Forecasting Value At Risk With Long Short Term Memory (Lstm)
Abstract
In consideration of the current financial situation, managing risk and forecasting losses
play a vital role in financial investment. This thesis aims to apply Long Short Term
Memory Model (LSTM) to forecast and estimate Value at Risk (VaR) of a stock portfolio. There are many researches about applying LSTM to forecast in various fields
like stock price[1][2], sales[3], weather[4][5], water level of river[6], etc. So LSTM model
is expected and trusted in bringing positive benefits and good results when applied
to forecast VaR. Traffic Light Backtesting[7] is used to evaluate forecasting accuracy
between LSTM and several methods such as Moving Average, and GARCH models[8],
besides, the combinations of LSTM with Moving Average, and LSTM with GARCH
model are carried out to find out positive or negative effects of LSTM in improving
forecast VaR. To make the forecasts, this thesis will focus on predicting volatility and
return of portfolio by using LSTM model and others. All in all, this research will point
out what LSTM applied in forecasting Value at Risk and how better it affect to the
predicted results.