An Evolutionary Adaptive System for Prediction of Strategy Influence: A Case Study of Government Regulation Guided Brand Innovation

Jiali Lin;Qiaomei Li;Guangsheng Lin;Zhihui He;Dazhi Jiang;Hao Liu
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Abstract

Decision making is one of the common human activities. But in complex, interactive, and dynamic systems, it is extremely important to make decisions scientifically because the influence of the behavior after decision making is generally irreversible. The predictability of behavior influence is an effective way to improve the scientific decision making. As a new branch of computing, computational experiment is an emerging management method for research on complex systems. In this paper, based on particle swarm intelligence, an evolutionary adaptive system model of brand innovation in the toy industry cluster is constructed. By imitating the evolution process of the complex adaptive system, this method is helpful to analyze the impact of the management behavior brought to simulation system, predict the management behavior in real world, and finally choose the best management strategy. This simulation tried to figure out the affection of government regulation strategies and provide corresponding assessments and recommendations, which gives a new solution to assist the government to effectively judge the influence of the macro policy, as well as provides a new way of thinking of the related intelligent decision making.
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战略影响预测的进化适应系统——以政府规制引导的品牌创新为例
决策是人类共同的活动之一。但在复杂的、相互作用的、动态的系统中,决策后的行为影响通常是不可逆的,因此科学决策就显得尤为重要。行为影响的可预测性是提高决策科学化的有效途径。计算实验是一种新兴的复杂系统研究管理方法,是计算科学的一个新分支。本文基于粒子群智能,构建了玩具产业集群品牌创新的进化适应系统模型。该方法通过模拟复杂自适应系统的演化过程,分析管理行为对模拟系统的影响,预测现实世界中的管理行为,最终选择最佳的管理策略。本模拟试图找出政府调控策略的影响,并给出相应的评估和建议,为协助政府有效判断宏观政策的影响提供了新的解决方案,也为相关的智能决策提供了新的思路。
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