多智能体系统中的智能查询应答机制

S. Turgay, Fahrettin Yaman
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引用次数: 3

摘要

查询应答系统在多智能体系统中以基于智能体的结构实现数据的选择、准备、模式的发现和模式的开发等过程,旨在保证智能体之间的通信和智能体在多智能体系统中的有效运行。提出了一种利用模糊SQL查询方法对模糊不完全信息进行处理和评价的方法。建模后的系统通过模糊方法获得智能特征,并通过学习处理方法对未来进行预测。系统的运行机制是多智能体系统中的智能体根据一定的准则对数据库中的知识和智能体外部接收到的知识进行过滤和评价的过程。该系统使用两种类型的知识。前者是系统内部代理数据库中存在的数据,后者是代理从外部接收到的未包含在评估标准中的数据。agent接收到外界的数据后,首先在知识库中对其进行评价,然后对其进行评价,将其用于规则库,最后对规则库进行一定的评价过程,从而将知识存储到任务库中。同时,agent也完成了学习过程。本文提出了一种智能查询应答机制,即多智能体系统中的智能体对数据库中的知识和接收到的外部知识进行过滤和评估。以下部分包括一些必要的文献综述和查询回答方法,然后跟随未来的趋势和结论。背景
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Query Answering Mechanism in Multi Agent Systems
The query answering system realizes the selection of the data, preparation, pattern discovering, and pattern development processes in an agent-based structure within the multi agent system, and it is designed to ensure communication between agents and an effective operation of agents within the multi agent system. The system is suggested in a way to process and evaluate fuzzy incomplete information by the use of fuzzy SQL query method. The modelled system gains the intelligent feature, thanks to the fuzzy approach and makes predictions about the future with the learning processing approach. The operation mechanism of the system is a process in which the agents within the multi agent system filter and evaluate both the knowledge in databases and the knowledge received externally by the agents, considering certain criteria. The system uses two types of knowledge. The first one is the data existing in agent databases within the system and the latter is the data agents received from the outer world and not included in the evaluation criteria. Upon receiving data from the outer world, the agent primarily evaluates it in knowledgebase, and then evaluates it to be used in rule base and finally employs a certain evaluation process to rule bases in order to store the knowledge in task base. Meanwhile, the agent also completes the learning process. This paper presents an intelligent query answering mechanism, a process in which the agents within the multi-agent system filter and evaluate both the knowledge in databases and the knowledge received externally by the agents. The following sections include some necessary literature review and the query answering approach Then follow the future trends and the conclusion. BACKGROUND
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