Title :
Estimation & forecasting of volatility using ARIMA, ARFIMA and Neural Network based techniques
Author :
Kumar, P. Hemanth ; Patil, S. Basavaraj
Author_Institution :
Dept. of CSE, VTURRC, Belgaum, India
Abstract :
Volatility is used to indicate the stock market movement; in general terms can be defined as the risk associated with stocks. Volatility is measured as standard deviation and variance of Closing Prices. Forecasting volatility has been a prime issue in financial market and lots of researchers are working on it since more than a decade. The main goal of this paper is to forecast volatility with a high accuracy. The volatility is calculated using traditional volatility calculation techniques called volatility estimators. The volatility is calculated using Close, Garman klass, Parkinson, Roger and Yang estimating methods. Time series forecasting techniques ARIMA, ARFIMA and a feed forward Neural Network based techniques are used for forecasting volatility. The results of all the three techniques are compared to find an accurate estimation and forecasting technique. The best forecasting technique is shortlisted by comparing the error results of all the forecasting techniques with error measuring parameters such as ME, RMSE, MAE, MPE, MAPE, MASE and ACF1. Garman klass estimator with Arima technique as the forecasting methods yields more accurate volatility forecasts for next 10 days.
Keywords :
estimation theory; feedforward neural nets; forecasting theory; stock markets; time series; ARFIMA; ARIMA; Close method; Garman klass method; Parkinson method; Roger and Yang estimating methods; closing prices; feed forward neural network based techniques; financial market; standard deviation; stock market movement; time series forecasting techniques; volatility calculation techniques; volatility estimation; volatility estimators; volatility forecasting; Accuracy; Autoregressive processes; Estimation; Forecasting; Measurement uncertainty; Neural networks; Time series analysis; Arfima and Neural Networks; Arima; Forecasting; Volatility; Volatility Estimators;
Conference_Titel :
Advance Computing Conference (IACC), 2015 IEEE International
Conference_Location :
Banglore
Print_ISBN :
978-1-4799-8046-8
DOI :
10.1109/IADCC.2015.7154853