Skip to content

gokaybulut/tutorials

 
 

Repository files navigation

CatBoost tutorials

Basic

It's better to start CatBoost exploring from this basic tutorials.

Python

  • Python Tutorial
    • This tutorial shows some base cases of using CatBoost, such as model training, cross-validation and predicting, as well as some useful features like early stopping, snapshot support, feature importances and parameters tuning.
  • Python Tutorial with task
    • There are 17 questions in this tutorial. Try answering all of them, this will help you to learn how to use the library.

R

  • R Tutorial
    • This tutorial shows how to convert your data to CatBoost Pool, how to train a model and how to make cross validation and parameter tunning.

Command line

Classification

  • Classification Tutorial
    • Here is an example for CatBoost to solve binary classification and multi-classification problems.

Ranking

Feature selection

Model analysis

Custom loss

Apply model

Tools

Competition examples

Events

Tutorials in Russian

  • Find tutorials in Russian on the separate page.

About

CatBoost tutorials repository

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 100.0%