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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29 views

XGBoost, handling continous and fixed data for loan dataset

Background: I am using XGBoost to develop a model to predict whether a particular loan will default or not. I have now included time-series data on Fico score, and other variables that change ...
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15 views

How to create an integrated hybrid model of LSTM with XGBoost for classifying tabular (non-image) data?

I have a tabular dataset with the following structure: Sample Structure of the Dataset: I have using LSTM for sequence classification of the 14 different classes in the last column of the data. I ...
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17 views

Save xgboost model at checkpoints

training takes significant time and has shut down during training due to interruptions. i am trying to create checkpoints in xgboost i have a simple model model = XGBRegressor(n_estimators=200,...
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10 views

Xgboost : How to make a one CSV to one label in Dmatrix

I tried to use xgboost to build a regression model. Today, each of my inputs is a 2-D array, and each input has a corresponding one value. However, I had a problem converting data into Dmatrix. ...
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10 views

Validition score while training lower than on final model with xgboost

I have 3 three classes, but my metric is auc, so I have customer eval metric: # while training eval metric def custom_eval_metric_class(preds, dtrain): labels = dtrain.get_label() ...
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6 views

Xgboost rank:ndcg loss function

I'm trying to implement xgboost with an objective of rank:ndcg I want the target to be between 0-3. In my data for most of the groups, there is only 1 event per group which his target is not 0. I ...
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1answer
23 views

xgboost in Python is not returning importance of features despite what is referred in the documentation

According to the xgboost documentation (https://xgboost.readthedocs.io/en/latest/python/python_api.html#module-xgboost.training) the xgboost returns feature importances: feature_importances_ ...
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39 views

ImportError: cannot import name 'XGBClassifier' from 'xgboost' (unknown location)

xgboost imported successfully, but I'm not able to import XGBClassifier.
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1answer
23 views

How to handle null values with xgboost converted to pmml?

I have a xgboost model trained on numerical data containing np.nan values. I converted xgboost model to pmml with sklearn2pmml library. I test pmml with openscoring library. On data without nulls ...
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18 views

Python stops working when using weight class in fitting of XGBoost

I'm dealing with hight imbalanced data in a classification problem, so I use a weighted class in order to deal with this issue, but Python stops working when I just run this Jupyter notebook cell (the ...
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20 views

'dmlc::Error' when using xgboost with multiprocessing.pool

Dear fellow data crunchers. I am having an issue with combining multiprocessing.Pool with my own nested crossvalidation function. In this crossvalidation function, I am using the inner CV for ...
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21 views

How to optimize non parametric model in R?

I have a binary classification XGBTree model. The data frame used to train the model contains many independent variables(x) and I want to optimize one x to improve the chances that the result becomes ...
2
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1answer
46 views

WARN TaskSetManager: Lost Task xxx: java.lang.ArrayIndexOutOfBoundsException: 1 - Scala

I'm trying to do hyper-parameter tuning in scala, using GridCV. However I create my pipeline and everything, I fit my dataset to the pipeline, it fits properly. Then I add some paramGrid and I go for ...
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28 views

What is difference between Decision Tree and Boosting Algorithm?

Decision tree mostly used for Classification problems. Coming to Boosting algo(XGBoost, Adaboost etc..) helps to get better performance and better execution speed. What is difference between them ...
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0answers
15 views

How to use monotonic constraints on xgboost in scala/pyspark

I am using pyspark wrapper for using xgboost in pyspark. I want to use monotonicity constraint in my model as described here. It is easy to do it using the python xgboost model, but I want to use it ...
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0answers
17 views

Global feature importance in XGBoost R using SHAP values

I would like to know if there is a method to compute global feature importance in R package of XGBoost using SHAP values instead of GAIN like Python package of SHAP. I mean, in XGBoost for Python ...
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16 views

Python array Sparse Matrix unusable with xgboost or other

I generate a matrix from a tfidf from a big corpus. The I saved this matrix with np.save (.npy format) from sklearn.feature_extraction.text import TfidfVectorizer from nltk import word_tokenize ...
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0answers
10 views

Issue in custom scorer function for xgboost to be used in gridsearchcv

I am using a custom function in gridsearchcv. Function is to calculate recall in top2 deciles. But i am getting the below error while i run grid_search.fit(): TypeError: my_custom_func() missing 1 ...
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0answers
21 views

XGBoost in Databricks with Python

So recently I've been working around with Mlib Databricks cluster and saw that according to docs XGBoost is available for my cluster version (5.1). This cluster is running Python 2. I get the feeling ...
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0answers
19 views

Difference between feature_contribs and feature importance

XGBoost API has two data points that it exposes regarding the features Feature importance which can be accessed by xgb_bst.get_score(importance_type='gain') The documents explain these as : Get ...
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1answer
48 views

how to understand nfold and nrounds in R's package xgboost

I am trying to use R's package xgboost. But there is something I feel confused. In xgboost manual, under xgb.cv function, it says: The original sample is randomly partitioned into nfold equal size ...
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36 views

Issue with predict() when trying to display SHAP values from XgBoost?

I have ran an XgBoost model and I want to display the SHAP values for the predictions. I am running into an error when I create the variables for SHAP. Here is the code for the XgBoost model that I ...
5
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1answer
78 views

XGBoost algorithm, question about the evaulate_model function

This evaulate model function is frequently used, I found it used here at IBM. But I will show the function here: def evaluate_model(alg, train, target, predictors, useTrainCV=True , cv_folds=5, ...
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1answer
25 views

xgboost-…whl is not supported wheel in this platform

Similar to: whl is not a supported wheel on this platform xgboost pckage for python 3.6 But both didn't work for me. I need to install xgboost on machine without internet. I downloaded xgboost-0.81-...
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1answer
32 views

How to use a compressed sparse matrix as a training data in XGBClassifier?

I have a pandas DataFrame that has 800 columns: 20 columns (continuous features) have been processed using MinMaxScaler the rest of columns (categorical features) is the output of OneHotEncoding. ...
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13 views

Python Xgboost library, tree instance

I was trying to retrieve the xgboost tree instance as in sklearn. In sklearn, this is simply accessible with: clf.tree_ What I found so far is only the booster's get_dump method which returns a ...
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48 views

extracting decision rules from xgboost in python

I want to use xgboost in python for my upcoming model. However since our production system is in SAS, I am trying to extract decision rules from xgboost and then write a SAS scoring code to implement ...
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37 views

Cannot import XGBoostClassifier from xgboost4j-spark

I have installed xgboost on my machine and now i am trying to run a simple scala project on spark trying to use the xgboost4j but i get the following error. Exception in thread "main" java....
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1answer
26 views

How can I save XGboost base_learners?

I am learning an ensemble model using XGBoost algorithm When I printed base_learners, it seems to be stored as a dictionary type. like this : {'dnn': <keras.engine.sequential.Sequential object at ...
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0answers
9 views

Xgboost objective rank is position sensitive

I'm running xgboost with objective rank:NDGC and the input format of the dataset needed to be in libsvm fomart and I'm wondering if the libsvm is position sensitive for this objective as we know that ...
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36 views

How to load in a Dataflow beam pipeline a model that was created using “Booster” from Google storage?

A method of saving XGBoost model mentioned in this answer solved a compatibility issue with using my XGBoost model in Google’s ML Engine. I would like to load and reuse such model in Dataflow pipeline ...
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38 views

Sparse matrix support for long vectors (over 2^31 elements)

I know this question has been asked in the past (here and here, for example), but those questions are years old and unresolved. I am wondering if any solutions have been created since then. The issue ...
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8 views

Calculating Distance to Nearest Neighbors of Each Classes on T-SNE space(2 or 3 D)

In the link below; Kaggle winning solution with XGBoost used distances to nearest neighbors in T-SNE space(3 dimensions). How can we calculate the euclidean or other metric distance to nearest ...
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115 views

Using the GPU backend in h2o.xgboost in a rocker based Docker container [closed]

I've been trying to get GPU support to work for xgboost via h2o in a rocker docker container with little success. Progress so far: GitHub, Docker Hub I have installed CUDA + nvidia-docker on the host ...
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1answer
19 views

How does H2O AutoML treat factor variables?

I am currently using H2O's AutoML for a data science project. However, nowhere in the documentation or on the internet or in the code I can find how AutoML treats factor variables - does it do one-hot ...
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19 views

customized loss, function of both residuals and true values

I am trying to solve a regression problem where I have to predict for how long a machine will be out of order given its status when it breaks. The goal is to fix first machines that are predicted to ...
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Recall vs Calling Base(in my term) in Python

After running XG Boost I'm getting the over all data Calling Base which is in my term TP + FP/ TN + FP + FN + TP as 48.36% and recall as 97%. Now I have been asked to find in 10% calling base what ...
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21 views

Custom loss function for XGBClassifier in multi-class classification?

I have a problem of classifying 4 classes 1,2,3,4. The classes are ordered. I would like to have a custom objective function in xgboost that returns the loss as sum(abs(true_class - predicted_class))....
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0answers
23 views

Xgboost 'DataFrame' object has no attribute 'num_row'

I am working on a multi-class classification problem using xgboost. The shape of my data is print(train_ohe.shape, test_ohe.shape) # (43266, 190) (18543, 190) Custom F1 eval function and model ...
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2answers
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Finding label-specific top features for non-linear classifier

Is there any function that gives the top features of each label in a Random Forest/ XG Boost classifier? The classifier.feature_importances_ only gives top features for the classifier as a whole. ...
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9 views

XGBoost Tenessee Eastman process. Error: bad input shape (980, 2)

I have a doubt regarding XGBoost on Tenessee Eastmann process. I have done data pre processing and when i fit the model, it is showing some errors. "bad input shape (980, 2)" and also if i change the ...
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13 views

How to set xgboost for correct prediction?

I have following XGBOOST code against small data-set for checking the prediction results. But unfortunately getting the wrong results. I have 7 features and I want to predict the product ID. Below my ...
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0answers
18 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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1answer
39 views

Training a Neural network model on KMeans Clusters

I am classifying a client's clients. However, the data is fluid and the clusters can change every day. Running new clusters daily to update user clusters is difficult because Kmeans is inconsistent ...
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1answer
44 views

Deploy an Amazon sagemaker-generated XGBoost model in R environment

I'm trying to deploy an XGBoost model , which is trained using Amazon sagemaker, in an R environment. The sagemaker-generated model is stored as a Python pickle object. Using the {reticulate} ...
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1answer
48 views

Hyperparameter Grid Search with XGBoost - Scoring function vs Evaluation Metric

Dealing with an imbalance dataset problem (7% vs 93%), I want to find out the best structure of my xgboost model using grid search cross-validation. Note: I am using stratified k-fold cross-validation ...
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15 views

How do XGBoost learn the correlation between features and response variable

I’m using XGBoost in predicting the amount of fuel a plane would cost during its flight. I meet with a problem and I’d like to seek for help. In common theory, to a specific airline, the distance ...
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49 views

Running a GPU-trained XGBoost model on a CPU machine later

I have trained and validated an XGBoost model on a GPU machine and pickled it. When I load the pickle and test on the same machine, it works perfectly. I get the multiclass ROC_AUC and the works. When ...
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39 views

Multiclass Classification using expand.grid

So far I built many classification models using the "caret" package. This library allows me to find the best parameters for XGBoost by using expand.grid and trying all the possible combinations of ...
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1answer
36 views

Read existing XGboost ml model in saprk

I have trained XGboost ml model. I need to use this in my spark application. How to load this model in Spark using python or pyspark