This course will enable students to
Course Outcomes (COs).
Course outcome (at course level) | Learning and teaching strategies | Assessment Strategies |
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On completion of this course, the students will: CO166. Recognize nonlinear problems in application domain and formulate them for analysis CO167. Compare machine learning algorithms and select a suitable algorithm to handle nonlinear problems. CO168. Extract dataset and transform them for computation. CO169. Design machine learning model to solve the problems and interpret their results CO170. Analyse, synthesize and compare machine learning algorithms for different problems and evaluate the performance of machine learning models using different ML metrics. | Approach in teaching: Interactive Lectures, Group Discussion, Tutorials, Case Study
Learning activities for the students: Self-learning assignments, Machine Learning exercises, presentations | Class test, Semester end examinations, Quiz, Practical Assignments, Presentation |
Principal component analysis, employing PCA using python Self-organizing maps, employing SOM using python
Concept of Artificial Neural Networks, Types of neural networks, MLP, KNN, Restricted Boltzmann Machine, topology, training and applications of RBM. Implementation of MLP,KNN and RBM using python
Deep belief networks, deep learning, applying and validating DBN, implementing deep learning using python, Autoencoders, denoising and applying autoencoders and assessing performance.
Ensemble methods, bagging algorithms and random forest, employing random forest using python. Introduction to prescriptive analysis and recommendation system
Case studies: Bike Sharing trends, customer segmentation and effective cross selling, analyzing wine types and quality, forecasting stock and commodity prices.