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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1answer
356 views

sci-kit learn crashing on certain amounts of data

I'm trying to process a numpy array with 71,000 rows of 200 columns of floats and the two sci-kit learn models I'm trying both give different errors when I exceed 5853 rows. I tried removing the ...
15
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2answers
714 views

Algorithm to decide cut-off for collapsing this tree?

I have a Newick tree that is built by comparing similarity (euclidean distance) of Position Weight Matrices (PWMs or PSSMs) of putative DNA regulatory motifs that are 4-9 bp long DNA sequences. An ...
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1answer
236 views

sk-means clustering - how to get the cluster results

I'm using both k-means and sk-means in my research. In K-means clustering, in order to get the clusters, # k-means clustering of tweets k<-6 kmeansResult<-kmeans(m3,k) # Cluster centers round(...
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2answers
882 views

Unsupervised clustering of strings

I have list of 1000+ keywords that I would like to group together by similarity. For example: "patio furniture" "living room furniture" "used chairs" "new chairs" I'd like the "furniture" and "...
0
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2answers
196 views

How to create an ARFF file for high dimensional vectors in Weka?

I have high dimensional (200 dimensions) vectors that I want to cluster using Weka. How should I represent it in ARFF format? The data is something like this (with dim1, dim2 etc. being real numbers):...
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0answers
63 views

Using mahout to categorize items based on user similarity

I have a list of tracks that play in different radios. Data is like this: radio_id,track_id,times_played 1,536,1 1,3292,1 1,3294,1 2,3303,7 2,3322,1 2,3341,3 3,3365,5 3,3511,4 3,3680,1 ... Based on ...
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0answers
72 views

parallel clustering with cure

I'm new here so sorry for any mistakes in the question format. I'm trying to create an algorithm that clusters data and I want to use CURE and do so in parallel (probably using mpi but too early for ...
3
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2answers
716 views

Color branches of dendrogram using an existing column

I have a data frame which I am trying to cluster. I am using hclust right now. In my data frame, there is a FLAG column which I would like to color the dendrogram by. By the resulting picture, I am ...
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1answer
179 views

How to plot multiple barplots of kmeans centroids in R

I am looking to plot multiple barplots of each centroid from kmeans. So if my kmeans output looks like this: Col1 Col2 Col3 Col4 Col5 Col6 id 1 -0.04565042 ...
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2answers
498 views

How to calculate the quality of clustering by dtw?

my aim is to cluster 126 time-series concerning 26 weeks (so each time-series has 26 observation). I used pam{cluster} = partitioning around medoids to cluster these time-series. Before clustering I ...
1
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1answer
810 views

Clustering one text file into groups and topics in python

I'm new in text mining and I have a very big text file where every line represents a review about an item (a sentence). I would like to find both the groups and the topics that exist within the ...
0
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1answer
66 views

Use sklearn or existing module to cluster text let each cluster belongs to multilabel

I have data like this [ 'The actor in New York. The art of Static.', 'The actor in New York. Sword.', 'The actor in New York. Handsome Jonny Deep.', 'France, the greast tower. In Las Vegas, ...
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1answer
27 views

Handle Dimensionality when Clustering

How can I perform a cluster analysis (e.g. kmeans, complete link,etc) when objects are represented by vectors of different sizes? For example, Object 1 is represented by a 4-dim vector, Object 2 by 6-...
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0answers
239 views

Calling Fortran from R, Partitioning around medoids

Im trying to use the PAM algorithm in the cluster package. My dataset is large, so I keep getting this error when I run the following code #create clusters pam_fit<- pam(costs, 10, diss =FALSE) #...
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2answers
216 views

Threshold in Hierarchial clustering

I am new to clustering and doing some minor project on clustering tweets, I used TF-IDF and then hierarchial clustering. I am confused about setting up threshold value for hierarchical clustering. ...
0
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1answer
117 views

how to specify use of STC algorithm in Solr admin console?

I have a test Solr environment using Carrot2 on Ubuntu. With the Carrot2 workbench I can alternate between the three defined algorithms (Lingo, STC, kmeans). How do I do the same thing in the Solr ...
0
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1answer
388 views

textmining, Export clusters in Rapidminer

I am working with approximately 300 articles (txt-files), and my cluster-analysis has so far been successful. Now I wish to save/export these 5 clusters separately, so that I can do further analysis ...
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4answers
8k views

basic clustering with r

I'm new to R and data analysis. I'm trying to create a simple custom recommendation system for a web site. So, as input information I have user/session-id,item-id,item-price which users clicked at. ...
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1answer
175 views

Dataset for density based clustering based on probability and possible cluster validation method

Can anyone help me to find a dataset have scores as attribute values and having the class labels(Ground Truth for cluster validation).I want to find the probability of each data item and inturn use ...
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1answer
408 views

Scipy cluster binary data and label

I'm trying to do a k-means clustering on a binary data set. Following matrix is based on web page access('1' for access and '0' for not access). First column is a label to identify each user. 0,1,1,0,...
2
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3answers
755 views

Draw network and grouped vertices of the same community or partition

I need view (drawn or plot) the communities structure in networks I have this: import igraph from random import randint def _plot(g, membership=None): layout = g.layout("kk") visual_style = ...
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2answers
86 views

Distance function for mixed attribute dataset

Is there any function to calculate distance between mixed attribute dataset. For example, how to calculate distance D = d1 - d2? where d1(100,TCP,1480) and d2(200,ICMP,1650).
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1answer
58 views

Best way to correlation coefficient foe nominal data similarity

I hope someone can help me on this one (PLEASE) : I want to do similarity between some article features ( author, category, year, impact factor , citation) And I dont have a clue how to do it for ...
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4answers
115 views

Finding common clusters

I've came across the following problem: Imagine we have a set of n samples that we want to classify into k classes labeled 1-k. We run M different clustering algorithms and get M different outputs. ...
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2answers
104 views

Mathematically how does one compare classification result to clustering results

Is there a standard methodology to compare results (for accuracy) of a classification algorithm against a clustering algorithm? I have data that has only two true labels. Easy enough to check accuracy ...
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2answers
305 views

how to perform K-medoids

I've been trying for a long time to figure out how to perform (on paper)the K-medoids algorithm, however I'm not able to understand how to begin and iterate. for example: I have the distance matrix ...
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1answer
29 views

clustering of singular value

let us consider following graph of singular values i want to make some kind of clustering of these data,namely to seperate main components from non main components,let say signal components ...
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2answers
719 views

Adjacency matrix clustering using spectral (cluster) network in Python

I have the following dataset: firm_id firm_id_ 1 2 1 4 1 5 2 1 2 3 3 2 3 6 4 1 4 5 4 6 5 4 5 7 6 ...
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1answer
343 views

Clustering data using matlab

I'm trying to cluster my data. This is the example of my data: genes param1 param2 ... gene1 0.224 -0.113 ... gene2 -0.149 -0.934 ... I have a thousand of genes and a hundred of ...
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2answers
162 views

K-Means clustering on multidimensional heterogeneous space

The data set I am trying to cluster is made of multiple heterogeneous dimensions. For example <A, B, C, D> where A, B is lat, long. C is a number. D is a binary value. What is the best ...
0
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1answer
436 views

R: how can one use k-means clustering with fixed initial “means” and fixed size of cluster

let's say one has a 9 coordinats for 9 points a,b,c...,i. Is there any function or solution in R to apply k-means on it with fixed initial "means" and fixed size of cluster, meaning output should be ...
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1answer
107 views

Mahout Clustering with one dim K-means [duplicate]

Can I cluster data with one variable instead of many (What I had already test) using mahout K-means Algorithm ? if yes (I hope so :) )could you give me an Example of clustering and thinks
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1answer
28 views

Determining if algorithm is hierarchical or density allied

I'm trying to cluster points in my dataset. The simple steps are as follows: Find the nearest neighbor for each point. Eliminate noise points by setting a threshold for nearest neighbor parameter (...
0
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1answer
1k views

WEKA - Error on assigning Instances to kmeans.buildClusterer

I'm pretty new in Weka framework. So far i find it pretty simple and easy to use and understand but i'm facing some problems i cannot understand. I'm trying to cluster a dataset from an csv file. I ...
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1answer
148 views

how to plot cluster of time-series in loop with different colors?

I would like to know, how I can plot cluster of time-series with different colors, when I'm using loop. I know that the procedure ggplot() do it, but I cannot use it before loop. Here is the code: ...
0
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1answer
28 views

Which features should be added for NER in search result snippets

I want to cluster queries by help of the snippets of the search engine results they are currently returning. While using the noun phrases in the snippet worked well for Google results I felt that I ...
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0answers
78 views

Package to vizualize clustering in python or Java?

I am doing an agent based modeling and currently have this set up in Python, but I can switch over to Java if necessary. I have a dataset on Twitter (11 million nodes and 85 million directed edges), ...
0
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1answer
1k views

Finding elements inside every cluster in scikit DBSCAN?

I am trying to explore Scikit DBSCAN. There is something that I want to know. How can I know the points in every cluster. This code is an example in the scipy website : import numpy as np from ...
0
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1answer
114 views

Generate data from kmean's clusters

So I have an input vector, A which is a row vector with 3,000 data points. Using MATLAB, I found 3 cluster centres for A. Now that I have the 3 cluster centres, I have another row Vector B with 3000 ...
0
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1answer
40 views

Multiple features clustering

I want to know how I could perfom a cluster analysis with multiple features. Let's consider, for example, that I have a set of features for each object (I have a lot of objects). And each of these ...
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0answers
224 views

Aligning bounding box on probability confidence Map

I am trying to determine the high probability region in some data points. The probability is already computed and the approximate bounding box of the region is computed using Kalman Filter. However, ...
0
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1answer
449 views

OPTICS Reachability Plot

I can't seem to visualize how the reachability distances of objects are arranged in the Reachability Plot of OPTICS. So how do "valleys" form in reachability plots? It says in the original paper that ...
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1answer
156 views

What are the advantages of K means clustering for web logs?

I was referring lot of IEEE papers for clustering of web logs for predicting behavior of a person on e commerce web site.Most of the IEEE papers were applying simple K means clustering but none of ...
0
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1answer
261 views

ELKI - Clustering Statistics

When a data set is analyzed by a clustering algorithm in ELKI 0.5, the program produces a number of statistics: the Jaccard index, F1-Measures, etc. In order to calculate these statistics, there have ...
0
votes
1answer
700 views

Need suggestions regarding K-Means text clustering in Mahout 0.9

I am trying to cluster Educations. The data entries got a name and a description, like this: MSc Aeronautical Engineering The master´s programme in Aeronautical Engineering at Linköping ...
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votes
1answer
73 views

image clustering, k means

i have input image my input image my code is img = imread('obraz.bmp'); img=rgb2gray(img) imshow(img) %% normalization img = ( img - min(img(:)) ) ./ ( max(img(:)) - min(img(:)) ); img = ~img; [m ...
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1answer
378 views

Can k-means clustering error ever increase?

I have implemented k-means clustering algorithm for 20-dimensional histograms. It seems to be working well on 2-dimensional histograms. Occassionally, the sum of squared errors will increase ...
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4answers
66 views

Ordering a list of items in place to compare clustering solutions

I have a small sorting problem. I'm comparing a couple of thousands of clustering solutions to find and count identical solutions. The problem I have is the following: Given two clustering solutions: ...
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1answer
234 views

How to plot k-medoids results of time series in R?

I'm making a project connected with identifying dynamic of sales. That's how the piece of my database looks like http://imagizer.imageshack.us/a/img854/1958/zlco.jpg . There are three columns: ...
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1answer
1k views

How to append bootstrapped values of cluster's (tree) nodes in NEWICK format in R

I want to make a tree (cluster) using Interactive Tree of Life web-based tool (iTOL). As an input file (or string) this tool uses Newick format which is a way of representing graph-theoretical trees ...