MLimputer - Missing Data Imputation Framework for Supervised Machine Learning
Project description
MLimputer - Missing Data Imputation Framework for Supervised Machine Learning
Framework Contextualization
The MLimputer
project constitutes an complete and integrated pipeline to automate the handling of missing values in datasets through regression prediction and aims at reducing bias and increase the precision of imputation results when compared to more classic imputation methods.
This package provides multiple algorithm options to impute your data, in which every observed data column with existing missing values is fitted with a robust preprocessing approach and subsequently predicted.
The architecture design includes three main sections, these being: missing data analysis, data preprocessing and supervised model imputation which are organized in a customizable pipeline structure.
This project aims at providing the following application capabilities:
-
General applicability on tabular datasets: The developed imputation procedures are applicable on any data table associated with any Supervised ML scopes, based on missing data columns to be imputed.
-
Robustness and improvement of predictive results: The application of the MLimputer preprocessing aims at improve the predictive performance through customization and optimization of existing missing values imputation in the dataset input columns.
Main Development Tools
Major frameworks used to built this project:
Where to get it
Binary installer for the latest released version is available at the Python Package Index (PyPI).
The source code is currently hosted on GitHub at: https://github.com/TsLu1s/MLimputer
Installation
To install this package from Pypi repository run the following command:
pip install mlimputer
Usage Examples
The first needed step after importing the package is to load a dataset (split it) and define your choosen imputation model. The imputation model options for handling the missing data in your dataset are the following:
RandomForest
ExtraTrees
GBR
KNN
XGBoost
Lightgbm
Catboost
After creating a MLimputer
object with your imputation selected model, you can then fit the missing data through the fit_imput
method. From there you can impute the future datasets with transform_imput
(validate, test ...) with the same data properties. Note, as it shows in the example bellow, you can also customize your model imputer parameters by changing it's configurations and then, implementing them in the imputer_configs
parameter.
Through the cross_validation
function you can also compare the predictive performance evalution of multiple imputations, allowing you to validate which imputation model fits better your future predictions.
Importante Notes:
- The actual version of this package does not incorporate the imputing of categorical values, just the automatic handling of numeric missing values is implemented.
from mlimputer.imputation import MLimputer
import mlimputer.model_selection as ms
from mlimputer.parameters import imputer_parameters
import pandas as pd
import numpy as np
from sklearn.model_selection import train_test_split
import warnings
warnings.filterwarnings("ignore", category=Warning) #-> For a clean console
data = pd.read_csv('csv_directory_path') # Dataframe Loading Example
train,test = train_test_split(data, train_size=0.8)
train,test = train.reset_index(drop=True), test.reset_index(drop=True) # <- Required
# All model imputation options -> "RandomForest","ExtraTrees","GBR","KNN","XGBoost","Lightgbm","Catboost"
# Customizing Hyperparameters Example
hparameters = imputer_parameters()
print(hparameters)
hparameters["KNN"]["n_neighbors"] = 5
hparameters["RandomForest"]["n_estimators"] = 30
# Imputation Example 1 : KNN
mli_knn = MLimputer(imput_model = "KNN", imputer_configs = hparameters)
mli_knn.fit_imput(X = train)
train_knn = mli_knn.transform_imput(X = train)
test_knn = mli_knn.transform_imput(X = test)
# Imputation Example 2 : RandomForest
mli_rf = MLimputer(imput_model = "RandomForest", imputer_configs = hparameters)
mli_rf.fit_imput(X = train)
train_rf = mli_rf.transform_imput(X = train)
test_rf = mli_rf.transform_imput(X = test)
#(...)
## Performance Evaluation Regression - Imputation CrossValidation Example
from sklearn.linear_model import LinearRegression
from sklearn.ensemble import RandomForestRegressor
from catboost import CatBoostRegressor
leaderboard_rf_imp=ms.cross_validation(X = train_rf,
target = "Target_Name_Col",
test_size = 0.2,
n_splits = 3,
models = [LinearRegression(), RandomForestRegressor(), CatBoostRegressor()])
## Export Imputation Metadata
# Imputation Metadata
import pickle
output = open("imputer_rf.pkl", 'wb')
pickle.dump(mli_rf, output)
License
Distributed under the MIT License. See LICENSE for more information.
Contact
Luis Santos - LinkedIn
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