Stock Exchange Trading Using Grid Pattern Optimized by A Genetic Algorithm with Speciation

Stock Exchange Trading Using Grid Pattern Optimized by A Genetic Algorithm with Speciation
Author :
Publisher : Springer Nature
Total Pages : 68
Release :
ISBN-10 : 9783030766801
ISBN-13 : 3030766802
Rating : 4/5 (01 Downloads)

Book Synopsis Stock Exchange Trading Using Grid Pattern Optimized by A Genetic Algorithm with Speciation by : Tiago Martins

Download or read book Stock Exchange Trading Using Grid Pattern Optimized by A Genetic Algorithm with Speciation written by Tiago Martins and published by Springer Nature. This book was released on 2021-07-08 with total page 68 pages. Available in PDF, EPUB and Kindle. Book excerpt: This book presents a genetic algorithm that optimizes a grid template pattern detector to find the best point to trade in the SP 500. The pattern detector is based on a template using a grid of weights with a fixed size. The template takes in consideration not only the closing price but also the open, high, and low values of the price during the period under testing in contrast to the traditional methods of analysing only the closing price. Each cell of the grid encompasses a score, and these are optimized by an evolutionary genetic algorithm that takes genetic diversity into consideration through a speciation routine, giving time for each individual of the population to be optimized within its own niche. With this method, the system is able to present better results and improves the results compared with other template approaches. The tests considered real data from the stock market and against state-of-the-art solutions, namely the ones using a grid of weights which does not have a fixed size and non-speciated approaches. During the testing period, the presented solution had a return of 21.3% compared to 10.9% of the existing approaches. The use of speciation was able to increase the returns of some results as genetic diversity was taken into consideration.


Stock Exchange Trading Using Grid Pattern Optimized by A Genetic Algorithm with Speciation Related Books