Questions tagged [unsupervised-learning]

Unsupervised learning refers to machine learning contexts in which there is no prior 'training' period in which the learning agent is trained on objects of known type. As such, supervised learning includes such disciplines as mathematical clustering, whereby data is segmented into clusters based on the minimisation or maximisation of mathematical properties and not on an attempt to classify by understanding the right context.

unsupervised-learning
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Request for Assistance with DFS, PMI, and Pairwise Constraints Implementation (Python) [closed]

I've been working on a Python implementation combining Depth-first Search (DFS depth = 2), Pointwise Mutual Information (PMI), and Pairwise Constraints (ML must link and CL cannot link). While I've ...
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Hierarchical agglomerative clustering with complete linkage to cluster a 1dimensional dataset

I'm currently working on hierarchical agglomerative clustering and am familiar with its application to datasets presented in tables. However, I'm unsure how to apply this method to a 1-dimensional ...
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Training a an unsupervised regression model using Tensorflow with a custom loss function

I have trained a model using supervised learning. Now I want to try and improve its results by giving taking the outputs of the trained supervised model and using the input features to improve the ...
Alorion's user avatar
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TypeError: len() of unsized object in pyclustering library

I am using the pyclustering library to perform K-means. The datasets I am using are being read in CSV format as shown in the code below. I have tried passing X_scaled as a numpy array, as a list using ...
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Why gridsearch or randomsearch not recommended for clustering algorithm?

Also I have been asked the Silhoutte Score is also not good for DBSCAN?
Chaudhari's user avatar
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Supervised learning? or unsupervised learning? which one is correct?

I am currently working on an image classification task, and the process involves training with the desired target values, making it a supervised learning task. However, when training a model, such as ...
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How exactly do I have to define the pipeline and the GridSearchCV for an unsupervised learning procedure?

I am trying to build a model with two stages, an unsupervised and a supervised learning process. First, I want to perform a dimension reduction with a kernel PCA and determine the main components. ...
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Alternatives to Model-Based Feature Selection for Unsupervised Clustering

I am running a clustering model on a group of patients who are hypertensive with hopes of identifying different variations in clinical characteristics among hypertensive individuals. One of the issues ...
Joe Valpuli's user avatar
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Unsupervised learning using TSNE and Kmeans

I am trying to do unsupervised learning on the dataset to do feature extraction, and find out which group of data is gathered together and what is the main features(centroid) of that group of data. So,...
Vui Chee Chang's user avatar
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Orange document keyword extraction

Am trying a to extract feature Keywords for each document in collection of txt files (all in one folder). Been trying different solutions without success. What I want is to extract keywords for each ...
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GAN Training sees Generator Loss go to Zero While Producing Random Images

I have a dataset of images on which I am trying to train a GAN to create something similar. I have looked at various tutorials for how to train a GAN but am still getting random outputs from my ...
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In unsupervised GNN, why my parameters not updated and why the loss just noise

I want to implement an unsupervised GNN so that it could labeled my nodes. And I want to define the loss function which could describe the relation between the node value and its neighbors' values. ...
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TimeSeriesKMeans combining series or normal features

I am trying to understand the TimeSeriesKMeans. My idea is to obtain a non-supervised model with traditional features and time series features. I would like to use TimeSeriesKMeans. I know there is a ...
zandarina's user avatar
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How can I remove certain part in each slice of a Nifti image using Python?

I have a Nifti image (not labeled) with shape (512, 512, 299) I want to perform Unsupervised segmentation on this 3D image. However, the image contains bed area which are creating trouble for my ...
Manali Thakur's user avatar
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Initialize only some of the centroids in a sklearn KMeans model

I'm training an unsupervised learning model that needs to cluster datapoints. Right now, I possess the average of each class' datapoints for validation purposes and I need each of them to be assigned ...
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Unsupervised Fine-tuning for ASR

Using the tutorial by Patrick von Platen (https://huggingface.co/blog/fine-tune-xlsr-wav2vec2), I managed to fine-tune Wav2Vec2 for annotated audio datasets in a supervised manner. I now have a custom ...
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cluster 7000 csv files for machine learning

I have around 7000 CSV files all containing similar coordinate data. I need to classify this data using unsupervised learning to prepare it to train a supervised algorithm. can I do this by clustering ...
James Palmer's user avatar
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Why is InterClusterDistance from yellowbrick failing with "AttributeError: 'NoneType' object has no attribute '_get_renderer'"

I am trying to initialize a InterClusterDistance visualizer from the yellowbrick library. When I execute the following: from sklearn.datasets import make_blobs from sklearn.cluster import KMeans from ...
Data guy's user avatar
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Large Scale Hierarchical Agglomerative Clustering With Custom Distance Function/Similarity Matrix

I’m working on a project where I need to run hierarchical agglomerative clustering on between 1 million and 10 million data points. I also need to use a custom distance function (I cannot use ...
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Tensorflow Model is Using Too Much Ram

I have a tensorflow model that uses a class implemnetation. The model was was designed using the functional API but implemented using the class API this was done as it requires a custom train step. ...
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How to unsupervised learning on Graph Classification

I have 2 questions. 1. Why Graph Contrastive Learning? I have seen the GCL is used for Self-supervised learning to classify the Graph. But, at the downstream task, it seems that the LABELs of the data ...
Peter Kim's user avatar
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How much data is needed for a Feedback loop based semi-supervised model?

I was researching about the many semi-supervised models that are there for anomaly detection. But none of them mentioned the ratio of labeled and un-labeled data that will be needed for training. In ...
Harshita Rathee's user avatar
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customized training loop parametric optimization

I implemented a custom training loop for a custom loss function that also incorporates the constraints of an unsupervised parametric optimization problem. The corresponding training loop creates then ...
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How to deal with specific data columns in a Clustering Algorithm

I have a dataset having two id columns 16 input columns 3 output columns Out of these some columns have very sparse data (85% NaN) as they only have data for specific values of ID_2. How do i deal ...
Alphaviper's user avatar
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Clustering on mixed data with related variables

I'm working with a mixed dataset (unique at the firm-year level) with related variables that look something like the following (but with many more variables of a similar nature), where: "sec&...
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Nearest Neighbor clustering python implementation

I wrote this code based on the pseudocode I found C0 = [X[0]] Clusters = [C0] p=0 x=0 for i in range(1, len(X)): arr = np.array([euclidean(X[i], c) for sublist in Clusters for c in sublist]) p = [...
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Accuracy assessment of unsupervised clustering - GEE

I have clustered my map on the basis of NDVI values using an unsupervised approach. I don't have the labels. However, I do have the cluster IDs that were automatically assigned. How do I assess the ...
th145's user avatar
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R classified input opening as panchromatic image in Erdas

I did unsupervised classification on a raster stack with 100 classes and the output seems fine. When I am opening the same output in erdas it is opening as a panchromatic image instead of a thematic ...
Payel Ghosh Dastidar IRRI IN's user avatar
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pyTorch autoencoder for unsupervised classification: loss not changing

I'm new to pyTorch. I want to use the autoencoder concept to get an unsupervised classification. It seems like you should be able to use the minimum dimension from the autoencoder as input to a ...
Wick's user avatar
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Is it possible to pass continuous data as input to an RBM model for unsupervised anomaly detection?

Can we pass Continous data as input to RBM. I want to use RBM model for anomaly detection using unsupervised learning but as i know RBM model accepts the binary data but my dataset consists of geohash ...
Bhupinder singh's user avatar
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ValueError: Buffer dtype mismatch, expected 'double_t' but got 'float' - hdbscan validity_index

I'm using the validity index in the hdbscan package, which implements DBCV score according to the following paper: https://www.dbs.ifi.lmu.de/~zimek/publications/SDM2014/DBCV.pdf I'm working on a face ...
Faisal Aldhuwayhi's user avatar
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Using CBLOF for a highly imbalanced dataset - Value error

I am using the unsupervised learning model, CBLOF, for training my dataset, which has the following class imbalance: I am getting this error when trying to run my model over this dataset: model_cblof ...
No_Name's user avatar
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Predicting new points using mean and std_deviation of the model

I have mean and standard deviation both of shape(900*10) and I want to predict random number of points on same latent dimension of 10, How can I do that? mean = numpy array from model of shape(900*10) ...
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Reducing dimensionality to create a unique variable

I have a dataset including dozens of health-related variables: some of them are quantitative (such as 'Body Mass Index') and some of them are qualitative (such as the variable isDrinking, that takes 0 ...
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Model is extracting wrong features

I am trying to write a code to classify the news documents in 5 categories- politics, business, tech, sports and entertainment. Model is extracting the below feature names, under category - business, ...
Shivam's user avatar
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scikit-learn documentation example: 'got an unexpected keyword argument'

When running this example from the scikit-learn documentation, I get the error v_measure_score() got an unexpected keyword argument 'beta': from sklearn import metrics labels_true = [0, 0, 0, 1, 1, 1] ...
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Sklearn clustering gives weird predictions

I have two blobs of points in a 2d plane, which slightly overlap. When I run KMeans fit with 2 clusters, and colour the 2d plane using predictions for each point on the lattice, I get a behaviour that ...
Andras Di Giovanni's user avatar
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1 answer
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How to evaluate how similar 5 datapoints are to 1 target datapoint

I am struggling to wrap my head around a problem I need to resolve. Say that we have a cars dataset (1) with many different cars that have different features (id, age, mileage, color, model,...). On ...
naseriani's user avatar
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1 answer
121 views

Clustering on 97 features of categorical data

I am trying to apply unsupervised learning on a data with 97 features and around 6500 rows/samples. All features have discrete data (mostly from 1-10) with some being binary (0/1). What are some of ...
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ValueError: Input 0 of layer “Discriminator” is incompatible with the layer: expected shape=(None, 3), found shape=(100, 2)

import numpy as np import pandas as pd import matplotlib.pyplot as plt import seaborn as sns from sklearn import preprocessing from sklearn.preprocessing import StandardScaler from sklearn.metrics ...
Shrija Sheth's user avatar
1 vote
1 answer
254 views

How can I do unsupervised learning with LSTM in tensorflow (Keras)?

I am trying to use UNSW-NB15 to train a model. After the model is trained, I would like to use the model on live network data. I began creating this using a supervised LSTM but started wondering about ...
Alvinus Melius's user avatar
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28 views

Why doesn't the kmeans function in python cluster in a correct way?

I have some 2D data and want to cluster them into 6 groups. When I run the python code for that, the result doesnt seem to be correct! df1=df[['AudReg','AudIrreg']] model=KMeans(n_clusters=5, init='k-...
Zhaleh's user avatar
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How do I completely ignore labels when using Keras image_dataset_from_directory?

When trying to load my image dataset for an unsupervised problem, without labels, the image_dataset_from_directory function from Keras assumes they belong to a class. The resulting dataset has shape: (...
HMUNACHI's user avatar
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532 views

Implementing linear regression from scratch in python

I'm trying to Implement linear regression in python using the following gradient decent formulas (Notice that these formulas are after partial derive) slope y_intercept but the code keeps giving me ...
Kevin4678392's user avatar
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1 answer
159 views

Do unsupervised machine learning model features need to be independent?

I'm training an unsupervised machine learning model and want to make sure my features are as useful as possible! Do unsupervised machine learning model featured need to be independent? For example, I ...
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3 votes
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How does Tensorflow's Decision Forests handle categorical data?

I'm evaluating two different unsupervised ML algorithms, Isolation Forest and LSTM Autoencoder model, to identify anomalies in a large time series data. This dataset includes mostly categorical data ...
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Pycaret throwing KeyError: 'UNSUPERVISED_DUMMY_TARGET' while running unsupervised anomaly detection on databricks notebook

Error Screenshot I am trying to run setup function in pycaret==2.3.5 on python version 3.8.10 on databricks notebook and its showing the above error. The same code is running fine on the local system ...
Gagan Saini's user avatar
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1 answer
44 views

Unsupervised Learning for regression analysis

I am a geophysics student and I am trying to predict shear wave velocity which is numerical data. I feel since it is numerical data it'd be regression analysis but the problem I have now is that I don'...
Olutoki John's user avatar
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67 views

Do Expectation Maximization always have to converge after a finite number of iterations if the implementation is correct?

I'm trying to understand how this could be possible, I know EM algorithm has the property to increase the likelihood for each step. However, this does not imply convergence. My question is, if the ...
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torch.nn.functional.binary_cross_entropy and torch.nn.BCEloss() difference

I am trying to train a GAN model on anime face Dataset to generate anime faces. Here's my code- from torch.utils.data import DataLoader from torchvision.datasets import ImageFolder import torchvision....
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