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Working on the argument pipeline: Throughflow issues between natural language argument, instantiated arguments, and argumentation frameworks

机译:处理论点管道:通过自然语言参数,实例化参数和论证框架之间的通过流程

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In many domains of public discourse such as arguments about public policy, there is an abundance of knowledge to store, query, and reason with. To use this knowledge, we must address two key general problems: first, the problem of the knowledge acquisition bottleneck between forms in which the knowledge is usually expressed, e.g., natural language, and forms which can be automatically processed; second, reasoning with the uncertainties and inconsistencies of the knowledge. Given such complexities, it is labour and knowledge intensive to conduct policy consultations, where participants contribute statements to the policy discourse. Yet, from such a consultation, we want to derive policy positions, where each position is a set of consistent statements, but where positions may be mutually inconsistent. To address these problems and support policy-making consultations, we consider recent automated techniques in natural language processing, instantiating arguments, and reasoning with the arguments in argumentation frameworks. We discuss application and “bridge” issues between these techniques, outlining a pipeline of technologies whereby: expressions in a controlled natural language are parsed and translated into a logic (a literals and rules knowledge base), from which we generate instantiated arguments and their relationships using a logic-based formalism (an argument knowledge base), which is then input to an implemented argumentation framework that calculates extensions of arguments (an argument extensions knowledge base), and finally, we extract consistent sets of expressions (policy positions). The paper reports progress towards reasoning with web-based, distributed, collaborative, incomplete, and inconsistent knowledge bases expressed in natural language.
机译:在公众话语的许多领域,如公共政策的论据,有丰富的知识来存储,查询和理由。要使用这些知识,我们必须解决两个关键的一般问题:第一,在通常表达知识的形式之间的知识获取瓶颈的问题,例如,可以自动处理的自然语言和形式;其次,推理不确定性和知识不一致。鉴于此类复杂性,劳动力和知识集约,以进行政策磋商,参与者为政策话语贡献陈述。然而,从这样的咨询中,我们希望派生策略职位,其中每个位置是一组一致的陈述,但位置可能相互不一致的地方。为了解决这些问题并支持政策制定咨询,我们考虑最近的自然语言处理,实例化参数和推理与论证框架中的参数中的自动化技术。我们在这些技术之间讨论应用程序和“桥梁”问题,概述了一种技术管道,由此:对受控自然语言的表达式被解析并转换为逻辑(文字和规则知识库),我们从中生成实例化参数及其关系使用基于逻辑的形式主义(参数知识库),然后输入到实现的参数框架,计算参数的扩展(参数扩展知识库),最后,我们提取一致的表达式(策略位置)。本文报告了以自然语言表达的基于网络,分布式,协作,不完整和不一致的知识库的推理进展。

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