分布式多智能体推理系统实现中的一些实际问题

Abdunnaser Diaf, N. Noroozi
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引用次数: 2

摘要

随着智能系统被应用于越来越大、开放和复杂的问题领域。这些领域需要一种系统的方法来处理知识工程中的复杂性。这些需求包括表示的模块化、计算的分布性以及推理的相干性。多分段贝叶斯网络提供了一个分布式多代理框架来满足这些需求。根据该框架,将一个大型系统划分为多个子系统,并表示为一组相关的贝叶斯子网。为了确保精确的推断,将大型系统划分为子系统必须遵循一组技术假设。在本文中,我们提出了一种实用的方法,给出了如何在分布式多智能体系统中实现agent的一致性的答案,而不是用一致性的假设来限制它们。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Some practical issues on implementing distributed multi-agent reasoning systems
As intelligent systems are being applied to increasingly larger, open and more complex problem domains. These domains demand a systematic approach to handle the complexity in knowledge engineering. The needs include modularity in representation, distribution in computation, as well as coherence in inference. Multiply Sectioned Bayesian Networks provide a distributed multi-agent framework to address these needs. According to the framework, a large system is partitioned into subsystems and represented as a set of related Bayesian subnets. To ensure exact inference, partitioning of a large system into subsystems must follow a set of technical assumptions. In this paper, we propose a practical method that gives the answer of how to achieve concrescence of agentspsila believes in a distributed multi-agent system, instead of restricting them by an assumption of being consistent.
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