Questions tagged [k-means]

In statistics and data mining, k-means clustering is a method of cluster analysis which aims to partition n observations into k clusters in which each observation belongs to the cluster with the nearest mean (least squares).

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k means users clustering for movielens dataset

How can I apply k-means clustering for movielens dataset? I am doing this in python but the problem is it's too much slow and almost stuck when I apply it for 500 users. I don't even know that it is ...
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7 views

how to find maximum likelihood for each iteration for GMM

I am using sklearn.mixture.GaussianMixture for GMM implementation, for N Dimension feature vector. How can I know the Likelihood value for each iteration, so that I can plot the likelyhood graph of ...
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How to implement GMM Clustering which work for N Dimension feature vector in python

I am trying to implement GMM Clustering for both 24 Dimension feature vector and 32 dimension feature vector, where assignment of initial parameters are done by Kmeans algorightm (K mean clustering is ...
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1answer
15 views

How to handle kmeans when a cluster has zero elements in it

I'm trying to implement KMeans in Java and have encountered a case that throws all of my results out. This happens when, given some randomly chosen initialized centroids, the data gets into a state ...
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1answer
16 views

Why finding Elbow (or using L-method) with CH and SIL for number of cluster selection?

In this paper, the author uses CH (Caliński–Harabasz index) and SIL (Silhouette index) methods to decide the number of clusters. However, instead of selecting the highest values, it applies a L-...
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copy-move forgery detection using key-points in python

I'm trying to detect copy-move forgery through key points. I'm using this This above image has tampered ( the number 4 is copied and moved). I got the key points (number = 891) and descriptors for ...
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2answers
34 views

K-Means clustering for multivariate data (with both discrete and continuous attributes)

I would like to know how I can cluster a multivariate dataset using K-means. Each sample in this dataset corresponds to a Person (I have 6000 people), and each Person has both continuous and discrete ...
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22 views

KMeans not producing correct results

I am trying to implement kmeans clustering in Java and it is not returning the correct results. I have 3 folders each one containing 8 related documents (for 24 documents in total) and am trying to ...
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1answer
36 views

Why does the mdentropy tutorial give an error in scikit-learn/sklearn/cluster/k_means_.py?

Upon doing a tutorial on mutual information in mdentropy package, I am getting the following error: File "/home/midhun/scikit-learn/sklearn/cluster/k_means_.py", line 994, in fit_predict return self....
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2answers
77 views

Visualizing KMeans Clustering with Many Inputs

I'm totally new to machine learning (and full disclosure: this is for school) and am trying to wrap my head around KMeans Clustering and its implementation. I understand the gist of the algorithm and ...
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Can someone provide openmp code for kmeans clustering?

I am having problems with producing code for k means clustering using open mp for fast and parallel processing.Please if someone can provide the code?
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19 views

Visualising KMeans clustering

I'm trying the visualise the clusters and I'm stuck, don't really know how to do it! Here's my code: import numpy as np import pandas as pd from sklearn import metrics from sklearn import cluster ...
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1answer
35 views

How to visualize k-means cluster using R?

How can I make k-means clustering for my following log2 transformed data set, something like attached image. My sample df is like : set.seed(5) cnt_log2 = data.frame(replicate(6, runif(1000,0,20)), ...
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1answer
35 views

Error: K-Mean Clustering Algorithm data plots is not visible in Python

Hi I want to implement the K-Means Clustering Algorithm. For this I am getting data from sample.csv file and apply K-Means clustering on it. Here is my source code ## K-Means.py # clustering ...
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2answers
33 views

Associating region index with true labels

The documentation is somewhat vague about this whereas I would've thought it'd be a pretty straight-forward thing to implement. The k_mean algorithm applied to the MNIST digit dataset outputs 10 ...
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Website load time increased with K-means compressed images [closed]

I performed compression of multiple images using K-means algorithm. The size of the images had decreased. I uploaded them in a website and found that the load time of website had increased with the ...
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2answers
77 views

Organizing Clusters in K-means clustering

I am using python for k-means clustering for Mnist database(http://yann.lecun.com/exdb/mnist/). I am able to successfully cluster the data but unable to label the clusters. Meaning, I am unable to see ...
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Visualize k means clusters python

I have a csv file with 4295 entries : ,name,product,ship_from,score,shops,class 0,tom,22,0.3,0.893818566,2,0 1,jer,2,0.3,0.910212895,2,0 2,ed.,6,1,0.195939375,1,0 3,paul,16,0.3,0.56267631,2,0 4,...
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1answer
19 views

Clustering observation locations rather than individual observations in R

Say I have the following data set: structure(list(x = structure(c(-0.640988601698674, 2.83880475590451, 1.972285329221, -0.748438401134246, -0.709535253162132, 0.549618381811837, -0.335293922304472,...
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1answer
24 views

KMeans scatter plot on macbook

I am a newbie in datascience and I was trying to plot a scatter plot for a dataset with 4000 rows. I am running Jupyter Notebook on a macbook. I found it took more than five minutes for the scatter ...
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1answer
21 views

Unsupervised learning to separate two groups

I am currently working on a passenger noise separation of a public transportation system. I only have unlabeled data which means I can not do supervised learning. The data consist of the MAC address ...
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34 views

How can I assign weights to my features with scikit learn K Means clustering

I am trying to give my features different weights. How am I able to do it. I have tried the following pca = PCA(n_components=2).fit_transform(input_data) pred = KMeans(n_clusters=2, init='k-means++', ...
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Why is a 1D k-means clustering slower than a k-means initialized mixture model fit?

My timing shows that k-means consistently loses out on timing, compared to a mixture model, initialized using k-means. What's the explanation for this? Is the GMM using a different k-means algorithm? ...
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2answers
54 views

unsupervised image clustering [Python]

I have a database of images that contains identity cards, bills and passports. I want to classify these images into different groups (i.e identity cards, bills and passports). As I read about that, ...
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label in k means clustering

I want to make 3 clusters and I want to print the data of customer and in which cluster they belong. This is my present code: import numpy as np import pandas as pd from sklearn.cluster import ...
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29 views

Image processing using K-Means Clustering and R

I am writing code to pick up path for an image file using web page, apply k-means clustering on it and then display original image and modified image on the same web page. I am able to apply the k-...
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28 views

How to cluster temporal pattern of users with k means [migrated]

I have data relating to the movement of travelers through a toll road based on a smart card. I have the ID of the individual and a datetime stamp for each time they pass through the toll (in either ...
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16 views

How to do Incremental Learning with Scikit Kmeans

I am new to the concept of incremental learning in ML. I have already implemented a K-means clustering ML with accelerometer data that I collected. For future implementations, I would like my ML to ...
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1answer
23 views

K-means initialization with further-first traversal and k-mean++

I am confused about k-mean++ initialization. I understand k-mean++ choose and furthest data point as next data center. But how about outlier? What is the different between `initialization with further-...
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12 views

SpectralClustering ValueError: Input contains NaN, infinity or a value too large dtype('float64')

I am trying to run the Dask SpectralClustering algorithm. It gives me the following error: ValueError: Input contains NaN, infinity or a value too large dtype('float64') The code that I run is ...
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1answer
32 views

Heavily unbalanced/skewed data clusters

I am facing some issues with my k-means clustering results on Alteryx. I am trying to conduct topic modelling on my data set of around 5000 text descriptions. After data cleaning, parsing and removing ...
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1answer
31 views

Get insight from data using machine learning still need manual analysis?

I'm new in machine learning and recently got job to do R&D related to Big Data. The main idea is to get the insight from random collection of big data (I don't know yet what will be the data) and ...
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1answer
38 views

Grayscale image obtained after image compression

I am performing image compression using K means clustering algorithm. The images obtained after compression are grayscale, how can I obtain colored image with similar quality as original? import os ...
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26 views

KMeans To Find Dominant Color of Each Image in an Array of Images

I am trying to use K-Means to find the dominant color of each image in an array of images. The example below uses KMeans from python's sklearn.cluster import. Say, for example, I have a 100x100 ...
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1answer
56 views

Using a CSV file in Scala

I'm trying to run K-means on Apache Spark with Scala.When I used the example that's on the Spark website https://spark.apache.org/docs/2.3.0/ml-clustering.html everything goes fine but when I tried ...
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35 views

How to cluster *features* based on their correlations to each other with sklearn k-means clustering

I have a pandas dataframe with rows as records (patients) and 105 columns as features.(properties of each patient) I would like to cluster, not the patients, not the rows as is customary, but the ...
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1answer
33 views

Compress multiple images using Kmeans Clustering

My error: File "C:/Users/hero/PycharmProjects/project/CompressMe.py", line 14, in <module> image = image.reshape(image.shape[0] * image.shape[1], image.shape[2]) IndexError: tuple index ...
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27 views

Why K-means is so used for document clustering?

Can someone explain to me why the K-means algorithm is so used (especially in documents clustering) despite its defects, instead of K-medoids for example, or CAH, SOM etc.?
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2answers
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module 'sklearn.metrics' has no attribute 'davies_bouldin_score'

I am trying to evaluate a clustering kmeans model using sklearn.metrics.davies_bouldin_score. I am using google colab with runtime Python 3 and GPU accelerator. I got this error: module 'sklearn....
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1answer
42 views

ValueError: shape mismatch

I am trying K-means image compression, but I am getting this error File "C:/Users/[user]/PycharmProjects/project/CompressMe.py", Line23, in <module> final[pixel_centroids == cluster_no] = ...
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1answer
23 views

how to setup initial cente in opencv python using cv2.KMEANS_USE_INITIAL_LABELS

how to set bestLabel vector in python, what will size of bestLabel,is this have two position from samples. compactness,label,center=cv2.kmeans(samples,K,bestLabel,criteria,10,cv2....
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1answer
25 views

how to predict the duration until failure?

I have a data set of service records of 350 odd entries. in which some details like duration (in months) and "kilometers covered" are there along with the regions info. All of the records are of one ...
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1answer
42 views

Scipy.cluster kmeans2

I am trying to apply the kmeans2 algorithm in Scipy. The following code applies the algorithm correctly. from scipy.cluster.vq import kmeans2,vq import numpy as np df = pd.read_csv("123.csv") km,...
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15 views

Recommender System using java and mongo db

I've created an web app using spring boot where the user can search car ads by selecting multiple values which are indexed from 0-10 and every index represents an option(Bascally one search would be ...
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1answer
53 views

How reliable is the Elbow curve in finding K in K-Means?

So I was trying to use the Elbow curve to find the value of optimum 'K' (number of clusters) in K-Means clustering. The clustering was done for the average vectors (using Word2Vec) of a text column ...
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2answers
53 views

The result of kmeans() does not vary from run to run

I am trying to make several kmeans runs, in order to see the different values that totss get. But when I run the following code, I get the same exact result 50 times (n=50). n= 50 k=1 for (i in c(1:n)...
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1answer
21 views

KMeansModel.clusterCenters returns NULL

I am using AWS glue to execute Kmeans clustering on my dataset. I wish to find not only the cluster labels but also the cluster centers. I am failing to find the later. In the code below model....
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0answers
25 views

How do i Implement Mahalanobis function into the K-means clustering?

The K-Means clustering algorithm uses Euclidean distance. I want to implement Mahalanobis logic instead of Euclidean but where to adjust the covariance factor? Here's the python code: #Euclidean ...
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14 views

2D k means clustering neural network

I study atm Neural networks and one question keeps me awake. Let us assume we have the k means clustering problem in 2D. How would the actual network look like? I can find only that the updating ...
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0answers
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Is my code efficient for a K-Means implementation?

I would like to implement the K-Means algorithm in C++. It is a clustering algorithm. Given n observations in a d dimensional space. It does the following: First, select k centers at random from the ...