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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KMeans in python (framework = django)

I want to use KMeans in Django... my code is: from django.db import models from django.utils import timezone import sys from sklearn.cluster import KMeans from sklearn.metrics import ...
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How to determine which `x` argument to use for K-means and scatter plots?

I'm trying to implement and visualize a K-means algorithm code in Python. I have a dataset I created using make_blobs, then I fit the data with K-means and visualize the results using matplotlib....
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Amazon SageMaker kMeans won't take sparse matrix (csr_matrix) as input, any alternatives before using a dense matrix?

I want to apply sagemaker's kMeans algorithm to a sparse matrix, obtained with TfidfVectorizer from sklearn's library. Ideally I would like to provide the input data to Sagemaker's kMeans ...
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How to get features/attributes of a data point if its distance from the cluster's center is known?

I have a DataFrame X with columns A, B and C. I applied kMeans clustering with n_clusters=4 and got euclidean distance of 10 nearest data points from each cluster's center. Example, for ith cluster, I ...
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How to get N numbers of data points which are nearest from a cluster's center?

I want to get N nearest data points from center (based on Euclidean Distance) in each cluster after deploying K-means algorithm. I am able to get the indices of data points using np.where(km.labels_ =...
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kmeans algorithm complexity calculation

For k-means algorithm on a large dataset on which computational cost is crucial. Choose between two distances : Euclidean and cosine and explain why
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35 views

Initial centroids in k-means

So I found a description online that says: Start with the center of all points. Choose successively the point that is the furthest away from all centers as a center for the next cluster. So from ...
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Feature mostly zero

I am doing a clustering problem, and some of my features are almost constant (95% of values are 0, and the rest has an exponential distribution). How does this affect clustering with KMeans and is ...
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K-means with one-hot encoding vs. K-modes [on hold]

I have a clustering problem with categorical variables. Therefore, I am using k-modes, but it is very slow because the dataset is large. I ran the same data problem with k-means via one-hot encoding. ...
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30 views

Way of approaching categorical data in k-means clustering algorithm in python

I am facing the following problem. I I have a csv file with the following fields vendor, number_of_products, price, shipping_country which I am trying to cluster using python and k-means from sci-...
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Can k-means clustering be used to define classifications in recognition?

I'm doing a recognition problem (faces) and trying to reduce the problem size. I originally began with training data in a feature-wise coordinate system in 120 dimensions, but through PCA I found a ...
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TensorFlow KMeansClustering CollectiveAllReduceStrategy

I want to test the collective all-reduce strategy with kmeans. But I am getting "TypeError: Value passed to parameter 'T' has DataType bool not in list of allowed values: float32, float16, float64, ...
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Grouping words by common themes with machine learning [closed]

I have a list of keywords that I need to group (or cluster) separately based on their theme. The thing is that the data that I have does not have any metric to represent the differences between ...
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27 views

How do we customize the centroids in k-means clustering

I am trying to implement k-means clustering on Spark using Python and i want to specify the initial centroids instead of taking 'random' or 'k-means++'. I want to pass an RDD which contains the list ...
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30 views

What is the way to specify the distance measure while implementing k-means clustering on Spark [duplicate]

I want to implement k-means clustering on Spark with Euclidean and Manhattan distances. While Euclidean distance is used default by the functions, I would like to know if there is any way to specify ...
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25 views

Sklearn kmeans with multiprocessing

I can't understand how the n_jobs works : data, labels = sklearn.datasets.make_blobs(n_samples=1000, n_features=416, centers=20) k_means = sklearn.cluster.KMeans(n_clusters=10, max_iter=3, n_jobs=1)....
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Doc2Vec Clustering with kmeans for a new document

I have a corpus trained with Doc2Vec as follows: d2vmodel = Doc2Vec(vector_size=100, min_count=5, epochs=10) d2vmodel.build_vocab(train_corpus) d2vmodel.train(train_corpus, total_examples=d2vmodel....
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Coloring a Cluster. Kmeans

I currently have the code below: I have also imported the libraries numpy and matplotlib. def colorTheCluster(data,centroidCoordinates): index = AssignPointsToCluster(data,centroidCoordinates) #...
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65 views

Implementing k-means with Euclidean distance vs Manhattan distance?

I am implementing kmeans algorithm from scratch in python and on Spark. Actually, it is my homework. The problem is to implement kmeans with predefined centroids with different initialization methods, ...
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Semantic Clustering based on wordnet in python

I am taking a pdf corpus and generating a list of tokens. Out of those tokens I am taking most common 10 words to create their clusters and based on their semantics I need to plot the whole list of ...
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kmeans: How to print the within-cluster total sum of squares for each of the nstart clusterings

In R, for the kmeans function, along with specifying the number of clusters with the parameter centers, one can also specify the number of times to rerun the clustering with the parameter nstart. ...
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Capacitated Kmeans clustering in Python sklearn package

Is there a way to limit the number of points that kmeans put in a cluster? I am using kmeans in sklearn package in Python and don't want kmeans to put as many points it wants to in a cluster. I have a ...
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21 views

how to use Kmean centers, for testing new data?

this is what I'm going to do! ( maybe this method is wrong in the first place, tell me if I'm wrong) I have a data set of 300 images, I extract 36 features from each image and create a feature matrix ...
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Plot tensorflow KMeansClustering object as scatterplot

I am trying to cluster data using kmeans clustering algorithm. I am using tensorflow for this purpose. Here is the code. import tensorflow as tf import pandas as pd import numpy as np import ...
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python k-means clusters plot instead of centroids with matplotlib

I am trying to plot a k means classification. The code works well to identify the cluster (not plotting them) and it does plot the centroids; i'm trying to plot a cluster visualization : but i have ...
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20 views

K Means Clustering - ID's instead of indices in R

I cluster product IDs on amount of sales and profit of sales to identify product IDs on which I need to focus more. The code below takes column 2 (amount of sales) and column 3 (profit of sales) as ...
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2answers
29 views

Updating value of K in K-Means Clustering

What is the best way to cluster a dataset with no labels and no idea of the number of clusters required? For example, using the Iris dataset with no labels or knowledge of the number of label classes....
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35 views

In K-Means clustering algorithm(sklearn) how to override euclidean distance to some distance

I have some set of documents, I just want to group related docs. Currently I'm using google's news vector file (GoogleNews-vectors-negative300.bin) and with this vector file I'm getting the vector and ...
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2answers
41 views

K Means based on mixed type dataframe

I have the following dataset and i want to apply clustering( in particular k-means) on it. id category value 0 122 A 3 1 122 B 4 2 122 ...
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38 views

How to cluster data with user_id - k-means algorithm

I want to cluster data of users by user_id, because I need to analyze each cluster after clustering. my clustering algorithm is k-means/k=3. I'm using python. my data: V1,V2 100,10 150,20 200,10 120,...
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57 views

kmeans complains “NA/NaN/Inf in foreign function call (arg 1)”, when there are none?

I'm trying to run kmeans clustering analysis on a relatively simple data frame. However,  kmeans(sample_data, centers = 4)  doesn't work, as R states there are "NA/NaN/Inf in foreign function call (...
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Clustering Variables in R and Memory Usage

I'm trying to calculate clusters of some variables in R with cluster library. The code goes like this: d2 <- dist(ant, method = "euclidian") The problem is that shows this message: Error: ...
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Using kmeans with sklearn

I have a CSV I've pulled into a Pandas dataframe and I am trying to run a basic KMeans clustering through SciKit-Learn. This is the first time I'm doing this and I've hit an error that I don't ...
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16 views

How to pre-processing data of a game - k-means

I have a table of users' scores like this: user_id score duration_of_per_play start_date 1 56 313 2018-01-09 2 14 560 2018-08-01 1 ...
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66 views

type mismatch; found : org.apache.spark.sql.DataFrame required: org.apache.spark.rdd.RDD

I am new to scala and mllib and I have been getting the following error. Please let me know if anyone has been able to resolve something similar. import org.apache.spark.sql.SparkSession import org....
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Simple k-means algorithm in Python

The following is a very simple implementation of the k-means algorithm. import numpy as np import matplotlib.pyplot as plt np.random.seed(0) DIM = 2 N = 2000 num_cluster = 4 iterations = 3 x = np....
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kmeans clustering on specific columns

My dataset contains 2 columns users and products. I want to cluster the users into 8 groups based on the purchase of products. But my kmeans is clustering the products instead of users. products =...
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21 views

R save kmeans algorithm into a file

I created a clustering algorithm in R using the kmeans() function. I am using this algorithm along with the cl_predict() function in the clue package to label data with the predicted groups. I want ...
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36 views

How to apply KMeans clustering on PDF Data using python?

With reference to this topic: How to convert token list into wordnet lemma list using nltk? I want to show the words with similar meaning in a cluster diagram. I went through some of the methods and ...
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python - How do I extract the id from an unsupervised text classification

So I have the following dataframe: id text 342 text sample 341 another text sample 343 ... And the following code: X = tfidf_vectorizer.fit_transform(df['text']).todense() pca = PCA(...
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1answer
34 views

K-means clustering on text data without tf-idf preprocessing

I used k-means to cluster text data without TF-IDF preprocessing to convert text data into numbers. I can retrieve K-means clustering groups without any problem, but from what I know, isn't that K-...
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23 views

Finding Accuracy for this K-Means model

This program predicts the cluster to which the coordinates belong to, where it divides the given points into two clusters 0 and 1. How do I get the accuracy of this model for the variable - prediction ...
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How to save arrays of cluster centers to a CSV file using Java-Spark

I have a k-means cluster of size 5. With following cluster centers: [0.20695007962617393,0.22959500425366122,0.1776191839974194,0.1277458082542413,0.12311961417153085,0.17066107155355462,0....
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16 views

Clustering vectors in a 3d room [duplicate]

Right now I am trying to find a clustering algorithm for me. I want to cluster my points in a 3d room. I have found some examples for quality threshold clustering and k-means clustering. Do you have ...
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Is this a valid way to determine number of clusters in K-means [duplicate]

i am a novice in Data science , just started a new path way and during my exciting journey i studied cluster analysis in EDA. and During studying it i read a lot this statement : clusters are in ...
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Feature selection in K means clustering

I have a dataset with more than 20 columns. I want to find out which two variables contributes towards highest importance. How to do it?
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Tuning the hyperparameter of Kmeans algorithm

Is there any way to tune hyper parameter of Kmeans algorithm in python?
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Is there a way to balance the risk of overfitting against the risk of instability in training a KMeans model?

We have a set of KMeans models. Some have been trained on 100% of the data, some on a sample. Both models are then fitted to the entire data set. In repeated samples the ones fitted to 100% are more ...
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Image Compression on Python using sklearn K-Means

I'm doing the Machine Learnirg course on Coursera and after implementing it on Octave I'm doing it on Python. I'm on a exercise that takes a 128x128 image with RGB colors, apply K-means with 16 ...
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Kmeans cluster attributes

I am working on a cluster analysis in R using kmeans. I wanted to recreate the following attribute analysis from Dataiku. This graph tells you how the different dimensions are contributing to each ...