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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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 ...
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Generating synthetic datasets

I am currently looking for some tool that would generate datasets of different shapes like square, circle, rectangle, etc. with outliers for cluster analysis. Can any one of you recommend a good ...
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How to group nearby latitude and longitude locations stored in SQL

Im trying to analyse data from cycle accidents in the UK to find statistical black spots. Here is the example of the data from another website. http://www.cycleinjury.co.uk/map I am currently using ...
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how does data clustering help in image or pattern recognition

I have been playing around with different data clustering algorithms working on finding clusters between random data points represented an nodes, I keep reading that data clustering is used for image ...
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Pretty dendrograms in R?

My dendrograms are horribly ugly, on the verge of unreadable, and usually look like this: library(TraMineR) library(cluster) data(biofam) lab <- c("P","L","M","LM","C","LC","LMC","D") biofam.seq ...
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unable to find C_kmns object when passed to .Fortran()

I'm trying to modify the stats::kmeans function to return the number of iterations (see here). When I copy the source to my own file, modify the function and run it, I get an error about object C_kmns ...
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Bisecting k-means clustering algorithm explanation

I was required to write a bisecting k-means algorithm, but I didnt understand the algorithm. I know k-means algorithm. Can you explain the algorithm, but not in academic language Thanks.
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Java text clustering library

Which of the data mining java libraries can do text clusterization?
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Computing user similarity using mahout mapreduce

I am using Mahout clustering and I have large clusters each having around 100k users and each user having 5 features. In the next step i need compute pearson correlation to find similarity between the ...
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Clustering huge vector space

I'm doing some tests clustering a big number of very large sparse vectors representing term-frequency-inverse-document-frequency of various hypertextual documents. What algorithm would you suggest for ...
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Generate random points distributed like cities?

How can one generate say 1000 random points with a distribution like that of towns and cities in e.g. Ohio ? I'm afraid I can't define "distributed like cities" precisely; uniformly distributed ...
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Retrieve number of observations in clusters (k) under height (z)

Given a dendrogram y, which have k number of clusters under height value z, I would like to know: How many observations were used to form the number of clusters (k)? Here are some reproducible code, ...
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Getting Xmeans clusterer output programmatically in Weka

When using Kmeans in Weka, one can call getAssignments() on the resulting output of the model to get the cluster assignment for each given instance. Here's a (truncated) Jython example: ...
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Disperse points in a 2D visualisation

I have a set of points like this (that I have clustered using R): 180.06576696, 192.64378568 180.11529253999998, 192.62311824 180.12106092, 191.78020965999997 180.15299478, 192.56909828000002 ...
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R draw kmeans clustering with heatmap

I would like to cluster a matrix with kmeans, and be able to plot it as heatmap. It sounds quite trivial, and I have seen many plots like this. I have tried to google atround, but can't find a way ...
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Representation and a good similarity measure between Tweets for topic detection

I'm planning to write a tool for Topic Detection on Twitter. I've been thinking about a good similarity measure (distance) between two tweets, and how to represent them, taking in count: The ...
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Determining optimal number of clusters and Davies–Bouldin Index?

I'm trying to evaluate what is the right number of cluster needed for clusterize some data. I know that this is possible using Davies–Bouldin Index (DBI). To using DBI you have to compute it for any ...
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Finding the minimum value of the maximum cluster?

Define an item as having: a unique id a value a creation time a deletion time I have two input streams - one that informs me when an item is created, one that informs me when the item is deleted. ...
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Correlating word proximity

Let's say I have a text transcript of a dialogue over a period of aprox. 1 hour. I want to know what words happen in close proximatey to one another. What type of statistical technique would I use ...
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Good algorithm to find themes in tweets ranked by follower counts?

I'm new to data mining and experimenting a bit. Let's say I have N twitter users and what I want to find is the overall theme they're writing about (based on tweets). Then I want to give higher ...
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3D clustering Algorithm

Problem Statement: I have the following problem: There are more than a billion points in 3D space. The goal is to find the top N points which has largest number of neighbors within given distance R. ...
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Normalized cuts with Matlab 2013a

I am using the normalized cuts package from http://www.cis.upenn.edu/~jshi/software/Ncut_9.zip (on Windows 7) This used to work fine with Matlab2010a. However I have upgraded to Matlab2013a (32 bit ...
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Displaying TraMineR (R) dendrograms in text/table format

I use the following R code to generate a dendrogram (see attached picture) with labels based on TraMineR sequences: library(TraMineR) library(cluster) clusterward <- agnes(twitter.om, diss = TRUE, ...
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Clustering with scipy - clusters via distance matrix, how to get back the original objects

I can't seam to find any simple enough tutorials or descriptions on clustering in scipy, so I'll try to explain my problem: I try to cluster documents (hierarchical agglomerative clustering) , and ...
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WEKA K-Means Clustering

Can anybody explain what the output of the K-Means clustering in WEKA actually means. For example kMeans Number of iterations: 9 Within cluster sum of squared errors: 9434.911100488926 Missing ...
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How to cluster search engine keywords?

From Google Analytics I have a (long) list of keywords that people used in search engines to find my website. I want to find the 'core keywords', hypothetical example: java online training learning ...
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How to spread out community graph made by using igraph package in R

Trying to find communities in tweet data. The cosine similarity between different words forms the adjacency matrix. Then, I created graph out of that adjacency matrix. Visualization of the graph is ...
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Weka always producing same clusters for different data

I'm trying to use Weka to do K-Means clustering on a set of data, examining how different weights affect different attributes. However, when I adjust the weights of each attribute, I'm not seeing any ...
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283 views

Retrieving the optimal number of clusters in R

I have data for which I want to evaluate the optimal number of clusters according to the Gap statistic. I read the page on gap statistic in r which gives the following example: gs.pam.RU <- ...
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Error with multiscale hierarchical clustering in R

I'm doing hierarchical clustering with an R package called pvclust, which builds on hclust by incorporating bootstrapping to calculate significance levels for the clusters obtained. Consider the ...
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community / cluster detection algorithm in networks - implemented in javascript?

I am looking for an implementation of a community detection algorithm in javascript. Louvain algorithm, or any other would do.
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Group n points in k clusters of equal size [duplicate]

Possible Duplicate: K-means algorithm variation with equal cluster size EDIT: like casperOne point it out to me this question is a duplicate. Anyways here is a more generalized question ...
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Clustering in python(scipy) with space and time variables

The format of my dataset: [x-coordinate, y-coordinate, hour] with hour an integer value from 0 to 23. My question now is how can I cluster this data when I need an euclidean distance metric for the ...
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sklearn.mixture.DPGMM: Unexpected results

The results I get from DPGMM are not what I expect. E.g.: >>> import sklearn.mixture >>> sklearn.__version__ '0.12-git' >>> data = [[1.1],[0.9],[1.0],[1.2],[1.0], ...
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A density based clustering library that takes distance matrix as input

Need help with finding an open/free density based clustering library that takes a distance matrix as input and returns clusters with each element within it maximum "x" distance away from each of the ...
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Clustering on a large dataset

I'm trying to cluster a large (Gigabyte) dataset. In order to cluster, you need distance of every point to every other point, so you end up with a N^2 sized distance matrix, which in case of my ...
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Solution for distributing MANY simple network tasks?

I would like to create some sort of a distributed setup for running a ton of small/simple REST web queries in a production environment. For each 5-10 related queries which are executed from a node, I ...
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K means finding elbow when the elbow plot is a smooth curve

I am trying to plot the elbow of k means using the below code: load CSDmat %mydata for k = 2:20 opts = statset('MaxIter', 500, 'Display', 'off'); [IDX1,C1,sumd1,D1] = ...
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Input matrix to opencv kmeans clustering

This question is specific to opencv: The kmeans example given in the opencv documentation has a 2-channel matrix - one channel for each dimension of the feature vector. But, some of the other example ...
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Create a summary description of a schedule given a list of shifts

Assuming I have a list of shifts for an event (in the format start date/time, end date/time) - is there some sort of algorithm I could use to create a generalized summary of the schedule? It is quite ...
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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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clustering image segments in opencv

I am working on motion detection with non-static camera using opencv. I am using a pretty basic background subtraction and thresholding approach to get a broad sense of all that's moving in a sample ...
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How to add clustering rectangle in hierarchical heatmap dendogram

The following code create 1. Dendogram and 2. Heatmap with dendogram mydata <- mtcars hclustfunc <- function(x) hclust(x, method="complete") distfunc <- function(x) ...
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Visualize Gaussian Mixture Model clusters in MATLAB

I have to write a classifier (Gaussian Mixture model) to use for human action recognition. I have 4 dataset of video, each of them contains 12 action that I want to recognize. I choose 3 of them as ...
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How to create a binary matrix of inventory per row? (R)

I have a dataframe of 9 columns consisting of an inventory of factors. Each row can have all 9 columns filled (as in that row is holding 9 "things"), but most don't (most have between 3-4). The ...
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scikit-learn DBSCAN memory usage

UPDATED: In the end, the solution I opted to use for clustering my large dataset was one suggested by Anony-Mousse below. That is, using ELKI's DBSCAN implimentation to do my clustering rather than ...
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spectral clustering

First off I must say that I'm new to matlab (and to this site...) , so please excuse my ignorance. I'm trying to write a function in matlab that will use Spectral Clustering to split a set of points ...
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Clustering algorithm where a document can be in more than one cluster

I'm looking for a clustering algorithm that allows each document to belong to more than one cluster (eg. to at least Kclusters). All the cluster algorithms I studied create a partition of the ...
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R - check consistency of group assignment, group labels with different names

I am trying to assign sub-group membership in 4 independent cancer gene expression datasets, training on each dataset in turn, followed by testing the (metagene based) assignment in the remaining ...
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Drawing a polygon around groups of datapoints in MATLAB

I have a set of datapoints each of which belongs to a certain cluster (group). I need to draw a polygon around each of these clusters. Does anyone knows how to do it? It doesn't matter if I use or ...