INTEGRATION OF GENETIC ALGORITHM WITH ARTIFICIAL NEURAL NETWORK FOR STOCK PRICE FORECASTING
Econophysics is a discipline that applies ideas, methods, and models in statistical physics and complexity to analyze data from economic phenomena. One of the objects to be addressed is the stock market. Approaches that can be used to model the economic sector are data analysis and physical model...
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id-itb.:767222023-08-18T09:23:27ZINTEGRATION OF GENETIC ALGORITHM WITH ARTIFICIAL NEURAL NETWORK FOR STOCK PRICE FORECASTING Suci Lestari, Anggia Indonesia Final Project Artificial Neural Network, Backpropagation, Genetic Algorithm, Stock Prediction. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/76722 Econophysics is a discipline that applies ideas, methods, and models in statistical physics and complexity to analyze data from economic phenomena. One of the objects to be addressed is the stock market. Approaches that can be used to model the economic sector are data analysis and physical models with computational physics. In this Thesis, a predictive model for the closing price is created using the integration method between Genetic Algorithm (GA) and Artificial Neural Network (ANN), in this case Backpropagation (BP). The integration is then called GA-BP. GA is used to optimize the architecture and network weight values on BP structure so that prediction results will be more accurate. This Thesis also analyzes the parameters and performance resulting from the model created. The data used in this Thesis are the daily stock prices of AAPL (Apple Inc.), SPLK (Splunk Inc.), and BA (Boeing Co.) from December 31st, 2019 to December 31st, 2022. From this Thesis, the integration model succeeded in producing a prediction model with better performance evaluation than using the BP model alone based on its MAE, MAPE, and R 2 . The integration model can also provide good accuracy in predicting stock movement patterns. text |
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Econophysics is a discipline that applies ideas, methods, and models in statistical
physics and complexity to analyze data from economic phenomena. One of the
objects to be addressed is the stock market. Approaches that can be used to model
the economic sector are data analysis and physical models with computational
physics. In this Thesis, a predictive model for the closing price is created using the
integration method between Genetic Algorithm (GA) and Artificial Neural Network
(ANN), in this case Backpropagation (BP). The integration is then called GA-BP.
GA is used to optimize the architecture and network weight values on BP structure
so that prediction results will be more accurate. This Thesis also analyzes the
parameters and performance resulting from the model created. The data used in this
Thesis are the daily stock prices of AAPL (Apple Inc.), SPLK (Splunk Inc.), and
BA (Boeing Co.) from December 31st, 2019 to December 31st, 2022. From this
Thesis, the integration model succeeded in producing a prediction model with better
performance evaluation than using the BP model alone based on its MAE, MAPE,
and R
2
. The integration model can also provide good accuracy in predicting stock
movement patterns. |
format |
Final Project |
author |
Suci Lestari, Anggia |
spellingShingle |
Suci Lestari, Anggia INTEGRATION OF GENETIC ALGORITHM WITH ARTIFICIAL NEURAL NETWORK FOR STOCK PRICE FORECASTING |
author_facet |
Suci Lestari, Anggia |
author_sort |
Suci Lestari, Anggia |
title |
INTEGRATION OF GENETIC ALGORITHM WITH ARTIFICIAL NEURAL NETWORK FOR STOCK PRICE FORECASTING |
title_short |
INTEGRATION OF GENETIC ALGORITHM WITH ARTIFICIAL NEURAL NETWORK FOR STOCK PRICE FORECASTING |
title_full |
INTEGRATION OF GENETIC ALGORITHM WITH ARTIFICIAL NEURAL NETWORK FOR STOCK PRICE FORECASTING |
title_fullStr |
INTEGRATION OF GENETIC ALGORITHM WITH ARTIFICIAL NEURAL NETWORK FOR STOCK PRICE FORECASTING |
title_full_unstemmed |
INTEGRATION OF GENETIC ALGORITHM WITH ARTIFICIAL NEURAL NETWORK FOR STOCK PRICE FORECASTING |
title_sort |
integration of genetic algorithm with artificial neural network for stock price forecasting |
url |
https://digilib.itb.ac.id/gdl/view/76722 |
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1822008062260543488 |