AM3403
Chennai Institute of Technology
Here are the best resources to pass AM3403. Find AM3403 study guides, notes, assignments, and much more.
All 5 results
Sort by:
-
Class notes
APPLICATION PROBLEMS-MACHINE LEARNING
-
---17April 20252024/2025
- These notes focus on real-world Application Problems using Machine Learning. It includes detailed case studies on churn analysis and prediction using Cox-Proportional Models and churn prediction techniques. It also covers credit card fraud detection, with emphasis on handling imbalanced data and the use of neural networks. Sentiment analysis and topic mining from The New York Times articles are addressed using methods like cosine similarity, chi-square tests, and N-gram models. Additional Natura...
-
$8.49 More Info
gvarshini
-
Class notes
UNSUPERVISED LEARNING AND OPTIMISATION
-
---39April 20252024/2025
- These notes focus on Unsupervised Learning techniques and Optimization methods in Machine Learning. Topics covered include Expectation Maximization, Gaussian Mixture Models, K-Means and K-Medoid Clustering, Hierarchical Clustering (top-down and bottom-up approaches), and linkage methods (single and multiple). It also explains Dimensionality Reduction techniques such as Linear Discriminant Analysis (LDA), Principal Component Analysis (PCA), Factor Analysis, and Independent Component Analysis (ICA...
-
$8.49 More Info
gvarshini
-
Class notes
NEURAL NETWORKS
-
---38April 20252024/2025
- These notes provide a complete introduction to Artificial Neural Networks (ANNs), starting with the biological motivation behind neural networks. Topics include ANN representations, understanding which problems are suitable for ANN learning, the working of a Perceptron, multilayer networks, and the detailed explanation of the Backpropagation Algorithm. Perfect for students aiming to grasp neural networks for exams, projects, interviews, or research!
-
$8.49 More Info
gvarshini
-
Class notes
SUPERVISED LEARNING
-
---33April 20252024/2025
- These notes focus exclusively on Supervised Learning techniques in Machine Learning. Topics include Bayesian Linear Regression, Gradient Descent optimization, Linear Classification Models like Perceptron Algorithm, Support Vector Machine (SVM), Decision Trees, Random Forests, and Instance-Based Learning with K-Nearest Neighbors (KNN). Additionally, the notes explain Probabilistic Discriminative Models such as Logistic Regression, Probabilistic Generative Models like Naive Bayes, and Maximum Marg...
-
$8.49 More Info
gvarshini
-
Class notes
"Comprehensive Machine Learning Notes | Algorithms, Python Code, Concepts, Examples"
-
---48April 20252024/2025
- These machine learning notes cover everything from basic to advanced topics, including supervised and unsupervised learning, regression, classification, clustering, decision trees, SVM, neural networks, model evaluation techniques, Python code examples, real-world applications, and important exam concepts. Perfect for students preparing for exams, assignments, or interviews!
-
$7.99 More Info
gvarshini