<--- Back to Details
First PageDocument Content
Genetic algorithms / Mutation / Crossover / Fitness function / Algorithm / Selection / Evolutionary computation / Natural selection / Genetic operator / Gene expression programming
Date: 2013-12-03 10:09:14
Genetic algorithms
Mutation
Crossover
Fitness function
Algorithm
Selection
Evolutionary computation
Natural selection
Genetic operator
Gene expression programming

Computational Financial Modeling Enhancing Technical Analysis With Genetic

Add to Reading List

Source URL: www.csd.uwo.ca

Download Document from Source Website

File Size: 767,17 KB

Share Document on Facebook

Similar Documents

Leisure / Gaming / Video game design / Video game development / Visual arts / Real-time strategy / Genetic algorithm / Fitness function / Level design / Game design / Procedural generation

Limitations of Choice-Based Interactive Evolution for Game Level Design Antonios Liapis, Georgios N. Yannakakis, Julian Togelius Center for Computer Games Research Rued Langaards Vej 7 Copenhagen, Denmark

DocID: 1rcdh - View Document

Mathematical optimization / Applied mathematics / Evolutionary algorithms / Cybernetics / Numerical analysis / Genetic algorithms / Artificial intelligence / Operations research / Evolutionary computation / Genetic programming / Fitness function / Global optimization

Table of Contents Formula Prediction using Genetic Algorithms / 1 Namir Aldawoodi and Rafael Perez

DocID: 1qQDe - View Document

Mathematical optimization / Operations research / Applied mathematics / Cybernetics / Genetic algorithms / Evolution / Numerical analysis / Academia / Evolutionary algorithm / Metaheuristic / Fitness function / Algorithm

Evolutionary Algorithms for Smart Water Management: which one to choose? Joon Hoon Kim Professor, School of Civil, Environmental and Architectural Engineering, Korea University, Korea Abstract

DocID: 1qM8b - View Document

Political philosophy / Genetic algorithms / Mathematical optimization / Politics / Applied mathematics / Operations research / Collaboration / Cybernetics / Geographic information system / Consensus decision-making / Fitness function / Genetic operator

EXPLORING THE SOLUTION SPACE OF SEMISTRUCTURED SPATIAL PROBLEMS USING GENETIC ALGORITHMS David A. Bennett, Department of Geography, Southern Illinois University, Carbondale, ILGreg A. Wade, Department of Comp

DocID: 1qBYs - View Document

Genetic algorithms / Mutation / Crossover / Fitness function / Algorithm / Selection / Evolutionary computation / Natural selection / Genetic operator / Gene expression programming

Computational Financial Modeling Enhancing Technical Analysis With Genetic

DocID: 1pGfB - View Document