Skip to content

Navigation Menu

Sign in
Appearance settings

Search code, repositories, users, issues, pull requests...

Provide feedback

We read every piece of feedback, and take your input very seriously.

Saved searches

Use saved searches to filter your results more quickly

Appearance settings

maykulkarni/Machine-Learning-Notebooks

Open more actions menu

Repository files navigation

Machine Learning Notebooks

Helpful jupyter noteboks that I compiled while learning Machine Learning and Deep Learning from various sources on the Internet.

NumPy Basics:

  1. NumPy Basics

Data Preprocessing:

  1. Feature Selection: Imputing missing values, Encoding, Binarizing.

  2. Feature Scaling: Min-Max Scaling, Normalizing, Standardizing.

  3. Feature Extraction: CountVectorizer, DictVectorizer, TfidfVectorizer.

Regression

  1. Linear & Multiple Regression

  2. Backward Elimination: Method of Backward Elimination, P-values.

  3. Polynomial Regression

  4. Support Vector Regression

  5. Decision Tree Regression

  6. Random Forest Regression

  7. Robust Regression using Theil-Sen Regression

  8. Pipelines in Scikit-Learn

Classification

  1. Logistic Regression

  2. Regularization

  3. K Nearest Neighbors

  4. Support Vector Machines

  5. Naive Bayes

  6. Decision Trees

Clustering

  1. KMeans

  2. Minibatch KMeans

  3. Hierarchical Clustering

  4. Application of Clustering - Image Quantization

  5. Application of Custering - Outlier Detection

Model Evalutaion

  1. Cross Validation and its types

  2. Confusion Matrix, Precision, Recall

  3. R Squared

  4. ROC Curve, AUC

  5. Silhoutte Distance

Associate Rule Mining

  1. Apriori Algorithm

  2. Eclat Model

Reinforcement Learning

  1. Upper Confidence Bound Algorithm

  2. Thompson Sampling

Natural Language Processing

  1. Sentiment Analysis

Neural Networks

  1. What are Activation Functions

  2. Vanilla Neural Network

  3. Backpropagation Derivation

  4. Backpropagation in Python

  5. Convolutional Neural Networks

  6. Long Short Term Memory Neural Networks (LSTM)

Sources / References:

  1. Machine Learning by Andrew Ng (Coursera)
  2. Machine Learning A-Z (Udemy)
  3. Deep Learning A-Z (Udemy)
  4. Neural Networks by Geoffrey (Hinton Coursera)
  5. Scikit-learn Cookbook (Second Edition) - Julian Avila et. al
Morty Proxy This is a proxified and sanitized view of the page, visit original site.