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Implementation of a linear, polynomial and Harmonic Classifier with Explanation of various Evaluation Methods in Machine Learning.

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ML Basics: Evaluation of Machine Learning Classifiers

Bias-Variance Analysis, Performance Metrics, and Implementation of a Harmonic Classifier

demo

Requirements

  • Python 3
  • Numpy
  • scikit-learn (needed only for sample data generation)

Running The Notebook

  • Open the Notebook in Google Colab or local jupyter server
  • Install the requirements
  • Restart the kernel if necessary

The tutorial 📃

The full tutorial is available on following links:

On Medium:

https://azad-wolf.medium.com/evaluation-of-machine-learning-classifiers-3912e7f5cf74

On Substack:

https://azadwolf.substack.com/p/evaluation-of-machine-learning-classifiers

More Details in the Book Chapter 📃


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Implementation of a linear, polynomial and Harmonic Classifier with Explanation of various Evaluation Methods in Machine Learning.

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