Machine Learning
Chapter 15 – Book Main Findings, Conclusion and Future Work Chapter Outline Chapter Outline Quick Recap Main Findings and Conclusion of the Book Future Work and Feedback Quick Recap Quick Recap – Evaluating Hypothesis (Models) To completely and correctly learn any task follow the Learning Cycle The four main phases of a Learning Cycle […]
Machine Learning
Chapter 14 – Evaluating Hypothesis (Models) Chapter Outline Chapter Outline Quick Recap Why Evaluate Hypotheses (Model)? Two Main Diseases of Machine Learning Algorithms Comparing Machine Learning Algorithms Evaluation Measures for Classification Problems Evaluation Measures for Regression Problems Evaluation Measures for Sequence-to-Sequence Problems Chapter Summary Quick Recap Quick Recap – Evaluating Hypothesis (Models) Machine Learning […]
Machine Learning
Chapter 13- Instance Based Learning Chapter Outline Chapter Outline Quick Recap Basics of Instance-based Learning k-Nearest Neighbor (k-NN) Algorithm Applying k-NN Algorithm on Numeric Data – A Step by Step Example Applying k-NN Algorithm on Categorical Data – A Step by Step Example Chapter Summary Quick Recap Quick Recap – Bayesian Learning Alhumdulilah, Up […]
Machine Learning
Chapter 12- Bayesian Learning Chapter Outline Chapter Outline Quick Recap Bayes Theorem and Bayesian Learning Algorithms Bayes Optimal Algorithm Gibbs Algorithm Naive Bayes Algorithm Chapter Summary Quick Recap Quick Recap – artificial Neural Networks Following Machine Learning Algorithms are based on Symbolic Representation FIND-S Algorithm List Then Eliminate Algorithm Candidate Elimination Algorithm ID3 Algorithm Symbolic […]
Machine Learning
Chapter 11- Artificial Neural Networks Chapter Outline Chapter Outline Quick Recap Artificial Neural Networks General Architecture – Artificial Neural Networks Perceptron – Two Layer Artificial Neural Networks Machine Learning Cycle – Perceptron Multi-layer Artificial Neural Networks Overfitting – Artificial Neural Networks Chapter Summary Quick Recap Quick Recap – Decision Tree Learning Main Problems – Candidate […]
Machine Learning
Chapter 10 – Decision Tree Learning Chapter Outline Chapter Outline Quick Recap Decision Tree Learning ID3 – Basic Decision Tree Learning Algorithm Machine Learning Cycle – ID3 Algorithm Overfitting – ID3 Algorithm Chapter Summary Quick Recap Quick Recap – Version Space Algorithm Problem – FIND-S Algorithm Only returns one hypothesis which best fits the […]
Machine Learning
Chapter 9 – Version Space Algorithms Chapter Outline Chapter Outline Quick Recap Version Space List Then Eliminate Algorithm Candidate Elimination Algorithm Chapter Summary Quick Recap Quick Recap – FIND-S Algorithm Learning is a Searching Problem Research is defined as a systematic investigation of sources and materials , to develop solutions for Real-world Problems to improve […]
Machine Learning
Chapter 7 – Concept Learning and Hypothesis Representation Chapter Outline Chapter Outline Quick Recap Basics of Concept Learning Instance Space, Training Data, Concept Space and Hypothesis Space Hypothesis (h) Representation Hypothesis Space (H) Representation Chapter Summary Quick Recap Quick Recap – Treating a Problem as a Machine Learning Problem – Step by Step Examples […]
Machine Learning
Chapter 8 -FIND-S Algorithm Chapter Outline Chapter Outline Quick Recap Research Cycle Representing Training Examples and Hypothesis for FIND-S Machine Learning Algorithm FIND-S Algorithm – Machine Learning Cycle Chapter Summary Quick Recap Quick Recap – Concept Learning and Hypothesis Representation Learning is a Searching Problem Research is defined as a systematic investigation of sources and […]
Machine Learning
Chapter 5 – Data and Annotation Step – by – Step Example Chapter Outline Chapter Outline Quick Recap Main Steps for Data Annotation Developing Gold Standard Annotated Corpus using Data Sources with Annotations Developing Gold Standard Annotated Corpus using Data Sources without Annotations Chapter Summary Quick Recap Quick Recap – Data and Annotations A Real-world […]