ONYX:通过多模态交互任务学习,帮助用户教授自然语言界面

Marcel Ruoff, B. Myers, A. Maedche
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引用次数: 1

摘要

用户越来越有能力通过教授如何处理新的自然语言(NL)输入来个性化自然语言界面(nli)。然而,我们的形成性研究发现,在教授新的NLI输入时,用户需要帮助来澄清出现的歧义,并希望了解NLI理解输入的哪些部分。在本文中,我们介绍了ONYX,它是一个智能代理,通过结合自然语言编程和演示编程来交互式地学习新的自然语言输入,也称为多模态交互式任务学习。为了解决上述挑战,ONYX提供了关于ONYX如何基于先前学习的概念或用户定义的过程处理新的自然语言输入的建议,并提出后续问题以澄清用户演示中的歧义,使用视觉和文本辅助来澄清连接。我们的评估显示,与没有提供ONYX新功能的用户(中位数:73.3%)相比,提供ONYX新功能的用户在教授新的NL输入方面取得了显著更高的准确性(中位数:93.3%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ONYX: Assisting Users in Teaching Natural Language Interfaces Through Multi-Modal Interactive Task Learning
Users are increasingly empowered to personalize natural language interfaces (NLIs) by teaching how to handle new natural language (NL) inputs. However, our formative study found that when teaching new NL inputs, users require assistance in clarifying ambiguities that arise and want insight into which parts of the input the NLI understands. In this paper we introduce ONYX, an intelligent agent that interactively learns new NL inputs by combining NL programming and programming-by-demonstration, also known as multi-modal interactive task learning. To address the aforementioned challenges, ONYX provides suggestions on how ONYX could handle new NL inputs based on previously learned concepts or user-defined procedures, and poses follow-up questions to clarify ambiguities in user demonstrations, using visual and textual aids to clarify the connections. Our evaluation shows that users provided with ONYX’s new features achieved significantly higher accuracy in teaching new NL inputs (median: 93.3%) in contrast to those without (median: 73.3%).
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