Filename | A Course in Machine Learning |
Permission | rw-r--r-- |
Author | Asylum |
Date and Time | 12:13 PM |
Label | a| Course| IN| Learning| Machine |
Action |
CIML is a set of introductory materials that covers most major aspects of modern machine learning (supervised learning, unsupervised learning, large margin methods, probabilistic modeling, learning theory, etc.). It's focus is on broad applications with a rigorous backbone. A subset can be used for an undergraduate course; a graduate course could probably cover the entire material and then some.
Support and Mailing Lists:
If you would like to be informed when new versions of CIML materials are released, please join the CIML mailing list. If you find errors in the book, please fill out a bug report. If you're the first to submit an error, you'll get listed in the acknowledgments!Code and Datasets:
Coming soon...Individual Chapters:
- Front Matter
- Decision Trees
- Geometry and Nearest Neighbors
- The Perceptron
- Machine Learning in Practice
- Beyond Binary Classification
- Linear Models
- Probabilistic Modeling
- Neural Networks
- Kernel Methods
- Learning Theory
- Ensemble Methods
- Efficient Learning
- Unsupervised Learning
- Expectation Maximization
- Semi-Supervised Learning
- Graphical Models
- Online Learning
- Structured Learning
- Bayesian Learning
- Back Matter
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