口语处理的积极方法

Dilek Z. Hakkani-Tür, G. Riccardi, Gökhan Tür
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引用次数: 31

摘要

最先进的数据驱动语音和语言处理系统需要大量的人工干预,从数据注释到系统原型。在传统的监督被动方法中,系统在给定数量的带注释的数据样本上进行训练,并使用单独的测试集进行评估。然后任意收集更多的数据,进行注释,重复整个循环。在本文中,我们提出了主动方法,即系统自己选择自己的训练数据,评估自己并在必要时重新训练。我们首先采用主动学习,其目的是自动选择可能是给定任务中信息量最大的示例。我们使用主动学习来选择要标记的例子和重新标记的例子,以纠正标记错误。此外,系统通过主动评估来自动评估自身,以跟踪意外事件,并根据需要决定标记更多的示例。主动方法使口语处理系统能够动态适应非平稳输入的未见或意外事件,同时显着减少手动注释工作。我们已经评估了AT&T用于客户服务应用程序的语音对话系统的主动方法。在这篇文章中,我们展示了自动语音识别和口语理解的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An active approach to spoken language processing
State of the art data-driven speech and language processing systems require a large amount of human intervention ranging from data annotation to system prototyping. In the traditional supervised passive approach, the system is trained on a given number of annotated data samples and evaluated using a separate test set. Then more data is collected arbitrarily, annotated, and the whole cycle is repeated. In this article, we propose the active approach where the system itself selects its own training data, evaluates itself and re-trains when necessary. We first employ active learning which aims to automatically select the examples that are likely to be the most informative for a given task. We use active learning for both selecting the examples to label and the examples to re-label in order to correct labeling errors. Furthermore, the system automatically evaluates itself using active evaluation to keep track of the unexpected events and decides on-demand to label more examples. The active approach enables dynamic adaptation of spoken language processing systems to unseen or unexpected events for nonstationary input while reducing the manual annotation effort significantly. We have evaluated the active approach with the AT&T spoken dialog system used for customer care applications. In this article, we present our results for both automatic speech recognition and spoken language understanding.
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