Natural language spoken interface control using data-driven semantic inference

J. Bellegarda, Kim E. A. Silverman
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引用次数: 17

Abstract

Spoken interaction tasks are typically approached using a formal grammar as language model. While ensuring good system performance, this imposes a rigid framework on users, by implicitly forcing them to conform to a pre-defined interaction structure. This paper introduces the concept of data-driven semantic inference, which in principle allows for any word constructs in command/query formulation. Each unconstrained word string is automatically mapped onto the intended action through a semantic classification against the set of supported actions. As a result, it is no longer necessary for users to memorize the exact syntax of every command. The underlying (latent semantic analysis) framework relies on co-occurrences between words and commands, as observed in a training corpus. A suitable extension can also handle commands that are ambiguous at the word level. The behavior of semantic inference is characterized using a desktop user interface control task involving 113 different actions. Under realistic usage conditions, this approach exhibits a 2 to 5% classification error rate. Various training scenarios of increasing scope are considered to assess the influence of coverage on performance. Sufficient semantic knowledge about the task domain is found to be captured at a level of coverage as low as 70%. This illustrates the good generalization properties of semantic inference.
使用数据驱动语义推理的自然语言口语接口控制
口语交互任务通常使用形式化语法作为语言模型来处理。在确保良好的系统性能的同时,通过隐式地强迫用户遵守预定义的交互结构,这给用户强加了一个严格的框架。本文介绍了数据驱动语义推理的概念,该概念原则上允许命令/查询公式中的任何单词结构。每个不受约束的字串通过针对支持的操作集的语义分类自动映射到预期的操作。因此,用户不再需要记住每个命令的确切语法。底层(潜在语义分析)框架依赖于单词和命令之间的共现,正如在训练语料库中观察到的那样。合适的扩展还可以处理在单词级别上有歧义的命令。使用包含113种不同动作的桌面用户界面控制任务来表征语义推理的行为。在实际使用条件下,这种方法显示出2%到5%的分类错误率。考虑了各种范围不断扩大的训练场景,以评估覆盖率对性能的影响。发现在低至70%的覆盖率水平上捕获了关于任务域的足够的语义知识。这说明了语义推理的良好泛化特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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