This repository contains implementations of basic machine learning algorithms in Python and Numpy. All algorithms are implemented from scratch without using additional machine learning libraries. The intention of these notebooks is to provide a basic understanding of the algorithms and their underlying structure, not to provide the most efficient implementations.
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Basic Machine Learning implementation with python
Topics
machine-learning
linear-regression
machine-learning-algorithms
multinomial-naive-bayes
k-means-implementation-in-python
newton-method
multiclass-logistic-regression
gaussian-naive-bayes-implementation
naive-bayes-implementation
perceptron-algorithm
gaussian-discriminant-analysis
logistic-regression-scratch
multiclass-gda-implementation
wrapper-me
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