A Neural-Network Approach to the Modeling of the Impact of Market Volatility on Investment

In recent years, authors have focused on modeling and forecasting volatility in financial series it is crucial for the characterization of markets, portfolio optimization and asset valuation. One of the most used methods to forecast market volatility is the linear regression. Nonetheless, the errors...

Full description

Bibliographic Details
Main Authors: Mohammad Azim Khodayari, Ahmad Yaghobnezhad, Khalili Eraghi Khalili Eraghi
Format: Article
Language:English
Published: Islamic Azad University of Arak 2020-10-01
Series:Advances in Mathematical Finance and Applications
Subjects:
Online Access:http://amfa.iau-arak.ac.ir/article_674953_45268ea9b344a7ff80fd179d3cb7e1c2.pdf
id doaj-7b125cdbbe784c2195be195d7d0ae4ca
record_format Article
spelling doaj-7b125cdbbe784c2195be195d7d0ae4ca2020-11-25T03:25:26ZengIslamic Azad University of ArakAdvances in Mathematical Finance and Applications2538-55692645-46102020-10-015411610.22034/amfa.2020.674953674953A Neural-Network Approach to the Modeling of the Impact of Market Volatility on InvestmentMohammad Azim Khodayari0Ahmad Yaghobnezhad1Khalili Eraghi Khalili Eraghi2Department of financial management Science and Research branch, Islamic Azad University, Tehran, IranDepartment of Economic And Accounting, Islamic Azad University of Central Tehran Branch, Tehran, IranDepartment of Economic And Management Science and Research branch, Islamic Azad University, Tehran, IranIn recent years, authors have focused on modeling and forecasting volatility in financial series it is crucial for the characterization of markets, portfolio optimization and asset valuation. One of the most used methods to forecast market volatility is the linear regression. Nonetheless, the errors in prediction using this approach are often quite high. Hence, continued research is conducted to improve forecasting models employing a variety of techniques. In this paper, we extend the field of expert systems, forecasting, and model by applying an Artificial Neural Network. ANN model is applied to forecast market volatility. The results show an overall improvement in forecasting using the neural network as compared to linear regression method.http://amfa.iau-arak.ac.ir/article_674953_45268ea9b344a7ff80fd179d3cb7e1c2.pdfmarket volatilityinvestmentneural network
collection DOAJ
language English
format Article
sources DOAJ
author Mohammad Azim Khodayari
Ahmad Yaghobnezhad
Khalili Eraghi Khalili Eraghi
spellingShingle Mohammad Azim Khodayari
Ahmad Yaghobnezhad
Khalili Eraghi Khalili Eraghi
A Neural-Network Approach to the Modeling of the Impact of Market Volatility on Investment
Advances in Mathematical Finance and Applications
market volatility
investment
neural network
author_facet Mohammad Azim Khodayari
Ahmad Yaghobnezhad
Khalili Eraghi Khalili Eraghi
author_sort Mohammad Azim Khodayari
title A Neural-Network Approach to the Modeling of the Impact of Market Volatility on Investment
title_short A Neural-Network Approach to the Modeling of the Impact of Market Volatility on Investment
title_full A Neural-Network Approach to the Modeling of the Impact of Market Volatility on Investment
title_fullStr A Neural-Network Approach to the Modeling of the Impact of Market Volatility on Investment
title_full_unstemmed A Neural-Network Approach to the Modeling of the Impact of Market Volatility on Investment
title_sort neural-network approach to the modeling of the impact of market volatility on investment
publisher Islamic Azad University of Arak
series Advances in Mathematical Finance and Applications
issn 2538-5569
2645-4610
publishDate 2020-10-01
description In recent years, authors have focused on modeling and forecasting volatility in financial series it is crucial for the characterization of markets, portfolio optimization and asset valuation. One of the most used methods to forecast market volatility is the linear regression. Nonetheless, the errors in prediction using this approach are often quite high. Hence, continued research is conducted to improve forecasting models employing a variety of techniques. In this paper, we extend the field of expert systems, forecasting, and model by applying an Artificial Neural Network. ANN model is applied to forecast market volatility. The results show an overall improvement in forecasting using the neural network as compared to linear regression method.
topic market volatility
investment
neural network
url http://amfa.iau-arak.ac.ir/article_674953_45268ea9b344a7ff80fd179d3cb7e1c2.pdf
work_keys_str_mv AT mohammadazimkhodayari aneuralnetworkapproachtothemodelingoftheimpactofmarketvolatilityoninvestment
AT ahmadyaghobnezhad aneuralnetworkapproachtothemodelingoftheimpactofmarketvolatilityoninvestment
AT khalilieraghikhalilieraghi aneuralnetworkapproachtothemodelingoftheimpactofmarketvolatilityoninvestment
AT mohammadazimkhodayari neuralnetworkapproachtothemodelingoftheimpactofmarketvolatilityoninvestment
AT ahmadyaghobnezhad neuralnetworkapproachtothemodelingoftheimpactofmarketvolatilityoninvestment
AT khalilieraghikhalilieraghi neuralnetworkapproachtothemodelingoftheimpactofmarketvolatilityoninvestment
_version_ 1724597120227344384