Genetic Algorithms in Machine Learning

Author(s):  
Jonathan Shapiro
2018 ◽  
Author(s):  
Steen Lysgaard ◽  
Paul C. Jennings ◽  
Jens Strabo Hummelshøj ◽  
Thomas Bligaard ◽  
Tejs Vegge

A machine learning model is used as a surrogate fitness evaluator in a genetic algorithm (GA) optimization of the atomic distribution of Pt-Au nanoparticles. The machine learning accelerated genetic algorithm (MLaGA) yields a 50-fold reduction of required energy calculations compared to a traditional GA.


2021 ◽  
Author(s):  
Gazmend Alia ◽  
Andi Buzo ◽  
Hannes Maier-Flaig ◽  
Klaus-Willi Pieper ◽  
Linus Maurer ◽  
...  

2020 ◽  
Vol 17 (4) ◽  
pp. 44-60
Author(s):  
Alberto Antonio Agudelo Aguirre ◽  
Ricardo Alfredo Rojas Medina ◽  
Néstor Darío Duque Méndez

The implementation of tools such as Genetic Algorithms has not been exploited for asset price prediction despite their power, robustness, and potential application in the stock market. This paper aims to fill the gap existing in the literature on the use of Genetic Algorithms for predicting asset pricing of investment strategies into stock markets and investigate its advantages over its peers Buy & Hold and traditional technical analysis. The Genetic Algorithms strategy applied to the MACD was carried out in two different validation periods and sought to optimize the parameters that generate the buy-sell signals. The performance between the machine learning-based approach, technical analysis with the MACD and B&H was compared. The results suggest that it is possible to find optimal values of the technical indicator parameters that result in a higher return on investment through Genetic Algorithms, beating the traditional technical analysis and B&H by around 4%. This study offers a new insight for practitioners, traders, and finance researchers to take advantage of Genetic Algorithms for trading rules application in forecasting financial asset returns under a more efficient and robust methodology based on historical data analysis.


1996 ◽  
Vol 9 (1) ◽  
pp. 21-26 ◽  
Author(s):  
Attilio Giordana ◽  
Filippo Neri

Author(s):  
Emmanuel de Salis ◽  
Quentin Meteier ◽  
Marine Capallera ◽  
Leonardo Angelini ◽  
Andreas Sonderegger ◽  
...  

2020 ◽  
Vol 9 (4) ◽  
pp. 230 ◽  
Author(s):  
Izabela Karsznia ◽  
Karolina Sielicka

Effective settlements generalization for small-scale maps is a complex and challenging task. Developing a consistent methodology for generalizing small-scale maps has not gained enough attention, as most of the research conducted so far has concerned large scales. In the study reported here, we want to fill this gap and explore settlement characteristics, named variables that can be decisive in settlement selection for small-scale maps. We propose 33 variables, both thematic and topological, which may be of importance in the selection process. To find essential variables and assess their weights and correlations, we use machine learning (ML) models, especially decision trees (DT) and decision trees supported by genetic algorithms (DT-GA). With the use of ML models, we automatically classify settlements as selected and omitted. As a result, in each tested case, we achieve automatic settlement selection, an improvement in comparison with the selection based on official national mapping agency (NMA) guidelines and closer to the results obtained in manual map generalization conducted by experienced cartographers.


IEEE Access ◽  
2019 ◽  
Vol 7 ◽  
pp. 4913-4926 ◽  
Author(s):  
Yuchao Chang ◽  
Xiaobing Yuan ◽  
Baoqing LI ◽  
Dusit Niyato ◽  
Naofal Al-Dhahir

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