Fundamentals of Machine Learning

Extrait de la fiche de révision

Machine Learning Revision Sheet

1. 📌 Essentials

  • Machine learning creates models that predict outcomes based on data.
  • Models are functions y = f(x), trained on labeled datasets.
  • Features (x) are input variables; labels (y) are targets.
  • Types include regression, classification, clustering, and deep learning.
  • Regression predicts continuous values; classification predicts categories.
  • Deep learning uses neural networks with layered architectures- Model evaluation uses metrics like MAE, MSE, accuracy, F1-score.
  • Training involves data to derive the function; inference predicts new data.
  • Supervised learning uses labeled data; unsupervised learning finds patterns without labels.
  • Common algorithms: Linear regression, logistic regression, K-Means, neural networks.

2. 🧩 Key Structures & Components

  • Training Data — past observations with features and labels.
  • Features (x) — input attributes, e.g., temperature, measurements.
  • Labels (y) — target output, e.g., sales, species, risk.
  • Model — the learned function y = f(x).
  • Algorithm — method to fit data, e.g., gradient descent.
  • Neural Network — layered structure mimicking neurons for deep learning.
  • Loss Function — measures prediction error during training.
  • Evaluation Metrics — assess model performance (e.g., accuracy, R2).

3. 🔬 Functions, Mechanisms & Relationships

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Aperçu du QCM

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?

3. Which of the following best describes the process of training a machine learning model?

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Aperçu des flashcards

Machine learning — definition?

Data-driven models predicting outcomes.

Machine learning — defines?

Models that predict outcomes from data.

Features (x) — role?

Input attributes for prediction.

Features (x) — role?

Input variables for prediction.

Regression — mechanism?

Predicts continuous numeric values.

Regression — prediction type?

Predicts continuous numerical values.

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