USING GENETIC ALGORITHM AND ARTIFICIAL NEURAL NETWORK FOR STOCK PRICES FORECASTING

Artificial Neural Network (ANN) is commonly used in financial domain. In this study, ANN was used to forecast stock prices data because of the ANN ability to model complex problems. ANN can map historical values and future values of time series data through learning process that mimic process in hum...

Full description

Saved in:
Bibliographic Details
Main Author: GALUH SEKAR WARDANI (NIM 234 03 028); Pembimbing : Ir. Imam Istiyanto,MBA. , UDRIANA
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/20588
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:20588
spelling id-itb.:205882017-09-27T14:50:35ZUSING GENETIC ALGORITHM AND ARTIFICIAL NEURAL NETWORK FOR STOCK PRICES FORECASTING GALUH SEKAR WARDANI (NIM 234 03 028); Pembimbing : Ir. Imam Istiyanto,MBA. , UDRIANA Indonesia Theses INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/20588 Artificial Neural Network (ANN) is commonly used in financial domain. In this study, ANN was used to forecast stock prices data because of the ANN ability to model complex problems. ANN can map historical values and future values of time series data through learning process that mimic process in human brain. However, one of the main difficulties using ANN is design ANN architecture that appropriate to different data. Genetic Algorithm (GA) is used to overcome that problems, where GA act as a tool to select parameter combination which consist of number of processing element in hidden layer, learning rate and momentum to find appropriate architecture. Forecasting is applied to daily data for the LQ45 index, HMSP and ISAT stock prices. <br /> <br /> <br /> This study was made to identify the effect of using GA, different length time series data and set data distribution to ANN prediction. The empirical findings of this study show that GA increase generalization of ANN. The use of GA was significantly in the NMSE testing value. The performance value of set data testing can be use to indicate how well ANN perform the new values. Different distribution data set show the affect to the ANN prediction. The best prediction for forecasting 1 day ahead for each data results: index LQ45, NMSE 4,3549:0,0210, correlation 95,89%:96,50%, accuracy 44,38%:48,52% ; HMSP stock, NMSE 0,0097:0,0078, correlation 99,61%:99,64%, accuracy 32,61%:37,33% ; ISAT stock, NMSE 0,0305:0,0246, correlation 95,87%:95,91%, accuracy 47,34%:46,15%. Other empirical findings in this study that longer time series data did not always result better forecasting accuracy, and for each set distribution data there are no indication that one of them always bring to best performance. This evidences show that the ANN learning processes need different information to get the best forecasting performance. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Artificial Neural Network (ANN) is commonly used in financial domain. In this study, ANN was used to forecast stock prices data because of the ANN ability to model complex problems. ANN can map historical values and future values of time series data through learning process that mimic process in human brain. However, one of the main difficulties using ANN is design ANN architecture that appropriate to different data. Genetic Algorithm (GA) is used to overcome that problems, where GA act as a tool to select parameter combination which consist of number of processing element in hidden layer, learning rate and momentum to find appropriate architecture. Forecasting is applied to daily data for the LQ45 index, HMSP and ISAT stock prices. <br /> <br /> <br /> This study was made to identify the effect of using GA, different length time series data and set data distribution to ANN prediction. The empirical findings of this study show that GA increase generalization of ANN. The use of GA was significantly in the NMSE testing value. The performance value of set data testing can be use to indicate how well ANN perform the new values. Different distribution data set show the affect to the ANN prediction. The best prediction for forecasting 1 day ahead for each data results: index LQ45, NMSE 4,3549:0,0210, correlation 95,89%:96,50%, accuracy 44,38%:48,52% ; HMSP stock, NMSE 0,0097:0,0078, correlation 99,61%:99,64%, accuracy 32,61%:37,33% ; ISAT stock, NMSE 0,0305:0,0246, correlation 95,87%:95,91%, accuracy 47,34%:46,15%. Other empirical findings in this study that longer time series data did not always result better forecasting accuracy, and for each set distribution data there are no indication that one of them always bring to best performance. This evidences show that the ANN learning processes need different information to get the best forecasting performance.
format Theses
author GALUH SEKAR WARDANI (NIM 234 03 028); Pembimbing : Ir. Imam Istiyanto,MBA. , UDRIANA
spellingShingle GALUH SEKAR WARDANI (NIM 234 03 028); Pembimbing : Ir. Imam Istiyanto,MBA. , UDRIANA
USING GENETIC ALGORITHM AND ARTIFICIAL NEURAL NETWORK FOR STOCK PRICES FORECASTING
author_facet GALUH SEKAR WARDANI (NIM 234 03 028); Pembimbing : Ir. Imam Istiyanto,MBA. , UDRIANA
author_sort GALUH SEKAR WARDANI (NIM 234 03 028); Pembimbing : Ir. Imam Istiyanto,MBA. , UDRIANA
title USING GENETIC ALGORITHM AND ARTIFICIAL NEURAL NETWORK FOR STOCK PRICES FORECASTING
title_short USING GENETIC ALGORITHM AND ARTIFICIAL NEURAL NETWORK FOR STOCK PRICES FORECASTING
title_full USING GENETIC ALGORITHM AND ARTIFICIAL NEURAL NETWORK FOR STOCK PRICES FORECASTING
title_fullStr USING GENETIC ALGORITHM AND ARTIFICIAL NEURAL NETWORK FOR STOCK PRICES FORECASTING
title_full_unstemmed USING GENETIC ALGORITHM AND ARTIFICIAL NEURAL NETWORK FOR STOCK PRICES FORECASTING
title_sort using genetic algorithm and artificial neural network for stock prices forecasting
url https://digilib.itb.ac.id/gdl/view/20588
_version_ 1821120203913691136