Artykuł recenzyjny
Brak miniatury
Licencja

CC-BYCC-BY - Uznanie autorstwa

Applying Hybrid ARIMA-SGARCH in Algorithmic Investment Strategies on S&P500 Index

Autor
Vo, Nguyen
Ślepaczuk, Robert
Data publikacji
2022
Abstrakt (EN)

This research aims to compare the performance of ARIMA as a linear model with that of the combination of ARIMA and GARCH family models to forecast S&P500 log returns in order to construct algorithmic investment strategies on this index. We used the data collected from Yahoo Finance with daily frequency for the period from 1 January 2000 to 31 December 2019. By using a rolling window approach, we compared ARIMA with the hybrid models to examine whether hybrid ARIMA-SGARCH and ARIMA-EGARCH can really reflect the specific time-series characteristics and have better predictive power than the simple ARIMA model. In order to assess the precision and quality of these models in forecasting, we compared their equity lines, their forecasting error metrics (MAE, MAPE, RMSE, MAPE), and their performance metrics (annualized return compounded, annualized standard deviation, maximum drawdown, information ratio, and adjusted information ratio). The main contribution of this research is to show that the hybrid models outperform ARIMA and the benchmark (Buy&Hold strategy on S&P500 index) over the long term. These results are not sensitive to varying window sizes, the type of distribution, and the type of the GARCH model.

Słowa kluczowe EN
algorithmic investment strategies
ARIMA
ARIMA-SGARCH
ARIMA-EGARCH
hybrid model
stock returns forecast
model robustness
sensitivity analysis
Dyscyplina PBN
ekonomia i finanse
Czasopismo
Entropy
Tom
24
Zeszyt
2
Strony od-do
158
ISSN
1099-4300
Data udostępnienia w otwartym dostępie
2022-01-20
Licencja otwartego dostępu
Uznanie autorstwa