Invariant Gradient Boosted Decision Tree Package - Era Splitting.
Project description
This is the official code base for Era Splitting. Using this repository you can install and run the EraHistGradientBoostingRegressor with the new era splitting, directional era splitting, or original criterion implemented via simple arguments.
Era Splitting Paper: https://arxiv.org/abs/2309.14496
Installation
Clone the Repo
git clone --single-branch --branch era_splitting-tiebreaker https://github.com/jefferythewind/scikit-learn-erasplit.git
Install via Pip
cd scikit-learn-erasplit/
pip install .
Example Implementation w/ Numerai Data
from pathlib import Path
from numerapi import NumerAPI #pip install numerapi
import json
"""Era Split Model"""
from erasplit.ensemble import EraHistGradientBoostingRegressor
napi = NumerAPI()
Path("./v4").mkdir(parents=False, exist_ok=True)
napi.download_dataset("v4/train.parquet")
napi.download_dataset("v4/features.json")
with open("v4/features.json", "r") as f:
feature_metadata = json.load(f)
features = feature_metadata["feature_sets"]['small']
TARGET_COL="target_cyrus_v4_20"
training_data = pd.read_parquet('v4/train.parquet')
training_data['era'] = training_data['era'].astype('int')
model = EraHistGradientBoostingRegressor(
early_stopping=False,
boltzmann_alpha=0,
max_iter=5000,
max_depth=5,
learning_rate=.01,
colsample_bytree=.1,
max_leaf_nodes=32,
gamma=1, #for era splitting
#blama=1, #for directional era splitting
#vanna=1, #for original splitting criterion
)
model.fit(training_data[ features ], training_data[ TARGET_COL ], training_data['era'].values)
Explanation of Parameters
Boltzmann Alpha
The Boltzmann alpha parameter varies from -infinity to +infinity. A value of zero recovers the mean, -infinity recovers the minumum and +infinity recovers the maximum. This smooth min/max function is applied to the era-wise impurity scores when evaluating a data split. Negative values here will build more invariant trees.
Read more: https://en.wikipedia.org/wiki/Smooth_maximum
Gamma
Varies over the interval [0,1]. Indicates weight placed on the era splitting criterion.
Blama
Varies over the interval [0,1]. Indicates weight placed on the directional era splitting criterion.
Vanna
Varies over the interval [0,1]. Indicates weight placed on the original splitting criterion.
Behind the scenes, this is for formula which creates a linear combination of the split criteria. Usually we just set one of these to 1 and leave the other at zero.
gain = gamma * era_split_gain + blama * directional_era_split_gain + vanna * original_gain
Complete (New Updated) Code Notebook Examples Available here:
https://github.com/jefferythewind/era-splitting-notebook-examples
Citations:
@misc{delise2023era,
title={Era Splitting},
author={Timothy DeLise},
year={2023},
eprint={2309.14496},
archivePrefix={arXiv},
primaryClass={cs.LG}
}
This code was forked from the official scikit-learn repository and is currently a stand-alone version. All community help is welcome for getting these ideas part of the official scikit learn code base or even better, incorporated in the LightGBM code base.
https://scikit-learn.org/stable/about.html#citing-scikit-learn
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