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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What is the state-of-the-art in unsupervised learning on temporal data?

I'm looking for an overview of the state-of-the-art methods that find temporal patterns (of arbitrary length) in temporal data and are unsupervised (no labels). In other words, given a steam/...
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How can I perform K-means clustering on time series data?

How can I do K-means clustering of time series data? I understand how this works when the input data is a set of points, but I don't know how to cluster a time series with 1XM, where M is the data ...
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What method do you use for selecting the optimum number of clusters in k-means and EM?

Many algorithms for clustering are available. A popular algorithm is the K-means where, based on a given number of clusters, the algorithm iterates to find best clusters for the objects. What method ...
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Google Maps API v3, lots of markers, clustering and performance

I have about 5000 markers I need to render on Google Map. I'm currently using the API (v3) and there are performance issues on slower machines, especially in IE. I have done the following already to ...
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How would you group/cluster these three areas in arrays in python?

So you have an array 1 2 3 60 70 80 100 220 230 250 For a better understanding: How would you group/cluster the three areas in arrays in python(v2.6), so you get three arrays in this case ...
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Detecting object regions in image opencv

We're currently trying to detect the object regions in medical instruments images using the methods available in OpenCV, C++ version. An example image is shown below: Here are the steps we're ...
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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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Python Clustering Algorithms

I've been looking around scipy and sklearn for clustering algorithms for a particular problem I have. I need some way of characterizing a population of N particles into k groups, where k is not ...
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Clustering tree structured data

Suppose we are given data in a semi-structured format as a tree. As an example, the tree can be formed as a valid XML document or as a valid JSON document. You could imagine it being a lisp-like S-...
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mahout lucene document clustering howto?

I'm reading that i can create mahout vectors from a lucene index that can be used to apply the mahout clustering algorithms. http://cwiki.apache.org/confluence/display/MAHOUT/Creating+Vectors+from+...
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How do I manually create a dendrogram (or “hclust”) object ? (in R)

I have a dendrogram given to me as images. Since it is not very large, I can construct it "by hand" into an R object. So my question is how do I manually create a dendrogram (or "hclust") object, ...
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Clustering Lat/Longs in a Database

I'm trying to see if anyone knows how to cluster some Lat/Long results, using a database, to reduce the number of results sent over the wire to the application. There are a number of resources about ...
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News clustering

How does Google News and Techmeme cluster news items that are similar? Are there any well know algorithm that is used to achieve this? Appreciate your help. Thanks in advance.
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Where to find a reliable K-medoid(Not k-means) open source software/tool? [closed]

I am learning the K-medoids algorithm so I am sorry if I ask inappropriate questions. As I know,the K-medoids algorithm implements a K-means clustering but use actual data points to be centroid ...
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6answers
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Clustered Graphs Visualization Techniques

I need to visualize a relatively large graph (6K nodes, 8K edges) that has the following properties: Distinct Clusters. Approximately 50-100 Nodes per cluster and moderate interconnectivity at the ...
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Which data clustering algorithm is appropriate to detect an unknown number of clusters in a time series of events?

Here's my scenario. Consider a set of events that happen at various places and times - as an example, consider someone high above recording the lightning strikes in a city during a storm. For my ...
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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 ...
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Understanding concept of Gaussian Mixture Models

I'm trying to understand GMM by reading the sources available online. I have achieved clustering using K-Means and was seeing how GMM would compare to K-means. Here is what I have understood, please ...
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Weka simple K-means clustering assignments

I have what feels like a simple problem, but I can't seem to find an answer. I'm pretty new to Weka, but I feel like I've done a bit of research on this (at least read through the first couple of ...
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Will pandas dataframe object work with sklearn kmeans clustering?

dataset is pandas dataframe. This is sklearn.cluster.KMeans km = KMeans(n_clusters = n_Clusters) km.fit(dataset) prediction = km.predict(dataset) This is how I decide which entity belongs to ...
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R: How to overlay pie charts on 'dots' in a scatterplot in R

Using R I would like to replace the points in a 2d scatter plot by a pie chart displaying additional values. The rational behind is that I have time series data for hundreds of elements (proteins) ...
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Hierarchical Clustering: Determine optimal number of cluster and statistically describe Clusters

I could use some advice on methods in R to determine the optimal number of clusters and later on describe the clusters with different statistical criteria. I’m new to R with basic knowledge about the ...
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Generating 'neighbours' for users based on rating

I'm looking for techniques to generate 'neighbours' (people with similar taste) for users on a site I am working on; something similar to the way last.fm works. Currently, I have a compatibilty ...
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477 views

Which programming structure for clustering algorithm

I am trying to implement the following (divisive) clustering algorithm (below is presented short form of the algorithm, the full description is available here): Start with a sample x, i = 1, ..., n ...
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Assign new data point to cluster in kernel k-means (kernlab package in R)?

I have a question about the kkmeans function in the kernlab package of R. I am new to this package and please forgive me if I'm missing something obvious here. I would like to assign a new data ...
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User profiling with Mahout from categorized user behavior

I'm trying to cluster and classify users with Mahout. At the moment I am at the planning phase, my mind is completely mixed with ideas, and since I'm relatively new to the area I'm stuck at the data ...
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How to create a cluster plot in R?

How can I create a cluster plot in R without using clustplot? I am trying to get to grips with some clustering (using R) and visualisation (using HTML5 Canvas). Basically, I want to create a ...
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2answers
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Should we used k-means++ instead of k-means?

The k-means++ algorithm helps in two following points of the original k-means algorithm: The original k-means algorithm has the worst case running time of super-polynomial in input size, while k-...
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Iregular plot of k-means clustering, outlier removal

Hi I'm working on trying to cluster network data from the 1999 darpa data set. Unfortunately I'm not really getting clustered data, not compared to some of the literature, using the same techniques ...
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4answers
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k-means clustering in R on very large, sparse matrix?

I am trying to do some k-means clustering on a very large matrix. The matrix is approximately 500000 rows x 4000 cols yet very sparse (only a couple of "1" values per row). The whole thing does not ...
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1answer
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What is the difference between a Confusion Matrix and Contingency Table?

I'm writting a piece of code to evaluate my Clustering Algorithm and I find that every kind of evaluation method needs the basic data from a m*n matrix like A = {aij} where aij is the number of data ...
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How to specify distance metric while for kmeans in R?

I'm doing kmeans clustering in R with two requirements: I need to specify my own distance function, now it's Pearson Coefficient. I want to do the clustering that uses average of group members as ...
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How do I create a radial cluster like the following code-example in Python?

I've found several examples on how to create these exact hierarchies (at least I believe they are) like the following here stackoverflow.com/questions/2982929/ which work great, and almost perform ...
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Graph Theory: Calculating Clustering Coefficient

I'm doing some research and I've come to a point where I have calculate the clustering coefficient of a graph. According to this paper directly related to my research: The clustering coefficient C(...
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How to generate Bad Random Numbers

I'm sure the opposite has been asked many times but I couldn't find any answers on how to generate bad random numbers. I want to write a small program for cluster analysis and want to generate some ...
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Efficient way of calculating likeness scores of strings when sample size is large?

Let's say that you have a list of 10,000 email addresses, and you'd like to find what some of the closest "neighbors" in this list are - defined as email addresses that are suspiciously close to other ...
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given 10 functions y=a+bx and 1000's of (x,y) data points rounded to ints, how to derive 10 best (a,b) tuples?

We build software that audits fees charged by banks to merchants that accept credit and debit cards. Our customers want us to tell them if the card processor is overcharging them. Per-transaction ...
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2answers
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Is a Fuzzy C-Means algorithm available for Python?

I have some dots in a 3 dimensional space and would like to cluster them. I know Pythons module "cluster", but it has only K-Means. Do you know a module which has FCM (Fuzzy C-Means)? (If you know ...
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How to use NLP to separate a unstructured text content into distinct paragraphs?

The following unstructured text has three distinct themes -- Stallone, Philadelphia and the American Revolution. But which algorithm or technique would you use to separate this content into distinct ...
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clustering with cosine similarity

I have a large data set that I would like to cluster. My trial run set size is 2,500 objects; when I run it on the 'real deal' I will need to handle at least 20k objects. These objects have a cosine ...
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Clustering with a distance matrix

I have a (symmetric) matrix M that represents the distance between each pair of nodes. For example, A B C D E F G H I J K L A 0 20 20 20 40 60 60 60 100 120 120 ...
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How to cluster an instance with Weka's DBSCAN?

I've been trying to use the DBSCAN clusterer from Weka to cluster instances. From what I understand I should be using the clusterInstance() method for this, but to my surprise, when taking a look at ...
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Using precision recall metric on a hierarchy of recovered clusters

Context: We are two students intending to write a thesis on reverse engineering namespaces using hierarchical agglomerative clustering algorithms. We have a variation of linking methods and other ...
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How to manage session variables in a web cluster?

Session variables are normally keept in the web server RAM memory. In a cluster, each request made by a client can be handled by a different cluster node. right?! So, in this case... What happens ...
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4answers
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Correlation clustering in R

I'd like to use correlation clustering and I figure R is a good place to start. I can present the data to R as a set of large, sparse vectors or as a table with a pre-computed dissimilarity matrix. ...
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Plotting output of kmeans(PyCluster impl)

How does on plot output of kmeans clustering in python? I am using PyCluster package. allUserVector is an n by m dimensonal vector , basically n users with m features. import Pycluster as pc import ...
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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 ...
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Can I use K-means algorithm on a string?

I am working on a python project where I study RNA structure evolution (represented as a string for example: "(((...)))" where the parenthesis represent basepairs). The point being is that I have an ...
8
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1answer
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MATLAB: help needed with Self-Organizing Map (SOM) clustering

I'm trying to cluster some images depending on the angles between body parts. The features extracted from each image are: angle1 : torso - torso angle2 : torso - upper left arm .. angle10: torso - ...
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OpenCV K-Means (kmeans2)

I'm using Opencv's K-means implementation to cluster a large set of 8-dimensional vectors. They cluster fine, but I can't find any way to see the prototypes created by the clustering process. Is this ...