scholarly journals Genetic Programming and Boosting Technique to Improve Time Series Forecasting

Author(s):  
Luzia Vidal de Souza ◽  
Aurora T. R. Pozo ◽  
Anselmo C. ◽  
Joel M. C. da Ros
2021 ◽  
Author(s):  
Mahsa Mostowfi

This work proposes a hybrid algorithm called Probabilistic Incremental Cartesian Genetic Pro- gramming (PI-CGP), which integrates an Estimation of Distribution Algorithm (EDA) with Carte- sian Genetic Programming (CGP). PI-CGP uses a fixed-length problem representation and the algorithm constructs a probabilistic model of promising solutions. PI-CGP was evaluated on sym- bolic regression problems and next trading day stock price forecasting. On the symbolic regression problems PI-CGP did not outperform other approaches. The reason could be premature convergence and being trapped at a local minimum. However, PI-CGP was competitive at stock market forecasting. It was comparable to a fusion model employing a Hidden Markov Model (HMM). HMMs are extensively used for time-series forecasting. This result is promising considering the volatile nature of the stock market and that PI-CGP was not customized toward forecasting.


2021 ◽  
Author(s):  
Mahsa Mostowfi

This work proposes a hybrid algorithm called Probabilistic Incremental Cartesian Genetic Pro- gramming (PI-CGP), which integrates an Estimation of Distribution Algorithm (EDA) with Carte- sian Genetic Programming (CGP). PI-CGP uses a fixed-length problem representation and the algorithm constructs a probabilistic model of promising solutions. PI-CGP was evaluated on sym- bolic regression problems and next trading day stock price forecasting. On the symbolic regression problems PI-CGP did not outperform other approaches. The reason could be premature convergence and being trapped at a local minimum. However, PI-CGP was competitive at stock market forecasting. It was comparable to a fusion model employing a Hidden Markov Model (HMM). HMMs are extensively used for time-series forecasting. This result is promising considering the volatile nature of the stock market and that PI-CGP was not customized toward forecasting.


2015 ◽  
Vol 13 (8) ◽  
pp. 2728-2733 ◽  
Author(s):  
Carlos A. Martinez ◽  
Juan David Velasquez

Author(s):  
Mariana Macedo ◽  
Carlos Henrique Macedo dos Santos ◽  
Eronita Maria Luizines Van Leijden ◽  
Joao Fausto Lorenzato de Oliveira ◽  
Fernando Buarque de Lima Neto ◽  
...  

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