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Questions tagged [scikit-learn]

Scikit-learn is a machine-learning library for Python that provides simple and efficient tools for data analysis and data mining, with a focus on machine learning. It is accessible to everybody and reusable in various contexts. It is built on NumPy and SciPy. The project is open source and commercially usable (BSD license).

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Interaction between sample_weight and min_samples_split in decision tree

In sklearn.ensemble.RandomForestClassifier, if we define both sample_weight and min_samples_split, does the sample weight impact the min_samples_split. For example, if min_sample_split = 20 and the ...
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This is my Question ModuleNotFoundError: No module named 'sklearn.compose'

ModuleNotFoundError: No module named 'sklearn.compose' ModuleNotFoundError Traceback (most recent call last) in () ----> 1 from sklearn.compose import ColumnTransformer
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How to fix error with importing skforecast using Jupyter

When I use pip install skforecast in Jupyter, the install completes successfully. Next, when I use from skforecast.ForecasterAutoreg import ForecasterAutoreg I get the following error: ...
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2 votes
2 answers
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Application and Deployment of K-Fold Cross-Validation

K-Fold Cross Validation is a technique applied for splitting up the data into K number of Folds for testing and training. The goal is to estimate the generalizability of a machine learning model. The ...
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Handling false positive of the classifiers and improving performance when trained with medium sized unbalanced dataset with two features

I have the following unbalanced data set with two features (keon i.e. gender and alder i.e. age) that was balanced using under_sampling method which I trained on different classifier to predict the ...
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importing Kmeans from sklearn suddenly stopped working

I've loaded my Jupyter notebook as usual, when the only thing I changed is the Numpy version to 1.21.4. However once I imported Kmeans from sklearn.cluster import KMeans I received the following error:...
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sklearn.ensemble.RandomForestRegressor - Looking for alternative or equivalent code [closed]

Our client environment doesn't support sklearn due to it's glibc_2.23 dependency. Please suggest pure python alternative code for RandomForestRegressor.
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data highly skewed and values range is too large

i'am trying to rescale and normalize my dataset my data is highly skewed and also the values range is too large which affecting my models performance i've tried using robustscaler() and ...
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I was trying to make a random forest Ai model to predict the retention of an employee in a company thats when i got this error, Exception in Tkinter

code related to it: for sh in xlrd.open_workbook(myPath).sheets(): popp = findCell(sh, searchedValue) test_str = popp print(popp) index_list = [1] new_str = ...
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mainfold not found in sklearn

from sklearn.mainfold import TSNE got this error: ModuleNotFoundError Traceback (most recent call last) ~\AppData\Local\Temp/ipykernel_11648/1629790642.py in <module> ----...
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Import "nltk.stem" could not be resolved, Import "nltk.corpus" could not be resolved, Import "nltk" could not be resolved

I am working on a Resume Ranking project, it's properly running but giving lots of warning messages in the problem box. i am using vs code, and have installed all the required modules and libraries ...
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1 answer
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ValueError: inconsistent shapes after using MultiLabelBinarizer

I'm trying to create a Performance Evaluation Results for my CRF model, which depicts what part of speech does the word belong to. I've created a function to transform the data in a more 'datasetish' ...
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Get all prediction values for each CV in GridSearchCV

I have a time-dependent data set, where I (as an example) am trying to do some hyperparameter tuning on a Lasso regression. For that I use sklearn's TimeSeriesSplit instead of regular Kfold CV, i.e. ...
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Which algorithm to use in a chemical dataset for sklearn?

I have an dataset of toxic chemicals, and medicines listed in a json file like this: "C10H8" : 1, "C2H3BrCl2" : 1, "N2H4" : 1, "C15H11I4NO4" : 0, "...
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How can I get the final tree model?

Given this model: import numpy as np import pandas as pd from sklearn.datasets import make_classification import graphviz X, y = make_classification(n_samples=1000, n_features=10,n_informative=3, ...
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What is the optimal way to split up the cores (n_jobs) between an sklearn model and RandomizedSearch?

I am trying to figure out how to use the cores that I have available most effectively for a random forest that is being tuned using RandomizedSearchCV. Is it enough to specify n_jobs = -1 in the ...
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1 vote
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Creating dummy variables using Scikit-Learn's feature_extraction

My goal is I would like to create dummy variables from a column using SkLearn. So I have data as follows: INDICATOR MATCHUP 1 [ "APPLE", "GRAPE" ] 1 [ "...
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How can i use one-hot encoded features to predict new values

I have a football dataset that i have trained and tested. I one-hot encoded the categorical features which were the home team and away team, how do i use the model to predict future matches? Because i ...
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Define same nested parameters for multiple stages of a pipeline

I have created a sklearn pipeline with customized classes (say Stage1 and Stage2) and now want to define nested parameters for hyperparameter tuning with gridsearch. However, one hyperparameter (say C)...
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Make fitted machine learning model predict values in thé future instead of actual values

I'm having a machine learning model which i fitted with xgboost régressor and linear regression, is there any way to make thé model predict values in thé future It's a dataset with 13 columns and ...
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Scikitlearn: testing using other dataset

I'm currently using scikitlearn on one dataset (I'll refer to as dataset 1) and it's providing me with some freakishly accurate results across multiple classifiers (I believe I've tested around 8, ...
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Clustering geolocation data with extra features

I'm trying to build a participatory system for noise monitoring with data collected from mobile clients(Android ones to be more specific, each one with a unique ID). Each client collects data in the ...
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No module named 'sklearn.externals.joblib'

This program is designed to detect the spoofing persons in a video. I am in my virtual environment with python 3.8 and my scikit version is 0.23.0 joblib 1.1.0 numpy 1.22.3 opencv-...
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gradient descent update rule in sklearn's tSNE implementation

In sklearn's tSNE implementation, the gradient update is done as follows (gradient_descent function in _t_sne.py on sklearn's github): error, grad = objective(p, *args, **kwargs) grad_norm = ...
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In Anaconda prompt there's an error showing ModuleNotFoundError:No module named 'sklearn.svm.classes'.wt should i do inorder to get rid off this error

enter image description heresvm.classes ERROR: Could not find a version that satisfies the requirement sklearn.svm.classes (from versions: none) ERROR: No matching distribution found for sklearn.svm....
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Which is best model for regression if all independent variables are categorical and ordinal in nature?

I have dataset with 4000+ rows and 150+ features ,all of which are categorical. Though I'm getting a very less RMSE with Random Forest Regressor, when I plot actual vs predicted scatterplot, the ...
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-1 votes
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Expected 2D array, got 1D array instead [KNN Implementation Problem]

I got this error when implementing a code from Github -- I am not so much advance user with python... I am not able to figure out the problem.. I also attached a problem screenshot in here.. Problem: ...
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-1 votes
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Merge large dataframe for address similarity

There is a dataset of existing customers' addresses around 300,000 records(df1). Besides, I have another 100,000 addresses of new customers(df2). Let's say we already have a address similarity ...
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Why might my SVM (support vector machine) predict every input the same? MNIST Digit Recognition

Ive been working at this for awhile trying to verify the correct inputs and everything, but no matter what I try, my SVM is always predicting the same value for every single input, even when training ...
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1 answer
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Why is my sklearn SVC much slower when manually scaling instead of using the pipeline?

I want to build a VSC on the imdb data set with a TokenVectorizer. In the docs it says to scale the training/test data for better results. There is example code using a pipeline, but it should work ...
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TypeError: only integer scalar arrays can be converted to a scalar index in python

im traying to do kfold validation X = df[['Smedications', 'Infections', 'lib' , 'north']].values Y= df['Comorbidities'].values kf = KFold(n_splits=10, shuffle=True) list(kf.split(X)) splits = list(...
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sklearn roc_auc_score AttributeError

I'm trying to draw a roc_curve in sklearn and I HAVE TO use roc_auc_score and predict_proba in the code. I keep getting errors using roc_auc_score and roc_curve. Sorry for possible typos in some ...
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pandas one-hot-encoding column containing a list of feature and each feature can be negative

So i have the following dataset d = {'user': ['a','a','b','b'], 'item':[1, 2, 1, 3], 'features': [[2], [-2, -1], [-137, -1, 2], [-137, 2, 1]]} df = pd.DataFrame(data=d) user item ...
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Equation of svm multilinear plot

I am new to python.... I am using SVM to classify two sets of data points... The classification is done , but i have no idea how to get the equation of the decision boundary ... Any help is ...
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ML Models results in `AttributeError: 'OneHotEncoder' object has no attribute '_infrequent_enabled'`

I am trying to run the ServingMLFastCelery, which is also available and explained on the Towards Data Science website. The machine learning model is working perfectly, but when I test the complete ...
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Building a surrogate model for an objective function

I'm trying to build a surrogate model (in this case random forest) for objective functions. I don't how to code it. Help much appreciated! I have used these from sklearn.ensemble import ...
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Value of LabelEncoder() is getting overwritten while traversing through DF

I am quite new to ML can anyone please help me, I am facing issue while encoding and decoding below mentioned DF using preprocessing.LabelEncoder() , basically the label encoder is getting overwritten ...
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1 answer
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sklearn.ensemble.RandomForestClassifier with non-consistent output

I have a trained sklearn randomforest multi-label classifier, in the training set, one class is always present, which means you expect the classifier to always return 1 for this class. This happens, ...
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1 answer
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What does tfidfvectorizer.transform() actually produce?

I am new to using tf-idf vectorizer. While running the code I came up with this output but was not able to interpret what it actually means. Code X=["Access modes govern the type of operations ...
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-1 votes
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Expected Value Shap TreeExplainer for Isolation Forest

for a research project I'm using an isolation forest for anomaly detection. The explainability of the model is very important for the outcome of my research, therefore i'm using Shap to gain insight ...
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'Sequential' object has no attribute 'feature_importances_'

In an attempt to apply the feature_importance attribute for a random forest classification model. I have imported the relevant libraries: from sklearn.ensemble import RandomForestClassifier rf = ...
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1 vote
1 answer
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Align the Truncated SVD from sklearn.decomposition and np.linalg.svd

=========update========== I read an infomation in this book: The matrix that is actually returned by TruncatedSVD is the dot product of the U andS matrices. Then i try to just multiply U and Sigma: ...
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2 votes
1 answer
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Sklearn pipeline transform specific columns - ValueError: too many values to unpack (expected 2)

i am trying make pipeline with scaler, onhotencoder, polynomialfeature, and finally linear regression model from sklearn.pipeline import Pipeline pipeline = Pipeline([ ('scaler', ...
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How to encode the new df values with existing LabelEncoder [duplicate]

I am quite new to ML can anyone please help me, I am facing issue while encoding and decoding below mentioned DF using preprocessing.LabelEncoder() df.head() Col1 | Col2 | Col3 | Col4 ...
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in python SKLearn LogisticRegression, is there a way to split the predict_proba(X) method?

I have created a LogisticRegression in python with the SKLearn module, which predicts a binary class [0, 1]. This prediction is based on a dataset with 18 columns. With the predict(x) function you can ...
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1 answer
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Why does AdaBoost or GradientBoosting ensemble with a single estimator give different values than the single estimator?

I'm curious why a single-estimator Adaboost "ensemble", a single-estimator Gradient Boosted "ensemble" and a single decision tree give different values. The code below compares ...
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1 vote
2 answers
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Clustering method for three-dimensional vectors

I have N three-dimensional vectors (x,y,z) I want a simple yet effective approach for clustering these vectors (I do not know a priori the number of clusters, nor can I guess a valid number). I am ...
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1 answer
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How to get feature names when using onehot encoder on only certain columns sklearn

I have read many posts on this that reference the get_feature_names() from sklearn which appears to be now deprecated and replaced by get_feature_names_out neither of which I can get to work. It also ...
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1 vote
1 answer
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Sklearn: Linear Regression, Model Analysis. statsmodels.api Summay Equivalent

import statsmodels.api as sm from scipy import stats X2 = sm.add_constant(toTrainX) est = sm.OLS(toTrainY, X2) est2 = est.fit() print(est2.summary()) This would give me a Holistic Picture of the ...
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ModuleNotFoundError: No module named 'sklearn.datasets.mldata'

I am trying the following snippet: from sklearn.datasets.mldata import fetch_mldata However, I get the error message: ModuleNotFoundError: No module named 'sklearn.datasets.mldata' Then I tried to ...
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