Questions tagged [scikit-multilearn]

scikit-multilearn is a Python module capable of performing multi-label learning tasks. It is built on-top of various scientific Python packages (numpy, scipy) and follows a similar API to that of scikit-learn.

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Unpredicted classes with multilabel classifier MLKNN in scikit-multilearn

I am using MLKNN classification, to classify documents with multi-labels. I manually labeled around 1000 documents with single or multi-label (depending on the content of the document. I have 12 ...
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Error in sklearn : grid_ridge_m.cv_results_

I am using scikit-learn version is 0.22.1. and I am getting error at grid_scores(0.18) and cv_results(0.18+) since I have sklearn 0.22 I used cv_result.. fig,ax= plt.subplots() fig.set_size_inches(...
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Saving Keras model and weights

Im using Azure ML Studio to create an automated ML pipeline. I've successfully gotten my model to be trained and tested in Azure, but it fails on model.to_json() and model.save_weights(). I believe ...
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Pipeline for Multi-Label Classification by Scikit-multilearn

I want to create a pipeline for multi-labeling text classification problem with Python. For a single label, I can create a pipeline like this, based on this link: parameters = { '...
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AttributeError: 'BinaryRelevance' object has no attribute 'classifiers'

I'm trying to classify datas (emotions) using BinaryRelevance and SVC. This code is in http://scikit.ml/tutorial.html from skmultilearn.dataset import load_dataset X_train, y_train, feature_names, ...
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123 views

What is the best value for the parameter class_weight in LinearSVC?

I have a multi label data (some classes have 2 and some 10 labels)and my model is overfitting for balanced and None values.What are the best values to set for the class_weight parameter. from ...
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23 views

Getting back predicted values from under sampling

I have converted the data into MultiBinarizer and then applied oversampling using Random...() function. I got some predictions after test train split. How do I get my original labels instead of ...
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234 views

How to implement MultiLabelBinarizer on this dataframe?

I have a dataframe like this: mid value label ID 192 3 176.6 [9, 6, 8, 0, 8, 8, 7, 9, 2, 19... 192 4 73.6 [9, 6, 8, 0, 8, 8, 7, 9, 2, 19... 192 5 15.8 [9, 6, 8, 0, 8, 8, ...
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336 views

Multilabel classification ML-kNN vs KNN

This might be a stupid question but I was just wondering what the difference between ML-KNN implemented in scikit.ml and scikit-learn's KNeighborsClassifier is. According to sklearn's docs ...
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What is the difference between “OneVsRestClassifier” (Scikit-learn) and “Binary Relevance” (Scikit-multilearn)?

In scikit-learn, there is a strategy called sklearn.multiclass.OneVsRestClassifier, which can be used for both multiclass and multilabel problems. According to its documentation: "In the multilabel ...
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119 views

How to pass epoch and batch size when using label powerset in keras

I have a multi-label problem and with some research, I was able to use Label powerset in conjunction with ML algorithms. Now I want to use the Label powerset with neural network and as per the ...
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538 views

TypeError: A sparse matrix was passed, but dense data is required (multilabel K nearest neighbours)

I'm having trouble with fitting an instance of an MLkNN model (from scikit-multilearn) after doing GridSearchCV (from scikit-learn). I am getting an error. Here is the appropriate code: #From ...
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Getting error, while using numpy.concatenate

So basically I am having two numpy arrays x_chunk and y_chunk of dimensions [10,512,512,50] each. I converted them, to dimensions [10,13107200] using the code: x_chunk=x_chunk.reshape(10,13107200) ...
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93 views

Scikit-multilearn MEKA-Wrapper: meka.classifiers.multilable.meta.CM

I'm currently using scikit-multilearn for multilabel classification. I have to use meka.classifiers.multilabel.CM as the meka_classifier. But when I run my Code, I get different Errors and I don't ...
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57 views

Can scikit-multilearn handle multi-target regression task?

I would like to know whether scikit-multilearn can handle multiple-output regression task. If not, can you recommend another tool that provides a wide range of algorithms for evaluation? Thank you, ...
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208 views

How to use package scikit-multilearn (MlKnn method)

I am using the MlKnn method and I am able to fit the classifier and to make predictions through the command classifier.predict(Test). The result is a scipy.sparse.lil.lil_matrix which has only the ...
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6k views

How to fix NameError: name 'X_train' is not defined?

I am running the [code] of multi-label classification1.how to fix the NameError that the "X_train" is not defined.the python code is given below. import scipy from scipy.io import arff data, meta = ...
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256 views

specify priors in multi-label Naive Bayes in python scikit-learn

I am working on a multi-label classification. I used GaussianNB function on python scikit-learn. The target is an array with (N, L) shape, where L is the number of classes and N is the number of ...
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2k views

How to import “scikit-multilearn” python library in Azure Machine learning

We are trying to import "scikit-multilearn" library in python script and we are using this python script in Azure machine learning algorithm to achieve our goal. We have written our script in jupyter ...
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1k views

error installing skmultilearn.problem_transform package

The error I get is : Could not find a version that satisfies the requirement skmultilearn.problem_transform (from versions: ) No matching distribution found for skmultilearn.problem_transform
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How to install scikit-multilearn using Conda

To install scikit-multilearn, I have tried the following commands with no luck: conda install scikit-multilearn or, conda install -c condo-forge scikit-multilearn The official website of scikit-...
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237 views

Why are Multilabel performance results the same as independant one despite strong label correlation?

I have a dataset with 2 labels which I know there's strong correlation among these 2 labels. However, when I use scikit multilearn binary relevance which doesn't consider correlation I get very ...