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Exploring complex dynamics in multi agent-based intelligent systems: Theoretical and experimental approaches using the Multi Agent-based Behavioral Economic Landscape (MABEL) model.

机译:探索基于多主体的智能系统中的复杂动力学:使用基于多主体的行为经济态势(MABEL)模型的理论和实验方法。

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This dissertation adopts a holistic and detailed approach to modeling spatially explicit agent-based artificial intelligent systems, using the Multi Agent-based Behavioral Economic Landscape (MABEL) model. The research questions that addresses stem from the need to understand and analyze the real-world patterns and dynamics of land use change from a coupled human-environmental systems perspective. Describes the systemic, mathematical, statistical, socio-economic and spatial dynamics of the MABEL modeling framework, and provides a wide array of cross-disciplinary modeling applications within the research, decision-making and policy domains. Establishes the symbolic properties of the MABEL model as a Markov decision process, analyzes the decision-theoretic utility and optimization attributes of agents towards comprising statistically and spatially optimal policies and actions, and explores the probabilogic character of the agents' decision-making and inference mechanisms via the use of Bayesian belief and decision networks. Develops and describes a Monte Carlo methodology for experimental replications of agent's decisions regarding complex spatial parcel acquisition and learning. Recognizes the gap on spatially-explicit accuracy assessment techniques for complex spatial models, and proposes an ensemble of statistical tools designed to address this problem. Advanced information assessment techniques such as the Receiver-Operator Characteristic curve, the impurity entropy and Gini functions, and the Bayesian classification functions are proposed. The theoretical foundation for modular Bayesian inference in spatially-explicit multi-agent artificial intelligent systems, and the ensembles of cognitive and scenario assessment modular tools build for the MABEL model are provided. Emphasizes the modularity and robustness as valuable qualitative modeling attributes, and examines the role of robust intelligent modeling as a tool for improving policy-decisions related to land use change. Finally, the major contributions to the science are presented along with valuable directions for future research.
机译:本文采用基于多主体的行为经济态势(MABEL)模型,对空间明晰的基于主体的人工智能系统进行了全面,详细的建模。研究问题的提出源于从人与环境系统耦合的角度理解和分析现实世界中土地利用变化的模式和动态的需求。描述MABEL建模框架的系统,数学,统计,社会经济和空间动力学,并在研究,决策和政策领域内提供广泛的跨学科建模应用程序。建立MABEL模型的符号属性作为马尔可夫决策过程,分析代理的决策理论效用和优化属性,以构成统计和空间上的最佳策略和动作,并探索代理决策和推理机制的概率特征通过使用贝叶斯信念和决策网络。开发和描述一种蒙特卡洛方法,用于实验性代理关于复杂空间宗地获取和学习的决策的实验性复制。认识到复杂空间模型在空间显式准确性评估技术上的差距,并提出了一套旨在解决此问题的统计工具。提出了先进的信息评估技术,例如接收器-操作员特征曲线,杂质熵和基尼函数以及贝叶斯分类函数。提供了在空间明晰的多智能体人工智能系统中进行模块化贝叶斯推理的理论基础,以及为MABEL模型构建的认知和情景评估模块化工具的集合。强调模块化和稳健性是有价值的定性建模属性,并研究稳健的智能建模作为改善与土地用途变更相关的政策决策的工具的作用。最后,介绍了对科学的主要贡献以及未来研究的重要方向。

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