21 (assuming there are 21 zoom levels and 21 is the closest to ...
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3answers
2k views

How do I label the terminal nodes of a cut dendrogram?

I used the following code to cut the dendrogram at a particular height.The problem I'm having is that when I cut a dendrogram, I can't figure out how to add labels to the nodes.How can I cut a ...
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2answers
511 views

Hierarchical clusterization heuristics

I want to explore relations between data items in large array. Every data item represented by multidimensional vector. First of all, I've decided to use clusterization. I'm interested in finding ...
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1answer
413 views

cluster analysis in r with multiple individuals

I apologize, I don't know how to use HTML or anything else really to get this to look "pretty". Particularly to make my example data useful for you all. I am just learning this as I go. I am trying ...
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1answer
1k views

How to use other clustering methods for clustergram in Matlab's bioinformatics toolbox

EDIT: I figured it out. Just did not understand notation. Hello, Hopefully someone out there is familiar with the clustergram in the bioinformatics toolbox. I am interested in the graphical aspects ...
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3answers
2k views

Tag hierarchies and handling of

This is a real issue that applies on tagging items in general (and yes, this applies to StackOverflow too, and no, it is not a question about StackOverflow). The whole tagging issue helps cluster ...
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5answers
4k views

Distributed hierarchical clustering

Are there any algorithms that can help with hierarchical clustering? Google's map-reduce has only an example of k-clustering. In case of hierarchical clustering, I'm not sure how it's possible to ...