Recent studies apply the Monte Carlo method to try to solve multiple data problems for dynamic macroeconomic models
such as measurement errors, residue correlation, and omitted variables. This paper evaluates the estimate of economic
growth regressions from the Solow model by applying the Next Reaction Method, similar to the Monte Carlo kinetic
methods. Our results indicate that with the said algorithm the estimation of these models improves since they increase the
levels of precision of the existing models simulated with Monte Carlo, achieving faster the convergence of the coefficients
of the variables reduces the possible measurement errors and the level of deviations. These results can be very useful
in their application in dynamic macroeconomic models, which help the estimation challenges of policymakers and other
related stakeholders.