aldente0630 / gauss-rank-scaler

Scikit-learn compatible implementation of the Gauss Rank scaling method

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

Gauss Rank Scaler

A scikit-learn style transformer that scales numeric variables to normal distributions.

Input normalization for neural networks is very important. Gauss Rank is an effective algorithm for converting numeric variable distributions to normals. It is based on rank transformation. The first step is to assign a spacing between -1 and 1 to the sorted features, then apply the inverse of error function erfinv to make it look like a Gaussian.

This generally works much better than Standard or Min Max Scaler.

Important Links

Usage

Gauss Rank Scaler is a fully compatible sklearn transformer that can be used in pipelines or existing scripts. Supported input formats include numpy arrays and pandas dataframes. All columns passed to the transformer are properly scaled.

Example

from gauss_rank_scaler.gauss_rank_scaler import GaussRankScaler
import pandas as pd
from sklearn.datasets import load_boston
%matplotlib inline

# prepare some data
bunch = load_boston()
df_X_train = pd.DataFrame(bunch.data[:250], columns=bunch.feature_names)
df_X_test = pd.DataFrame(bunch.data[250:], columns=bunch.feature_names)

# plot histograms of two numeric variables
_ = df_X_train[['CRIM', 'DIS']].hist()

# scale the numeric variables with Gauss Rank Scaler
scaler = GaussRankScaler()
df_X_new_train = scaler.fit_transform(df_X_train[['CRIM', 'DIS']])

# plot histograms of the scaled variables
_ = pd.DataFrame(df_X_new_train, columns=['CRIM', 'DIS']).hist()

# scale test dataset with the fitted scaler
df_X_new_test = scaler.transform(df_X_test[['CRIM', 'DIS']])

About

Scikit-learn compatible implementation of the Gauss Rank scaling method

License:BSD 3-Clause "New" or "Revised" License


Languages

Language:Python 100.0%