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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eli5 show_prediction not showing probability

I'm using the show_prediction function in the eli5 package to understand how my XGBoost classifier arrived at a prediction. For some reason I seem to be getting a regression score instead of a ...
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9 views

Restoration of XGB encoded values to original labels using R

I'm using an XGBoost model that processes a series of given monthly data files in .csv format. As expected, I encode the class variables into sequential numbers. My question focuses on a single month'...
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xgb.get.DMatrix doesn't work in R with .mat file saved in Python

I'm working with xgboost classifier on R bst <- xgboost(data = data, label = label, max.depth = 4, eta = 1, nthread = 2, nround = 5, num_class=3, objective = "multi:softmax", verbose = 1) But it ...
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20 views

Forecast time series XGBoost model

I recently come across the library(forecastxgb) package in R and I have some questions. Has anybody used the package? I would like to try it out by training a model on the train data and test it on ...
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21 views

R - xgb.cv test/train error doesn't change each iteration

I'm working in R and I'm trying to identify the best hyperparameters for the xgboost model I want to run. I have a dataset with ~700 variables (some numeric, others onehot encoded) and ~25,000 ...
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2answers
36 views

Using XGboost_Regressor in Python results in very good training performance but poor in prediction

I have been trying to use XGBregressor in python. It is by far one of the best ML techniques I have used.However, in some data sets I have very high training R-squared, but it performs really poor in ...
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9 views

How to collect form data from django and pass it to xgboost model for prediction

I have a model that I want to use for predictions which I have loaded using pickle and I have a form created in using django. But when a user submits the form I want it to be in store it in a csv ...
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Image classification using XGboost in python

I have two folders ,which contains images of artefacts and characters each(low resolution images).I want to classify these images using XGboost . I want to setup a model which predicts the ...
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36 views

deploying machine learning models in django

I have a model that I want to use for predictions which I have loaded using pickle and I have a form created in using django. But when a user submits the form I want it to be in store it in a csv ...
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0answers
23 views

XgBoost validate_features argument in predict method. What does validate_features do?

Can anyone please help me to understand the significance of validate_features argument of predict method and how does it affect the predication from the tree. I am using python API for the ...
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1answer
47 views

'<' not supported between instances of 'Applicant' and 'Applicant'

I have a model that I want to use for predictions which I have loaded using pickle and I have a form created in using django. But when a user submits the form I want it to be in store it in a csv ...
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0answers
25 views

xgboost using single GPU failed

System info: Debian 4.9.130-2 (2018-10-27) cuda compilation tools, release 10.0, V10.0.130 xgboost: 0.81 python: 3.5.3 The code example: gbm_param_grid = {'learning_rate': [.01, .05, .075, 0.1, ...
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1answer
15 views

Changing the Anaconda installation directory

I'm using Anaconda and Windows 10 and have to install the XGBoost package. I managed to do it for python using this helpful article (http://www.picnet.com.au/blogs/guido/2016/09/22/xgboost-windows-x64-...
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1answer
64 views

Jupyter kernel dies when running XGBoost

Whenever I try to run the following code cell: from xgboost import XGBClassifier from sklearn.multiclass import OneVsRestClassifier clf = OneVsRestClassifier(XGBClassifier()) clf.fit(X_train, ...
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26 views

from xgboost import XGBClassifier & import xgboost as xgb

I have already installed xgboost (using pip on anaconda),and import xgboost as xgb is fine.However when I am using from xgboost import XGBClassifier ,there is an error: ImportError: cannot import ...
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1answer
13 views

Trouble with running h2o.hit_ratio_table

I got this issue when I run H2o for xgboost. May I ask how can I solve this issue? Thank you. I run this code h2o.hit_ratio_table(gbm2,valid =T) And I encounter this error " Error in names(v) <...
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23 views

xgboost module is not recognized

Though there is another question on the same issue, the solution stated there does not work for me. Hence this is not a duplicate or re-post. And I am posting my issue and implementation specifics ...
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27 views

prediction with smote and undersampling

Well today I come with something weird, I'm trying to make predictions with Smote, undersampling and normal. I do not know why (in smote and undersumpling) the presicion and the recalcal give me more ...
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35 views

Xgboost cox survival time entry

In the new implementation of cox ph survival model in xgboost 0.81 how does one specify start and end time of an event? Thanks
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2answers
32 views

how to set multi classes with machine learning algorithm?

I'm using XGboost, Randomforest(sklearn), SVM(sklearn) and MLPclassifier(sklearn) as classifier. And I want to set these models for multi label class. How can i set? import xgboost as xgb from ...
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1answer
21 views

How Bagging in LightGBM works

In the lightGBM model, there are 2 parameters related to bagging bagging_fraction bagging_freq (frequency for bagging 0 means disable bagging; k means perform bagging at every k ...
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1answer
44 views

Using multiple self-defined metrics in LightGBM

Given that we could use self-defined metric in LightGBM and use parameter 'feval' to call it during training. And for given metric, we could define it in the parameter dict like metric:(l1, l2) My ...
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2answers
58 views

The loss function and evaluation metric of XGBoost

I am confused now about the loss functions used in XGBoost. Here is how I feel confused: we have objective, which is the loss function needs to be minimized; eval_metric: the metric used to represent ...
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32 views

XGBoost (Python) Prediction for Survival Model

The docs for Xgboost imply that the output of a model trained using the Cox PH loss will be exponentiation of the individual persons predicted multiplier (against the baseline hazard). Is there no way ...
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what is the output of shap_values & explainer.expected_value ?

I'm running the shap on XGBClassifier model and trying to understand the output. my code : params2 = {'n_estimators': 100, 'learning_rate': 0.5, 'seed': 0, ...
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1answer
40 views

Exception during xgboost prediction: can not initialize DMatrix from DMatrix

I trained a xgboost model in Python using the Scikit-Learn Python API, and serialized it using pickle library. I uploaded the model to ML Engine, but when I try to do online predictions, i get the ...
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3answers
115 views

Is the xgboost documentation wrong ? (early stopping rounds and best and last iteration)

here below is a question about xgboost early stopping rounds parameter and how it does, or does not, give the best iteration when it is the reason why the fit ends. In xgboost documentation, one can ...
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1answer
56 views

How can I control subsampling such that xgb.cv and cross_validate produce the same results?

xgb.cv and sklearn.model_selection.cross_validate do not produce the same mean train/test error even though I set the same seed/random_state and I make sure both methods use the same folds. The code ...
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1answer
22 views

Unable to run parameter tuning for XGBoost regression model using caret

I am trying to build a regression model using the Boston Housing data using the caret package. The code is as follows library(tidyverse) library(ggplot2) library(lubridate) library(broom) library(...
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0answers
32 views

How to get the iter when early stopping happen using Spark xgboost4j?

I'm using the XGBoostRegressor, setting two parameters num_early_stopping_rounds and maximize_evaluation_metrics. Is there any way I can get the num of iter when the early stopping happen? As shown in ...
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1answer
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How mlxtend StackingRegressor with multiple cpu?

I would like to use mlxtend StackingRegressor to ensemble XGBoost,LGBM and Catboost .But I am not sure how much cpu I will use in this method. For example: In XGboost: import xgboost as xgb ...
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XGBoost on Spark crashes with SIGSEV

I use Scala in Azure Databricks with the following setup: 5x worker node (28.0 GB Memory, 8 Cores, 1.5 DBU) 1x driver (14.0 GB Memory, 4 Cores, 0.75 DBU) I have a Spark Dataframe with 760k rows with ...
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40 views

Installing xgboost for GPU return error “could not load cache”

How can I install xgboost for GPU on windows 10 64bit? This is what I've tried by following official docs. xgboost git clone --recursive https://github.com/dmlc/xgboost cd xgboost git submodule init ...
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0answers
41 views

Xgboost throws an error when trying to import

I have a project that is using xgboost. We now transfer the project to containers. But after installing it using pip, it throws the following error: Traceback (most recent call last): File "...
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1answer
16 views

Create libsvm from multiple csv files for xgboost external memory training

I am trying to train an xgboost model using its external memory version, which takes a libsvm file as training set. Right now, all the data is stored in a bunch of csv files which combine together are ...
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1answer
27 views

ValueError: gbrt has to be an instance of BaseGradientBoosting

So I am trying to make partial dependence plot using xgboost in spyder. But it is giving ValueError: gbrt has to be an instance of BaseGradientBoosting. I have predefine values of train_X, train_y, ...
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0answers
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xgboost in R: is it possibel to cross validation (xgb.cv) get the matrix contain with prediction and observation value?

I recently used "xgb.cv" estimate the accuracy of xgboost. I found that the element pred can get the prediction value. I also want to get the corresponding observation value(test data), or a matrix ...
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1answer
58 views

Why can xgboost not deal with this simple Chinese sentence case?

There is only 1 feature dim. But the result is unreasonable. The code and data is below. The purpose of the code is to judge whether the two sentences are the same. In fact, the final input to the ...
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0answers
16 views

Gradient Boosting - Price Forecast based on Month

What I am trying to achieve. I want to forecast Natural Gas prices under the column "NG Open" based on other parameters in the data set below for all Contract Months. I am using XG Boosting algorithm ...
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0answers
29 views

XGBoost on GPU is killing the kernel (On Ubuntu)

The kernel dies every time I run XGBoost on GPU with this code: params = {'tree_method': 'gpu_exact', 'max_depth': 100, 'learning_rate': 0.1} dtrain = xgb.DMatrix(X_train,y_train ) xgb.train(...
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1answer
31 views

Xgboost scoring in 'IF … THEN…" format

Instead of using predict_proba() or predict() in xgboost, I would like to get the the logics in IF… THEN… format to calculate the predicted probability, Just wondering if there is a way to do this ?
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1answer
30 views

xgboost model getfscore:'str' object is not callable

feat_imp = pd.Series(xgbPara.booster().get_fscore()).sort_values(ascending=False) TypeError: 'str' object is not callable I can run it in pycharm, but when I run it in pyspark, there is a Type ...
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0answers
68 views

Python: Imbalanced data for XGBoost Multi-label classification

I have a dataset of a stock's returns where the Y-label is price change direction (= 2 if upward tick, = 1 if downward tick, and = 0 if no move. Some of the features, X, include the lagged label ...
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1answer
35 views

xgboost feature importance of categorical variable

I am using XGBClassifier to train in python and there are a handful of categorical variables in my training dataset. Originally, I planed to convert each of them into a few dummies before I throw in ...
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1answer
22 views

control that predictions are > 0 using GridSearchCV

I am using GridSearchCV in order to estimate the parameters of my regressor. I use the scoring function mean_squared_log_error (and I would like to continue using it) from sklearn.model_selection ...
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0answers
40 views

XGBoost binary:logistic and self-implemented log loss do not yield same results

I was trying out the custom loss functionality in XGBoost and ran across https://github.com/dmlc/xgboost/blob/master/demo/guide-python/custom_objective.py which demonstrated how to implement the ...
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0answers
23 views

Fault in Running XGBoost GPU on MacOS

I am new to this forum and new to configuring XGBoost on a single GPU. I followed the steps here verbatim including the switch -DUSE_CUDA=ON. I obtained a compiled xgboost file. However, even with ...
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0answers
27 views

XGBoost classifier XGBClassifier min_child_weight: what is it?

We have a simpliest train sample: X y 0 "a" 1 "b" And 2 simpliest classifiers with only one different last parameter min_child_weight: XGBClassifier(n_estimators=1, max_depth=1, reg_lambda=0,...
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1answer
20 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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2answers
43 views

How to change the features imporance in Xgboost

I have an imposed feature that scores 0 in the XGBOOST feature importance score. However, I would like my model to consider it. Is there a solution that allows to edit (brute force) feature importance?...