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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How to optimize use of n_jobs within nested sklearn objects?

I am running an ensemble model using StackingClassifier with xgboost and several other classifiers and would like to take advantage of the most number of cores available at all times (96 in my case). ...
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XGBoost - select tree with the highest accuracy

I need to visualize XGBoost's effects and I want to extract a single tree from it that has the highest accuracy on the test set. Is is built in in any way, or do I have to test by hand all of the ...
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Error: 'xgboost.libpath.XGBoostLibraryNotFound' when running pyinstaller .exe

I am trying to use pyinstaller to package a program I wrote that uses xgboost. The .exe is successfully built, but when I run it, I get the following error: xgboost.libpath.XGBoostLibraryNotFound: ...
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xgbDART in Caret does not produce output when I predict in R on Ubuntu

I am using R version 3.6.3 on Ubuntu. I have an xgbDART model developed with caret however, when I try to predict with this model I don't get any output. The data field type used for training is the ...
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How does XGboost handle time series nature of data?

I have created a time series model using XGBoost. However, when i provide values for subsample etc, i am allowing the algorithm to choose rows randomly. But this might not be appropriate for time ...
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1answer
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GBM vs XGBoost: Why is GBM performing better?

I recently expanded my models to include multiple models, including GBM and XGBoost across different hyperparameters and feature groups. My expectation was that XGBoost would perform better, but I ...
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Problem with xgboost and feature engineering [closed]

I've started working on an NLP project, which requires labeled data (68 categories). I already made a prediction model with xgboost, and I used tf-idf for feature engineering. I got 96% as training ...
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pyspark xgboost4j training failed

I am using python 3.7 , java 8 , pyspark 2.4.5, xgboost jars 0.72 and sparkxgb.zip file . I created the XGBoostEstimator model without problems but when i tried to fit my data i got this error: ------...
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1answer
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How to make user interest prediction for article reading

I am trying to get user interest prediction on the daily articles read for an website by using below sample data : from datetime import date, timedelta import pandas as pd import numpy as np sdate = ...
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Why SHAP Values are not Adding up to Predicted Probability?

I was wondering if my following setup is correct to generate SHAP values from a model using CARET's xgbDART method. The problem in this particular case is that SHAP values rowSums() doesnt add up to ...
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Applying DALEX explain function to an xgboost model for what_if / centerisParibus analysis

I am having difficulty trying to apply what_if analysis to an xgboost model. I am able to run the what_if analysis for a randomForest model however it breaks when I try to run it for the xgboost model....
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How to get the highest accuracy with low number of selected features using xgboost?

I have been looking for several feature selection methods and found about the feature selection with help of XGBoost from the following link (XGBoost feature importance and selection). I implemented ...
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What is the difference between ''sample_weight'' in xgboost.fit function and ''scale_pos_weight'' in XGBClassifier?

I don't know what is difference between these two parameters? If I do binary classification, which I should prefer? Thanks in advance.
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XGBoost using Hyperopt. Facing issues while Hyper-Parameter Tuning

I am trying to Hyper-Parameter Tune XGBoostClassifier using Hyperopt. But I am facing a error. Please find below the code that I am using and the error as well:- Step_1: Objective Function import ...
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How to save and re-start model from a specific tree?

So I ran XGBClassifier after tuning parameters and it stopped early after iteration 22 due to early stop round specification. I am able to retrieve the corresponding "best tree" and see my predictions ...
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1answer
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How to deal with the categorical variable of more than 33 000 cities?

I work in Python. I have a problem with the categorical variable - "city". I'm building a predictive model on a large dataset-over 1 million rows. I have over 100 features. One of them is "city", ...
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XGBoost Hyperparameter Tuning using Hyperopt

I am trying to tune my XGBClassifier model. But I am failing to do so. Please find the code below and please help me clean and edit the code. import csv from hyperopt import STATUS_OK from timeit ...
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1answer
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Getting this simple problem while importing Xgboost on Jupyter notebook

Everything was running fine in Jupiter notebook until I imported Xgboost. As soon as I import it I get the problem bellow. I have Python 3.8 and have installed it via terminal pip3 method, what should ...
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xgboost built-in objective function errors

I am using python 3.7 virtual environment in Anaconda 3. When I using XGBoostRegressor to make regression prediction, there seems error, follows: --------------------------------------------------...
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Does xgboost use the TPU for `gpu-hist` (if TPU is available)?

I am curious if xgboost will use a TPU in google colab if such is available? It certainly makes very good use of the GPU...
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Xgboost tweedie: Why is the formula to get the prediction from the link = exp(link)/ 2?

This is a somewhat niche question, but I really don't get it. When I run a Tweedie GLM, one can get the prediction from the link by doing exp(link). To get the prediction for a Tweedie GLM, I get ...
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1answer
25 views

Pass parameters to lower-level XGBoost estimators in multilabel classification

I have a multi-label classification problem in which I want to train a XGBoost model for each label (4 in total); I then combine the four XGBoost estimators thanks to sklearn.multioutput....
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'attempt to get argmax of an empty sequence' while predicting with xgboost

I am continuously having above error while predicting with any boosting model. May it be with xgboost or lightgbm. On running: import xgboost as xgb xgb_c = xgb.XGBClassifier() xgb_c.fit(x_train, ...
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How does tweedie nloglike in XGBoost relate to the actual nloglike?

When viewing the code for how XGBoost calculates the tweedie evaluation metric (tweedie-nloglik) we can see that it is calculated as: bst_float a = y * std::exp((1 - rho_) * std::log(p)) / (1 - rho_);...
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Xgboost min_child_weight and scale_pos_weight balance

Xgboost   Unbalanced data. Binary classification 10% grade 1. 90% grade 0%.   Scale_poz_weight = 10. Do I need to train the model to the usual one, in which there will be 1 object of class 1, does ...
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1answer
78 views

Getting UnicodeDecodeError when using shap on xgboost

I'm trying to use shap on xgboost model, but getting error: UnicodeDecodeError: 'utf-8' codec can't decode byte 0xff in position 341: invalid start byte example: model = XGBClassifier() model.fit(...
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why XGBoost and Random Forest do not give the same result for the feature importance scores in Python?

I am working on a classification problem where I need to understand the reason (the attributes that have an effect) behind the clusters. However, XGBoost and Random forest give me different results ...
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1answer
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Problem with XGboost Classification & eli5 package

When training an XGBoost classification model, I am using the eli5 function "explain_prediction()" to look at the feature contributions to invidividual predictions. However, the eli5 package seems to ...
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How can I get the *feature_importances_* for one particular label in XGBoost?

How can I get the feature_importances_ for one particular label in Python's XGBoost? Thank you!
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2answers
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XGBoost with Java - Problem loading boosters previosuly saved as ByteArray[]

I'm trying to save/load booster objects into a database, hence rather than saving into files in the HDD, I'm saving/loading as byte[]. But for now, forget about the database as I'm only interested in ...
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Xgboost pairwise ranking for 1 or 0 target variable

I have a dataset of webpage searches: SearchId WebpageId Clicked A 1 1 A 4 0 A 6 0 B 1 0 B ...
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XGBoost prediction performance changing across versions

I'm using the Python package xgboost as a part of a binomial classification problem, and have noticed that my predictive performance changes drastically when I switched from 1.0.2 to 0.90. I have been ...
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python xgb.cv() AUC for regression

I'm running the following code in python (where the target variable is either 0 or 1): dtrain = xgb.DMatrix(X_train, label=y_train) params = { 'max_depth': 6, 'min_child_weight': 1, '...
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Oracle Java and XGBoost4j on Alpine

I am trying to use XGBoost4j (https://github.com/dmlc/xgboost/tree/master/jvm-packages) on Alpine Linux, with Oracle Java. I know anything using glibc should probably not be used on Alpine, but ...
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1answer
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TypeError for BayesianOptimization bayes_opt

I am following a tutorial on hyperparameter tuning online and I am trying to use bayes_opt but I get this error: ---> best_params = bo.res['max']['max_params'] TypeError: list indices must be ...
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Feature importance in regression model

I am working on a regression problem. I fitted several algorithms including random forest and XGboost. Both of them have ways that can show you the feature importance. However, when I display the ...
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1answer
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What is the equivalent of sklearn's `random_state` for XGBoost?

I can't seem to get XGBoost to give me the same results twice in a row. In sklearn, I seem to be able to use random_state but this does not work in XGBoost. I've also tried setting the seed, ...
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1answer
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Impact of variables in model using XGBoost in R

I have a model using medical data in R that I have created using XGBoost. I can tell feature importance and the top feature is BMI. However, I do not know how to tell how this impacts the model--it ...
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XGBoost hyper parameter tuning

I've been trying to tune the hyperparameters of an xgboost model but found through xgb's cv function that the required n_estimators for the model to maximize performance is over 7000 n_estimators at a ...
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How to transfer pip environment to conda

i am using python 3.7, i got several IDE like pycharm and conda as well. First of all, i got an error while installing xgboost on conda, but i can install it with no problem with pip. Is there a way ...
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1answer
38 views

No numeric types to aggregate using groupby() and mean()

I am trying to determine the churn rate. If I try executing with .size() it works. But if I write it with .mean() it doesn't. I don't understand why is it not working because I need to find out the ...
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XGBoost - CV/GridSeachCV for ranking

I'm having a ranking problem and I am trying to fine-tune the hyperparameters. Within my model I am using objective: ndcg, however when I am trying to perform the tuning with xgb.cv(), I am having an ...
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1answer
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Python XGBoost Generate Prediction Mathematical Equation

I have a XGBRegressor model and now I'm curious if there is a way to generate the final prediction equation in Python. P.S: I do not have mathematical background so if my question is considered basic,...
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1answer
131 views

Latest XGboost and Sklearn giving error

xgb=XGBClassifier(objective="binary:logistic", n_estimators=100, random_state=42, eval_metric=["auc"]) xgb.fit(X_train, y_train) KeyError Traceback (most recent ...
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How to convert RDD[LabeledPoint] to DMatrix?

I am new to Scala and I am trying to build a very basic binary classifier using xgboost. I am using xgboost4j_2.12 1.0.0 After processing my data, I have an RDD[LabeledPoint] which I need to ...
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1answer
35 views

ModuleNotFoundError: No module named 'xgboost.sklearn'

I'm trying to import xgboost into jupyter-notebook but get the following error: --------------------------------------------------------------------------- ModuleNotFoundError ...
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How to save XGBoost model trained using Python sklearn for easy portability to Java?

I am using RandomizedSearchCV to train an XGBoost model using the SKLearn API for XGBoost. After training this model, how could I export it into the XGBoost internal format? https://xgboost....
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XGBoost native functionality vs Scikit Learn wrapper

I've recently been playing around with XGBoost for python. I'm pretty familiar with the scikit learn library, so my first inclination was to use the scikit wrapper provided by XGB. Then tonight I ...
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Why xgboost.cv AUC results are significantly better than roc_auc XGBClassifier on GridSearchCV

Binary classification of unbalanced data. Important class (10%) I find the best hyperparameters in cicle on xgboost.cv for the highest possible AUC: gridsearch_params1 = [ (max_depth, ...
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2answers
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How to get reproducible results from XGBoostRegressor? random_state has no effect

I realized that, contrary to scikit learn, setting a fixed value for random_state does not guarantee that the model will output the same results everytime. Hence I'm not able to get reproducible ...

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