# Tagged Questions

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### The design of Clustering using MapReduce

I have got a similarity matrix like this: ItemA, ItemB, Similarity. I wanted it to cluster the dataset using algorithm such as Kmeans by using MapReduce. But I don't know how many MapReduces I should ...
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### Error in sample.int(m, k) : cannot take a sample larger than the population

First, let me say that I'm fairly new to Machine Learning, kmeans, and r, and this project is a means to learn more about this and also to present this data to our CIO so I can use it in the ...
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### Unable to use precomputed distances with Elki

I am trying to use precomputed distances with Elki, but for some reason cannot get it working. I have read the instructions here: http://elki.dbs.ifi.lmu.de/wiki/HowTo/PrecomputedDistances and this ...
86 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 ...
59 views

### Benchmarking EM Soft Clustering vs K-Means?

I have two implementations one is K-Means and the other is EM doing soft clustering. But I do not know how to validate them in terms of accuracy. i.e. which one performs better by retrieving better ...
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### 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
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### 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 ...
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### 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 ...
63 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. ...
47 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 itâ€™s own label. I do clustering process with K-means algorithm to group the data. I need to assign the ...
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### 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 ...
59 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 ...
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### 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 ...
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### 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. ...
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### 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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### 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 ...
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### 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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### 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
507 views

### When to use k means clustering algorithm?

Can I use k-means algorithm for a single attribute? Is there any relationship between the attributes and the number of clusters? I have one attribute's performance, and I want to classify the data ...
169 views

### Clustering text using 3 different approches (MinHash, HAC, K-means)

I have a set of university courses (around 30000). Each course have the following attributes, here is an example: Title: Machine Learning Institution name: Department of Information Technology ...
187 views

### Can K-mean clustering do classification?

I want to know whether the K-mean clustering algorithm can do classification? If I have done a simple k-mean clustering . Assume I have many data , I use k-mean clustering , then get 2 clusters A, ...
173 views

### weka clustering with SimpleKMeans confusinig output

I try to run and understand the results of SimpleKMeans algorithm in weka. This is my training data @relation weather_clustered @attribute Instance_number numeric @attribute outlook ...
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### Show KMeans cluster results with clusters as collumns

My data has 40+ variables and I am creating a 3 cluster model on it. I have built a kmeans model: teen_clusters <- kmeans(interests_z, 3). It works fine. It is getting an output that I can ...
6k 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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### K-means document clustering - what next? [closed]

I am trying to learn some hands-on techniques in datamining and machine learning. I just implemented a k-means clustering algorithm, and as far as I can tell it works fine. I understand that it finds ...
343 views

### Using k-means clustering on web log data

I have a data set from a access web log file which I'm interested in finding similar clusters. (I'm an absolute beginner of data mining). So far I have referred many research papers on the same ...
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### Computing k-means [closed]

How can I compute the standard k-means (Euclidean distance measure) with R? As an example the following data points are given {-3, -2, -1, 0, 2, 4,}. Using k=2 and starting with cluster seeds c1 = âˆ’1, ...
613 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 ...
259 views

### K means Clustering in R

I have a data frame with given structure. District Value1  Value2  Value3 X         1200   1500   1420 Y       ...
528 views

### Implementing K-Means Algorithm JDBC

I am working with an Oracle Database and have the following code implemented in java (with an SQL imported library), where I have a group of students, their average, and I flag those students with an ...
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### R k-means clustering data

in R, I have computed a k-means clustering as follows: km = (mat2, centers=3) where mat2 is a matrix of column vectors obtained by combining elements of a set of time series. There are 31 rows Now ...
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### Removing outliers from a k-mean cluster

I have number of smaller data sets, containing 10 XY coordinates each. I am using Matlab (R2012a)and k-means to obtain a centroid. In some of the clusters (see figure below) I can see some extreme ...
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### How to group GPS Cooridnates to represent One specific GPS Location ( Data Mining )

I have a scanario : I have the data of some GPS Tracks( longitutdes, latitudes ) and these are contained in 2 parts First part containing the data ( Longitudes and Latitudes ) which are the journey ...
1k views

### How to implement k-means algorithm on string data

I am trying to implement K-means algorithm on the below data-set.It's stragiht-forward to calculate distance between any two numeric attributes but how do I calculate distance between two strings and ...
199 views

### How to recognize a interior node having all its containing points in one cluster in a ball tree when doing k-means algorithm?

I am now reading the book Data Mining: Practical machine learning tools and techniques third edition. In the section 4.8 clustering, it discusses how to use k-d trees or ball trees to improve the ...
4k views

### How can i cluster document using KMean (Flann with python)?

I want to cluster documents based on Similarity. I haved tried ssdeep (similarity hashing) , very fast but i was told that KMeans is faster and flann is fastest of all implementations, and more ...
4k views

### Iregular plot of k-means clustering, outlier removal

Hi I'm working on trying to cluster network data from the 1999 darpa data set. Unfortunately I'm not really getting clustered data, not compared to some of the literature, using the same techniques ...
1k views

### Data clustering in KMeans Algorithm using binary tree structure

I am having trouble in generating code for KMeans clustering in java. I have already known the algorithm but it's very hard to write in in java code. My assignment is to retrieve data from database ...
1k views

### Predicting Values with k-Means Clustering Algorithm

I'm messing around with machine learning, and I've written a K Means algorithm implementation in Python. It takes a two dimensional data and organises them into clusters. Each data point also has a ...
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### Fuzzy K-modes clustering how to find the cluster centers

I'm trying to understand fuzzy k-modes algorithm (look mainly at page 3) in order to implement it. I'm stuck at the calculation of cluster centers they said as shown in the pic I need to know ...
288 views

### fuzzy k-mode clustering membership value calculation

I was searching for a clustering algorithm to fuzzy cluster categorical attributes and I found the k-modes algorithm I've got the way it works but I'm not understanding if the membership or belonging ...
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### Weka simple K-means clustering assignments

I have what feels like a simple problem, but I can't seem to find an answer. I'm pretty new to Weka, but I feel like I've done a bit of research on this (at least read through the first couple of ...
5k views

### Kmeans without knowing the number of clusters?

I am attempting to apply k-means on a set of high-dimensional data points (about 50 dimensions) and was wondering if there are any implementations that find the optimal number of clusters. I ...
3k views

### K-Means Algorithm [duplicate]

Possible Duplicates: How to optimal K in K - Means Algorithm How do I determine k when using k-means clustering? Depending on the statistical measures can we decide on the K. Like ...
3k views

### How to optimal K in K - Means Algorithm [duplicate]

Possible Duplicate: How do I determine k when using k-means clustering? How can i choose the K initially, if i do not know about the data? Can someone help me in choosing the K. Thanks ...
7k views

### WEKA K-Means Clustering

Can anybody explain what the output of the K-Means clustering in WEKA actually means. For example kMeans Number of iterations: 9 Within cluster sum of squared errors: 9434.911100488926 Missing ...
655 views

### Distance Metric for clustering elements in a sparse matrix

I am attempting to cluster approximately 12000 elements based on approximately 1200 binary variables using K-means. None of the conventional distance metrics (euclidean, manhattan, Hamming, ...