| Item | Key Features | Notes / Differences |
|---|---|---|
| Regression | Predicts numeric y; continuous output | Example: sales based on temperature |
| Binary Classification | Predicts 0/1; probability-based; evaluated with confusion matrix | Example: disease risk prediction |
| Multiclass Classification | Predicts among multiple classes; softmax or OvR | Example: penguin species |
| Clustering | Unsupervised grouping; no labels; based on similarity | Example: customer segmentation |
| Deep Learning | Neural networks with multiple layers; backpropagation | Example: image recognition, NLP tasks |
Machine Learning
├─ Data
│ ├─ Features (x)
│ └─ Labels (y)
├─ Model
│ └─ Function y = f(x)
├─ Training
│ ├─ Fit algorithm to data
│ └─ Derive model parameters
├─ Inference
│ └─ Predict ŷ from new x
├─ Types
│ ├─ Regression (numeric y)
│ ├─ Classification (categorical y)
│ │ ├─ Binary (2 classes)
│ │ └─ Multiclass (>2 classes)
│ └─ Clustering (unsupervised)
└─ Deep Learning
└─ Neural networks, layered architecture, backpropagation
End of Revision Sheet
Testez vos connaissances sur Fundamentals of Machine Learning avec 9 questions à choix multiples avec corrections détaillées.
1. What is the primary purpose of a machine learning model?
2. Which algorithm is commonly used to perform simple linear regression in machine learning?
Mémorisez les concepts clés de Fundamentals of Machine Learning avec 10 flashcards interactives.
Machine learning — definition?
Data-driven models predicting outcomes.
Machine learning — defines?
Models that predict outcomes from data.
Features (x) — role?
Input attributes for prediction.
Bases de données
Bases de données
Programmation
Programmation
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