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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Increasing inertia k-means

I am trying to perform k-means, with scikit-learn in Python, on the eigenvectors of the Laplacian matrix of my dataset. The thing is, when I attempt to find the optimal number of clusters with the ...
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Visualise clusters with k-means

I have the following dataset: Date Text 0 05/26/2020 è morto all'improvviso jk, aveva... 1 05/26/2020 è morto a 51 anni jk, attore, co... 2 05/26/2020 aveva 51 anni e si trovava in ...
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IndexError: while predicting for a kmeans cluster

I am getting error: IndexError: only integers, slices (:), ellipsis (...), numpy.newaxis (None) and integer or boolean arrays are valid indices My code is as below: list(ctg) min_max_scaler = ...
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Summing time series after k-means clustering

I am trying out different variations of K in K-means clustering on a set with time series data. For each experiment I want to sum up the time series for each cluster label and perform predictions on ...
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How to build effective K-means algoritham?

I have written a simple K-mean algorithm, But I am finding difficulty to explore it cluster by cluster. Github Link: https://github.com/AkshayBayas/Machine-learning-/blob/master/K-Means%20algorithm....
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PCA before clustering for dimentionality reduction

I have around 100.000 observations and 50 variables. So I want to run a PCA on the variables. After PCA, if I extract 'x' principal components, then how am I supposed to use the result in my ...
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how do i implement cluster based oversampling in python?

Recently, in a data science competition I came across a class Imbalanced data set. I have tried random_sampler but I studied that cluster based oversampling (using kmeans) is more efficient way. I ...
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How to plot latitude and longitude with cluster centers for KMeans Algorithm?

I'm working on practicing the kmeans algorithm, focusing on NY crime data. Using the elbow method, the best cluster # being true. Part of the dataset also includes longitude and latitude. My question ...
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1answer
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how to add columns into clustering algorithm

i'm working with flask python framework on a data science project , and i need to add selected columns from a csv file in this clustering code, please can anyone help me ? knowing that the clustering ...
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30 views

Multivariate K-means clustering in Python?

I'm not sure if there's existing terminology for this, but I'll try to explain my question below. So I have an existing k-means clustering algo that uses scikit-learn, with about 50 dimensions, ...
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How to plot the cluster's centroids specifically, using seaborn?

Basically, I want to plot like this: I already managed to plot the clusters using sns.scatterplot(X[:,0], X[:,1], hue=y, palette=['red', 'blue', 'purple', 'green'], alpha=0.5, s=7) which results ...
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How could I find the indexes of data in each cluster after applying the PCA and a clustering method?

I would like to order each point of the plot to its corresponding index in the table. Here are the first three lines of data I'm working with. After applying the PCA (2D) to my data, I get a plot ...
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Memory error calculating DistMatrix for silhouette score(clustering)

I have 22mil samples and 6 features that I clustered them using k-means(sklearn). I want to calculate the silhouette score(and silhouette samples if it is possible to see the distribution for every ...
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How does clustering happen over RED,GREEN AND BLUE Channels for dominant color extraction using KMeans

I have a rgb image of dimensions (500,500,3). I am trying to extract let's say k dominant colors from it(for the purpose of understanding Lets assume k to be 4). I have reshaped the image to (500*500,...
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Truncated function info being displayed within jupyter notebook cell output - how to show full function arguments in cell output

Last year when I fit a datset to a KMeans function in Jupyter Notebook script, the cell output displayed full function arguments of KMeans on execution. But recently I ran the code lines again, and ...
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Retrieve Indices while performing K-Means algorithm

I have a data frame of following form; dict_new={'var1':[1,0,1,0,2],'var2':[1,1,0,2,0],'var3':[1,1,1,2,1]} pd.DataFrame(dict_new,index=['word1','word2','word3','word4','word5']) Please note that ...
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Convergence K-Means Unsupervised Image Clustering Pre-trained Keras Grayscale Image

I'm new to image clustering, and I followed this tutorial: Which results in the following code: from sklearn.cluster import KMeans from keras.preprocessing import image from keras.applications.vgg16 ...
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Why KMeans.score() gives very high value?

I'm working on Udacity's Identify Customer segments project. My problem now is that after applying StandardScaler on the dataset after procedures of cleaning, I used PCA(n_components=36).fit_transform(...
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How to cross-validate KMeans with more cluster than classes in sklearn?

I have a dataset containing 2 classes and I'm interested in predicting in which of these classes a new point will fall. Using KMeans to recognize 2 clusters, and thus assigning to each point of a ...
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kmode: Elbow plot and silhouette analysis

I'm trying to do a cluster analysis of a categorical dataset in R. I've chosen Kmodes algorithm. In input I have to put K, the number of cluster. I know that there are some techniques to help to chose ...
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how can i make the circles of my plot smaller in R?

This is the code I used: resources <- read.csv("https://raw.githubusercontent.com/umbertomig/intro-prob-stat-FGV/master/datasets/resources.csv") res <- subset(resources, select = c(&...
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K means implementation with Pytorch

I am trying to implement a k-means algorithm for a CNN that first of all calculate the centroids of the k-means. I have a tensor of dims [80,1000] with the features of one layer of the CNN. Then i ...
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32 views

Techniques for analyzing clusters after performing k-means clustering on dataset

I was recently introduced to clustering techniques because I was given the task to find "profiles" or "patterns" of professors of my university based on a survey they had to answer....
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How to check the relationships between 10 groups based on 4 variables

My data-set has 5 variables. One of them is the group . There are 10 different groups. I want to check the relationships between 10 groups based on other 4 variables. Other variables are ...
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Discrepancy in comparing Kmeans results from spark and in sklearn

I am comparing results of the k-means algorithm from spark and sklearn. I am plotting the sum of squared distances of samples to their closest cluster center with both algorithms. from pyspark.sql ...
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34 views

K- Means clustering for word vector (300 dimension)

I am writing a program for which I need to apply K-means clustering over a data set of some >200, 300-element arrays. Could someone provide me with a link to code with explanations on- 1. finding the ...
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K-Means Clustering - output clusters contains same number of elements but in different order [ Python ]

I followed this tutorial to perform K - Means clustering for a list containing individual words. This is a cricket based project so I picked K = 3 so that I can differentiate the three clusters into [ ...
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Sorting 2D array in new 2D array (K-menas clustering) Java

As input I have 2D array PointXY[ ][ ] clusters, which looks like this: [[23.237633,53.78671], [69.15293,17.138134], [23.558687,45.70517]] . . . [[47.851738,16.525734], [47.802097,16.689285], [47....
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is there any way to solve this error in python?

sparse_ratings = csr_matrix(pd.DataFrame.sparse.from_spmatrix(most_rated_movies_1k).to_coo()) --------------------------------------------------------------------------- AttributeError ...
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Kmeans clustering broadcast input shape

I am currently trying to set the initial centroids for the 4 clusters i am working with. Each observation consists of 24 data points, which is the size of the centroids i am introducing, yet i seem to ...
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Python - Split list to multiple lists with respect to a keyword

I have this huge python list I got as an output from a K means Clustering algorithm. Here is the code. clusterlist = [] for i in range(true_k): clusterlist.append('\nCluster %d:' % i), for ind in ...
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Number of distinct clusters in KMeans is less than n_clusters?

I have some food images stored in a single folder. All the images are unlabeled, nor are they stored into separate folder such as "pasta" or "meat". My current goal is to cluster the images into a ...
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How to retrieve cluster number for each customer belongs to alongside centroids in R

I have a dataset of over 20000 rows. where each row is a unique customer. I did k-mean clustering and output look like this. str(km.out.best) List of 9 $ cluster : Named int [1:24] 2 1 1 3 4 ...
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k-means algorithm - allocating cluster to individual customers

I am using K-mean clustering to see similar customer behaviour. Running the k-means algorithm library(cluster) # Needed for silhouette function kmeansDat <- data_tbl kmeansDat.t <- t(...
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how to predict a cluster for a new document without using Tfidfvectorizer

Explanation: I have a dataset of DailyKos that contains words(as features) and their frequency. I applied TfIdTransformer to compute tf-idf scores and used clusters = 7 Problem: after finding the ...
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float() argument must be a string or a number, not 'csr_matrix'

I encountered this problem while trying to plot a cluster on matplotlib. # Training the K-Means model on the dataset kmeans = KMeans(n_clusters = 4, init = 'k-means++', random_state = 42) y_kmeans = ...
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Multi Class Categorization using k-means clustering

The data is classified and I am using K Means clustering to predict classes. How can I map class numbers output in K means to classes in data? for eg. lets say I am predicting fruit types and classes ...
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K-means how to determine most locations near specific latitudes and longitudes

I know the central latitude and longitude for each neighborhood in a city and I have a data set of restaurants with their latitudes and longitudes. I need to determine which neighborhood is the most ...
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14 views

KMeans (sklearn) linear centroid initialization

this is about centroid initializations in sklearn's KMeans. I want to initialize the centroids in a "linear" way as follows: Linear initialization linearly spaces the centroids between the [min, max] ...
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how to find bounding boxes for each segmented digits?

I am doing OCR to read the 9-digit numbers. The 2 first images are the output of the segmentation model. Actually, they are grayscale. The 3rd is the input. Currently, I use K-means with K=9 to group ...
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How to use TPU provided by Kaggle?

I am currently working on Kaggle Spotify 1921-2020 dataset which has 160K rows of data. One of the tasks I am performing is differentiating Genres using KMeans clustering and I got stuck on finding k ...
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How to get subset of dataset after K-means clustering

I have a dataset val_lab as follows: [[ 52.85560436 -23.61958699 34.40273147] [ 70.44462451 -2.74272277 80.32988099] [ 38.32222473 -11.22753928 24.09593474] [ 84.83470029 -7.73898094 28....
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How load libsvm data file into numpy array to be used for kmeans clustering in sciki-learn?

I need to do clustering on a libsvm format data file, I know that we can load data using X,y = sklearn.datasets.load_svmlight_file(dataFilename). This returns X as a sparse matrix. Is there any way to ...
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Is there a way to determine the weight of different attributes used for R clustering?

I am using ~70 attributes to create clusters using K-means and hierarchical techniques (and maybe ultimately use a blended Hierarchical K-means clustering technique). Is there a way to figure out ...
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ValueError: DataFrame constructor not properly called- After fitting a SparsePCA

After fitted a SparsePCA from sklearn.decomposition import PCA from sklearn.decomposition import TruncatedSVD from scipy.sparse import random as sparse_random from sklearn.decomposition import ...
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K-means Clustering: Visualize clusters vs output classes in r

I am trying a few different classification models on my data. There are over 50 predictors and one output 'Status' which is good/bad classes. I am trying k-means clustering to see if the clusters ...
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How to use sklearn's K-Means to group people based on interests? [duplicate]

I'm not really sure how to go about this problem. I've tried using K-Means but it doesn't seem to be working. I want to match Person A from Set A with Person B from Set B based on their interests. ...
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26 views

Clustering: Is it a problem if factors are not independent? how to evaluate the model?

My data is as follows: each observation is a person, and the variables are time spent (in minutes) doing a given activity in the early morning, late morning, afternoon, evening, and night (5 variables)...
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31 views

Calculate distance between data points and centroid (kmeans) using sklearn in python

I am trying to do clustering using kmeans by sklearn. I need to compute the distance between each data point and its centroid. Can anyone help me here. Thanks in advance import re import sys import ...
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Speech Recognition using K means

I am referring to following code : https://github.com/Z3376/Speech-Recognition-with-Transfer-Learning/blob/master/audio_task2.ipynb I have built CNN model for feature extraction and want to perform ...

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