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Questions tagged [boosting]

Boosting is a machine learning ensemble meta-algorithm in supervised learning, and a family of machine learning algorithms that convert weak learners to strong ones. Also: Boosting is the process of enhancing the relevancy of a document or field

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15 views

Concept Behind the Ensemble Learning?

I have tried to learn the ensemble ML algorithms like Bagging and Boosting. But I not clear about that why in case of Bagging algorithm we have to consider Decision trees parallelly as base model and ...
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28 views

Xgboost predicts different values for same row in a sparse matrix, when predicting on different chunks of matrix

I am using a xgboost MultiClass model trained on Sparse Matrix (csr). When I use the model to predict on a sparse matrix - I get different prediction values for the same rows if I predict on the whole ...
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1answer
18 views

Random Forest Cp is 0

I am trying to run a randomforest model for price prediction, and when I run tuneGrid in randomforest, I found that the bestTune cp is 0.00, is this possible?
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10 views

Do any variants of Adaboost for regression use weighted residuals?

I'm reviewing different Adaboost algorithms for regression. The popular implementations (i.e., Adaboost.R2, Adaboost.RT) tend to use the a loss function based on the residuals of the previous model to ...
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16 views

Ordered Boosting step

I'm trying to understand the Ordered Boosting algorithm as part of CatBoost. Reading the paper, CatBoost: unbiased boosting with categorical features, it is unclear to me if the M_i models are trees ...
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1answer
29 views

Sklearn AdaBooster and Base estimators

I want to use the sklearn AdaBoostRegressor with different base estimators. The general AdaBoost introduction does not help too much, since they use the DecisionTreeClassifier Where do I find a list ...
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10 views

CatBoost RandomizedSearch stopping and finding out hyperparameters for it

So I started running CatBoost's RandomizedSearch implementation and so far as I see from the log (which I know from verbose=1, down below is the log), there is one model that is the best one for a ...
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1answer
57 views

Can I use XGBoost to boost other models (eg. Naive Bayes, Random Forest)?

I am working on a fraud analytics project and I need some help with boosting. Previously, I used SAS Enterprise Miner to learn more about boosting/ensemble techniques and I learned that boosting can ...
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15 views

How can I modify the AdaBoost algorithm for weak classifiers that have self-determined probability scores associated with them?

I would like to use AdaBoost to solve a segmentation problem. I have a variety of weak classifiers that do an okay job getting some of the segmentation for some of the images, and I think combined ...
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31 views

Problem with tracking the memory usage in r session and increasing memory load during training multple boosting models

I'm facing two problems with memory in R: I can't sufficiently track memory usage in my r session run on a Linux server inside my defined function. I am using gc() and pryr:mem_usage() to track the ...
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1answer
60 views

How can i correctly set a decaying learning rate callback passing it a custom function in xgboost?

I have this function to set up a descending learning rate: def learning_rate_005_decay_power_099(current_iter): base_learning_rate = 0.05 lr = base_learning_rate * np.power(.99, current_iter)...
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13 views

how to Joint feature via online boosting

I would like to combine two features using online boosting. I read more papers that explain online boosting and joint features using boosting, papers are: Identification of a specific person using ...
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24 views

Boosting (ensemble learning) graphs of error vs number of trees show an incorrect trend

I am running boosting over a standard dataset (Abalone), using both SAMME and SAMMME.R algorithms of boosting and the graphs that I obtained are not what I was expecting. It is a multi-class ...
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23 views

XGBoost - interpreting empty trees

I fitted an XGBoostRegressor model on a dataset with the variables ['CPI', 'Fuel_Price', 'Temperature', 'Unemployment'] and Weekly_Sales as the target column. On calling the get_dump method of the ...
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28 views

gbm package returns NaN in predict

I know that there are a few questions about that particular problem, but mine is a little bit different. My dataset is a binary data, where the predictors and the target variable just take the ...
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7 views

How to use Boosting Ensemble Method in 1D Conv to improve the model accuracy?

I build the following 1D Conv net to solve a specific binary problem. I'm getting nearly 84% accuracy there and I need to improve it more. I found that ensemble boosting method like Adaboost will help ...
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2answers
31 views

In what scenario bagging can be used over boosting?

I am new to data science and so far i have learnt that bagging only reduces high variance but boosting reduces both variance and bias and thus increasing the accuracy for both train and test cases. ...
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92 views

How to choose num_leaves in LightGBM so that overfitting is minimised?

I am working on a regression problem and have used LGBMRegressor. I first used it with GridSearchCV and got num_leaves=50 as the best value. My dataset is 425000 obs X 150 variables, after using LGBM ...
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1answer
106 views

Feature importance 'gain' in XGBoost

I want to understand how the feature importance in xgboost is calculated by 'gain'. From https://towardsdatascience.com/be-careful-when-interpreting-your-features-importance-in-xgboost-6e16132588e7: ...
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1answer
19 views

Reversing machine learning models to get particular features

I am trying to model a process. My input data includes certain features and measurements about the product. I built Random forests and Gradient boosting models in Python, and got good results. I am ...
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4answers
95 views

low training (~64%) and test accuracy (~14%) with 5 different models

Im struggling to find a learning algorithm that works for my dataset. I am working with a typical regressor problem. There are 6 features in the dataset that I am concerned with. There are about 800 ...
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0answers
47 views

ValueError(“x and y must be the same size”)

import pandas as pd import numpy as np import re import seaborn as sns import matplotlib.pyplot as plt import seaborn as sns import xgboost as xgb from xgboost import XGBClassifier from sklearn....
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36 views

Using bagging and random forests together

I was looking at a kernel implementation (for text classification) and the following piece of code got me a little bit confused (I removed part of the features - in order to keep it light - as most of ...
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21 views

Error while using AdaBoost on partial least squares

I'm trying to implement boosting on a partial least squares regression model using the AdaBoostRegressor from SciKit Learn. I run into an indexing error while trying to obtain the cross-validated ...
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1answer
112 views

Handling unbalanced data in GradientBoostingClassifier using weighted class?

I have a very unbalanced dataset that I need to build a model on top of that for a classification problem. The dataset has around 30000 samples which around 1000 samples are labelled as—1—, and the ...
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1answer
40 views

Using datetime64 feature type in building a model?

I have a dataframe which includes around 50 features. In my experiment I have a classification problem so I want to train the model by "GradientBoostingClassifier". The dataframe (mydata) is ...
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30 views

Questions around XGBoost

I am trying to understand the XGBoost algorithm and have a few questions around it. I have read various blogs but all seem to tell a different story. Below is a snippet from the code that I am using (...
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23 views

How do AdaBoost.MM compare with SAMME/SAMME.R?

I want to know whether there are works on empirical comparison between two multi-class AdaBoost algorithms, AdaBoost.MM proposed in the paper "A Theory of Multiclass Boosting" (section 8) and SAMME/...
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1answer
352 views

Why does xgboost produce the same predictions and nan values for features when using entire dataset?

Summary I am using Python v3.7 and xgboost v0.81. I have continuous data (y) at a US state level by each week from 2015 to 2019. I'm trying to regress on the following features to y: year, month, ...
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2answers
248 views

Plot number formatting in XGBoost plot_importance()

I've trained an XGBoost model and used plot_importance() to plot which features are the most important in the trained model. Although, the numbers in plot have several decimal values which floods the ...
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131 views

How to get predict probabilities from Sklearn Gradient Boosting Classifier using individual estimators?

I'm trying to find out how sklearn's gradient boosting classifier makes predictions from the different estimators. I want to translate the sklearn model into base python to perform predictions. I ...
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36 views

When using the scale_pos_weight parameter in xgboost, I don't know why this is happening?

I have to solve the binary classification problem. (The ratio of train data size betweens label 0 and 1 is 4.7: 1) So, I created the model with the xgboost algorithm. Result is quite good. - AUC: 0....
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1answer
60 views

Caret: family specification in glmboost doesn't work

I'm trying to run a boosted robust regression on Caret (with the Huber family), however I get an error when training the model: library(caret) X <- rnorm(300, 0, 100) Y <- rnorm(300, 0, 100000)...
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451 views

LightGBM ignore warning about “boost_from_average”

I use LightGBM model (version 2.2.1). It shows next warning on train: [LightGBM] [Warning] Starting from the 2.1.2 version, default value for the "boost_from_average" parameter in "binary" ...
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91 views

Parameter tuning for LightGBM

I have a highly imbalanced dataset belonging to 5 different classes. So first I used oversampling and the main task is to tune the LightGBM for a single class only (data belonging to other classes ...
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1answer
21 views

Solr 7 boosting

Using SOLR 7.X I am looking at boosting a search based on a SKU match select?fl=SKU&q=text:234^1 OR SKU:A234-TRIM-WH^10 with result: <lst name="responseHeader"> <int name="status">0&...
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0answers
97 views

Visualize components of data-generating process in R

I try to replicate this figure with the true underlying function given also there (see also code below). I was wondering how the author came up with this (at first glance easy to replicate) figure. ...
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0answers
185 views

What evaluation metric to use for LightGBM ranker function

I'm using LGMRanker from LightGBM but not sure what evaluation metric I should be using. Here is my code: import lightgbm as lgb gbm = lgb.LGBMRanker gridParams = { 'learning_rate': [0.005,0.01,0.02]...
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0answers
141 views

Problem in residual plot of a Regression XGBoost model

I'm using xgboost to build a regression tree. I"m doing a GridSearch to find the optimal parameters. My training set has around 800 instances and I'm doing a CV = 3. Once the model is built, I see ...
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0answers
23 views

Claims about ensemble models in machine learning

I'm studying machine learning at university and I must do this exercise but I don't have any idea because it's a little bit tricky or cheat questions... I know how the algorithms work but I've been ...
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0answers
34 views

Obtain degrees of freedom of each predictor variable in R-package mboost

In the mboost package in r, is there a way to compute the degrees of freedom of each boosted predictor. For example, the "true model" is given by two nonparametric functions Y= f(X_1) + f(X_2) + \...
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1answer
99 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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1answer
87 views

How to simulate bias and variance of a smoothing spline correctly?

My aim is to plot the bias-variance decomposition of a cubic smoothing spline for varying degrees of freedom. First I simulate a test-set (matrix) and a train-set (matrix). Then I iterate over 100 ...
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19 views

Is taking weighted average of trees' prediction considered as boosting?

When constructing random forest, one way is to take the simple average of all trees' predictions. Alternatively, we can also calculate the weight assigned to each tree by a function of error rate. ...
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1answer
37 views

Gradient Boosting using Python - General Question

What I want to achieve. My data is in the following format. Daily Natural Gas price settlements. Column A : individual rows from December 2018 - December 2026 Column B : Opening price of gas from ...
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1answer
38 views

Is Random Forest (in python) a boosting algorithm?

I'm looking for the main differences between random forest and gradient boosting and I don't understand whether random forest uses boosting techniques and if not, why. Thanks!
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38 views

Differences between adabag and rpart

I've found something strange (at least to me) when using rpart and adabag packages in R (R version 3.5.1 (2018-07-02) -- "Feather Spray")). I'm wondering what is the reason of obtaining different ...
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1answer
259 views

How can I calculate survival function in gbm package analysis?

I would like to analysis my data based on the gradient boosted model. On the other hand, as my data is a kind of cohort, I have a trouble understanding the result of this model. Here's my code. ...
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1answer
283 views

Why are the predict values of gbm (R package) negative?

I analyzed my data with 'gbm' R package. My data is based on a cohort study. Therefore, I ran 'gbm' model based on the 'coxph' results. After constructing a model, I would like to see how this ...
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1answer
127 views

Python SkLearn Gradient Boost Classifier Sample_Weight Clarification

Using Python SkLearn Gradient Boost Classifier. The setting I am using is selecting random samples (stochastic). Using the sample_weight of 1 for one of the binary classes (outcome = 0) and 20 for the ...