Constructing a predicting model for JCI return using adaptive network-based Fuzzy Inference System
The high price fluctuations in the stock market make an investment in this area relatively risky. However, higher risk levels are associated with the possibility of higher returns. Predicting models allows investors to avoid loss rate due to price fluctuations. This study uses the ANFIS (Adaptive...
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doaj-f051e252f05f4ed487c9ed1c926c7b132020-11-24T21:39:31ZengUniversitas Merdeka MalangJurnal Keuangan dan Perbankan1410-80892443-26872019-01-0123111410.26905/jkdp.v23i1.2521Constructing a predicting model for JCI return using adaptive network-based Fuzzy Inference SystemEndy Jeri Suswono0Dedi Budiman Hakim1Toni Bakhtiar2Department of Management and Business, Business School IPB UniversityDepartment of Economic Science, Faculty of Economic dan Management, IPB UniversityDepartment of Mathematics, Faculty of Mathematics and Natural Sciences, IPB University The high price fluctuations in the stock market make an investment in this area relatively risky. However, higher risk levels are associated with the possibility of higher returns. Predicting models allows investors to avoid loss rate due to price fluctuations. This study uses the ANFIS (Adaptive Network-based Fuzzy Inference System) to predict the Jakarta Composite Index (JCI) return. Forecasting JCI movement is considered to be the most influential predictor, consisting of Indonesia real interest rate, real exchange rate, US real interest rate, and WTI crude oil price. The results of this study point out that the best model to predict JCI return is the ANFIS model with pi membership function. The predicting model shows that real exchange rate is the most influential factor to the JCI movement. This model is able to predict the trend direction of the JCI movement with an accuracy of 83.33 percent. This model also has better performance than the Vector Error Correction Model (VECM) based on RMSE value. The ANFIS performance is relatively satisfactory to allow investors to forecast the market direction. Thus, investors can immediately take preventive action towards any potential for turmoil in the stock market.http://jurnal.unmer.ac.id/index.php/jkdp/article/view/2521/pdfAdaptive Network-based Fuzzy Inference SystemJakarta Composite IndexMacroeconomicsStock MarketsVAR/ Vector Error Correction Model |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Endy Jeri Suswono Dedi Budiman Hakim Toni Bakhtiar |
spellingShingle |
Endy Jeri Suswono Dedi Budiman Hakim Toni Bakhtiar Constructing a predicting model for JCI return using adaptive network-based Fuzzy Inference System Jurnal Keuangan dan Perbankan Adaptive Network-based Fuzzy Inference System Jakarta Composite Index Macroeconomics Stock Markets VAR/ Vector Error Correction Model |
author_facet |
Endy Jeri Suswono Dedi Budiman Hakim Toni Bakhtiar |
author_sort |
Endy Jeri Suswono |
title |
Constructing a predicting model for JCI return using adaptive network-based Fuzzy Inference System |
title_short |
Constructing a predicting model for JCI return using adaptive network-based Fuzzy Inference System |
title_full |
Constructing a predicting model for JCI return using adaptive network-based Fuzzy Inference System |
title_fullStr |
Constructing a predicting model for JCI return using adaptive network-based Fuzzy Inference System |
title_full_unstemmed |
Constructing a predicting model for JCI return using adaptive network-based Fuzzy Inference System |
title_sort |
constructing a predicting model for jci return using adaptive network-based fuzzy inference system |
publisher |
Universitas Merdeka Malang |
series |
Jurnal Keuangan dan Perbankan |
issn |
1410-8089 2443-2687 |
publishDate |
2019-01-01 |
description |
The high price fluctuations in the stock market make an investment in this area relatively risky. However, higher risk levels are associated with the possibility of higher returns. Predicting models allows investors to avoid loss rate due to price fluctuations. This study uses the ANFIS (Adaptive Network-based Fuzzy Inference System) to predict the Jakarta Composite Index (JCI) return. Forecasting JCI movement is considered to be the most influential predictor, consisting of Indonesia real interest rate, real exchange rate, US real interest rate, and WTI crude oil price. The results of this study point out that the best model to predict JCI return is the ANFIS model with pi membership function. The predicting model shows that real exchange rate is the most influential factor to the JCI movement. This model is able to predict the trend direction of the JCI movement with an accuracy of 83.33 percent. This model also has better performance than the Vector Error Correction Model (VECM) based on RMSE value. The ANFIS performance is relatively satisfactory to allow investors to forecast the market direction. Thus, investors can immediately take preventive action towards any potential for turmoil in the stock market. |
topic |
Adaptive Network-based Fuzzy Inference System Jakarta Composite Index Macroeconomics Stock Markets VAR/ Vector Error Correction Model |
url |
http://jurnal.unmer.ac.id/index.php/jkdp/article/view/2521/pdf |
work_keys_str_mv |
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