This repo contains some lectures and labs presented in "Machine Learning" designed for students of "école nationale supérieure d'informatique (ESI)", Algiers, Algeria.
- Data preparation and models' evaluation
- Data collection
- Data quality
- Data integration
- Data annotation
- Data cleaning
- Data transformation
- Numerical features
- Categorical features
- Feature generation
- Data sampling and splitting
- Unbalanced data
- Data splitting
- Cross validation
- Models' evaluation
- Classification
- Regression
- Clustering
- Data collection
- Naı̈ve Bayes and hidden Markov model
- Classification models
- Non-tenporal problems
- Temporal problems
- Discriminative models
- Generative models
- Naı̈ve Bayes
- Estimation
- Prior probability
- Likelihood
- Numerical application
- Multinomial NB
- Bernoulli NB
- Normal NB
- HMM
- Classification models
- Neural Networks
- Neuron
- Network
- Activation functions
- Cost functions
- Optimization functions
- Feedforward Neural Networks (FFNN)
- Multi-layers architecture
- Auto-encoders
- Convolutional Neural Network (CNN)
- Regularization
- Recurrent Neural Networks (RNN)
- Architecture (RNN)
- Long Short-Term Memory (LSTM)
- Gated Recurrent Unit (GRU)
- Attention
- Attention mechanism
- Multi-Head Attention
- Self-attention
- Transformer
- Neuron
- Multi-class and multi-label classification
- Classification
- Binary classification
- Multi-class classification
- Multi-label classification
- Binary logistic regression
- Probability estimation
- Cost and Gradient
- Gradient (derivation)
- Parameters' update
- Multi-class logistic regression
- One-vs-Rest
- One-vs-One
- Multinomial
- Multi-label logistic regression
- Binary relevance
- Label powerset
- Classification
- Decision trees and Ensemble learning
- Decision trees
- Algorithms
- Stop conditions
- Review
- ID3
- Homogeneity of a set
- Set's split
- Choice of split feature
- Example
- CART
- Homogeneity of a set
- Set's split
- Choice of split feature
- Random forests
- Ensemble learning
- Parameters of a Forest
- Decision trees
- Regularization and feature selection
- Regularization
- L2 Loss
- L1 Loss
- ElasticNet
- Feature selection
- Filter
- Embedded
- Wrapper
- Regularization
- Support vector machine (SVM)
- Problem definition
- Hard-margin
- Soft-margin
- Primal form
- Cost function
- Class estimation
- Optimization algorithms
- Dual form
- Cost function
- Class estimation
- Optimization algorithms
- Problem definition
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