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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partial_fit does not account for unobserved target values when fitting priors to data

The documentation for partial_fit reads This method is expected to be called several times consecutively on different chunks of a dataset so as to implement out-of-core or online learning. ...
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1answer
37 views

How can we plot KMeans clusters in Python

I am using KMeans to cluster the three time-series datasets with different characterstics. For reproducibility reasons, I am sharing the data here. Here is my code import numpy as np import ...
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1answer
28 views

Python Numpy array (bad) automatic rounding

I am using Leave-One-Out-Cross-Validation on a Linear Regression model. Having 8869 observations, as a result of the following: reg = LinearRegression() list_Rs = cross_val_score(reg, X_34_const, ...
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7 views

Save a scikit-learn Bunch object

How do I save a scikit-learn Bunch object to a single file? Currently, I save it into several numpy files, which is cumbersome: from sklearn.datasets import fetch_lfw_people # Save to files faces = ...
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15 views

how to build ID3 random forest in python

I've been playing around with scikit-learn and learned that the decision tree algorithm they use is CART for their DecisionTreeClassifier. I Now what I want to know is, how would one build an ID3 ...
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1answer
17 views

Pipeline OrdinalEncoder ValueError Found unknown categories

Please take it easy on me. I’m switching careers into data science and don’t have a CS or programming background—so I could be doing something profoundly stupid. I've researched for a few hours ...
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13 views

sklearn setting parameter class_weight performs different from oversampling

I am working on a binary classification problem using SVC in sklearn library. The data is imbalanced. I tried two approaches to address this problem: 1. Set the parameter class_weight in SVC (increase ...
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4 views

Errant log-likelihood via scikit-learn's Gaussian process regression

Here is an example code of Gaussian process regression on a set of sample data where the inputs (X) are 2-dimensional and the output (y) is 1-dimensional. I am applying a custom heteroscedastic kernel ...
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1answer
46 views

Higher Dimensional DBSCAN In Sklearn

Is there anyway in sklearn to allow for higher dimensional clustering by the DBSCAN algorithm? In my case I want to cluster on 3 and 4 dimensional data. I checked some of the source code and see the ...
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2answers
44 views

KMeans clustering - Value error: n_samples=1 should be >= n_cluster

I am doing an experiment with three time-series datasets with different characteristics for my experiment whose format is as the following. 0.086206438,10 0.086425551,12 0.089227066,20 ...
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1answer
27 views

Can I use a machine learning model as the objective function in an optimization problem?

I have a data set for which I use Sklearn Decision Tree regression machine learning package to build a model for prediction purposes. Subsequently, I am trying to utilize scipy.optimize package to ...
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14 views

how to get the feature weight if we use calibrated cv for linear kernal on SGD classifier

i am using calibrateed cv for my for linear kernal on SGD classifier because my loss is hinge loss . But now i want get the top 10 features or classes , so how to do it , i tried using .coef_ but its ...
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20 views

How can I specify a loss function in Keras while setting a parameter?

My understanding is that keras requires loss functions to have the signature: def custom_loss(y_true, y_pred): I am trying to use sklearn.metrics.cohen_kappa_score, which takes (y1, y2, labels=None, ...
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12 views

Finding word counts post TF IDF in Python

I am new to Python and clustering, I am trying to find the closeness of 2 items based on the characteristics they have in their description i.e., classic document retrieval problem. In the dataframe ...
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1answer
21 views

Scikit Learn - Combining output of TfidfVectorizer and OneHotEncoder - dimensionality

I am currently developing a machine learning algorithm for ticket classification that combines a Title, Description and Customer name together to predict what team a ticket should be assigned to but ...
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1answer
37 views

SVM and NN Model overfitting on large data

I have trained SVM and NN model using sklearn for two class. One class have 24000 tweets and another 32000 tweets. When I do validation it gives like this For - text_clf = Pipeline([('vect', ...
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10 views

The shape_index feature from sklearn not able to apply PCA, due to a NaN error

The image process: for i in ... img = Image.open(img_path).convert('L') #get gray img shape_img = shape_index(img, sigma = 0.1) images[i] = shape_img ...
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1answer
37 views

How to train SVM model in sklearn python by input CSV file?

As I have used sklearn scikit python for prediction. While imported following package from sklearn import datasets and stores the result in iris = datasets.load_iris() , It fine for to train model ...
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1answer
18 views

ValueError: Number of features of the model must match the input. Model n_features is 356 and input n_features is 164

Error is as stated above. I think it might have something to do with my get_dummies function, but because I'm horrendously new to this I honestly am not sure. Any help/insight for my dumb neophyte ...
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2answers
33 views

Much worse performance when use cross_val_scores, why?

I first use train_test_split to separate the train and test data, code: X=LOG.iloc[:,:-3] y=LOG.iloc[:,-3] X_train,X_test,y_train, y_test=train_test_split(X,y) scaler=MinMaxScaler().fit(X) ...
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37 views

How can I speed up Recursive Feature Elimination on 6,100,000 Features?

I am trying to obtain a ranking of features from a rather large set of features (~6,100,000) in sklearn. Here's the code I have thus far: train, test = train_test_split(rows, test_size=0.2, ...
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18 views

Dendrogram y-axis labeling confusion

I have a large (106x106) correlation matrix in pandas with the following structure: +---+-------------------+------------------+------------------+------------------+------------------+---------------...
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1answer
25 views

Multiprocessing using chunks does not work with predict_proba

When I run predict_proba on a dataframe without multiprocessing I get the expected behavior. The code is as follows: probabilities_data = classname.perform_model_prob_predictions_nc(prediction_model,...
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17 views

sklearn pipeline: running TfidfVectorizer on full training set before applying TimeSeriesSplit inside GridSearchCV?

I'm sure this is possible but I haven't been able to figure it out. Give a training dataset using TimeSeriesSplit with a num_split=5, the splits look like this: [0] : [1] [0 1] : [2] [0 1 2] : [3] [...
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8 views

sklearn min_impurity_decrease explanation

The definition of min_impurity_decrease in sklearn is A node will be split if this split induces a decrease of the impurity greater than or equal to this value. Using the Iris dataset, and ...
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6 views

Mapping Spark ML Scaler to Sci-kit Learn's and vice versa

I am trying to use Spark ML trained models to do prediction on Sklearn and vice versa. One place that I'm stuck is how to map the attributes from Spark ML transformers to SkLearn preprocessors. I ...
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1answer
24 views

Measure classifier by using cross validation with ROC metrics

I am trying to do a cross validation with the ROC metric to evaluate the classifier, and I came across with the following code from Scikit learn : # Import some data to play with iris = datasets....
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1answer
23 views

How can I compute a Count Morgan fingerprint as numpy.array?

I would like to use rdkit to generate count Morgan fingerprints and feed them to a scikit Learn model (in Python). However, I don't know how to generate the fingerprint as a numpy array. When I use ...
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1answer
38 views

Support Vector Regression predictions returns the same value

I'm creating a basic application to predict the 'Closing' value of a stock for day n+1, given features of stock n. I currently define my features and targets as so features = df.loc[:,df.columns != '...
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21 views

output of sklearn lda.predict are different labels than input labels

I want to classify three different activities so I have three labels 20,30,40 and when I look into the confusion matrix I get 9 rows and columns and labels which were not in the input vector like 26,...
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27 views

Find behavior in time-series dataset with machine learning

I got a time-series dataset about shops in a city. It gives, for each shop, when it's been created, closed (if closed) and other variables like coordinates, district, type of activity... My project ...
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25 views

Custom sklearn estimator for Pipeline

I am trying to write a custom sklearn estimator for a Pipeline which then would be used in a GridsearchCV. My dummy regressor should basically output the mean value of a feature vector. That will be ...
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0answers
20 views

sklearn: Remove majority class at random without shuffling dataset

I have an image data-set of 48000 where 40k- normal class and 8k-abnormal instances. In order to make dataset balance, I need to undersample the majority class. Although I have used sklearn imblearn ...
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1answer
23 views

Python-sklearn I'm triying to calculate the Full Width at Half Maximum of a function using

I'm triying to calculate the Full Width at Half Maximum of a discret data, for that, i'm using PolynomialFeatures to calculate a function that fits to the data but my problem comes when im looking ...
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1answer
26 views

How to avoid dummy variable trap for sklearn2pmml transformation

When trying to create a sklearn2pmml pipeline I use the following code to do a custom mapping and then use PMMLLabelBinarizer to create the dummy variables. Things is, I want to avoid the dummy ...
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41 views

Group dataframe by date for extracting daily results from svm algorithm using pandas

I read a csv file and transform it to the following dataframe: Unnamed: 0 id created_at \ 0 0 837009605112836101 Wed Mar 01 18:40:15 +0000 2017 ...
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1answer
21 views

ValueError on sklearn's linear_model.predict

import numpy as np import pandas as pd from sklearn import datasets, linear_model df = pd.read_csv("homeprices.csv") df model = linear_model.LinearRegression() model.fit(df[['area']], df.price) model....
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1answer
30 views

SVC Classifier support vector classes in python Sklearn

How can I find out which support vectors belong to which class in sklearn SVC? model = clf.fit(X,y) vectors = model.support_vectors_ Which vector belongs to which decision boundary?
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31 views

Float invalid syntax from MinMaxScaling result

I have some problems in parsing some values. I do MinMax Scaling via Scikit and save in a numpy array. When I call .astype(np.float) I get an exception: "ValueError: could not convert string to ...
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36 views

scikit-learn classifier subset doesn't have all possible labels

I have some classification data as below: import numpy as np from sklearn import tree X = np.array([[1, 0, 1, 1, 1, 3093, 40], [1, 0, 1, 1, 1, 2496, 609], [1, 0, 1, 1, 1, ...
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2answers
47 views

How to launch a Machine Learning model?

First of all thank you for taking your time to read my question. I have done a Machine Learning model with a dataset (The famous one about Cancer) and I want to know how can I do to predict the ...
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25 views

logistic like curve fitting using machine learning

I asked this question in data science threads, but didn't get an answer. Hence posting here. I have a set of points of a function k(x). I am trying to do some curve fitting to find the exact k(x) ...
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1answer
17 views

Which combinations between features with a polynomial degree less than or equal to a specified polynomial degree count as polynomial combinations?

There is a feature matrix X with 2 features. The following Code prints all polynomial combinations of the features with degree less than or equal to 3. import numpy as np from sklearn.preprocessing ...
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28 views

LinearSVC fit_transform replacement [on hold]

In the older versions of scikit for example documentation for version 0.11 shows that LinearSVC has fit_transform and transform methods. In the latest version version 0.20.2 there is no transform ...
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31 views

How to replace a single column in pandas data frame, with values generated by sklearn label encoders

I am trying to encode a single column in a pandas data frame that looks like this: fin_data = pd.DataFrame({'step': [1, 1, 1], 'type': ["PAYMENT", "PAYMENT", "TRANSFER"], ...
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36 views

High accuracy but low precision on machine learning model

I am working on a cnn that classifies images belonging to 82 different classes. The dataset consists of several hundreds of thousands of images which are well distributed across the classes. When I ...
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1answer
20 views

Scikit-learn confusion matrix performing differently based on strings

I have a really strange problem, I'm using sklearn confusion matrix (from sklearn.metrics import confusion_matrix) for my dataset, but I noticed that the values it was printing were very far off. I ...
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9 views

Python : How to generate a PMML for a model with categorical variables using SkLearn2PMML

How to generate a PMML for a model which has categorical variables using the SkLearn2PMML library. Any suggestions.
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15 views

Anaconda : Kepler Mapper

I am currently using Anaconda Python(Jupyter Notebook) for learning the Isolation Forest algorithm and I came across the "Kepler-Mapper" package for visualizing data. However, I was not able to use ...
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1answer
55 views

scikit learn transform multiple text features

I'm trying to classify multiple text features to a status. The data includes messages (errors and warnings) from different servers with the components and will result in different states. For example: ...