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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22 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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22 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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5 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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11 views

Ensemble learning timeseries: Standard K-fold cross-validation ok for final step? [migrated]

I have used 5 different classification models to predict future price direction (up or down) using caret's timeslice for each model type. I now want to put all the models predicted probabilities ...
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15 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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17 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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16 views

Any GentleBoost, MILBoost and BrownBoost implementaions in python?

I have found an implementation on both GentleBoost and MILBoost in github: https://github.com/hbldh/skboost However, to be honest, i couldn't make any sense of the code. I don't know how to use this ...
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14 views

Ensemble model using stack

According to the notebook Introduction to Ensembling/Stacking in Python , when we stack the multi model, def get_oof(clf, x_train, y_train, x_test): oof_train = np.zeros((ntrain,)) oof_test =...
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60 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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32 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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29 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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32 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
45 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
47 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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23 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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38 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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32 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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63 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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1answer
54 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
19 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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1answer
41 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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58 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
202 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
41 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
227 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
39 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 ...
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27 views

Which prediction function do I use to predict an ensemble model using caretstack or caretEnsemble?

error : no applicable method for 'predict' applied to an object of class "c('caretEnsemble', 'caretStack'). model_list <- caretList( `parkinson$Status`~., data=train, ...
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1answer
37 views

How to construct dataframe for time series data using ensemble learning methods

I am trying to predict the Bitcoin price at t+5, i.e. 5 minutes ahead, using 11 technical indicators up to time t which can all be calculated from the open, high, low, close and volume values from the ...
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15 views

Warning while running ensemble code in R

I am trying to run an ensemble model using the majority vote method. this is the code for it. pred_majority<-as.factor(ifelse(pred_rf_new=='TRUE' & model_1_epoch_predict$predict=='TRUE','TRUE'...
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1answer
28 views

Extracing CV results of feature subsets in mlr

The mlr package provides the opportunity to fuse a learner with a random feature subset. Uncorrelated subsets could be useful to make a voting ensemble/averaging ensemble. This might be interesting if ...
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22 views

Sklearn ensemble model with result data instead of classifiers

For example the VotingClassifier expects a list of estimators, but in my case the different estimators already produced results (in the form of probabilities for each possible label e.g. [0.8, 0.2, 0....
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62 views

How to scale stacked model approach for each country in data set?

fitControl <- trainControl( method = "cv", number = 5, savePredictions = 'final', classProbs = F) predictors<-c("Age", "Quantile","label1","label2") outcomeName<-'Life_expt' ...
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1answer
185 views

roc_auc in VotingClassifier, RandomForestClassifier in scikit-learn (sklearn)

I am trying to calculate roc_auc for hard votingclassifier that i build . i present the code with reprodcible example. now i want to calculate the roc_auc score and plot ROC curver but unfortunately ...
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73 views

Building NER ensembles

I am trying to build NER ensembles with models trained on Spacy NER(python), OpenNLP NER (java), StanfordNLP (java) and NLTK(python). I went through this guide for stacking multiple models here. I ...
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65 views

How do I combine/ensemble results of 3 machine learning models stored in 3 dataframes and output 1 dataframe with results agreed by majority?

I am currently participating in an online hackathon. All the top entries are within 1% of each other. So I decided to run 3 different models instead of a single best performing one, i.e. ensemble ...
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236 views

R Caret Package Error - At least one of the class levels is not a valid R variable name

I am receiving the following error in R when stacking using the caret package. "Error: At least one of the class levels is not a valid R variable name; This will cause errors when class ...
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48 views

Can ensemble classifiers underperform the best single classifier?

I have recently run an ensemble classifier in MLR (R) of a multicenter data set. I noticed that the ensemble over three classifiers (that were trained on different data modalities) was worse than the ...
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1answer
115 views

caretEnsemble error: Error in FUN(X[[i]], …) : { … is not TRUE

I've been trying to stack together predictions from 2 regression models (glmnet and bagEarth) but I have been getting the "Error in FUN(X[[i]], ...) : { .... is not TRUE" message. Based on what I've ...
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1answer
16 views

Sensitivity Vs Positive Predicted Value - which is best?

I am trying to build a model on a class imbalanced dataset (binary - 1's:25% and 0's 75%). Tried with Classification algorithms and ensemble techniques. I am bit confused on below two concepts as i am ...
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2answers
538 views

AttributeError: 'str' object has no attribute 'fit'

Hi I want to use a simple AdaBoostClassifier on the mushroom dataset which lools smth. like: target cap-shape cap-surface cap-color bruises odor \ 3059 0 2 3 ...
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8 views

How to choose the best predictor combinations?

I have a model, which trades forex, and the model has a lot of parameters. I run the model with a lot of parameter combinations (test combinations), and try to choose the best ones, where the output ...
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80 views

How much higher accuracy of train than test is enough to consider the model overfitted?

Considering a dataset of 920 samples with 40 features in a binary classification problem. The dataset is the heart disease dataset publicly available here: archive.ics.uci.edu/ml/datasets/heart+...
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78 views

R session crash, when gbm() is applied over factor response variable? please advise

Below is the excerpt from code, which I am trying for german credit dataset. I am trying to make a generic function for ensemble techniques for my shinydashboard. The problem is with gbm. The R ...
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1answer
34 views

Understanding the basic idea of Gradient Boosting for machine learning

My understanding of gradient boosting is this... We can make the model much more complex by creating lots of decision trees sequentially. Each decision trees build on each other. The goal of each ...
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1answer
89 views

What is the difference between train, test, validation and ensembled data, blended data, and test data?

Help me understand the difference between these two snippets 1) set.seed(123) ss <- sample(1:3,size=nrow(dataframe),replace=TRUE,prob=c(0.6,0.2,0.2)) train <- mtcars[ss==1,] test <- mtcars[...
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50 views

Failing to convert from GLM to r2pmml

I have done an ensemble through caretStacking and now I need to extract the pmmls from the models however I am having problems with one of them, namely the glm. My model is an ensemble of a glm with a ...
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3answers
83 views

Questions on ensemble technique in machine learning

I am studying the ensemble machine learning and when I read some articles online, I encountered 2 questions. 1. In this article, it mentions Instead, model 2 may have a better overall performance ...
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1answer
2k views

TypeError: only integer scalar arrays can be converted to a scalar index while in KFold

I just started to contact machine learning, and I encountered some problems when I used model fusion, and the following code was some of the problems I encountered in studying other people's code.I ...
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1answer
166 views

Ensemble different datasets in R

I am trying to combine signals from different models using the example described here . I have different datasets which predicts the same output. However, when I combine the model output in caretList, ...