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tkmt_package

This package includes python libraries for Data Preprocessing, Ensemble Learning techniques such as Averaging, Weighted Averaging, Rank Weighted Averaging and Voting and Performance Evaluation.

Installation

Use the package manager pip to install tkmt_package.

pip install tkmt_package

Main Features

Ensemble Learning Techniques:

  • Averaging
  • Weighted Averaging
  • Rank Weighted
  • Votting

Data Preprocessing:

  • Data Preperation
  • Data Normalizations
  • Train TEST Split

Performance Evaluation:

  • Performance Evaluation
  • Graphical Representation

Documentation

The documentation for the latest release is at

The Reference documentation for the latest release is at

How to get it

The main branch on GitHub is the most up to date code

Contributing

Contributions in any form are welcome, including:

  • Documentation improvements
  • Additional tests
  • New features to existing models
  • New models

Project details


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