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Questions tagged [xgboost]

XGBoost is a library for constructing boosted tree models in R, Python, Java, Scala, and C++. Use this tag for issues specific to the package (i.e. input/output, installation, functionality).

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XGBoost Best Iteration

Good Evening, I am running a regression using the XGBoost Algorithm as: clf = XGBRegressor(eval_set = [(X_train, y_train), (X_val, y_val)], early_stopping_rounds = 10, ...
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How to move a trained H2O BinaryModel from server to local R

I trained an xgboost using h2o framework in R on top of a virtual machine. I saved the model in a server's folder using the h2o.saveModel() function and I can correctly load it using the h2o....
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Organize and Match Two Sparse Matrices in R - Xgboost

I want to create a predictive model (i.e xgboost). The Steps I followed: First model_xgboost <- xgboost(data = sparse_matrix_train, label = as.numeric(mydata$RealPtot), ...
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Stochastic Gradient Descent and Batch stochastic gradient descent

I am using Python (Jupyter Notebook). I am still learning Machine learning. Now my instructor asked me this question and I don't seem to be getting the answered that is required by him. The question ...
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Ways to calculate NDCG for pairwise ranking

I am wondering how should we calculate NDCG for pairwise ranking. Input has several event for several queries: query1 feature11..feature1N expectedRank1 query1 feature21..feature2N expectedRank2 ...
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1answer
33 views

How do I split train and test based on certain criteria in python in XGBoost? [on hold]

I split my data into trainData and testData in the ratio 70:30 before running the XGB regressor model. I need to run this model repetitively. What do I need to do so that I get a different 70:30 split ...
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MultiOutputRegressor - extract prediction from each regressor and tree?

I am currently testing the sklearn.multioutput.MultiOutputRegressor. Since there are N regressors per tree i, is is possible to extract each of the N predictions per tree i per observation? The ...
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22 views

r- 'regr.xgboost' does not support factor input

I keep getting an error that regr.xgboost does not support factor input, I am trying to use the Hyper-paramter to determine parameter values for the train model. train <- createDummyFeatures(train)...
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1answer
23 views

Plot importance variables xgboost Python

When I plot the feature importance, I get this messy plot. I have more than 7000 variables. I understand the built-in function only selects the most important, although the final graph is unreadable. ...
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35 views

How can I use R^2 as an evaluation metric when modeling?

I am using Python to train an XGBoost Regressor on a 25 feature column dataset and SKlearn's GridSearchCV for parameter tuning. GridSearchCV allows you to choose your scorer with the 'scoring' ...
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how to plot XGBoost evaluation metrics?

I've the following code eval_set = [(X_train, y_train), (X_test, y_test)] eval_metric = ["auc","error"] In the following part, I'm training the XGBClassifier model model = XGBClassifier() %time ...
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2answers
48 views

Suboptimal Early Stopping prevents overfitting in Machine Learning?

I have been using the early stopping feature of xgboost for variety of problem statements, mostly classification. But I have the following observation when working on couple of datasets of different ...
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1answer
48 views

XGBOOST feature name error - Python

Probably this question has been asked many times in different forms. However, my problem is when I use XGBClassifier() with a production like data, I get a feature name mismatch error. I am hoping ...
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How can I use customized objective function written in C++ for Xgboost and call it in python?

I want to write a customized objective function for my xgboost model, but I learned that if the objective function is written in python, it's going to greatly slow down the training speed (because the ...
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0answers
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XGBoost Explainer in R - How to enforce constraints to features Contribution?

There are several R functions and packages to estimate features contribution to the response variable as an output of the XGBoost model. For example there are the following: library(xgboostExplainer)...
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1answer
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How random_state works in lightGBM algorithm?

Why is not it a unique process? Specifically, which part has randomness? I only know random forest. random forest uses bootstrap data, so I can understand its randomness.
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35 views

Issue while using xgboost, error - “OSError: [WinError 126] The specified module could not be found”

I have installed xgboost using following command on my Windows 10 64bit computer : pip3 install C:\Softwares\xgboost-0.72-cp36-cp36m-win32.whl But while importing xgboost in one of my python files, ...
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XGBoost python plot roc-auc train vs eval set to monitor overfitting

I have a binary classification task and i'd like to monitor overfitting. I think the best way for it is to plot the roc-auc curve for both the train and eval sets. However i couldn't find any useful ...
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dask xgboost giving different answers compared to xgboost

I am running the same piece of code on Normal XGBoost and Dask XGBoost. I am getting different probabilities from both models. Normal XGBoost Code params = {'objective': 'binary:logistic', 'nround'...
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XGBoost crashing kernel in jupyter notebook

I don't know how to make the XGBoost classifier work. I am running the code below on jupyter notebook, and it always generates this message "The kernel appears to have died. It will restart ...
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1answer
78 views

R xgboost on caret attempts to perform classification instead of regression

everyone. first, data sample is here: > str(train) 'data.frame': 30226 obs. of 71 variables: $ sal : int 2732 2732 2732 2328 2560 3584 5632 5632 3584 2150 ... $ avg ...
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XGBoost with GPU support on Google Colab

Is there a way to import the XGBoost with GPU support on Google Collab? At last, I tried yesterday and the loaded XGBoost does not have the GPU support. You could reach the notebook from this link: ...
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How to use properly XGBoost4J-Spark trainWithDataFrame eval and obj parameters?

XGBoost4J-Spark trainWithDataFrame accepts the following parameters: (trainingData: org.apache.spark.sql.Dataset[_], params: Map[String,Any], round: Int, nWorkers: Int, obj: ml.dmlc.xgboost4j.scala....
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1answer
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What is the impact from choosing auc/error/logloss as eval_metric for XGBoost binary classification problems?

How does choosing auc, error, or logloss as the eval_metric for XGBoost impact its performance? Assume data are unbalanced. How does it impact accuracy, recall, and precision?
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1answer
25 views

Xgboost (GPU) crashing while predicting

I am using XGBoost GPU version in Python and it crashes whenever I try to run .predict. It works for a smaller data set but for my current problem it is not working. train_final.shape, test_final....
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1answer
25 views

Visual C++ : XGBoost does not work when called from a DLL

I have a requirement to use XGBoost within a Visual C++ project DLL. I have been able to download and build the XGBoost source using VC++ and CMake. When I include the XGBoost code in a test console ...
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1answer
19 views

Height of a random forest decison tree increasing till 25 and the test accuracy also increases

I have a dataset of [~16k] and am doing binary classsfication [0/1].When i am doing hyperparameter grid search in random forest my train and test accuracy increase as increase the depth[optimum is ...
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0answers
36 views

Bayesian optimisation for parameters tuning for XGBoostRegressor in python

I'm trying to perform Bayesian optimization for tuning parameters for XGBoost Regressor, following this code: def xgboostcv(max_depth, learning_rate, n_estimators, ...
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0answers
23 views

Best metrics to compare regression models

I have used the same dataset on different ML models such as SVR, XGBoost etc and obtained sets of results using python sklearn. I have also calculated the R2 scores, Mean Absolute Error (MAE) and Root ...
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24 views

How to increase Left Area Under the Curve?

I am solving a fraud detection problem where the challenge is to predict the probability of default. As per the problem statement, I need to maximise the Left Area Under the Curve (LAUC) at 5% false ...
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1answer
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predict method used with xgboost model returns error message relating to features missing

I am fitting a multiclass classification model but once I am done I can not make predictions. Instead I get an error message I can not understand. For a reproducible example please download this ...
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Extract trees and weights from trained xgboost model

I have already trained an xgboost model with about X trees. I want to create some replicas of the model with exact same hyper parameters, but prune the number of trees. for example i want to create a ...
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1answer
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XGBoost with GPU on Google Colaboratory

I am trying to use XGBoost with GPU on Google Colaboratory. Here is my notebook: import numpy as np import os import xgboost as xgb train_X = np.random.rand(100,5) train_Y = np.random.choice(2, 100) ...
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Exception AttributeError: “'DMatrix' object has no attribute 'handle'”

I have tried the solution in this link: xgboost: AttributeError: 'DMatrix' object has no attribute 'handle' but it still does not work for my code. i have X_train and y_train in the ...
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different roc_auc with XGBoost gridsearch scoring='roc_auc' and roc_auc_score?

I've used GridSearch for classification problem: # A parameter grid for XGBoost params = { 'min_child_weight': [1, 5, 10], 'gamma': [0.5, 1, 1.5, 2, 5], 'subsample': [0.6, 0.8,...
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23 views

xgboost set up in R

I am trying to use xgboost in R but I am not sure what the inputs into the model need to be. The code I have for the model is: xgb <- xgboost(data = data.matrix(training[,-1]), ...
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3answers
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What do the leaf numbers represent in the h2o tree plot?

My classification is a 0-1 classification.So what exactly are the numbers at the bottom telling me [ why are they negative and all] ? Also what do the NAs mean? Do they say that this particular ...
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xgboost prediction threshold

I am trying to classify the data set "Insurance Company Benchmark (COIL 2000) Data Set" which can be found in Dataset. I am using XGBoost in R (I am new to XGBoost algorithm) for the classification ...
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1answer
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h2o error when run on a subset of the data but runs perfectly on the original data

The error that i am getting is this. The subset[~100k examples] of my data has exactly the same number of columns as the original dataset [400k examples].But it runs perfectly on the original dataset ...
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1answer
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Unable to import xgboost in Python though xgboost is installed

I was able to install xgboost using wheel file from here. However, when I import xgboost, Python is throwing me an error about some 'XGBGetLastError' function not found. I digged into the code and ...
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1answer
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Matching XGBoost eval_metric cross-validation calculations with weights

I am trying to recreate the calculations of the mean and std of the evaluation metrics from xgb.cv. I can demonstrate the issue with some code. library(xgboost) library(ModelMetrics) library(...
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R Large datasets and xgboost cv

Apologies if this question is too broad.. I'm running a large data set (around 20Gb on a 64Gb 4 core Linux machine) through cv.xgb in R. I'm currently hitting two issues: Trying 10-fold cv crashes ...
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xgboost - force a trained Booster object to be “defined” by 'x' trees/boosts

Assuming I'm training a binary classification model using xgboost with the following commands: import xgboost as xgb dtrain = xgb.DMatrix(X_train, label=y_train, feature_names=feature_names) dtest = ...
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1answer
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Unexpected behavior from xgboost in Python with Custom Evaluation Function

I am using xgboost with a Custom Evaluation Function and I would like to implement Early Stopping setting a limit of 150 rounds. I am getting back 4 evaluation metrics than the expected 2 and I do ...
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2answers
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R Script: xgboost for binary classification - how to get predicted label?

I am trying to use XGBoost for binary classification and as a newbie got a problem. First, I trained model “fit”: fit <- xgboost( data = dtrain #as.matrix(dat[,predictors]) , label = ...
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3answers
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XGBoost: minimize influence of continuous linear features as opposed to categorical

Lets say I have 100 independent features - 90 are binary (e.g. 0/1) and 10 are continuous variables (e.g. age, height, weight, etc). I use the 100 features to predict a classifier problem with an ...
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1answer
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Custom Evaluation Function based on F1 for use in xgboost - Python API

I have written the following custom evaluation function to use with xgboost, in order to optimize F1. Umfortuantely it returns an exception when run with xgboost. The evaluation function is the ...
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1answer
62 views

How to predict/score XGBoost or LightGBM in .NET Framework 4.6.1 application

I have a machine learning problem where I have obtained very good results on training/test data using both LightGBM and XGBoost. The next step is to obtain predictions from one of these models into an ...
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1answer
19 views

xgboost error: Check failed: !auc_error AUC: the dataset only contains pos or neg samples'

I am running the following code without problem: churn_dmatrix = xgb.DMatrix(data = class_data.iloc[:, :-1], label = class_data.Churn) params = {'objective' : 'binary:logistic' , 'max_depth' : 4} ...
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1answer
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h2o.init error due to xgboost

I use the h2o package in R (Windows machine) and can't initialize it by h2o.init after updating the package recently. The error message is produced below. I guess the cause of the problem is that ...