Notes on Parameter Tuning — xgboost 3.1.0-dev documentation (original) (raw)

Parameter tuning is a dark art in machine learning, the optimal parameters of a model can depend on many scenarios. So it is impossible to create a comprehensive guide for doing so.

This document tries to provide some guideline for parameters in XGBoost.

Understanding Bias-Variance Tradeoff

If you take a machine learning or statistics course, this is likely to be one of the most important concepts. When we allow the model to get more complicated (e.g. more depth), the model has better ability to fit the training data, resulting in a less biased model. However, such complicated model requires more data to fit.

Most of parameters in XGBoost are about bias variance tradeoff. The best model should trade the model complexity with its predictive power carefully.Parameters Documentation will tell you whether each parameter will make the model more conservative or not. This can be used to help you turn the knob between complicated model and simple model.

Control Overfitting

When you observe high training accuracy, but low test accuracy, it is likely that you encountered overfitting problem.

There are in general two ways that you can control overfitting in XGBoost:

Handle Imbalanced Dataset

For common cases such as ads clickthrough log, the dataset is extremely imbalanced. This can affect the training of XGBoost model, and there are two ways to improve it.

Use Hyper Parameter Optimization (HPO) Frameworks

Tuning models is a sophisticated task and there are advanced frameworks to help you. For examples, some meta estimators in scikit-learn likesklearn.model_selection.HalvingGridSearchCV can help guide the search process. Optuna is another great option and there are many more based on different branches of statistics.

Know Your Data

It cannot be stressed enough the importance of understanding the data, sometimes that’s all it takes to get a good model. Many solutions use a simple XGBoost tree model without much tuning and emphasize the data pre-processing step. XGBoost can help feature selection by providing both a global feature importance score and sample feature importance with SHAP value. Also, there are parameters specifically targeting categorical features, and tasks like survival and ranking. Feel free to explore them.

Reducing Memory Usage

If you are using a HPO library like sklearn.model_selection.GridSearchCV, please control the number of threads it can use. It’s best to let XGBoost to run in parallel instead of asking GridSearchCV to run multiple experiments at the same time. For instance, creating a fold of data for cross validation can consume a significant amount of memory:

This creates a copy of dataset. X and X_train are both in memory at the same time.

This happens for every thread at the same time if you run GridSearchCV with

n_jobs larger than 1

X_train, X_test, y_train, y_test = train_test_split(X, y)

df = pd.DataFrame()

This creates a new copy of the dataframe, even if you specify the inplace parameter

new_df = df.drop(...)

array = np.array(...)

This may or may not make a copy of the data, depending on the type of the data

array.astype(np.float32)

np by default uses double, do you actually need it?

array = np.array(...)

You can find some more specific memory reduction practices scattered through the documents For instances: Distributed XGBoost with Dask, XGBoost GPU Support. However, before going into these, being conscious about making data copies is a good starting point. It usually consumes a lot more memory than people expect.