Old Website
23CST303-MACHINE LEARNING
UNIT 1
INTRODUCTION

Introduction-Types of Machine Learning-Difference between Traditional Vs Machine Learning approach-Applications of ML-ML Pipeline-Problem formulation, data collection, preprocessing, modeling, evaluation, deployment-Key ML Concepts-Dataset types -structured vs unstructured-Train/Test split, Features & Labels Ethical considerations: Bias, fairness, transparency in ML

UNIT 2 
SUPERVISED LEARNING – I

Regression-Linear Regression-Polynomial Regression-Evaluation: MAE, MSE, R² score-Classification-Logistic Regression-k-Nearest Neighbors-Decision Trees-Naïve Bayes-Overfitting, Underfitting-Cross-Validation-Bias᎓Variance Trade off

UNIT 3
SUPERVISED LEARNING – II

Support Vector Machines-Ensemble Methods-Bagging, Random Forest-Boosting-Feature Selection & Dimensionality Reduction-PCA, LDA-Model Interpretability

UNIT 4
UNSUPERVISED LEARNING & CLUSTERING

Clustering-k-Means-Hierarchical Clustering-DBSCAN-Association Rule Mining-Apriori Algorithm-Anomaly Detection-Evaluation Metrics for Clustering

UNIT 5
REINFORCEMENT LEARNING

Basics of RL ᎓ RL Framework ᎓ Markov Decision Process(MDP) ᎓ Exploration Vs Exploitation ᎓ Polices -Value Functions and Bellman Equations ᎓ Solution Methods ᎓ Q-learning – Case Study: Smart Traffic Signal Control

screen tagSupport