Skip to content

An open source book that describes a large number of algorithmic techniques from the the fields of Biologically Inspired Computation, Computational Intelligence and Metaheuristics in a complete, consistent, and centralized manner such that they are accessible, usable, and understandable.

Notifications You must be signed in to change notification settings

TranslateBabelJapan/CleverAlgorithms

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Clever Algorithms: Nature-Inspired Programming Recipes

Overview

Clever Algorithms: Nature-Inspired Programming Recipes is an open source book that describes a large number of algorithmic techniques from the the fields of Biologically Inspired Computation, Computational Intelligence and Metaheuristics in a complete, consistent, and centralized manner such that they are accessible, usable, and understandable. This is a repository for the book project used during the development and ongoing maintenance of the books’ content.

The book was first released in early 2011 for free on the website CleverAlgorithms.com and is available for purchase as a paperback from Amazon and Lulu

Book Details

Title Clever Algorithms: Nature-Inspired Programming Recipes
Author Jason Brownlee
Release Revision 2. 16th June 2012

Blurb

Implementing an Artificial Intelligence algorithm is difficult. Algorithm descriptions may be incomplete, inconsistent, and distributed across a number of papers, chapters and even websites. This can result in varied interpretations of algorithms, undue attrition of algorithms, and ultimately bad science. This book is an effort to address these issues by providing a handbook of algorithmic recipes drawn from the fields of Metaheuristics, Biologically Inspired Computation and Computational Intelligence, described in a complete, consistent, and centralized manner. These standardized descriptions were carefully designed to be accessible, usable, and understandable. Most of the algorithms described were originally inspired by biological and natural systems, such as the adaptive capabilities of genetic evolution and the acquired immune system, and the foraging behaviors of birds, bees, ants and bacteria. An encyclopedic algorithm reference, this book is intended for research scientists, engineers, students, and interested amateurs. Each algorithm description provides a working code example in the Ruby Programming Language.

Table of Contents

  1. Background
    1. Introduction
  2. Algorithms
    1. Stochastic Algorithms
      1. Random Search
      2. Adaptive Random Search
      3. Stochastic Hill Climbing
      4. Iterated Local Search
      5. Guided Local Search
      6. Variable Neighborhood Search
      7. Greedy Randomized Adaptive Search
      8. Scatter Search
      9. Tabu Search
      10. Reactive Tabu Search
    2. Evolutionary Algorithms
      1. Genetic Algorithm
      2. Genetic Programming
      3. Evolution Strategies
      4. Differential Evolution
      5. Evolutionary Programming
      6. Grammatical Evolution
      7. Gene Expression Programming
      8. Learning Classifier System
      9. Non-dominated Sorting Genetic Algorithm
      10. Strength Pareto Evolutionary Algorithm
    3. Physical Algorithms
      1. Simulated Annealing
      2. Extremal Optimization
      3. Harmony Search
      4. Cultural Algorithm
      5. Memetic Algorithm
    4. Probabilistic Algorithms
      1. Population-Based Incremental Learning
      2. Univariate Marginal Distribution Algorithm
      3. Compact Genetic Algorithm
      4. Bayesian Optimization Algorithm
      5. Cross-Entropy Method
    5. Swarm Algorithms
      1. Particle Swarm Optimization
      2. Ant System
      3. Ant Colony System
      4. Bees Algorithm
      5. Bacterial Foraging Optimization Algorithm
    6. Immune Algorithms
      1. Clonal Selection Algorithm
      2. Negative Selection Algorithm
      3. Artificial Immune Recognition System
      4. Immune Network Algorithm
      5. Dendritic Cell Algorithm
    7. Neural Algorithms
      1. Perceptron
      2. Back-propagation
      3. Hopfield Network
      4. Learning Vector Quantization
      5. Self-Organizing Map
  3. Extensions
    1. Advanced Topics
      1. Programming Paradigms
      2. Devising New Algorithms
      3. Testing Algorithms
      4. Visualizing Algorithms
      5. Problem Solving Strategies
      6. Benchmarking Algorithms
  4. Appendix A – Ruby: Quick-Start Guide

Project

How to Build

  1. Assumes a Linux or Mac workstation with make, Latex such as TeXLive or MacTex installed and maybe JabRef
  2. git clone git@github.com:jbrownlee/CleverAlgorithms.git
  3. cd CleverAlgorithms
  4. make r (creates the file book/book.pdf)
  5. make vl (to view the PDF on linux) or make vm (to view the PDF on mac)
  6. make epub (creates epub versions)

Contribute

If you find a typo or a mistake, please email me at jasonb@CleverAlgorithms.com or clone this project and make, make a change and submit a pull request. I will happily give you credit in the acknowledgments.

Support

The best support you can give to this project is to buy a copy of the paperback and spread the word by writing a review, blog post or tweet.

License

© Copyright 2013 Jason Brownlee. Some Rights Reserved.
This work is licensed under a Creative Commons Attribution-Noncommercial-Share Alike 2.5 Australia License.

Creative Commons License

About

An open source book that describes a large number of algorithmic techniques from the the fields of Biologically Inspired Computation, Computational Intelligence and Metaheuristics in a complete, consistent, and centralized manner such that they are accessible, usable, and understandable.

Resources

Stars

Watchers

Forks

Packages

No packages published