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Human understanding of information represented in natural versus artificial language (Poster)

机译:人类理解自然与人工语言(海报)表示的信息

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In this paper we compare human understanding of information represented in a natural language (NL) to a type of artificial language, called a Controlled Natural Language (CNL). Potential applications for CNLs include decision support and conversational agents, but currently there is limited empirical research on the understandability of CNLs for untrained humans. We investigate a particular type of CNL, called Controlled English (CE), which was designed to be a simplified, artificial subset of natural language that is both human readable and unambiguous for fast and accurate machine processing. We quantify and compare human understanding of NL and CE using accuracy and speed for language statements. The statements described entities (people and objects) and relations (actions) among entities with the ground-truth represented using visual diagrams. Participants responded whether the statements matched the diagram (yes/no). In Experiment I, we found accuracy for NL and CE was comparable, although the speed for understanding CE was slower. To further examine the role of speed, we induced time pressure in Experiment II. We found both the accuracy and speed for CE was lower than NL. These results indicate that if people have sufficient time, understanding for CE can be equivalent to NL. However, with limited time the accuracy and speed for understanding NL is better than CE. Our findings indicate that both accuracy and speed of CNLs should be evaluated. Furthermore, under time pressure there can be meaningful differences in accuracy and speed between different ways of representing information. Understanding for methods of representing machine information has potential implications for situation understanding and management with human-machine interaction and collaboration.
机译:在本文中,我们将人类理解以自然语言(NL)表示的信息与一种人为语言,称为受控的自然语言(CNL)。 CNLS的潜在申请包括决策支持和会话代理,但目前对未经培训人类的CNL的可理解性有限的实证研究。我们调查了一种特定类型的CNL,称为控制的英语(CE),该CNL被设计为是一种简化的人造的自然语言子集,这对于快速准确和准确的机器处理是人类可读和明确的。我们使用语言陈述的准确性和速度来量化和比较对NL和CE的人类理解。该陈述描述了实体之间的实体(人员和对象)和关系(行动),使用视图表示的地面真实。与会者回复了陈述是否匹配图(是/否)。在实验I中,我们发现NL和CE的准确性是可比的,尽管理解CE的速度较慢。为了进一步检查速度的作用,我们在实验II中诱导时间压力。我们发现CE的准确性和速度低于NL。这些结果表明,如果人们有足够的时间,对CE的理解可以相当于NL。然而,有限的时间来理解NL的准确性和速度优于CE。我们的研究结果表明,应该评估CNL的准确性和速度。此外,在时间压力下,在代表信息的不同方式之间的准确性和速度可能存在有意义的差异。理解代表机器信息的方法对与人机交互和协作的情况理解和管理具有潜在影响。

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