Skip to content

This space is created to carry out the consumption of documents, codes and inputs that we use in the Machine Learning course.

Notifications You must be signed in to change notification settings

LaloLozas16041/MachineLearning

Repository files navigation

Machine Learning

This space is created to consult and consume documents, codes and inputs that we use in the Machine Learning course that I have taught at the National Banking and Securities Commission, at the Faculty of Sciences and at the Anahuac University, the syllabus is shown below:

  • Regression
    • Simple Linear Regression
    • Multiple Linear Regression
    • Polynomial Regression
    • Support Vector Regression (SVR)
    • Decision Tree Regression
    • Random Forest Regression
  • Classification
    • Logistic Regression
    • K-Nearest Neighbors
    • Support Vector Machine
    • Kernel SVM
    • Naive Bayes
    • Decision Tree Classification
    • Random Forest Classification
  • Clustering
    • K Means
    • Hierarchical
  • Association Rules
    • A Priori
    • Eclat
  • Reinforcement Learning
    • Upper Confidence Bound (UCB)
    • Thompson Sampling
  • Natural Language Processing
  • Deep Learning
    • Redes Neuronales Artificiales
    • Redes Neuronales Recurrenntes
  • Dimensionalty Reduction
    • PCA
    • LDA
    • Kernel PCA
  • Temas Extra
    • Selección de Modelos
    • XGBoost

Statement

Each of the modules is designed to address three main points:

  • Understand the idea of ​​each algorithm
  • Implement the algorithm in Python
  • Implement the algorithm in R

If you have any questions you can write to me privately at lozas2605@gmail.com, in the header of the email, state the topic.

Sincerely,

Eduardo Lozas

About

This space is created to carry out the consumption of documents, codes and inputs that we use in the Machine Learning course.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published