Master Machine Learning with this all-in-one app ā designed for students, professionals, and competitive exam aspirants. This app offers a structured, chapter-wise learning journey covering key concepts, algorithms, and applications ā all based on a standard ML curriculum.
š Whatās Inside:
š Unit 1: Introduction to Machine Learning
⢠What is Machine Learning
⢠Well-posed Learning Problems
⢠Designing a Learning System
⢠Perspectives and Issues in Machine Learning
š Unit 2: Concept Learning and General-to-Specific Ordering
⢠Concept Learning as Search
⢠FIND-S Algorithm
⢠Version Space
⢠Inductive Bias
š Unit 3: Decision Tree Learning
⢠Decision Tree Representation
⢠ID3 Algorithm
⢠Entropy and Information Gain
⢠Overfitting and Pruning
š Unit 4: Artificial Neural Networks
⢠Perceptron Algorithm
⢠Multilayer Networks
⢠Backpropagation
⢠Issues in Network Design
š Unit 5: Evaluating Hypotheses
⢠Motivation
⢠Estimating Hypothesis Accuracy
⢠Confidence Intervals
⢠Comparing Learning Algorithms
š Unit 6: Bayesian Learning
⢠Bayesā Theorem
⢠Maximum Likelihood and MAP
⢠Naive Bayes Classifier
⢠Bayesian Belief Networks
š Unit 7: Computational Learning Theory
⢠Probably Approximately Correct (PAC) Learning
⢠Sample Complexity
⢠VC Dimension
⢠Mistake Bound Model
š Unit 8: Instance-Based Learning
⢠K-Nearest Neighbor Algorithm
⢠Case-Based Reasoning
⢠Locally Weighted Regression
⢠Curse of Dimensionality
š Unit 9: Genetic Algorithms
⢠Hypothesis Space Search
⢠Genetic Operators
⢠Fitness Functions
⢠Applications of Genetic Algorithms
š Unit 10: Learning Sets of Rules
⢠Sequential Covering Algorithms
⢠Rule Post-Pruning
⢠Learning First-Order Rules
⢠Learning Using Prolog-EBG
š Unit 11: Analytical Learning
⢠Explanation-Based Learning (EBL)
⢠Inductive-Analytical Learning
⢠Relevance Information
⢠Operationality
š Unit 12: Combining Inductive and Analytical Learning
⢠Inductive Logic Programming (ILP)
⢠FOIL Algorithm
⢠Combining Explanation and Observation
⢠Applications of ILP
š Unit 13: Reinforcement Learning
⢠The Learning Task
⢠Q-Learning
⢠Temporal Difference Methods
⢠Exploration Strategies
š Key Features:
⢠Structured syllabus with topic-wise breakdown
⢠Includes syllabus books, MCQs, and quizzes for comprehensive learning
⢠Bookmark feature for easy navigation and quick access
⢠Supports horizontal and landscape view for enhanced usability
⢠Ideal for BSc, MSc, and competitive exam preparation
⢠Lightweight design and easy navigation
Whether you're a beginner or aiming to enhance your ML knowledge, this app is your perfect companion for academic and career success.
š„ Download now and begin your journey into Machine LearningĀ mastery!
Ažurirano dana
9. aug 2025.