Skip to content

ranjiGT/ATiML-amendments

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

88 Commits
 
 
 
 
 
 
 
 

Repository files navigation

Advanced Topics in Machine Learning

Data Science block 🏷️

  • A1.1 - Exploratory Data Analysis
  • A1.2 - Case Study on 20 newsgroup
  • A1.3 - Data Science Pipeline
  • A2.1 - Feature Selection (Filter Techniques)
  • A2.2 - Case Study on Excess alcohol consumption among students
  • A2.3 - Feature Scaling
  • A2.4 - Feature Scaling on k Nearest Neighbor
  • A4.1 - Data sampling techniques & strategies
  • A4.2 - Model selection and evaluation (Grid Search & Cross-validation)
  • A4.3 - Model comparison (using Learning curves)
  • A4.4 - Statistical comparison of classifiers using Dietterich's 5x2cv paired t-test

Semi-Supervised Learning 🏷️

  • A5.1 - Linear Learning Machines
  • A5.2 - Dual Representation in LLM
  • A5.3 - Learning decision function using LLM
  • A5.4 - Support Vector Machines (SVM)
  • A6.1 - Semi-Supervised Learning
  • A6.2 - Propogating 1-NN
  • A6.3 - Self-Training
  • A6.4 - Generative Models
  • A7.1 - S3VM
  • A7.2 - Branch & Bound algorithm
  • A7.3 - Graph-based SSL
  • A7.4 - Multiview Algorithms

Constrained clustering 🏷️

  • A8.1 - Instance-based & Metric-based Constrained clustering
  • A8.2 - Must-link & Cannot-link constraints
  • A8.3 - Constrained clustering
  • A9.1 - Must-link vs. Cannot-link vs. Must-link-before
  • A9.2 - COP-k-Means
  • A9.3 - Constrained clustering on FCM
  • A9.4 - Hierarchical constrained clustering

Markov models and KD trees 🏷️

  • A10.1 - First order and n-th order Markov models
  • A10.3 - K-Dimensional Trees