Log In
Or create an account -> 
Imperial Library
  • Home
  • About
  • News
  • Upload
  • Forum
  • Help
  • Login/SignUp

Index
Clojure for Machine Learning
Table of Contents Clojure for Machine Learning Credits About the Author About the Reviewers www.PacktPub.com
Support files, eBooks, discount offers and more
Why Subscribe? Free Access for Packt account holders
Preface
What this book covers What you need for this book Who this book is for Conventions Reader feedback Customer support
Downloading the example code Downloading the color images of this book Errata Piracy Questions
1. Working with Matrices
Introducing Leiningen Representing matrices Generating matrices Adding matrices Multiplying matrices Transposing and inverting matrices Interpolating using matrices Summary
2. Understanding Linear Regression
Understanding single-variable linear regression Understanding gradient descent Understanding multivariable linear regression
Gradient descent with multiple variables
Understanding Ordinary Least Squares Using linear regression for prediction Understanding regularization Summary
3. Categorizing Data
Understanding the binary and multiclass classification Understanding the Bayesian classification Using the k-nearest neighbors algorithm Using decision trees Summary
4. Building Neural Networks
Understanding nonlinear regression Representing neural networks Understanding multilayer perceptron ANNs Understanding the backpropagation algorithm Understanding recurrent neural networks Building SOMs Summary
5. Selecting and Evaluating Data
Understanding underfitting and overfitting
Evaluating a model Understanding feature selection
Varying the regularization parameter Understanding learning curves Improving a model Using cross-validation Building a spam classifier Summary
6. Building Support Vector Machines
Understanding large margin classification
Alternative forms of SVMs
Linear classification using SVMs Using kernel SVMs
Sequential minimal optimization Using kernel functions
Summary
7. Clustering Data
Using K-means clustering
Clustering data using clj-ml
Using hierarchical clustering Using Expectation-Maximization Using SOMs Reducing dimensions in the data Summary
8. Anomaly Detection and Recommendation
Detecting anomalies Building recommendation systems Content-based filtering Collaborative filtering Using the Slope One algorithm Summary
9. Large-scale Machine Learning
Using MapReduce Querying and storing datasets Machine learning in the cloud Summary
A. References
Chapter 1 Chapter 2 Chapter 3 Chapter 4 Chapter 5 Chapter 6 Chapter 7 Chapter 8 Chapter 9
Index
  • ← Prev
  • Back
  • Next →
  • ← Prev
  • Back
  • Next →

Chief Librarian: Las Zenow <zenow@riseup.net>
Fork the source code from gitlab
.

This is a mirror of the Tor onion service:
http://kx5thpx2olielkihfyo4jgjqfb7zx7wxr3sd4xzt26ochei4m6f7tayd.onion