Abstract

In the last years, the huge amount of data available in many disciplines makes the mathematical modeling, and, more concretely, econometric models, a very important technique to explain those data. One of the most used of those econometric techniques is the Vector Autoregression Models (VAR) which are multi-equation models that linearly describe the interactions and behavior of a group of variables by using their past. Traditionally, Ordinary Least Squares and Maximum likelihood estimators have been used in the estimation of VAR models. These techniques are consistent and asymptotically efficient under ideal conditions of the data and the identification problem. Otherwise, these techniques would yield inconsistent parameter estimations. This paper considers the estimation of a VAR model by minimizing the difference between the dependent variables in a certain time, and the expression of their own past and the exogenous variables of the model (in this case denoted as VARX model). The solution of this optimization problem is approached through hybrid metaheuristics. The high computational cost due to the huge amount of data makes it necessary to exploit High-Performance Computing for the acceleration of methods to obtain the models. The parameterized, parallel implementation of the metaheuristics and the matrix formulation ease the simultaneous exploitation of parallelism for groups of hybrid metaheuristics. Multilevel and heterogeneous parallelism are exploited in multicore CPU plus multiGPU nodes, with the optimum combination of the different parallelism parameters depending on the particular metaheuristic and the problem it is applied to.

Highlights

  • In any scientific discipline where data usage is extensive, the provision of mathematical models that efficiently simulate a certain problem is a powerful tool that provides extremely valuable information

  • Vector Autoregression (VAR) models are traditionally used in finance and econometrics [2,3], but, with the arrival of Big Data, huge amounts of data are being collected in numerous fields like medicine, psychology or process engineering, giving to the VAR models an important role modeling this data

  • Given that it is crucial to understand how monetary policy operates through the economy [44], we evaluate this by using the following variables: industrial production as our economic activity variable, consumer price index as our price level variable, the one-year treasury bill rate as the monetary policy variable and the excess bond premium as our financial variable

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Summary

Introduction

In any scientific discipline where data usage is extensive, the provision of mathematical models that efficiently simulate a certain problem is a powerful tool that provides extremely valuable information. The study and use of econometric models that can simulate the relationship among many variables has been a key point in its development throughout the twentieth century. One of the most extended econometric models are Vector Autoregression (VAR) models [1] which are multi-equation models that linearly describe the interactions and behavior of a group of variables, Electronics 2020, 9, 1781; doi:10.3390/electronics9111781 www.mdpi.com/journal/electronics. There are tools to tackle this issue, the large amount of data, along with the availability of computational techniques and high performance systems, advise an in-depth analysis of the computational aspects of VAR, so large models can be solved efficiently with today’s computational systems, whose basic components are nodes of multicore CPU plus GPUs

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