Library for machine learning stacking generalization.

Overview

Build Status

stacked_generalization

Implemented machine learning *stacking technic[1]* as handy library in Python. Feature weighted linear stacking is also available. (See https://github.com/fukatani/stacked_generalization/tree/master/stacked_generalization/example)

Including simple model cache system Joblibed claasifier and Joblibed Regressor.

Feature

1) Any scikit-learn model is availavle for Stage 0 and Stage 1 model.

And stacked model itself has the same interface as scikit-learn library.

You can replace model such as RandomForestClassifier to stacked model easily in your scripts. And multi stage stacking is also easy.

ex.

from stacked_generalization.lib.stacking import StackedClassifier
from sklearn.ensemble import RandomForestClassifier, GradientBoostingClassifier
from sklearn.linear_model import LogisticRegression, RidgeClassifier
from sklearn import datasets, metrics
iris = datasets.load_iris()

# Stage 1 model
bclf = LogisticRegression(random_state=1)

# Stage 0 models
clfs = [RandomForestClassifier(n_estimators=40, criterion = 'gini', random_state=1),
        GradientBoostingClassifier(n_estimators=25, random_state=1),
        RidgeClassifier(random_state=1)]

# same interface as scikit-learn
sl = StackedClassifier(bclf, clfs)
sl.fit(iris.target, iris.data)
score = metrics.accuracy_score(iris.target, sl.predict(iris.data))
print("Accuracy: %f" % score)

More detail example is here. https://github.com/fukatani/stacked_generalization/blob/master/stacked_generalization/example/cross_validation_for_iris.py

https://github.com/fukatani/stacked_generalization/blob/master/stacked_generalization/example/simple_regression.py

2) Evaluation model by out-of-bugs score.

Stacking technic itself uses CV to stage0. So if you use CV for entire stacked model, *each stage 0 model are fitted n_folds squared times.* Sometimes its computational cost can be significent, therefore we implemented CV only for stage1[2].

For example, when we get 3 blends (stage0 prediction), 2 blends are used for stage 1 fitting. The remaining one blend is used for model test. Repitation this cycle for all 3 blends, and averaging scores, we can get oob (out-of-bugs) score *with only n_fold times stage0 fitting.*

ex.

sl = StackedClassifier(bclf, clfs, oob_score_flag=True)
sl.fit(iris.data, iris.target)
print("Accuracy: %f" % sl.oob_score_)

3) Caching stage1 blend_data and trained model. (optional)

If cache is exists, recalculation for stage 0 will be skipped. This function is useful for stage 1 tuning.

sl = StackedClassifier(bclf, clfs, save_stage0=True, save_dir='stack_temp')

Feature of Joblibed Classifier / Regressor

Joblibed Classifier / Regressor is simple cache system for scikit-learn machine learning model. You can use it easily by minimum code modification.

At first fitting and prediction, model calculation is performed normally. At the same time, model fitting result and prediction result are saved as .pkl and .csv respectively.

At second fitting and prediction, if cache is existence, model and prediction results will be loaded from cache and never recalculation.

e.g.

from sklearn import datasets
from sklearn.cross_validation import StratifiedKFold
from sklearn.ensemble import RandomForestClassifier
from stacked_generalization.lib.joblibed import JoblibedClassifier

# Load iris
iris = datasets.load_iris()

# Declaration of Joblibed model
rf = RandomForestClassifier(n_estimators=40)
clf = JoblibedClassifier(rf, "rf")

train_idx, test_idx = list(StratifiedKFold(iris.target, 3))[0]

xs_train = iris.data[train_idx]
y_train = iris.target[train_idx]
xs_test = iris.data[test_idx]
y_test = iris.target[test_idx]

# Need to indicate sample for discriminating cache existence.
clf.fit(xs_train, y_train, train_idx)
score = clf.score(xs_test, y_test, test_idx)

See also https://github.com/fukatani/stacked_generalization/blob/master/stacked_generalization/lib/joblibed.py

Software Requirement

  • Python (2.7 or 3.5 or later)
  • numpy
  • scikit-learn
  • pandas

Installation

pip install stacked_generalization

License

MIT License. (http://opensource.org/licenses/mit-license.php)

Copyright

Copyright (C) 2016, Ryosuke Fukatani

Many part of the implementation of stacking is based on the following. Thanks! https://github.com/log0/vertebral/blob/master/stacked_generalization.py

Other

Any contributions (implement, documentation, test or idea...) are welcome.

References

[1] L. Breiman, "Stacked Regressions", Machine Learning, 24, 49-64 (1996). [2] J. Sill1 et al, "Feature Weighted Linear Stacking", https://arxiv.org/abs/0911.0460, 2009.

neurodsp is a collection of approaches for applying digital signal processing to neural time series

neurodsp is a collection of approaches for applying digital signal processing to neural time series, including algorithms that have been proposed for the analysis of neural time series. It also inclu

NeuroDSP 224 Dec 02, 2022
DistML is a Ray extension library to support large-scale distributed ML training on heterogeneous multi-node multi-GPU clusters

DistML is a Ray extension library to support large-scale distributed ML training on heterogeneous multi-node multi-GPU clusters

27 Aug 19, 2022
Merlion: A Machine Learning Framework for Time Series Intelligence

Merlion is a Python library for time series intelligence. It provides an end-to-end machine learning framework that includes loading and transforming data, building and training models, post-processi

Salesforce 2.8k Jan 05, 2023
Confidence intervals for scikit-learn forest algorithms

forest-confidence-interval: Confidence intervals for Forest algorithms Forest algorithms are powerful ensemble methods for classification and regressi

272 Dec 01, 2022
An implementation of Relaxed Linear Adversarial Concept Erasure (RLACE)

Background This repository contains an implementation of Relaxed Linear Adversarial Concept Erasure (RLACE). Given a dataset X of dense representation

Shauli Ravfogel 4 Apr 13, 2022
K-means clustering is a method used for clustering analysis, especially in data mining and statistics.

K Means Algorithm What is K Means This algorithm is an iterative algorithm that partitions the dataset according to their features into K number of pr

1 Nov 01, 2021
A statistical library designed to fill the void in Python's time series analysis capabilities, including the equivalent of R's auto.arima function.

pmdarima Pmdarima (originally pyramid-arima, for the anagram of 'py' + 'arima') is a statistical library designed to fill the void in Python's time se

alkaline-ml 1.3k Dec 22, 2022
Implementation of K-Nearest Neighbors Algorithm Using PySpark

KNN With Spark Implementation of KNN using PySpark. The KNN was used on two separate datasets (https://archive.ics.uci.edu/ml/datasets/iris and https:

Zachary Petroff 4 Dec 30, 2022
customer churn prediction prevention in telecom industry using machine learning and survival analysis

Telco Customer Churn Prediction - Plotly Dash Application Description This dash application allows you to predict telco customer churn using machine l

Benaissa Mohamed Fayçal 3 Nov 20, 2021
A Python package to preprocess time series

Disclaimer: This package is WIP. Do not take any APIs for granted. tspreprocess Time series can contain noise, may be sampled under a non fitting rate

Maximilian Christ 57 Dec 17, 2022
Ml based project which uses regression technique to predict the price.

Price-Predictor Ml based project which uses regression technique to predict the price. I have used various regression models and finds the model with

Garvit Verma 1 Jul 09, 2022
Machine learning model evaluation made easy: plots, tables, HTML reports, experiment tracking and Jupyter notebook analysis.

sklearn-evaluation Machine learning model evaluation made easy: plots, tables, HTML reports, experiment tracking, and Jupyter notebook analysis. Suppo

Eduardo Blancas 354 Dec 31, 2022
scikit-learn models hyperparameters tuning and feature selection, using evolutionary algorithms.

Sklearn-genetic-opt scikit-learn models hyperparameters tuning and feature selection, using evolutionary algorithms. This is meant to be an alternativ

Rodrigo Arenas 180 Dec 20, 2022
Machine Learning Algorithms ( Desion Tree, XG Boost, Random Forest )

implementation of machine learning Algorithms such as decision tree and random forest and xgboost on darasets then compare results for each and implement ant colony and genetic algorithms on tsp map,

Mohamadreza Rezaei 1 Jan 19, 2022
using Machine Learning Algorithm to classification AppleStore application

AppleStore-classification-with-Machine-learning-Algo- using Machine Learning Algorithm to classification AppleStore application. the first step : 1: p

Mohammed Hussien 2 May 02, 2022
Forecast dynamically at scale with this unique package. pip install scalecast

🌄 Scalecast: Dynamic Forecasting at Scale About This package uses a scaleable forecasting approach in Python with common scikit-learn and statsmodels

Michael Keith 158 Jan 03, 2023
Dieses Projekt ermöglicht es den Smartmeter der EVN (Netz Niederösterreich) über die Kundenschnittstelle auszulesen.

SmartMeterEVN Dieses Projekt ermöglicht es den Smartmeter der EVN (Netz Niederösterreich) über die Kundenschnittstelle auszulesen. Smart Meter werden

greenMike 43 Dec 04, 2022
A Python implementation of GRAIL, a generic framework to learn compact time series representations.

GRAIL A Python implementation of GRAIL, a generic framework to learn compact time series representations. Requirements Python 3.6+ numpy scipy tslearn

3 Nov 24, 2021
Credit Card Fraud Detection, used the credit card fraud dataset from Kaggle

Credit Card Fraud Detection, used the credit card fraud dataset from Kaggle

Sean Zahller 1 Feb 04, 2022
Tutorial for Decision Threshold In Machine Learning.

Decision-Threshold-ML Tutorial for improve skills: 'Decision Threshold In Machine Learning' (from GeeksforGeeks) by Marcus Mariano For more informatio

0 Jan 20, 2022