大规模参数可视化(LSAV)

D. Khartabil, S. Wells, J. Kennedy
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引用次数: 2

摘要

论证是支撑理性推理过程的前提和结论的结构。在复杂的知识领域中,特别是如果它们是有争议的,论证结构可能会变得庞大而复杂。可视化工具已经开发出来,支持论证分析并帮助他们处理论证。直到最近,争论都是从自然语言文本中手工分析的,或者从头开始构建的,但是新的交流模式意味着越来越多的争论和其中的争论可以被数字化捕获。此外,新的论据挖掘工具和技术开始自动化从自然语言中提取论点结构的过程;导致更大的参数数据集,这给当前一代的参数可视化工具带来了问题。此外,个别论证分析人员有不同的重点,这可能导致数据集中的复杂性增加,以及论证可视化应该考虑但没有考虑的其他方面。我们提出了一个与论证语料库交互的工具,使用户能够探索和理解大规模论证的推理结构。该工具将支持一系列交互技术,并将帮助用户探索和分析大规模的争论,以更快地理解复杂的新问题领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large-scale Argument Visualization (LSAV)
Arguments are structures of premises and conclusions that underpin rational reasoning processes. Within complex knowledge domains, especially if they are contentious, argument structures can become large and complex. Visualization tools have been developed that support argument analysts and help them to work with arguments. Until recently, arguments were manually analyzed from natural language text, or constructed from scratch, but new communication modes mean that increasing amounts of debate and the arguments therein can be captured digitally. Furthermore, new tools and techniques for argument mining are beginning to automate the process of extracting argument structure from natural language; leading to much larger argument datasets that present problems for the current generation of argument visualization tools. Additionally, individual argument analysts have different foci which can lead to increased complexity within datasets, and additional facets that argument visualizations should account for but do not. We propose a tool for interacting with argument corpora that enable users to explore and understand the reasoning structure of large-scale arguments. The tool will support a range of interactivity techniques and will help users to explore and analyse large-scale arguments, to more rapidly comprehend complex new problem domains.
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