1
vote
1answer
10 views

ELKI: Implementing a custom ResultHandler

I need to implement a custom ResultHandler but I am confused about how to actually integrate my custom class into the software package. I have read this: ...
-2
votes
0answers
23 views

clustering of rectangular boxes having similarity

I have a different rectangular shape boxes with specific height and width. Now I want to cluster the rectangular boxes those who are similar in sizes...i.e boxes b/w a cluster must be similar and ...
3
votes
3answers
64 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 ...
0
votes
0answers
8 views

Fuzzifier importance and algorithms which detects non-convex cluster shapes.

I would like to know what is the importance of the fuzzifier parameter in fuzzy clustering algorithms like c-means? I understand that it determines to which level clusters can overlap. However, I see ...
0
votes
1answer
21 views

MySQL Create a distribution or frequency list of similar items across user shopping carts

It has been a while since I have posted this question; just curious if anyone can take an honest stab at it. Here is the table I have +----------------------+ | cart_product_table | ...
0
votes
2answers
53 views

DBSCAN algorithms in rapidminer and scikit-learn

I am trying to find a clustering algorithm to cluster nominal data with python. For that purpose I tried DBSCAN algorithm with RapidMiner and it worked with nominal data. But when I try same dataset ...
-1
votes
1answer
32 views

pre-processing for clustering of network data

I will apply clustering (k-means) to network data which has columns like ip address and port number. Despite port numbers are integer, for example relation between 80th and 81th ports are not closer ...
0
votes
1answer
22 views

Cluster Shape and Size

I'd like to ask about how the shape and the size of a cluster is mathematically determined. For example, I have read that K-means clustering algorithm fails to find clusters of non-convex shapes, ...
0
votes
0answers
32 views

How do I implement a K means clustering in R based on maximizing scatter between class matrix?

I need to do K means clustering with the difference that i need maximize the difference between clusters.I can't find a package to do it.Writing the package myself is difficult. Thank You
3
votes
1answer
50 views

Clustering : No single point clusters

I have 4-dimensional data which needs to be clustered to build minimum volume bounding ellipsoids for each cluster. I don't want to have single point clusters or at least, as less number of single ...
1
vote
1answer
21 views

how to choose the delta value in EM clustering in ELKI

What should we choose the value of delta in EM clustering? It gives different values of the measures for different values of delta.
-2
votes
2answers
47 views

algorithm to create bounding rectangles for 2D points

The input is a series of point coordinates (x0,y0),(x1,y1) .... (xn,yn) (n is not very large, say ~ 1000). We need to create some rectangles as bounding box of these points. There's no need to find ...
0
votes
2answers
63 views

Bigquery - Text clustering

Does anyone knows who to run text clustering over a google's bigquery table ? I'd tried to use nltk over some small dataset (2k rows, single column) but it seems to take forever (99% CPU on a ...
-2
votes
2answers
54 views

Text CLustering Algorithms

I am looking to cluster a bunch of Twitter hashtags based on their topics. All the hashtags related to the same topic will go under the same cluster. I was looking for any python based libraries which ...
0
votes
1answer
58 views

ELKI Maven OPTICS

I'm trying to use ELKI (http://elki.dbs.ifi.lmu.de/#GettingELKI:DownloadandCitationPolicy) but cant find the maven dependency. Does anyone know where I could find it? I want to do some experiments ...
1
vote
1answer
60 views

Parameter eps of DBSCAN, python

I have a set of points . Their geometry (SRID: 4326) is stored in a Database. I have been given a code that aims to cluster this points with DBSCAN. The parameters have been set as follow: eps=1000, ...
2
votes
1answer
53 views

ELKI - k-means clustering.

I' like to run ELKI k-means clustering in command line. It seems that running time is too short compared with R programming. I tried to run k-means clustering in R, then It took about 100 seconds. ...
1
vote
2answers
60 views

Clustering with proportional threshold

I'm starting learning about clustering so perhaps this is a basic question. The idea is to generate clusters out of an array of floats, 1 dimension and N dimensions, get the mean value of each ...
2
votes
1answer
53 views

Pass Java array as an input for ELKI DBSCAN

I have been able to use ELKI for DBSCAN using Java code and its amazingly fast compared to any other tool. Till now I was working with a CSV file and using following to give that as an input. ...
-2
votes
1answer
44 views

Determine Cluster Label in K-means

I have dataset that is contain 150 data that is actually divided into 3 group. Each group has it’s own label. I do clustering process with K-means algorithm to group the data. I need to assign the ...
2
votes
1answer
52 views

How to see ELKI DBSCAN clustering result

I am using ELKI for DBSCAN clustering of some ~14,000 GPS points.Its running fine but I want to see information about clusters like how many points are in a cluster.?
0
votes
0answers
26 views

what is oversampling factor in scalable k-means++

Is anyone here familiar with k-means|| (scalable k-means++) by Bahmani et.al 2012? I'm not good at interpreting the algorithm. So i got confused with the oversampling factor l in the algorithm. Could ...
2
votes
1answer
66 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 ...
0
votes
1answer
67 views

Using ELKI's Distance Function

This is a follow up from a previous question, where we commented that using euclidian distances with lat,long coordinates does not yeld correct results. I read in the documentation that ELKI enables ...
1
vote
2answers
165 views

Running DBSCAN in ELKI

I am trying to cluster some geospatial data, and I previously tried the WEKA library. I found this benchmarking, and decided to try ELKI. Despite the advice to not use ELKI as a Java library (which ...
0
votes
2answers
50 views

Hierarchical agglomerative clustering

Can we use Hierarchical agglomerative clustering for clustering data in this format ? "beirut,proff,email1" "beirut,proff,email2" "swiss,aproff,email1" "france,instrc,email2" "swiss,instrc,email2" ...
2
votes
1answer
152 views

How to plot clusters with a matrix?

I have a document dataset, I converted it to a matrix and run the k-means clustering, how do I plot a graph to show the clusters with the matrix? k<-5 kmeansResult<-kmeans(m3,k) plot(m3, col = ...
-1
votes
1answer
49 views

Error message obtained in determining the k-number of cluster of K-Means clustering

I would like to determine k-number of cluster but I couldn't use the NbClust function because my dataset is too big. I found an article on-line regarding to K-Means clustering ...
0
votes
1answer
29 views

K-Means with equal numbers of a binary attribute value in each cluster

Given a certain binary attribute, I want to ensure that the clusters produced by K-means have equal numbers of data points where the said binary attribute's value is 1. I know the above sentence is ...
1
vote
1answer
73 views

Optimal number of clusters in r

In this SO answer on how to choose the number of clusters, one of the graphs contains the following: These two components explain 100% of the point variability . What components is it referring ...
-1
votes
1answer
60 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. ...
1
vote
4answers
103 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. ...
-1
votes
2answers
42 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 ...
-1
votes
1answer
34 views

What´s meta learning on machine learning context? [closed]

Im looking for some stuff that nobody pay much attention for my bachelors in computer science thesis by the way i read about meta learning but didnt get the idea behind this. Could anybody give me ...
0
votes
1answer
106 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 ...
-1
votes
1answer
40 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
0
votes
2answers
141 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
votes
1answer
76 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 ...
1
vote
2answers
101 views

Analytical way of estimating neighborhood radius for DBSCAN

I have seen many DBSCAN algorithm implemented using a formula to estimate the neighborhood radius (Eps) based on the given minimum points within a cluster (k). [full code] ...
2
votes
1answer
417 views

Unable to Implement cosine similarity for simple k-means in JAVA for WEKA

I am pretty new to Java's WEKA API of ML. Since there is no cosine similarity algorithm in weka , I thought of adding this algorithm to WEKA by modifying the simpleKmeans algorithm of WEKA. The ...
0
votes
2answers
31 views

Decision on number of clusters in Data Mining

When ever we want to cluster some data then It is required to give the number of cluster by user. Like K-Means algorithm we need to specify that how cluster are required. My question is it possible ...
0
votes
1answer
47 views

What parameters can I play with using mcl?

I am clustering undirected graphs using mcl. To do so, I have choose a threshold under which nodes are connected, a similarity measure for each edge and the inflation parameter to tune the granularity ...
0
votes
1answer
64 views

Cutting dendrogram at highest level of purity

I am trying to create program that cluster documents using hierarchical agglomerative clustering, and the output of the program depends on cutting the dendrogram at such a level that I get maximum ...
1
vote
1answer
64 views

clustering algorithm for objects which have multiple feature time series information

I am looking for clustering algorithm which can handle with multiple time series information for each objects. For example, for company "A" we have time series of 3 features(ex. income, sales, ...
0
votes
1answer
45 views

Selecting parameters with Markov Cluster Algorithm

I am doing clustering using mcl. I am trying to "optimize" the clustering with respect to a quality score by tuning the inflation parameter I and a couple of other parameters I introduced. I have ...
0
votes
1answer
107 views

What data structures to use for dendrogram?

I have been searching how to implement a dendrogram, used to depict hierarchical clustering, efficiently. currently I using a a regular expression to parse and show it like a tree structure as shown ...
0
votes
1answer
26 views

Graph analysis using mcl and helper programs

I am trying to cluster data using the implementation of the Markov Clustering (mcl) algorithm at micans.org . I read in a description of the algorithm that it was possible to assign one element to ...
0
votes
1answer
18 views

Graph analysis using mcxquery

I am clustering and analysing graphs using mcl. I'm not familiar with graph theory and I read about the function mcxquery. It is said in the doc that: " The main use of mcxquery is to analyze a ...
1
vote
0answers
67 views

suggestion of suitable dataset for dbscan

I have implemented clustering algorithm DBSCAN using threaded-quad-tree and need to compare the performance. In this context, I'm asking your suggestion about suitable point data-set (x, y values) to ...
1
vote
1answer
91 views

Compiling Modified Weka Source code (weka-src.jar) and creating a weak.jar file to use with weka software

Hi I modified my K mean clustering Algorithm to use the haversian formula for lognitude and latitude instead of euclidean distance . i modified the euclidean distance file in the core folder. here is ...