NBA players clustering and Points prediction
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Updated
Jun 22, 2020 - Jupyter Notebook
NBA players clustering and Points prediction
This notebook contains the Linear regression method, import and export fits file, analyzing different types of data such as light bulb and telescope data.
Typical subject topics are covered, in 167 notebooks. Streamlined Mathematica shortcuts take precedence over traditional precursor methods. A number of problems are dealt with in an inept, tentative, inefficient, or erroneous manner.
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[Python] A module, notebook, and sample application for predicting the outcome of a battle using Lanchester's differential equations. The module can forecast results using three different models: the linear law, the square law, and a modernized model.
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