
Forecasting the volatility of Financial Time Series by Tree Ensembles
Author(s) -
О. С. Видмант
Publication year - 2019
Publication title -
mir novoj èkonomiki
Language(s) - English
Resource type - Journals
eISSN - 2220-7872
pISSN - 2220-6469
DOI - 10.26794/2220-6469-2018-12-3-82-89
Subject(s) - volatility (finance) , econometrics , ewma chart , computer science , autoregressive conditional heteroskedasticity , financial market , time series , realized variance , futures contract , economics , finance , control chart , machine learning , process (computing) , operating system
The use of new tools for economic data analysis in the last decade has led to significant improvements in forecasting. This is due to the relevance of the question, and the development of technologies that allow implementation of more complex models without resorting to the use of significant computing power. The constant volatility of the world indices forces all financial market players to improve risk management models and, at the same time, to revise the policy of capital investment. More stringent liquidity and transparency standards in relation to the financial sector also encourage participants to experiment with protective mechanisms and to create predictive algorithms that can not only reduce the losses from the volatility of financial instruments but also benefit from short-term investment manipulations. The article discusses the possibility of improving the efficiency of calculations in predicting the volatility by the models of tree ensembles using various methods of data analysis. As the key points of efficiency growth, the author studied the possibility of aggregation of financial time series data using several methods of calculation and prediction of variance: Standard, EWMA, ARCH, GARCH, and also analyzed the possibility of simplifying the calculations while reducing the correlation between the series. The author demonstrated the application of calculation methods on the basis of an array of historical price data (Open, High, Low, Close) and volume indicators (Volumes) of futures trading on the RTS index with a five-minute time interval and an annual set of historical data. The proposed method allows to reduce the cost of computing power and time for data processing in the analysis of short-term positions in the financial markets and to identify risks with a certain level of confidence probability.