首页> 外文会议>International conference on principles of practice in multi-agent systems;PRIMA 2009 >Case Learning in CBR-Based Agent Systems for Ship Collision Avoidance
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Case Learning in CBR-Based Agent Systems for Ship Collision Avoidance

机译:基于CBR的Agent系统中的案例学习,可避免船舶碰撞

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With the rapid development of case-based reasoning (CBR) techniques, CBR has been widely applied to real-world applications such as agent-based systems for ship collision avoidance. A successful CBR-based system relies on a high-quality case base. Automated case creation technique is highly demanded. In this paper, we propose an automated case learning method for CBR-based agent systems. Building on techniques from CBR and natural language processing, we developed a method for learning cases from maritime affair records. After reviewing the developed agent-based systems for ship collision avoidance, we present the proposed framework and the experiments conducted in case generation. The experimental results show the usefulness and applicability of case learning approach for generating cases from the historic maritime affair records.
机译:随着基于案例的推理(CBR)技术的飞速发展,CBR已广泛应用于现实应用中,例如用于避免船舶碰撞的基于代理的系统。成功的基于CBR的系统依赖于高质量的案例库。对自动案例创建技术的要求很高。在本文中,我们提出了一种基于CBR的代理系统的自动案例学习方法。基于CBR和自然语言处理的技术,我们开发了一种从海事记录中学习案例的方法。在回顾了开发的基于主体的船舶避碰系统之后,我们介绍了提出的框架和案例生成中进行的实验。实验结果表明,案例学习方法可用于根据历史性海上事件记录生成案例。

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