Questions tagged [lightgbm]

LightGBM is a gradient boosting framework that uses tree based learning algorithms. It is designed to be distributed and efficient with the following advantages: ... Support of parallel and GPU learning. Capable of handling large-scale data.

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18 views

why it makes sense to improve on boosting algorithms like gradient boosting

recently we see so many boosting algorithms like xgboost, catboost and most recently lightgbm and they work pretty well, few years back random-forest (bagging algorithm) was one of the more popular ...
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how to pass additional parameters to lgbm custom loss function?

I have write the rmsse custom loss function in a following way def wrmsse(preds, y_true,store_name): ''' preds - Predictions: pd.DataFrame of size (30490 rows, N day columns) y_true - True ...
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GridSearchCV with LGBMRegressor can't find best parameters

I have 2 regressors: import lightgbm as lgb from sklearn.model_selection import GridSearchCV params = { 'num_leaves': [7, 14, 21, 28, 31, 50], 'learning_rate': [0.1, 0.03, 0.003], '...
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Lightgbm metric to maximize negative predictive value [closed]

I want to maximize the negative predictive value for my lightgbm classifier. ( TN / (TN + FN) ) I am wondering if there is any good metric out there for training?
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Binary classification problem - small difference in predicted probabilites

I have a binary problem and in my opinion lightGBM model performs weird in this situation. I have a dataset with about 1mil rows with basic information. I know how much costumer spent last time+actual ...
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40 views

LightGBM GPU runs slowers than CPU on Azure NV24s V3

We built LightGBM v2.3.2 from source on Azure NV24s v3 that has 24 cores and 2 M60 GPUs. From LightGBM's doc, it suggested that one should use a smaller max_bin value to improve GPU speed. But a ...
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Training logs are not being printed in LightGBM in Jupyter

I am trying to train a simple LightGBM model on a Macbook but its not printing any logs even when verbose parameter is set to 1 (or even greater than 1) param = {'num_leaves':50, 'num_trees':500, '...
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36 views

Applying Calibration Function - Existing PMML

I have a PMML for a LGBM (python API) model but would like to apply a calibration function to the predictions. An example of a calibration function would be sigmoid or isotonic regression. Not sure on ...
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Weights - Light GBM - Objective Function

Trying to understand how weights are used during training and if the weights used in a LGBM model only affects the objective function.
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51 views

Predict_proba in lightGBM

first I would like to mention that my question is pretty abstract, but hopefully you can show me some direction where to go. I have to three lightgbm models, first and second of them predict money ...
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How to perform nested Cross Validation (LightGBM Regression) with Bayesian Hyperparameter optimization and TimeSeriesSplit?

I want to do predictions with a Regression model. I try to optimize my LightGBM model for the best hyperparameters while aiming for the lowest generalization RMSE score without overfitting/...
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LightGBM model built with Python outperforming same model built with C#

I've recently built a LightGBM multiclass predictor for Python and translated it into C#. The two models are trained on the exact same data. For whatever reason, the Python model consistently ...
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64 views

LightGBM for feature selection

I'm working on a binary classification problem, my training data has millions of records and ~2000 variables. I'm running lightGBM for feature selection and using the features selected from lightGBM ...
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23 views

Is there a way to convert a single LightGBM decision tree (decision rules) to Python code (conditional statements)?

I am trying to convert a single LightGBM decision tree i.e. num_boost_round = 1 with num_leaves = 16 to Python conditional statements. Is there a way to do this? I found a post on stackoverflow about ...
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1answer
60 views

How can I get the parameters of a lightgbm Booster model loaded from a model file?

Is there a way to get the parameter dict of a lightgbm Booster that is loaded from a model file? I have optimized my model and then saved it using this line model.save_model('lgb-opt.txt') and then ...
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Using f1 score as the evaluation metric in light gbm

I am focused on trying to maximise the precision of my model and so am looking at using custom metrics. I want to try use f1_score first up, however am struggling to implement the options I am ...
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How to compute split_gain in lightgbm of python

I wonder how lightgbm compute split_gain. I saw split_gain = sum_grad / sum_hess at here. but, I saw that is not true. Source is below. import numpy as np import pandas as pd import matplotlib.pyplot ...
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37 views

GridSearchCV with lightgbm requires fit() method not used?

I am trying to carry out a GridSearchCV using sklearn on an LightGBM estimator but am running into problems when building the search. My code to build looks as such: d_train = lgb.Dataset(X_train, ...
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28 views

Imposing floor on the number of boosting rounds when using early stopping?

During hyperparameter optimization of a boosted trees algorithm such as xgboost or lightgbm, is it possible to directly control the minimum (not just the maximum) number of boosting rounds (estimators/...
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48 views

Lightgbm ranking example

Can anyone share a minimal example with data for how to train a ranking model with lightgbm? Preferably with the Scikit-Lean api? What I am struggling with is how to pass the label data. My data are ...
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1answer
56 views

LightGBM best iteration always return 1

I am using lightgbm for a regression problem, the following is my parameters : lgbm_params = { 'nthread': 5, 'boosting_type': 'gbdt', 'objective': 'regression', 'scale_pos_weight':7, ...
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57 views

Confidence Interval for LightGBM Regressor

Is there a way to get confident score / percentage error when predicting? . I used light GBM Regressor(in python 3.6) to train my data . In addition to the prediction I want to have an estimate of the ...
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25 views

LightGBM fit parameter when used in sklearn stacking

I'm using lightgbm with sklearn stacking method, but I encounter a problem which is : How can I setting some parameters in LGBMRegressor.fit function? This is my code for now : from sklearn....
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25 views

LightGBM CV() function does not seem to react to different setting of parameters folds or nfold

Irregardless of what I set in folds and nfold parameters of the CV() function in lightGBM, the function seems to perform only 4 splits (or even worse only 1 split, i.e. no split): from sklearn....
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38 views

Light GBM Leaf Interpretation

I am using Light GBM regressor, and I want to know if there is a way to calculate statistics per leaf (min, max, variance, etc ...) for each leaf in a tree. In other words, when predicting a row, I ...
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18 views

LightGBM incrementally construct Dataset

I want to construct a LightGBM Dataset object from very large X and y, which can not be load to memory. Is there any method that can construct Dataset in "batch"? eg. something like import lightgbm ...
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What is the difference between LightGBM score and sklearn accuracy_score?

I used the following code to get the score for a LightGBM multiclassification problem: But I'm getting different values of scores for the same model and parameters. Which score does LightGBM model ...
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36 views

How to get the model coefficient from LightGbm in ML.Net

I trained a LightGbm model with AutoML in ML.Net because they do not have a sweeper yet. var transdata = pipeline.Fit(file).Transform(file); var experiment = mlContext.Auto()....
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11 views

LGBM Decision Tree Split - Target Continuous variable

How LGBM builds decision tree for continuous target variable. How gain is calculated for columns of continuous target variable?
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Questions about using the C-API

I am new to LGBM. I've played with the Python API which worked but is too slow for my application. So, I am trying to use the C-API. Can anyone refer me to an example of usage of the C-API in the ...
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1answer
31 views

XGBOOST/lLightgbm over-fitting despite no indication in cross-validation test scores?

We aim to identify predictors that may influence the risk of a relatively rare outcome. We are using a semi-large clinical dataset, with data on nearly 200,000 patients. The outcome of interest is ...
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25 views

Clarification on sample_weights in LightGBM

When using weighted training with sample_weight parameter in lightGBM does this affect the sampling in any way? I understand that the weights are used to scale the gradients, but does it in anyway ...
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162 views

How to install mmlspark

I am trying to deploy a mmlspark.lightgbm model on my pyspark code. I tried pip install mmlspark on master's ssh and I got that it is satisfied, but when I run my project I got again: mmlspark not ...
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28 views

Creating correct label data in lightgbm

I try to use Lightgbm classifier for document classification Dataset contains 6 different document classes labeled from 12 to 19 and two labels are skipped Here is the example of y_train values: ...
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217 views

Python: How to retrive the best model from Optuna LightGBM study?

I would like to get the best model to use later in the notebook to predict using a different test batch. reproducible example (taken from Optuna Github) : import lightgbm as lgb import numpy as np ...
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1answer
57 views

LGBMClassifier in RandomizedSearchCV: best_params_ using eval_metric or scoring?

I'm running a grid search with the LGBMClassifier: fit_params={"early_stopping_rounds":30, "eval_metric" : 'auc', "eval_set" : [(X_test_,y_test_)], 'eval_names': ...
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32 views

negative 'Start training from score'

When running lgb.cv, from the log I sometimes get negative numbers following 'Start training from score'. Wondering what does the number actually mean, and what unit? Is it in terms of the metric ...
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20 views

Not able to load lightgbm under R 4.0

I'm not do install/run lightgbm under R 4.0. I was able to run models under R 3.6.3, which I still have in my computer. However, after installing R 4.0 I'm not able to even load lightgbm either on R 3....
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65 views

Updating an LGBM model with new data

I want to use additional data to 'update' an already trained Light Gradient Boosting Model (LGBM). Is there a way to do that? I am looking for an approach that uses the Skealrn API and thus can be ...
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35 views

Precision-Recall curve strange shape

Anyone have similar Precision-Recall curve? Why my precision starts from 0? This is LightGBM algorithm used on 3GB data, 55 million rows times 11 columns. This is my results:
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115 views

Lightgbm scores for custom RMSE loss function and build-in RMSE are different

To start with custom objective functions for lightgbm I started to reproduce standard objective RMSE. Unfortunately, the scores are different. My the example is based on this post or github. Grad and ...
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Parameters num_leaves and max_leaves yields different results in LightGBM although states as aliases

LightGBM documentations states max_leaves parameter is just an alias for num_leaves, but results are different based on selection as you can see here with digits dataset.
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61 views

Could not find module “…Python38\lib\site-packages\lightgbm\lib_lightgbm.dll”

I'm trying to install LightGBM GPU build for Python. I installed from Git and have successfully built LightGBM, the test run turned out as expected. [LightGBM] [Info] Iteration:100, training auc : 0....
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149 views

Writing create_tree_digraph plot to a png file in Python

I want the tree of my lightgbm model to save to a .png format. I have tried two plotting methods from lightgbm API - plot_tree and create_tree_diagraph. import lightgbm as lgb from sklearn.datasets ...
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16 views

How to transform keras ImageDataGenerator() to lightgbm datasets

Hello I'm searching but can not find a way to transform keras ImageDataGenerator() to a valid lightgbm dataset I have used this function to load the images train_images = train_gen....
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415 views

LightGBM error : ValueError: For early stopping, at least one dataset and eval metric is required for evaluation

I am trying to train a LightGBM with gridsearch, I get the below error when I try to train model. ValueError: For early stopping, at least one dataset and eval metric is required for evaluation I ...
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69 views

How does LightGBM compute feature importance when using 'gain'

I need to calculate features importance for my LightGBM Booster model. However, I cannot understand how are the values for feature importances obtained when using 'gain' type. The docs say: If "gain",...
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206 views

Early stopping for lightgbm not working when RMSLE is the eval metric

I am trying to train a lightgbm ML model in Python using rmsle as the eval metric, but am encountering an issue when I try to include early stopping. Here is my code: import numpy as np import ...
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19 views

why gp_minimize doesn't minimize lightGBM and KernelRidge cv error?

I'm currently working on Boston house price prediction and while I was trying to tune the parameters of KernelRidge and lightGBM and used gp_minimize to find the best parameters that minimize mean ...
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61 views

Multiprocessing Pooling and Lightgbm

i am trying to train completely independent tasks using multiprocess pooling in python, which lightgbm for training(i am not sure if this is relevant for problem). Here is the code from sklearn....

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