ML-NYU

an archive of posts in this category

Feb 23, 2025 Multiclass Classification - Overview
Feb 08, 2025 Gaussian Regression - A Bayesian Approach to Linear Regression
Jan 31, 2025 Bayesian Conditional Models
Jan 28, 2025 Bayesian Decision Theory - Concepts and Recap
Jan 27, 2025 Conjugate Priors and Bayes Point Estimates
Jan 24, 2025 Bayesian Machine Learning - Mathematical Foundations
Jan 23, 2025 Multivariate Gaussian Distribution and Naive Bayes
Jan 20, 2025 Gaussian Naive Bayes - A Natural Extension
Jan 20, 2025 An Introduction to Generative Models - Naive Bayes for Binary Features
Jan 18, 2025 Generalized Linear Models Explained - Leveraging MLE for Regression and Classification
Jan 17, 2025 Unveiling Probabilistic Modeling
Jan 16, 2025 SVM Solution in the Span of the Data
Jan 13, 2025 Understanding the Kernel Trick
Jan 13, 2025 Unleashing the Power of Linear Models - Tackling Nonlinearity with Feature Maps
Jan 10, 2025 Demystifying SVMs - Understanding Complementary Slackness and Support Vectors
Jan 08, 2025 The Dual Problem of SVM
Jan 08, 2025 Subgradient and Subgradient Descent
Jan 07, 2025 Support Vector Machines(SVM) - From Hinge Loss to Optimization
Jan 06, 2025 Understanding the Maximum Margin Classifier
Jan 05, 2025 L1 and L2 Regularization - Nuanced Details
Jan 03, 2025 Regularization - Balancing Model Complexity and Overfitting
Jan 02, 2025 Loss Functions - Regression and Classification
Jan 01, 2025 Optimizing Stochastic Gradient Descent - Key Recommendations for Effective Training
Dec 29, 2024 Gradient Descent and Second-Order Optimization - A Thorough Comparison
Dec 29, 2024 Gradient Descent Convergence - Prerequisites and Detailed Derivation
Dec 28, 2024 Understanding Stochastic Gradient Descent (SGD)
Dec 25, 2024 Gradient Descent - A Detailed Walkthrough
Dec 24, 2024 Empirical Risk Minimization (ERM)
Dec 24, 2024 Understanding the Supervised Learning Setup
Dec 23, 2024 Timeline of Machine Learning History
Dec 22, 2024 Advanced Probability Concepts for Machine Learning
Dec 22, 2024 Understanding the Basics of Probability Theory for Machine Learning
Dec 20, 2024 Linear Algebra - Prerequisites for Machine Learning
Dec 20, 2024 Multivariate Calculus - Prerequisites for Machine Learning
Dec 19, 2024 Introduction to Machine Learning(ML)
Dec 18, 2024 Preface & Introduction