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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Searching for binary range coincidence over many dimensions

I've clarified and simplified the question: I have data that looks like this: 011100111110100111 111111111111110010 111100001111000011 1D lanes of streams of data. Each row signifies the presence ...
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2k views

DBSCAN clustering algorithm not working properly. What am I doing wrong?

I am trying to write the DBSCAN algorithm to cluster a set of points, but the results I am getting are really bad. This could be because of the data, but it's not just that. I am getting clusters of ...
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329 views

how to cluster curve with kmeans?

I want to cluster some curves which contains daily click rate. The dataset is click rate data in time series. y1 = [time1:0.10,time2:0.22,time3:0.344,...] y2 = [time1:0.10,time2:0.22,time3:0.344,...] ...
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296 views

Graph for high dimensional data in Mahout

I am interested in running the spectral clustering algorithm in Mahout on high dimensional data. My question is how does one take a list of high dimensional data vectors and create a nearest neighbor ...
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234 views

by group analysis using svyglm in a data.table

I have the following data in a data.table: h x1 y1 swNx11 1: 1 39.075565717 0 1.03317231703408 2: 1 40.445951251 0 7.14418755725832 3: 1 37.800722944 0 ...
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363 views

java.lang.IllegalStateException: No clusters found. Check your -c path

I use the following command at the commandline to cluster data using Mahout kmeans algorithm mahout kmeans -i /vect_out/tfidf-vectors/ -c /out_canopy -o /out_kmeans -dm ...
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305 views

MANOVA - huge matrices

First, sorry by the tag as "ANOVA", it is about MANOVA (yet to become a tag...) From the tutorials I found, all the examples use small matrices, following them would not be feasible for the case of ...
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1k views

K-means clustering Matlab

My problem is that it is difficult to get the optimal cluster number by using k-means, so I thought of using a hierarchical algorithm to find the optimal cluster number. After defining my ideal ...
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482 views

How to cluster categorical variables?

What's the most appropriate family of Machine Learning algorithms for clustering categorical data? Let's assume that we have the following dataset: V1 V2 V3 V4 "v1a" "v2b" ...
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509 views

What datasets exist for co-clustering?

I am looking for new datasets of documents, from which to extract the matrix terms-documents, to perform co-clustering algorithms. I am looking forsingle-label datasets only and prefer free access ...
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316 views

Clustering Documents in Python

I understand that this question has been asked before and there are many links. I have gone through them, well most of them anyway but sadly failed to find a simple, and concise reponse. The number of ...
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443 views

Cluto sparse matrix clustering

I downloaded cluto and I want to send a text file includes sparse data as input and want to get the output of clustered data. For example: 4 3 9 1 0.4 2 0.4 1 0.4 2 0.4 2 1.2 3 1.2 1 0.4 ...
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861 views

Combine points within given radius in R to a centroid

I feel like this can not be too hard. I know hclust() and cutree() but how do I obtain the coordinates of the centroids where no points distance from it is higher than a given radius? I know that ...
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43 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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1k views

How to do K-means with normalized TF-IDF

I want some guidance here. I've just been trying to normalize the TF-IDF results for my project. So, I am thinking ahead what's next after TF-IDF? I wanted to do k-means clustering onto those ...
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114 views

Using Kmeans on my data.

I think I understand how the kmeans algorithm works, but I'm having a lot of trouble modeling it into a format with my data. I'm looking for a way to get the most similar games based on my inputs. ...
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1k views

Deciding input values to DBSCAN algorithm

I have written code in python to implement DBSCAN clustering algorithm. My dataset consists of 14k users with each user represented by 10 features. I am unable to decide what exactly to keep as the ...
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127 views

Clustering\Grouping Challenge - clustering pairs into groups

I have a clustering challenge ... I have many pairs of data (e.g. A<-->B, C<-->D, E<-->F, A<-->F and so on) I need to group\cluster them into N groups, e.g. Group#1: A,B,F Group #2: C,D. ...
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173 views

Getting an IOException when running a sample code in “Mahout in Action”

I'm learning Mahout and reading "Mahout in Action". When I tried to run the sample code in chapter7 SimpleKMeansClustering.java, an exception popped up: Exception in thread "main" ...
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128 views

Super large matrix generation from mySQL tables?

I have two MySql tables with one containing a set of 6000 users and another set of 10000 ratings they have provided for products. I'd like to make a matrix of feature vectors that have for each row ...
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411 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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895 views

clustering of a text file

Original Question: I have a flat file with each row representing text associated with an application. I would like to cluster applications based on the words associated with that application Is there ...
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558 views

Change multi size icon cluster to single icon

pro. What this expression use for => this.sizes = [53, 56, 66, 78, 90];? I found it from markercluster.js. If I want to limit only 100 markers appear on map for every time the map load/ or onchange ...
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Need one application which is more apt for my clustering algorithms

As a part of my MTP, I exposed clustering algorithms like kmeans clustering alogrithm, pairwise clustering algorithm, etc. as web services. Now I have to find a real life application to interpret my ...
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94 views

In what sequence cluster analysis is done?

First find the minimum frequent patterns from the database. Then divide them into various data types like interval based , binary ,ordinal variables etc and define various distance measures for all ...
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229 views

clustering problem

hi every body can any one tell me how to connect two computer which is not runnin the same os means how to connect a computer which running linux to a computer which is running windows ,or more ...
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919 views

Google Map Advanced Clustering

www.fastfoodmaps.com http://maps.forum.nu/server_side_clusterer/ im looking for multi color marker with clustering like sample the website above. i found google api sample for single color marker ...
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468 views

Uniform Grid Subdivision of Points in C#

I have a set P of 2D points that I could like to cluster in a 2D uniformly spaced grid, where each cell is length X. I want to do this because I am trying to create a heat map, and I have way to much ...
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2k views

How to estimate tomcat server requirements?

We have a brand new webapp written that runs on Tomcat. So far, only one client is using it through the day. They run about 180 unique logins a day. Not really a lot IMO. Now, we managed to sell it to ...
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17 views

Levenshtein Distance for a List

I want to divide my word list into some number of clusters using Levenshtein Distance. data = pd.read_csv("data.csv") Target_Column = data["words"] Target = Target_Column.tolist() clusters = ...
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20 views

Finding centroid k-means tweet clustering

As you know there is a popular data mining task that is k-means twitter clustering to avois data redundancy.This task learn how to cluster tweets by utilizing Jaccard Distance metric and K-means ...
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48 views

Compare the clustering algorithms in R

I have implement 3 clustering algorithms in R (PAM, k-means and hierarchical). I want to find which parameters produce the best results of each algorithm. I have no idea how to do it in R. Does ...
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30 views

Determine text similarity through cluster analysis

I am a senior bachelor student in CS and I currently work on my thesis. For this thesis I wrote a program that uses density-based clustering approach. More specifically, OPTICS algorithm. I have an ...
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53 views

How can I have R utilize more of the processing power on my PC?

R version: 3.2.4 RStudio version: 0.99.893 Windows 7 Intel i7 480 GB RAM str(df) 161976 obs. of 11 variables I am a relative novice to R and do not have a software programming background. My ...
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Formatting Method ClusterResultsToString in a JTextArea + Visualize it

Hey guys, I wonder if there is a possibility to format the output of the Evaluation-method ClusterResultsToString. As you can see, the formatting via System.out.println is perfect, but if I put the ...
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36 views

calculating clustering validity of k-means using rapidminer

Well, I have been studying up on the different algorithms used for clustering like k-means, k-mediods etc and I was trying to run the algorithms and analyze their performance on the leaf dataset right ...
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12 views

Deciding parameters of DBSCAN Algo for Tweet clustering

I am trying to cluster tweets to detect breaking news. I am using DBSCAN as the clustering technique. I am unable to arrive at good values of epsilon and min_sample_points. To cluster the tweets i am ...
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23 views

EM Clustering with weka with log likelihood of 0 for some clusters? Confusing output

I have clustered 43574 time series using EM clusterer. The output is 24 clusters. I have some questions here. First, is it practically useful to deal with 24 clusters? Isn't it too much? If I am ...
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20 views

How to predict new data goes which cluser in R

I already have k means output and i have segmented my users accordingly. Now, I have to predict cluster number for new users whenever they come. Do I have to run kmeans each time a new user comes into ...
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13 views

Different no. of clusters for different data sets

I am trying to plot results of multiple clustering algorithms on multiple data sets The code is the following import numpy as np import matplotlib.pyplot as plt import matplotlib from time import ...
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43 views

R how to avoid clusplot interactivity

I'm using clusplot() function from cluster package, but when the function is called in R Studio it always shows a sort of interactive point locator (that I couldn't figure out still if it is useful at ...
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30 views

Why looping in Roulette Wheel Selection is stop when First Cumulative value >= Random Value

In this article Test Run K-Means++ he use C# code and Roulette Wheel Selection to get next Centroid there is a code that implement Roulette Wheel Selection while (sanity < data.Length * 2) { ...
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12 views

How to get the distance matrix of a set of documents

I'm trying to perform clustering over a set of documents using hierarchical clustering. However, I'm not sure how I can get the distance matrix of a set of documents. Anyone can help me on that? ...
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34 views

Displaying kcluster analysis centroids in a figure

I've created a kmeans cluster that I mostly want to be able to display clearly. I'm trying to add the cenrtoid location for each of the cluster indeces. Right now the result is something like this: ...
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76 views

Extracting centroids of clusters as examples in RapidMiner?

I have a big amount of data that has 4 attributes and its respective label. I am applying a K-Means cluster block in order to create 3 clusters of the data (I want to get Low level, Mid Level and High ...
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21 views

Dataframe error when clustering groups

I am a little new to clustering in python. I am trying to cluster some data. I am trying to group people on their worknumber. There are several agents who share similar worknums and I am trying to ...
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36 views

How to do clustering on large set of food names

I have large set of food names. I have to do clustering in a way,I can identify similar foods. for example all types of pizzas should be in one set and all burgers in another set likewise. what kind ...
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65 views

Storing high dimensional data to calculate dense units in subspace clustering algorithms like clique,enclus,etc. ?

How to store high dimensional data to calculate dense units in subspace clustering algorithms like clique,enclus,etc. ? For example , I have 20 dimensions of a point , so if array is used , I have to ...
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169 views

K-means Clustering of text data : Get which cluster does the text belong to

I am clustering textual data using K-Means in Python(scikit-learn). How do I get the cluster to which the line belongs? Example : data=["Red , Yellow and Blue are colours","Icecream is my favourite ...
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39 views

To check similarity between text data

Please guide me how to measure similarity of text data for clustering, for numeric data we can measure with euclidean distance measure or any other distance measure. The data is keywords used for ...