计算定性经济学-在知识社会中使用计算智能进行高级经济学学习

L. Andrášik
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摘要

在经济学中,有几个复杂的学习主题和与之相关的任务,很难深入理解学习主题。这些都是导致学生在虚拟环境中出现严重学习问题的原因,因为更深层次的理解需要高水平的数学技能。实际上,辨别这部分经济学的最重要特征是,当离散动态系统经历迭代和/或使用参数和变量的初始坐标进行实验时,它们会出现一组定性形状。在这些形状中有:-演化时间的轨迹;-两个变量在R2中的轨迹;-蛛网肖像;-一个控制参数分岔与第一和/或第二变量;- R2中的两个控制参数分岔(双控制的吸引盆地);- - - - - -周期;-两个变量的吸引力盆地;-一个Lyapunov对一些控制参数的指数;- R2中具有两个控制参数的Lyapunov指数;-吸收区域,可以创建临界曲线和/或吸引子。希望计算智能的产品可以帮助他们解决这些问题。自然,意味着复杂的经济问题和任务具有离散的、定性的和非线性的(不可逆的)性质,从而增加了难度。因此,对于本文开头使用的术语,人们必须狭义地理解:“定性非线性计算经济学”。为了更好地理解问题的本质,我们使用了一个适当的例子,在iDMC软件的常规设置中建立的虚拟实验室中,对新的ICT产品垄断模型进行了实际模拟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computational Qualitative Economics – Using Computational Intelligence for Andvanced Learning of Economics in Knowledge Society
Abstract In economics there are several complex learning themes and tasks connected with them difficult for deeper understanding of the learning subject. These are the reasons originating serious learning problems for students in the form of Virtual Environment because deeper understanding requires high level mathematical skills. Actually the most important feature for discerning this part of economics is the set of qualitative shapes emerging in discrete dynamic systems when they are undergoing iterations and/or experimentation with parameters and initial coordinates of variables. Among such shapes there are: - trajectories in evolving time; - trajectories in R2 of two variables; - cobweb portraits; - one control parameter bifurcation with first and/or with second variables; - two control parameters bifurcation in R2 (attractive basin of double controls); - cycles; - basin of attraction of two variables; - one Lyapunov’s exponent against some of control parameters; - Lyapunov’s exponents with two control parameters in R2; - absorbing area with possibility to create critical curves and/or attractors. The hope is that products of computational intelligence may help them solve such problems. Naturally, the meant complex economic problems and tasks have discrete, qualitative and nonlinear (noninvertible) nature resulting in increased level of difficulties. So with the term used in the head of this paper one has to understand narrowly: “qualitative nonlinear computational economics”. For better understanding the very nature of the problem we are using as appropriate example actual simulation of the model of new ICT products monopolies in virtual laboratory built in the routines setting dominantly in the software iDMC.
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