ICNPAA, ICNPAA WORLD CONGRESS 2020

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THE LLGMM FORECASTING: DISCRE-TIME DYNAMIC APPROACH
G.S. Ladde

Last modified: 2023-05-14

Abstract


In this work, an attempt is made to apply the Local Lagged Adapted Generalized Method of Moments (LLGMM to estimate state and parameters in stochastic differential dynamic models. The development of LLGMM is motivated by parameter and state estimation problems in continuous-time nonlinear and non-stationary stochastic dynamic model validation problems in biological, chemical, engineering, energy commodity markets, financial, medical, physical and social sciences. The byproducts of this innovative approach (LLGMM) are the balance between model specification and model prescription of continuous-time dynamic process and the development of discrete-time interconnected dynamic model of local sample mean and variance statistic process (DTIDMLSMVSP). Moreover, LLGMM is a dynamic non-parametric method. The DTIDMLSMVSP is an alternative approach to the GARCH (1,1) model, and it provides an iterative scheme for updating statistic coefficients in a system of generalized method of moment/observation equation. Furthermore, applications of LLGMM to energy commodities price, U.S. Treasury Bill interest rate and the U.S.-U.K. foreign exchange rate data strongly exhibit its unique role, scope and performance, in particular, in forecasting and confidence-interval problems in applied statistics.

Keywords: Conceptual computational/theoretical parameter estimation scheme; Method of Moments;

Nonparametric; Simulation; Forecasting; Mean Square Optimal Procedure; Reaction/response time delay.