| Authentic | True |
| Course | Machine Learning |
| Name | Arijit Mallick |
| Department | C-MInDS |
| Credit | 6 |
| Grade | BB |
| Date | August 4 - December 15, 2025 |
| Coordinator | Prof. D. Manjunath |
| Dean | Prof. Usha Ananthakumar |
Course Contents
- Introduction to ML, When is learning possible?
- Structure of a ML methodology
- Basics of Linear Algebra, Probability
- Matrix operations, Eigenvalues, quadratic forms
- Probability, expectation, variance, Bayes theorem, Linear Regression
- Formulation and error metric, Polynomial regression,Bias Variance Trade-off and overfitting
- Regularization (Ridge and Lasso), Classification, Bayesian approaches, LDA, Naïve Bayes
- K-nearest Neighbours, Cross validation and model selection
- Perceptron model (PLA), Generalization, Support vector machines, Hard margin classifier
- Soft margin classifier, Discussion on projects
- Logistic regression, Cross entropy loss, Gradient Descent algorithms
- Gradient descent, stochastic gradient descent, minibatch gradient descent
- Kernel Methods, Non-linearity in feature space, Decision Trees, Random Forest
- Bragging and Boosting, Neural Networks
- Activation functions and nonlinearities, Backpropagation
- Loss functions, Unsupervised learning, Clustering using K-means,Three rules
- Occam’s razor, Data snooping, Model to match Sample complexity
System of Evaluation
A participant is awarded a grade based on his/her performance in examinations/assignments in every course registered by him/her. These grades are described by the letter
AA, AB, BB, etc. and have a numerical equivalent called grade points as given below:
| Letter Grade | Grade Points |
|---|---|
| AA | 10 |
| AB | 9 |
| BB | 8 |
| BC | 7 |
| CC | 6 |
| CD | 5 |
| DD | 4 |