使用基于本体反馈的自适应多智能体系统进化本体

Souad Benomrane, Zied Sellami, Mounir Ben Ayed
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引用次数: 1

摘要

在不断变化的环境中,有必要根据新的知识和用户需求对本体进行更新。然而,本体演化仍然是一项耗时且复杂的任务。在本文中,我们提出了一种基于自适应多智能体系统(AMAS)的早期本体进化工作的扩展方法。事实上,我们寻求将AMAS提出的结果个性化到本体反馈。首先,我们通过自适应行为增强智能体,使它们能够对本体的反馈做出反应。本体论家对AMAS的建议给出他/她的行动(基本的和复合的改变)。他/她还可以添加新的术语和概念。然后,AMAS反应并自组织以产生包含新建议的更新本体。这个过程不断重复,直到获得令人满意的本体状态。实验证明,我们在智能体中加入的自适应技巧可以帮助智能体发现一些建议的无用性,避免无用和错误的建议,并提出其他建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolving ontologies using an adaptive multi-agent system based on ontologist-feedback
In a changing environment, it is necessary to update the ontology to new knowledge and user needs. However, ontology evolution is still a time-consuming and complex task. In this paper we propose an extended approach of an earlier work in ontology evolution based on an adaptive multi-agent system (AMAS). In fact, we seek to personalize the results proposed by the AMAS to the ontologist-feedback. First, we enhance the agents with an adaptive behavior enabling them to react to the ontologist's feedback. The ontologist gives his/her action (elementary and composite changes) towards the AMAS proposals. He/She can also add new terms and concepts. Then, the AMAS reacts and self-organizes to produce an updated ontology with new proposals. This process is repeated until a satisfactory state of the ontology is obtained. The experiments prove that the adaptive skills we added to agents help them to detect the uselessness of some proposals, to avoid the useless and wrong ones and to propose others.
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