Diverence metric
Project description
Alcraft-Williams Trivial Divergence
There is a google colab to demonstrate this here: https://colab.research.google.com/drive/1NNfjDTaUO6IfAcVu5DDs9UvcEdGY_TDA?usp=sharing
Alcraft-Williams Association
This implements the Alcraft-Williams Association for finding associations in non-linear multi-dimensional data. It has a particular advantage in being able to identify associations in sinusoidal data.
Install
It is installed on Test PyPi and can installed with
pip install -i https://test.pypi.org/simple/ nDimAssociations-pkg-RachelAlcraft
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