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Completely General Mixed Effects Models

Project description

GMEM
===============================

Author: Stephen Anthony Rose
Fork of MERF

Overview
--------

Random Effects models for _any ML model_.
This is a generalisation of a Mixed Effects Random Forest model

Installation / Usage
--------------------

To install use pip:

$ pip install gmem


Or clone the repo:

$ git clone https://github.com/arose13/gmem.git
$ python setup.py install

Contributing
------------

Me (Stephen Anthony Rose)

Example
-------

To be announced.

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