A Wavelet Based Multi Scale VaR Model for Agricultural Market

Participants in the agricultural industries are subject to significant market risks due to long production lags. Traditional methodology analyzes the risk evolution following a time invariant approach. However, this paper analyzes and proposes wavelet analysis to track risk evolution in a time variant fashion. A wavelet-econometric hybrid model is further proposed for VaR estimates. The proposed wavelet decomposed VaR (WDVaR) is ex-ante in nature and is capable of estimating risks that are multi-scale structured. Empirical studies in major agricultural markets are conducted for both the hybrid ARMA-GARCH VaR and the proposed WDVaR. Experiment results confirm significant performance improvement. Besides, incorporation of time variant risks tracking capability offers additional flexibility for adaptability of the proposed hybrid algorithm to different market environments. WDVaR can be tailored to specific market characteristics to capture unique investment styles, time horizons, etc.