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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610 views

Finding the spread of each cluster from Kmeans

I'm trying to detect how well an input vector fits a given cluster centre. I can find the best match quite easily (the centre with the minimum euclidean distance to the input vector is the best), ...
2
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2answers
356 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 ...
2
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2answers
842 views

absolute pearson correlation distance in kmeans() MATLAB

I need to do some clustering using a correlation distance but instead of using the built-in 'distance' 'correlation' which is defined as d=1-r i need the absolute pearson distance.In my aplication ...
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2answers
666 views

What are some packages that implement semi-supervised (constrained) clustering?

I want to run some experiments on semi-supervised (constrained) clustering, in particular with background knowledge provided as instance level pairwise constraints (Must-Link or Cannot-Link ...
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1answer
4k views

How to perform clustering without removing rows where NA is present in R

I have a data which contain some NA value in their elements. What I want to do is to perform clustering without removing rows where the NA is present. I understand that gower distance measure in ...
2
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1answer
2k views

k-means in python: Determine which data are associated with each centroid

I've been using scipy.cluster.vq.kmeans for doing some k-means clustering, but was wondering if there's a way to determine which centroid each of your data points is (putativly) associated with. ...
2
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2answers
658 views

Dumping clustering result with vectors names

I have created my Vectors as described in this question and have run mahout kmeans on the data. Since I'm using Mahout 0.7, the clusterdump command didn't work as described in Mahout in Action, but I ...
2
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1answer
921 views

Show rows on clustered kmeans data

Hi I was wondering when you cluster data on the figure screen is there a way to show which rows the data points belong to when you scroll over them? From the picture above I was hoping there would ...
2
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3answers
659 views

Number clustering/partitioning algorithm

I have an ordered 1-D array of numbers. Both the array length and the values of the numbers in the array are arbitrary. I want to partition the array into k partitions, according to the number values, ...
2
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1answer
5k views

In R, how can I plot a similarity matrix (like a block graph) after clustering data?

I want to produce a graph that shows a correlation between clustered data and similarity matrix. How can I do this in R? Is there any function in R that creates the graph like a picture in this link? ...
2
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3answers
2k views

Find connected components in a graph in MATLAB

I have many 3D data points, and I wish to find 'connected components' in this graph. This is where clusters are formed that exhibit the following properties: Each cluster contains points all of ...
2
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2answers
2k views

TCP/IP communication in Matlab

Hello I want to build my own Matlab cluster from lots of junk computers. Anybody knows how to send data from one Matlab to another over TCP ? I need to send image chunks / .mat files and variables. ...
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5answers
1k views

Visualize data and clustering [closed]

i am currently writing a python script to find the similarity between documents.I have already calculated the similarities score for each document pairs and store them in dictionaries. It looks ...
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1answer
147 views

BOW prediction of cluster for training data

I am creating a bag of visual words for classification of videos. I am not using SURF descriptors and that is why I couldn't use OpenCV's BOWImgDescriptorExtractor for this purpose. I extracted my ...
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1answer
2k views

JFreeChart Scatter Plot moving data between series

Sorry if this question is a little nonspecific but im very new to using JFreeChart and have a mediocre understanding of it. Essentially im trying to create an application that depicts the kMeans ...
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1answer
2k views

Document Clustering Basics

So, I've been mulling over these concepts for some time, and my understanding is very basic. Information retrieval seems to be a topic seldom covered in the wild... My questions stem from the process ...
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2answers
1k views

clustering data outputs irregular plot graph

Ok I will run down what im trying to achieve and how I tryed to achieve it then I will explain why I tryed this method. I have data from the KDD cup 1999 in its original format the data has 494k of ...
0
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1answer
202 views

How to cluster data with discrete binary attributes?

In my data, there are ten millions of binary attributes, But only some of them are informative, most of them are zeros. Format is like as following: data attribute1 attribute2 attribute3 ...
0
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1answer
363 views

Join neighbour cluster centroids Matlab

I have used K-means to cluster data into 8 different clusters using this [X,C] = kmeans(XX, 8] , this means I have 8 centroids where their locations is stored in C "example shown below X Y Z as ...
0
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1answer
235 views

Exporting result from kml package in R

I'm using a kml package of R to cluster my data and I need to get in the end a csv file with a column including the number of clusters according to each id. The data has many missing values, so I ...
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0answers
602 views

Subtractive Clustring implementation

My aim is to cluster my data using subtractive clustering and so that further I can extract Fuzzy Rules from that. suppose I have the following 2 dimensional data:- X[]=[ ...
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2answers
197 views

Identifying column and row clusters with linear programming

I believe that the question Is there a good way to do this type of mining? could be solved using linear programming techniques. But I am completely new to this and do not know the best way to frame ...
0
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2answers
458 views

Random Clustering Algorithm

I have set of points, and i want clusters out of them. I know how to do normal k-means algorithm. But i don't want to take 'k' as input. Suppose if i have points like 1,3,4,50,60,70,1000,10002,10004 ...
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3answers
514 views

Cosine distance as vector distance function for k-means

I have a graph of N vertices where each vertex represents a place. Also I have vectors, one per user, each one of N coefficients where the coefficient's value is the duration in seconds spent at the ...
4
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5answers
215 views

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 ...
4
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1answer
1k views

Some questions on dendrogram - python (Scipy)

I am new to scipy but I managed to get the expected dendrogram. I am some more questions; In the dendrogram, distance between some points are 0 but its not visible due to image border. How can I ...
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1answer
1k views

Scikit Learn - K-Means - Elbow - criterion

Today i'm trying to learn something about K-means. I Have understand the algorithm and i know how it works. Now i'm looking for the right k... I found the elbow criterion as a method to detect the ...
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2answers
62 views

Document Clustering in python using SciKit

I recently started working on Document clustering using SciKit module in python. However I am having a hard time understanding the basics of document clustering. What I know ? Document clustering ...
2
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1answer
814 views

How to compute distances between centroids and data matrix (for kmeans algorithm)

I am a student of clustering and R. In order to obtain a better grip of both I would like to compute the distance between centroids and my xy-matrix for each iteration till it "converges". How can I ...
2
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2answers
146 views

Clustering before classification in Weka

The instances in my dataset have multiple numeric attributes and a binary class. In Weka is there a way to use a clusterer and pass the result to a classifier (say SMO) to improve the results of ...
2
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1answer
117 views

Using a Geo Distance Function on ELKI

I am using ELKI to mine some geospatial data (lat,long pairs) and I am quite concerned on using the right data types and algorithms. On the parameterizer of my algorithm, I tried to change the default ...
2
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2answers
132 views

How to identify sequences within each cluster?

Using the biofam dataset that comes as part of TraMineR: library(TraMineR) data(biofam) lab <- c("P","L","M","LM","C","LC","LMC","D") biofam.seq <- seqdef(biofam[,10:25], states=lab) ...
2
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1answer
941 views

silhouette coefficient in python with sklearn

I'm having trouble computing the silhouette coefficient in python with sklearn. Here is my code : from sklearn import datasets from sklearn.metrics import * iris = datasets.load_iris() X = ...
2
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1answer
1k views

Markov Clustering

I have two questions to be precise. Firstly, I would like to know if there is an easy way to adapt the Markov Clustering Algorithm so that I can specify in advance, how many clusters I would like to ...
2
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1answer
2k views

Associated Labels in a dendrogram plot - MATLAB

I have the following set of data stored in file stations.dat : Station A 305.2 321.1 420.9 383.5 311.7 197.1 160.2 113.9 60.5 60.5 64.8 154.3 Station B 281.1 304.0 353.1 231.9 84.6 20.9 ...
2
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1answer
395 views

Clustering string data with ELKI

I need to cluster a large number of strings using ELKI based on the Edit Distance / Levenshtein Distance. Since the data set is too large, I'd like to avoid file based precomputed distance matrices. ...
2
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1answer
1k views

Calling R in java-Rcaller

I am trying to implement clustering using R in java by employing R caller. I am trying to run sample code for clustering validation and I get that common error faced by most of the users: Premature ...
2
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1answer
373 views

Unsupervised Clustering with Haskell

I'm trying to develop an algorithm that can report the frequency and closeness in which similar patterns appear between data sets. Simple example: set1 = [0, 1, 0, 0, 2, 0, 0, 3, 0] set2 = [1, 2, 3, ...
2
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1answer
3k views

MATLAB - Classification output

My programme uses K-means clustering of a set amount of clusters from the user. For this k=4 but I would like to run the clustered information through matlabs naive bayes classifier afterwards. Is ...
2
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2answers
3k views

Calculating a Voronoi diagram for planes in 3D

Is there a code/library that can calculate a Voronoi diagram for planes (parallelograms) in 3D? I checked Qhull and it seems it can only work with points, in its examples Voro++ works with different ...
2
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2answers
2k views

DBSCAN algorithm and clustering algorithm for data mining

How do you implement DBSCAN algorithm on categorical data (mushroom data set)? And what is a one pass clustering algorithm? Could you provide pseudo code for a one pass clustering algorithm?
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2answers
65 views

How to plot clusters of kmeans in R and show centroids?

I have a dataset that has 6497 instance, 12 attributes, and a class variable called q (quality). The class values can range from 3 to 9. The data can be downloaded in CSV format from here I am ...
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2answers
51 views

Automated grouping in SAS with minimizing variance within group

So I tried to build the automated grouping. The goal is to select the grouping setting that has the lowest variance. In other word, I want to find x and y for the following, x,y are natural number, ...
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1answer
63 views

Cut off point in k-means clustering in sas

So I want to classify my data into clusters with cut-off point in SAS. The method I use is k-means clustering. (I don't mind about the method, as long as, it gives me 3 groups.) My code for ...
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1answer
96 views

How to draw the plot of within-cluster sum-of-squares for a cluster?

I have a cluster plot by R while I want to optimize the "elbow criterion" of clustering with a wss plot, but I do not know how to draw a wss plot for a giving cluster, anyone would help me? Here is ...
1
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1answer
126 views

Save Cluster Variables / Variable PSPP

I am using PSPP (NOT SPSS since I can't get that running on my Ubuntu machine) and having my set of ~100k records clustered with a k-means cluster. Now what I really need is a more detailed output ...
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2answers
13k views

Implementation of k-means clustering algorithm

In my program, i'm taking k=2 for k-mean algorithm i.e i want only 2 clusters. I have implemented in a very simple and straightforward way, still i'm unable to understand why my program is getting ...
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0answers
524 views

Using StringToWordVector in Weka with internal data structures

I am trying to obtain document clustering using Weka. The process is a part of a larger pipeline, and I really can't afford to write out arff files. I have all the documents and the bag of words in ...
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2answers
1k views

Which clustering algorithm is suitable for one-dimensional Lists without knowing k?

I have a one dimensional List like this public class Zeit_und_Eigenschaft { [Feature] public double Sekunden { get; set; } } //... List<Zeit_und_Eigenschaft> lzue = new ...
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1answer
676 views

How to use apache's DBSCANClusterer

I have a distance matrix as mentioned in the question here : Clustering with a distance matrix Now, I would like to perform DBSCAN on this matrix using the the DBSCANclusterer.java class from ...