Questions tagged [ensemble-learning]

In statistics and machine learning, ensemble methods use multiple learning algorithms to obtain better predictive performance than could be obtained from any of the constituent learning algorithms.

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Python - How to ensemble for a multiclass models with only their probabilities?

I have a dataset of 50 classes which I want to make predictions for. The script is run by another party and I was only given an ndarray their predicted probabilities of the classes. i.e. a dimension ...
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58 views

Does the number of classifiers on stacking classifier have to be equal to the number of columns of my training/testing dataset?

I'm trying to solve a binary classification task. The training data set contains 9 features and after my feature engineering I ended having 14 features. I want to use a stacking classifier approach ...
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34 views

I am trying to use ensemble learner method sklearn but having model fit issue, getting an value error: too many values to unpack (expected 2)

This is my code, I have those models 1 to 4 run in above cells without any errors. I will also show my test train split. Train test split & smote Error image from sklearn.ensemble import ...
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37 views

AdaBoostClassifier and the 'SAMME.R’ Algorithm

It takes a while to get to the actual question, so please bear with me. The AdaBoost documentation states that it " is a meta-estimator that begins by fitting a classifier on the original dataset and ...
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Difference between using XGBoost directly, and using it on base level predictions from other models

I have recently been studying and learning about ensembling techniques and Gradient Boosting, however I have a doubt. I have used XGBoost directly to fit my training data and predict the testing data....
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32 views

Ensembling models with different inputs

I instantiated 3 simple not so deep models(could be deeper as I like) and trained them with 3 seperate inputs. To be clear, the first input is the face image, second is eyes and the third is mouth (...
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12 views

How to implement classification in Matlab?

I've found that after feature selection I can use classification algorithm to specify the class(label) of each sample, In my research I'm using multiple classifiers or classification ensemble for ...
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1answer
21 views

Number of neighbours in KNN random subspace classifier

I built a classifier model using KNN as learners for an ensemble based on the random subspace method. I have three predictors, whose dimension is 541 samples, and I develop an optimization procedure ...
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1answer
33 views

Consider three mutually independent classifiers, A, B, C, with equal error probabilities:

Here's the problem: Consider three mutually independent classifiers, A, B, C, with equal error probabilities: Pr(errA) = Pr(errB) = Pr(errC) = t Let D be another classifier that takes ...
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1answer
44 views

Grid search on parameters inside the parameters of a BaggingClassifier

This is a follow up on a question answered here, but I believe it deserves its own thread. In the previous question, we were dealing with “an Ensemble of Ensemble classifiers, where each has its own ...
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1answer
50 views

How to build voting classifier in sklearn when the individual classifiers are being fit with different datasets?

I'm building a classifier using highly unbalanced data. The strategy I'm interesting in testing is ensembling a model using 3 different resampled datasets. In other words, each dataset will have all ...
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1answer
65 views

Feature importance in logistic regression with bagging classifier

I am working on a binary classification problem which I am using the logistic regression within bagging classifer. Few lines of code are as follows:- model = BaggingClassifier(LogisticRegression(...
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1answer
59 views

h2o ensemble throws error: “Base model does not keep cross-validation predictions”

I'm trying to create an ensemble model in H2O from a number of GLM, GBM, and deep learning models. Here's what I did so far. Import relevant libraries: import h2o from h2o.estimators.glm import ...
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1answer
95 views

Use of sample_weight in gradient boosting classifier

I have the following code for gradient boosting classifier to be used for binary classification problem. import numpy as np from sklearn.ensemble import GradientBoostingClassifier from ...
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1answer
46 views

Parameters inside other parameters - using bootstrap aggregation with random forests in ensemble learning

Let’s say I decide to use an ensemble method - if it makes a difference, we’ll use the iris dataset. Of the available ensemble techniques, we’ll focus on the parallel methods, and from those we’ll ...
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1answer
55 views

Bagging with knn as learners

I am struggling in understanding why the matlab function fitcenseble doesn't allow to create an ensemble model using knn learners with bagging, but only with the random subspace method, which is more ...
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15 views

Applying classification ensemble methods

I want to apply classification ensemble on a matrix of data, by using fitcensemble methode, If I want to combine some classifiers for example Random Forest & KNN classifiers, should I use ...
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1answer
74 views

Is there a way to ensemble multiple logistic regression equations into one?

I am working on a binary classification problem where the response rate (bads) is less than 1%. The predictors include a set of nominal categorical and continuous variables. Initially, I experimented ...
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1answer
52 views

Machine Learning in R - confusion matrix of an ensemble

I'm trying to access the overall accuracy (or confusionMatrix) of an across a number of classifiers but can't seem to find how to report this. Already tried: confusionMatrix(fits_predicts,reference=(...
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2answers
68 views

What is the classifier used in scikit-learn's VotingClassifier?

I looked at the documentation of scikit-learn but it is not clear to me what sort of classification method is used under the hood of the VotingClassifier? Is it logistic regression, SVM or some sort ...
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45 views

My StackingCVClassifier Has Lower Accuracy than Base Classifiers Yet Does Very Well on Test Set

I built a simple Stacking Classifier with mlxtend and am trying different base classifiers and I am facing an interesting situation. From all my research it seems to me that stacking classifiers ...
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1answer
33 views

LogitBoost requires the base estimator to be a regressor

I have a dataset that all the values for each feature are numeric, even the class/label column. In boosting algorithms implemented in python (like logitboost, adaboost, gradientboosting), other than ...
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132 views

Stacking ML Algorithms in Spark

Is there a spark api to build stacking ensembles in spark or should one build them from scratch? I haven’t found any resources online about this topic
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39 views

How to ensemble two Neural Networks that has been trained differently?

I have created two different Neural Networks that both predict if a team is going to WIN/LOSE a hockey game. The first NN has been trained on 82 features from games that has been played. The other has ...
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21 views

How to use Weka DECORATE meta-learner for ensembles in python?

I would like to use the following WEKA Package: Class Decorate that implements the DECORATE meta-learner for ensembles in python. What is the most efficient way to do it?
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1answer
600 views

matplotlib does not support generators as input

i am running the notebook at this site https://github.com/vsmolyakov/experiments_with_python/blob/master/chp01/ensemble_methods.ipynb to practice ensemble methods with python, and getting an error ...
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36 views

using bagging algorithm with multiple models

i am trying to built a model for LasVegasTripAdvisorReviews-Dataset using bagging algorithm , i have an error (Multilabel and multi-output classification is not supported) can you please help me and ...
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25 views

Combining different classifiers

I am constructing a multinomial classifier and my feature set consisting of some well-behaved features (i.e. real-valued or categorical with low cardinality) and some not-so-well behaved ones (...
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6 views

How to calculate weights for co-association matrix cluster ensemble method?

I am implementing co-association matrix cluster ensemble method. I understood the algorithm that says form the co-association matrix. Taking the values as weights of a graph and construct a MST and ...
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1answer
71 views

Is their any sklearn module like voting classifier for regression?

I used to use VotingClassifier(from sklearn) like below. And now I want to find ensemble for regression model. model= VotingClassifier(estimators=[('svmc', best_SVMC), ('rfc', best_RFC), ('xgbc', ...
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32 views

Dynamic Weighted Majority Function in python for variable length of inputs

i have implemented a function with python 3.6 named Dynamic Weighted Majority (DWM in below code) that i use it in a classification problem. def DWM(weights, y_predicts): results = [] * 5 for k in ...
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1answer
125 views

How to properly implement voting on decision tree bagging method with for loop?

I am new to python and machine learning I've tried to look at at sklear documentation for voting classifier and to be quite hones I was bot lost. I have performed bagging for a decision tree inside a ...
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1answer
47 views

How to properly implement bagging on decision tree with for loop?

I am trying to implement bagging and voting using a decision tree and for loop. I am using sklearn resample. However, I get Number of labels=97 does not match number of samples=77 and I can kind of ...
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5 views

The shape of the train set of the second layer when applying stacking

I want to apply stacking to improve my model,but there are two explanation of stacking Explanation 1 Explanation 2 The first picture means that each model are trained with 4/5 data and give a ...
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56 views

Using Neural networks as a base learner in SuperLearner ensemble model

I would like to use Neural Network from Keras as an estimator for mlens superlearner but I get the below error: <keras.engine.sequential.Sequential object at 0x7f395d6e2e48>' does not appear ...
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34 views

Trained GradientBoostedClassifier assigns zero importance to any feature

First some facts regarding the scenario: i try to predict some classes using 28 features (feature engineering completed) in scikit-learn. I had a huge dataset which i had to to split into 7 datasets ...
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1answer
151 views

Ensemble of custom and pre-trained model gives run-time error

I'm attempting to create an ensemble of a custom CNN and pre-trained VGG16 for a medical image classification task using Keras with Tensorflow backend (TF: 1.9.0 and Keras: 2.1.6). The code is as ...
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1answer
105 views

caretStack in R - unused argument

I am doing a stack of models in R as follows: ctrl <- trainControl(method="repeatedcv", number=5, repeats=3, returnResamp="final", savePredictions="final", classProbs=TRUE, selectionFunction="...
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37 views

Python Ensemble VotingClassifier for regression

I want to build an Ensemble method to predict sales. Suppose I use estimators Linear Regression, Decision Tree Regression and ARIMA. I decided to take the mean of the above estimators to be my ...
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42 views

Passing ensemble weights/parameters to calculate model accuracy

I have a feeling this question has a glaringly obvious and simple solution that I have perhaps overlooked. Assume I have a model f that is reliant on some inputs x and a parameter set p to produce a ...
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43 views

Use of the Tune Model Hyperparameters module when constructing stacking ensembles in AML Studio

When using stacking in AML Studio experiments, it is usual to find published experiments in which the base models are constructed in this way: The 1st Split Data module holds out a test dataset for ...
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1answer
243 views

Sklearn: NotFittedError: This SVC instance is not fitted yet. Soft Voting on Calibration classifiers

I tried to use soft voting on calibration classifiers on sklearn. Since soft voting does not have prefit option so far, I tried to make VotingClassifier.fit() to call CalibratedClassifierCV.fit(). The ...
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151 views

ensemble model with different inputs (Expected to see 2 array(s))

I have trained 2 models. First model is UNet: print(model_unet.summary()) __________________________________________________________________________________________________ Layer (type) ...
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1answer
32 views

Average Stacking in MLR over responses, when two base learners disagree

I was using the 'average' stacking method to stack two base learners in MLR. It looks something like this: stacked.lrns[[1]] = makeStackedLearner(base.lrns, ...
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2answers
85 views

Can we ensemble fastText along with SVM?

I'm trying to ensemble the three different models (FastText, SVM, NaiveBayes). I thought of using python to do this. I'm sure that we can ensemble NaiveBayes as well as SVM models. But, can we ...
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1answer
156 views

What is meta-classifier in StackingClassifier function in mlxtend?

In mlxtend library, there is An ensemble-learning meta-classifier for stacking called "StackingClassifier". Here is an example of a StackingClassifier function call: sclf = StackingClassifier(...
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2answers
413 views

Ensemble two tensorflow models

I'm trying to create a single model out of two almost identical models, trained under different conditions and average their outputs inside tensorflow. We want the final model to have the same ...
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1answer
58 views

Training H2O Stacked Ensemble Models using exported Mojo and Binary Models

I am trying to build stacked ensemble models using H2O Java APIs. For this, I trained 2 models A GBM Model A DRF Model I exported these models in both Mojo and Binary format. For exporting models,...
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1answer
534 views

Run tensorflow with one graph in multi process

I've trying to train a classifier with 5 ensemble networks. I decided to train them with different batch, so I want to create multi-processes to save my time. Here is my algorithm design: import ...
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1answer
49 views

metalearning algorithm issue in Super Learner Algorithm in h2o-ai

i had succeeded in implementing a super-learner in H2o-ai and spark but as per the second step super-learner utilizes a meta learning algorithm Super-learner algorithm 1Set up the ensemble. 1.a ...