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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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1answer
29 views

Ensemble forecast with keras on GPU

I am trying to make an ensemble forecast with equally build keras models. The Data for the single NNs are of the same shape. I want to use the GPU because the models should be trained parallel. ...
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1answer
43 views

Building an ensemble of Random Forest models with VotingClassifier()

I'm trying to build an ensemble of some models using VotingClassifier() from Sklearn to see if it works better than the individual models. I'm trying it in 2 different ways. I'm trying to do it with ...
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1answer
36 views

How to add a neural network model with ML models in VotingRegressor?

Background of the Problem I was trying to use a KerasRegressor model with the ML models (e.g. Lasso, Gradient Boost Regressor) for the purpose of building an ensemble method. I used the ...
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How does random forest ask for probability in decision tree if Decision tree focus not on Probability but Impurity? [closed]

dt=DecisionTreeClassifier(criterion='entropy',splitter='random') dt.fit(X_train,y_train) #The above code doest meana anythung here
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Error when checking target: expected dense to have 2 dimensions, but got array, but only during final model fit, not tuning

I'm trying to build an ensemble NN in R with 2 models, one LSTM and one GRU model. I'm predicting a series of numeric values. When I tune and finally train a simple LSTM, GRU, or stack them, ...
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41 views

Implementing deep ensemble learning in Tensorflow for uncertainty estimation

I am trying to implement deep ensemble model in Tensorflow. Specifically, I am trying to reproduce the results discussed in the paper "Simple and Scalable Predictive Uncertainty Estimation using ...
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1answer
18 views

What are the characteristics of a 'Hybrid Model' in Machine Learning?

For example, lets say that i'm working with optimization, ensemble learning, and some basic regressors. If i use the ensemble learning, it will not be an hybrid model, but if i combine it with the ...
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1answer
43 views

Why I am getting error as “Error in mapIds(GeneCol) : could not find function ”mapIds“”

I am trying to get Entrez ID using a big list of Gene Symbol. To do this, I used "AnnotationDbi", "org.Hs.eg.db", and "org_pkg". when I run the code as "geneIDs <-...
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1answer
142 views

Two-level stacked learner (enseble model) combining elastic net and logistic regression using mlr3

I try to solve a common problem in medicine: the combination of a prediction model with other sources, eg, an expert opinion [sometimes heavily emphysised in medicine], called superdoc predictor in ...
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0answers
7 views

Ensembling results of multiple object detection model using consensus method

I have trained 5 Object Detection models. After seeing their results visually, I feel I can boost my mAP if I took only those detection which are present in more then three models. Which is the best ...
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307 views

AttributeError: /home/hp/anaconda3/lib/libxgboost.so: undefined symbol: XGDMatrixSetDenseInfo

I have installed XGBoost with pip3. While trying to run this line: clf = GridSearchCV(estimator=xgb.XGBClassifier(use_label_encoder =False), param_grid=params, scoring = 'accuracy', cv=20).fit(...
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21 views

How to make lstm ensemble with different shapes

This is what I got so far for making an lstm ensemble with one model input for each of the lstm models and for the ensemble model and it works perfectly. model_input = Input(shape=(50,2)) def ...
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22 views

Best way to serve Tensorflow ensemble image regression model securely to be used by Azure API

I am developing a web app which will be hosted on Microsoft Azure, including API and database. The web app is an image classification service, which will require a large measure of security. The image ...
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34 views

How to make an ensemble model from 2 LSTMs with different window sizes

Below is the general code for making an ensemble model. All the inputs are the same for all three models. But what if the models have different input shapes due to different window size, such as lstm ...
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19 views

Wrapper for Orderedprobit model from statsmodel package

Want to build a stacked ensemble classifier using sklearn with ordered probit model from statsmodel package and random forest model from sklearn. And use stratified k-fold cross validation (due to ...
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0answers
42 views

Bagging Classifier on the RCV1 dataset

I have to implement a bagging classifier on the RCV1 dataset. I am using Python in Google Colab. I separated the dataset as explained in the documentation (https://scikit-learn.org/stable/datasets/...
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23 views

Ensemble Bagging approach in R

Hi I have been given a question like below. Construct, train and test a Bagging type classifier in R, based on Bagged CART and Random Forest base classifiers. Train and test the Bagging classifier ...
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1answer
42 views

Why does Random Forest Regression predict the exact same value?

I am attempting to use Scikit-Learn's Random Forest regressor to predict Nominal GDP from Real GDP. I read the data from a webstite and clean it up a bit, then synthesize a dataframe with what I have ...
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19 views

How to combine several machine learning models trained with the same target but different sets of predictors (in R)

The book Hands-On Machine Learning with R gives an overview of model stacking, but goes on to say that the same training set shall be used for the models. The vignette of caretEnsemble also stresses ...
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1answer
148 views

Getting “nan” with cross_val_score and StackingClassifier or Voting Classifier

I want to use StackingClassifier & VotingClassifier with StratifiedKFold & cross_val_score. I am getting nan values in cross_val_score if I use StackingClassifier or VotingClassifier. If I use ...
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0answers
10 views

Fethcing HGNC symbols using R package biomaRt

I am trying to collect the HGNC symbols for genes after some high throughput RNAseq, but the syntax isn't functioning, can anyone pick out the error or tell me how to do this please? Running biomaRt, ...
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1answer
233 views

SHAP Importance for Ranger in R

Having a binary Classification problem: how would be possible to get the Shap Contribution for variables for a Ranger model? Sample data: library(ranger) library(tidyverse) # Binary Dataset df <- ...
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1answer
115 views

Keras vertical ensemble model with condition in between

I have trained two separate models ModelA: Checks if the input text is related to my work (Binary Classifier [related/not-related]) ModelB: Classifier of related texts (Classifier [good/normal/bad]). ...
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46 views

is it possible to use voting classifier for LSTM?

here am trying to use a voting classifier on output from LSTM, BILSTM, GRU, AND BIGRU but getting the ValueError: The estimator Sequential should be a classifier error. how to resolve this error, any ...
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26 views

Why NaN values are found in score from kfoldPredict?

Names = {'A', 'B', 'C', 'D', 'E', 'F', 'G', 'H'}; isCategoricalPredictor = [false, false, true, false, true, false, false, false]; % Use tree learner template = templateTree('...
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1answer
28 views

R - Suggestions for Superlearner with different subsets of features in each learner?

I'm looking to combine learners each developed using different subsets of features and algorithms into a SuperLearner. I realize this is not how SuperLearning generally works, but please trust that I ...
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34 views

Ideas to deal with highly unbalanced data set + high cardinality features

I have to deal with Class Imbalance Problem and do a binary-classification of the input data-set where majority of the class-label is 0 (the other class-label is 1). The actual data-set is very skewed ...
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21 views

Really bad results with sklearn decision tree ensemble and bayesian optimization

Without bayesian optimization: model = BaggingClassifier(base_estimator=DecisionTreeClassifier(min_samples_split=15), n_estimators=100, random_state=7) Results: Training set - Matthews correlation ...
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32 views

How can I visualize Random Forest Model in Python?

I developed a Random Forest Classifier in Python. Also, I used GridSearch method. Now, how can I visualize these tree ? # RandomForest RFC = RandomForestClassifier() param_grid = { ...
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11 views

How to evaluate predictions which are obtained via averaging results from different models?

Its an image classifier and I am obtaining predictions by simply averaging them from different models. predictions1_val=model.predict(img_data_val) predictions2_val=model2.predict(img_data_val) ...
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2answers
162 views

Using StackingClassifier with train/test split instead of CV

I've been experimenting with StackingClassifiers lately, and usually it's used with cross-validation (default: K-fold, num-folds = 5). That's written like so: from sklearn.pipeline import Pipeline ...
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1answer
156 views

Stacking classifier: Using custom classifier returns error

I'm using a StackingClassifier in sklearn, where I want the component models to be custom classifiers. In order to do this, I wanted to test it out with some dummy code where the custom classifier is ...
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1answer
51 views

Why is my stacking regressor scoring worse than its components? [closed]

I'm using the following snippet of code: The function test_submodels calculates the r^2 testscore of each submodel and tosses out the bad ones (in this case only the svm model), and returns the new ...
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176 views

TypeError: can't pickle _thread.RLock objects when adding a Neural Network to an Stacking Ensemble

I am currently trying to build a stacking ensemble that consists of both "standard models" and a neural network. The ensemble contains Random Forest, XGBoost, SVM and Catboost. But as soon ...
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0answers
154 views

Manually Writing the Code for Ensemble (Stacking) Machine Learning Models in R

I am trying to manually write R code for creating an ensemble machine learning model (for the purpose of supervised, binary response classification). I understand that there are existing packages in R ...
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1answer
32 views

“Stacking” (Ensemble) Models in R - Zero Training Error?

As a learning exercise, I am trying to manually write the code (in R) for "stacking" (ensemble) different machine learning models together (the goal is binary response classification). I ...
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0answers
18 views

Would scikit's AdaBoostRegressor support warm start if the base regressor has warm start set to true?

For example, would the ensembleRegressor in the code below have its n_estimators updated every time new data is passed to it? baseRegressor = SGDRegressor(warm_state=True) ensembleRegressor = ...
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20 views

Find the best combination of models in an ensemble

I am currently working on a binary classification problem and have built an ensemble with the following classifiers: AdaBoost XGBoost Catboost Random Forest Logistic Regression Support Vector ...
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1answer
97 views

Ensembling multiple model predictions in Keras triggering retracing warning

I'm trying to generate 4 different types of predictions using four TensorFlow models that are built on similar architectures. When I call the model.predict() function four times using the same ...
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1answer
202 views

Base estimator meaning in the context of Isolation forest [closed]

I am struggling to understand the meaning of "Base estimator" in the context of Isolation Forest. One of the parameters for Isolation Forest method in scikit-learn is n_estimators; its ...
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0answers
23 views

Ensemble several instances of same scikit-learn regressors on different parts of the dataset

I am currently fitting an sklearn regressor on a very large dataset (think billions of rows), and there is no way that I can run that regressor on the whole data without getting an OOM error given my ...
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1answer
125 views

Sklearn StackingClassifier: Adding features as inputs to the final estimator

I am using pipelines and stacking classifiers to construct a classification pipeline. In my setup, I would like to pass some extra raw features to the final estimator, along with predictions of the ...
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0answers
165 views

TypeError: Cannot clone object '<>' (type <class ''>): it does not seem to be a scikit-learn estimator as it does not implement a 'get_params' methods

I want to use votingClassifier or EnsembleVoteClassifier voting method with 3 different models but I have this error I need your help to solve this problem! import numpy as np import matplotlib....
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1answer
25 views

Is it possible for an ensemble classifier to return bimodal vote?

Knowing fully well that Majority and Plurality voting of ensemble classifiers for prediction of a class label returns the modal prediction by each base classifier, if there's an ensemble of about 4 ...
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1answer
50 views

does the 'init' parameter of scikit-learn GradientBoostingRegressor define the base estimator?

I'm trying to create an ensemble of an determined regressor, with this in mind i've searched for some way to use the sklearn already existing ensemble methods, and try to change the base estimator of ...
2
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1answer
71 views

'ExtraTreesClassifier' object has no attribute 'estimators_' Error

I am trying to fit the ExtraTreesClassifier() from sklearn.ensemble on a sample dataset, but it keeps throwing this error. I have implemented other sklearn models and they seem to run well. What am I ...
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0answers
37 views

I am trying to ensemble models to train the models and predict using VotingRegressor but i am getting an error please let me know what's the error

my code is as shown below from sklearn.ensemble import VotingRegressor from sklearn.svm import SVC estimators=[('Randomregressor',RandomForestRegressor),('svc',SVC),('regressor_tree',...
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0answers
29 views

is tensorflow's boosted trees algorithm binned?

I have a large dataset that I'd like to try classifying using boosted trees. Tensorflow will give me the best tools for dealing with my quantity of data, and they have a boosted trees classifier (...
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0answers
19 views

How to interpret Graphviz output of GradientBoostingClassifier (or DecisionTreeRegressor)

I am trying implemented the decision function of a small GradientBoostingClassifier (GBDT) model trained in sklearn. However, it seems not very straightforward to understand how the model works. I ...
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0answers
30 views

Implementing AdaBoost from first principles using SVM classifiers

I am currently trying to code the AdaBoost algorithm from first principles using SVM classifiers. I am using the moons dataset and I want to train 5 SVM classifiers sequentially, updating the weights ...

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