...
首页> 外文期刊>International journal of human-computer studies >A framework and computer system for knowledge-level acquisition, representation, and reasoning with process knowledge
【24h】

A framework and computer system for knowledge-level acquisition, representation, and reasoning with process knowledge

机译:一种框架和计算机系统,用于使用过程知识进行知识级的获取,表示和推理

获取原文
获取原文并翻译 | 示例
           

摘要

The development of knowledge-based systems is usually approached through the combined skills of software and knowledge engineers (SEs and KEs, respectively) and of subject matter experts (SMEs). One of the most critical steps in this task aims at transferring knowledge from SMEs' expertise to formal, machine-readable representations, which allow systems to reason with such knowledge. However, this process is costly and error prone. Alleviating such knowledge acquisition bottleneck requires enabling SMEs with the means to produce the target knowledge representations, minimizing the intervention of KEs. This is especially difficult in the case of complex knowledge types like processes. The analysis of scientific domains like Biology, Chemistry, and Physics uncovers: (i) that process knowledge is the single most frequent type of knowledge occurring in such domains and (ii) specific solutions need to be devised in order to allow SMEs to represent it in a computational form. We present a framework and computer system for the acquisition and representation of process knowledge in scientific domains by SMEs. We propose methods and techniques to enable SMEs to acquire process knowledge from the domains, to formally represent it, and to reason about it. We have developed an abstract process metamodel and a library of problem solving methods (PSMs), which support these tasks, respectively providing the terminology for SME-tailored process diagrams and an abstract formalization of the strategies needed for reasoning about processes. We have implemented this approach as part of the DarkMatter system and formally evaluated it in the context of the intermediate evaluation of Project Halo, an initiative aiming at the creation of question answering systems by SMEs.
机译:基于知识的系统的开发通常通过软件和知识工程师(分别为SE和KE)和主题专家(SME)的综合技能来实现。此任务中最关键的步骤之一是将知识从中小型企业的专业知识转移到正式的,机器可读的表示形式,使系统可以使用此类知识进行推理。但是,该过程成本高且容易出错。要缓解这种知识获取瓶颈,就需要使中小型企业具备产生目标知识表示的手段,从而最大程度地减少对关键企业的干预。在诸如流程之类的复杂知识类型的情况下,这尤其困难。对生物学,化学和物理等科学领域的分析发现:(i)过程知识是此类领域中最常见的知识类型,并且(ii)需要设计特定的解决方案以使中小型企业能够代表它以计算形式。我们为中小企业提供了一个框架和计算机系统,用于在科学领域中获取和表示过程知识。我们提出了一些方法和技术,以使中小型企业能够从各个领域获取过程知识,对其进行正式表示并对其进行推理。我们已经开发了支持这些任务的抽象过程元模型和问题解决方法(PSM)库,分别为SME量身定制的过程图提供了术语,并对过程推理所需的策略进行了抽象形式化。我们已将此方法作为DarkMatter系统的一部分实施,并在晕轮计划的中间评估范围内对其进行了正式评估,该计划旨在由中小型企业创建问答系统。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号