| 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
Тествайте знанията си по Fundamentals of Machine Learning с 9 въпроса с множество отговори с подробни корекции.
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?
Запомнете ключовите концепции на Fundamentals of Machine Learning с 10 интерактивни флашкарти.
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
Bases de données
Programmation
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