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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kmeans clustering on the basis of fixed number of variables out of all variables

I am beginner in R and data analysis.I have a data-set of around 2500 rows with 7 columns .I want to cluster the data-set with 15 centers but on the basis of just first two columns(keeping other ...
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51 views

knn predictions with Clustering

I have a 60.000 obs/40 Variable dataset on which I used Clara, mainly due to memory constrains. library(cluster) library(dplyr) mutate(kddnew, Att=ifelse(Class=="normal","normal", "attack")) ...
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51 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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2answers
25 views

Is it possible to estimate at survey data at cluster level?

While estimating from the survey data involving clustering and using survey package of r, is it possible to estimate at the cluster level? For eg; for following survey design: data(api) dclus1 <- ...
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33 views

Clustering based on pearson correlation

I have a use case where I have traffic data for every 15 minutes for 1 month. This data is collected for various resources in netwrok. Now I need to group resources which are similar(based on traffic ...
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24 views

Selecting initial centroids in Kmeans in R [duplicate]

I am using k means for clustering of users. I want to further improve my clusters formed by selecting initial centroids myself. Since in a dataframe kmeans allot random rows as initial centroids and ...
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27 views

Spectral clustering with Similarity matrix constructed by jaccard coefficient

I have a categorical dataset, I am performing spectral clustering on it. But I do not get very good output. I choose the eigen vectors corresponding to largest eigen values as my centroids for ...
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91 views

Center of clusteres in rapidminer

I have six features that are clustered using k-means algorithm in Rapidminer, I want detect outlier data from these. there is centroid table in Rapidminer that show the center of each feature in each ...
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36 views

Self-organizing map (SOM) in Matlab - how to apply feature reduction using SOMS?

I have a data set with 72 input vectors with 158 features each. I'm trying to cluster the features in order to know which are the most relevant ones. I'm using matlab. My question is, using matlab, is ...
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28 views

How to extract cluster centres from agnes for inputting into kmeans?

One recommended method for getting a good cluster solution is to first use a hierarchical clustering method, choose a number of clusters, then extract the centroids, and then rerun it as a K-means ...
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45 views

Density Based Cluster Algorithm (DBSCAN) on Point dataset

I'd like to perform the Density Based Cluster Algorithm (DBSCAN) on my data-set. My data-set is stored in a TXT-file and contains information (ID, latitude and longitude [GPS-location]) of around 3000 ...
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61 views

How to cluster a set of strings?

My dataset looks something like this ['', 'ABCDH', '', '', 'H', 'HHIH', '', '', '', '', '', '', '', '', '', '', '', 'FECABDAI', '', '', '', '', '', '', '', '', '', '', '', '', '', '', '', '', '', ...
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73 views

What clustering algorithms can I consider for graph?

Suppose I have an undirected weighted connected graph. I want to group vertices that have highest edges' value all together (vertices degree). Using clustering algorithms is one way. What clustering ...
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58 views

Identify mostly visited places when coordinates (latitude and longitude) are given

I'm working on a project where the locations visited by people are captured in terms of latitude and longitude and analyze all these coordinates to identify the mostly visited places. I finished up ...
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27 views

How to run GUI in my script

I am using CVAP clustering toolbox that is based on GUI. After loading my data, I am using Run Clustering and Run validation commands, respectively. Then, choosing error rate option from tool menu. I ...
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90 views

K-means and EM algorithms

How can I implement the k-means & EM algorithms without calling the openCV functions to do the image segmentation? I begin with this code : #include opencv2/highgui/highgui.hpp #include iostream ...
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12 views

Sample covariance matrix gives 0 determinant?

I have Nx300 dimension vectors in K clusters. I am trying to compute the gaussian density function but my covariance matrix returns a 0 determinant. Is there another way to solve for the determinant?
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52 views

What is the Haversine equation measured in for DBSCAN analysis in RapidMiner?

When I am using the DBSCAN clustering algorithm in RapidMiner, I am not sure of what value the Haversine equation uses as an epsilon. The dataset I am currently working with is coded in latitude and ...
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51 views

variable as ID in R for clustering

I have a data set which contains 8 variables and 21.571 rows. It is a mixed data set with numerical and ordinal variables, of which one variable contains the ID. The ordinal variables are also in ...
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42 views

DBSCAN returns partial clusters

I am trying to implement the code for DBSCAN here: http://en.wikipedia.org/wiki/DBSCAN The portion I am confused about is expandCluster(P, NeighborPts, C, eps, MinPts) add P to cluster C for ...
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18 views

Finding Gaussian Probabilities from predefined clusters

I am given a set of defined clusters and vectors that belong in these clusters. I wish to find the gaussian probabilities for every point wrt to each defined cluster. What is the best way to find the ...
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108 views

k-means|| for clustering a.k.a. Scalable K-Means++ with mlib spark [closed]

Bahman Bahmani et al. introduced k-means||, which is a faster version of k-means++. this algirithm is predefined in mlib (Machine Learning Library in spark) How i can find the code source of k-means ...
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data mining project Dilemma

I research a set of data, consisting of two data files: The first contains user id id artists and ranking of users for artists that want to rank. The second data file contains id and name artists I ...
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35 views

clustering user's based on multiple variables?

I have a website and I collect alot of logs on user behavior. What time they log in, what products they look at, how often they look at it,etc.. I want to see if I can do cluster analysis based on ...
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46 views

R: Hierarchical clustering

Let's say we have the following dataset set.seed(144) dat <- matrix(rnorm(100), ncol=5) The following function creates all possible combinations of columns and removes the first (combinations ...
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comparing 2-cluster and 4-cluster solutions in cluster analysis

SPSS two-step clustering suggests 4 clusters for my data of 580 observations. But the Internal measures (connectivity, and Silhouette Width, and Dunn Index) from clvalid package suggests that 2 ...
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Grouping/linking in a cluster

Im using processing and so far I have a sketch that draws random balls, and draws a line when the connect within a certain radius. for(int i=0;i<=people.size()-1;i++){ Person p = people.get(i); ...
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91 views

Handle very large distance matrix in C (or C++ if it could help)

I am implementing this clustering algorithm http://www.sciencemag.org/content/344/6191/1492.full in C in my software and I need to build a distance matrix, but in some cases, the size of the dataset ...
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48 views

Using ELKI, having troubles with dimensions higher than 14

I'm trying to use SUBCLU in ELKI, but in order to figure things out I've tried DBSCAN, and even KMEANSLloyd, just so I know how to input data with high dimensions. Unfortunately I can only enter up to ...
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26 views

Classification in real time without prior knowledge of the number of classes

Is there an implemented algorithm (with python/R or java in preference) that can classify incoming data from an unknown generator with absolutely no prior knowledge or assumption. For example: Let G ...
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42 views

Hierarchical Clustering with cosine similarity metric in fcluster package

I use scipy.cluster.hierarchy to do a hierarchical clustering on a set of points using "cosine" similarity metric. As an example, I have: import scipy.cluster.hierarchy as hac import ...
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31 views

Problems w/ PyCluster

I have a follow python code: from Pycluster import * from numpy import * import matplotlib.pyplot as plt names = [ "A1", "A2", "A3", "A4", "A5", "A6", "A7", "A8", "A9", "A10", ...
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Is there a community detection algorithm that works similar to the way Fruchterman-Reingold creates visualizations?

I was recently presented some interesting graph visualizations that were generated using Fruchterman-Reingold. I was asked to determine if what was being show, were in fact true clusters (or, rather, ...
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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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23 views

How can I break down a big cluster generated by hierarchical clustering?

So, I ran a hierarchical cluster on some texts based on the normalized compression distance between them. The code looks like this: distances = {} for xfile, yfile in file_combinations: zxy = ...
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79 views

Visualization of multi-dimensional data clusters in R

For a set of documents, I have a feature matrix of size 30 X 32 where rows represent documents and columns = features. So basically 30 documents and 32 features for each of them. After running a PSO ...
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24 views

Tag Clustering in Lastfm database

I have a last.fm dataset composed of songs and their tags given by the users. I want to apply a clusterization on the dataset in order to find clusters of songs based on tags. The dataset has 200k ...
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32 views

Overlapping Hierarchical Link clustering Algorithm

I have studied the hierarchical link clustering algorithm of Ahn et al. This is a algorithm for discovering overlapping communities in networks and this algorithm create a dendrogram. See more in ...
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How can I apply KMEANS algorithm with determined cluster position which has specified from PSO algorith?

How can I apply KMEANS algorithm with determined cluster position which has specified from PSO algorithm ??
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66 views

Self organising map visualisation result interpretation

Using the R Kohonen package, I have obtained a "codes" plot which shows the codebook vectors. I would like to ask, shouldn't the codebook vectors of neighbouring nodes be similar? Why are the top 2 ...
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69 views

Clustering in Gephi 0.8.2

I'm working with a dataset in Gephi that is derived from a friends table from a Buddypress site. I've done a number of things to the graph which are useful using the built in functionality, but would ...
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69 views

Cluster Analysis using R for large data sample

I am just starting out with segmenting a customer database using R I have for an ecommerce retail business. I seek some guidance about the best approach to proceed with for this exercise. I have ...
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341 views

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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69 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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27 views

Adding new instances to clusterer

I'm currently using Weka's SimpleKMeans clusterer. I would like to cluster new unseen instances into either a pre existing cluster or to a new cluster. How can you cluster unseen instances into a ...
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2answers
58 views

Given a dataset with Normal values and outliers, is there any standard way to find a normalised value of epsilon for implementing DBSCAN.

I am working on my personal implementation of DBSCAN on some data, but I have problems when I have to find epsilon dynamically for every kind of data set I have to use, because average value of ...
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30 views

Clustering by values in columns

I have a text file with tab separated columns. 817619994 0.0 2369858 2369019 817619994 0.0 652427 651270 817619994 1e-117 2369858 2369019 817619994 1e-124 652427 651294 817619994 1e-147 ...
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38 views

R clustering- silhouette with observation labels

I do hierarchical clustering with the cluster package in R. Using the silhouette function, I can get the silhouette plot of my cluster output for any given height (h) cut-off in the dendrogram. # run ...
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Assign class to data frame after clustering

I used k-means cluster algorithm on a data-frame df1 and the result is shown in the picture below. library(ade4) df1 <- data.frame(x=runif(100), y=runif(100)) plot(df1) km <- kmeans(df1, ...
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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 ...