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Emerging Complexity in Distributed Intelligent Systems

机译:在分布式智能系统中的新兴复杂性

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摘要

Distributed intelligent systems (DIS) appear where natural intelligence agents (humans) and artificial intelligence agents (algorithms) interact, exchanging data and decisions and learning how to evolve toward a better quality of solutions. The networked dynamics of distributed natural and artificial intelligence agents leads to emerging complexity different from the ones observed before. In this study, we review and systematize different approaches in the distributed intelligence field, including the quantum domain. A definition and mathematical model of DIS (as a new class of systems) and its components, including a general model of DIS dynamics, are introduced. In particular, the suggested new model of DIS contains both natural (humans) and artificial (computer programs, chatbots, etc.) intelligence agents, which take into account their interactions and communications. We present the case study of domain-oriented DIS based on different agents’ classes and show that DIS dynamics shows complexity effects observed in other well-studied complex systems. We examine our model by means of the platform of personal self-adaptive educational assistants (avatars), especially designed in our University. Avatars interact with each other and with their owners. Our experiment allows finding an answer to the vital question: How quickly will DIS adapt to owners’ preferences so that they are satisfied? We introduce and examine in detail learning time as a function of network topology. We have shown that DIS has an intrinsic source of complexity that needs to be addressed while developing predictable and trustworthy systems of natural and artificial intelligence agents. Remarkably, our research and findings promoted the improvement of the educational process at our university in the presence of COVID-19 pandemic conditions.
机译:分布式智能系统(DIS)出现自然情报代理(人类)和人工智能代理(算法)互动,交换数据和决策,并学习如何发展朝着更好的解决方案质量。分布式自然和人工智能代理的网络动态导致从之前观察到的新兴复杂性。在本研究中,我们在分布式智能字段中审查和系统化了不同的方法,包括量子域。介绍了DIS的定义和数学模型(作为新的系统类别)及其组件,包括DIS动态的一般模型。特别是,建议的DIS的新模型包含自然(人类)和人工(计算机程序,聊天BOT等)智能代理,以考虑他们的互动和通信。我们介绍了基于不同代理的课程的域导向的DIS的案例研究,并表明DIS动态显示了在其他研究的复杂系统中观察到的复杂性效应。我们通过个人自适应教育助理(头像)的平台来检查我们的模型,特别是在我们的大学设计。头像互相交互,并与他们的主人互动。我们的实验允许找到重要问题的答案:将迅速迅速适应所有者的偏好,以便他们满意吗?我们将详细介绍和检查作为网络拓扑的函数。我们已经表明,DIS有一个内在的复杂来源,需要在制定可预测的自然和人工智能代理人的可预测和值得信赖的系统时需要解决。值得注意的是,我们的研究和调查结果促进了在Covid-19大流行条件存在下的大学教育过程的改善。

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