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Complete ML Machine Learning in one shot | Semester Exam | Hindi

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Content in this video:
00:00 Chapter0 (About this video)
01:45 Chapter1 (INTRODUCTION)
1:23:31 Chapter2 (REGRESSION & BAYESIAN LEARNING)
2:31:11 Chapter3 (DECISION TREE LEARNING)
3:42:35 Chapter4 (ARTIFICIAL NEURAL NETWORKS)
5:41:09 Chapter5 (REINFORCEMENT LEARNING)


(UNIT1 : INTRODUCTION) Learning, Types of Learning, Well defined learning problems, Designing a Learning System, History of ML, Introduction of Machine Learning Approaches (Artificial Neural Network, Clustering, Reinforcement Learning, Decision Tree Learning, Bayesian networks, Support Vector Machine, Genetic Algorithm), Issues in Machine Learning and Data Science Vs Machine Learning.

(UNIT2: REGRESSION & BAYESIAN LEARNING) REGRESSION: Linear Regression and Logistic Regression. BAYESIAN LEARNING Bayes theorem, Concept learning, Bayes Optimal Classifier, Naïve Bayes classifier, Bayesian belief networks, EM algorithm. SUPPORT VECTOR MACHINE: Introduction, Types of support vector kernel (Linear kernel, polynomial kernel,and Gaussiankernel), Hyperplane (Decision surface), Properties of SVM, and Issues in SVM.

(UNIT3: DECISION TREE LEARNING) DECISION TREE LEARNING Decision tree learning algorithm, Inductive bias, Inductive inference with decision trees, Entropy and information theory, Information gain, ID3 Algorithm, Issues in Decision tree learning. INSTANCEBASED LEARNING kNearest Neighbour Learning, Locally Weighted Regression, Radial basis function networks, Casebased learning.

(UNIT4: ARTIFICIAL NEURAL NETWORKS) ARTIFICIAL NEURAL NETWORKS Perceptron's, Multilayer perceptron, Gradient descent & the Delta rule, Multilayer networks, Derivation of Backpropagation Algorithm, Generalization, Unsupervised Learning SOM Algorithm and its variant; DEEP LEARNING Introduction, concept of convolutional neural network, Types of layers (Convolutional Layers, Activation function, pooling, fully connected), Concept of Convolution (1D and 2D) layers, Training of network, Case study of CNN for eg on Diabetic Retinopathy, Building a smart speaker, Selfderiving car etc.

(UNIT5: REINFORCEMENT LEARNING) REINFORCEMENT LEARNINGIntroduction to Reinforcement Learning, Learning Task,Example of Reinforcement Learning in Practice, Learning Models for Reinforcement (Markov Decision process, Q Learning Q Learning function, @ Learning Algorithm ), Application of Reinforcement Learning,Introduction to Deep Q Learning. GENETIC ALGORITHMS: Introduction, Components, GA cycle of reproduction, Crossover, Mutation, Genetic Programming, Models of Evolution and Learning, Applications.

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