InfoBooks

Machine Learning - Supervised Techniques

Author: Sepp Hochreiter

*Please wait a few seconds for the document to load; the time may vary depending on your internet connection. If you prefer, you can download the file by clicking the link below.

Page 1 / 1
100%

Loading PDF...

Document Details

Title: Machine Learning - Supervised Techniques

Author: Sepp Hochreiter

Description: Comprehensive lecture notes on supervised ML techniques from the creator of LSTM networks, covering regression, classification, and ensemble methods.

Pages: 256

Size: 5.57 MB

Format: PDF

Similar Books

  • Foundations of Machine Learning

    Rigorous treatment of ML foundations covering PAC learning, Rademacher complexity, boosting, and kernel methods. Ideal for readers with strong mathematical background.

    Mehryar Mohri, Afshin Rostamizadeh, Ameet Talwalkar

    Format: PDF 505 pages 4.59 MB
  • Interpretable Machine Learning

    Practical guide to making ML models explainable, covering SHAP, LIME, partial dependence plots, and feature importance methods.

    Christoph Molnar

    Format: PDF 251 pages 3.4 MB
  • Introduction to machine learning

    Classic Stanford introduction covering decision trees, neural networks, Bayesian learning, and instance-based methods with clear explanations.

    Nils J. Nilsson

    Format: PDF 188 pages 0.77 MB
  • Machine Learning

    Overview of core ML concepts including supervised, unsupervised, and reinforcement learning with practical examples and algorithm comparisons.

    Jaydip Sen

    Format: PDF 154 pages 1.95 MB
  • Undergraduate Fundamentals of Machine Learning

    Undergraduate thesis covering ML fundamentals with implementations in Python, suitable for beginners entering the field.

    William J. Deuschle

    Format: PDF 143 pages 1.29 MB
  • HELP US SPREAD THE READING HABIT!