自然语言呼叫路由器的判别训练

H. Kuo, Chin-Hui Lee
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引用次数: 65

摘要

本文展示了判别训练如何显著改善自然语言处理中使用的分类器,并以自然语言呼叫路由任务为例,在该任务中,根据对开放式“我如何为您转接电话?”提示的自然口头反应,将呼叫者转移到所需的部门。在基于向量的自然语言呼叫路由中,使用基于训练语料库中单词和单词序列出现统计数据训练的路由矩阵来转移呼叫者。通过使用最小分类误差标准对路由矩阵参数进行重新训练,将银行任务的相对错误率降低了10-30%。增强的鲁棒性表明,10%的拒绝,错误率降低了40%。判别性训练也提高了可移植性;我们能够训练具有最高已知性能的呼叫路由器,只使用路由呼叫的文本转录作为输入,而不需要任何人为干预或了解哪些术语对路由任务重要或无关。这一策略在银行业务任务和一项更困难的任务中得到了验证,这项任务涉及给英国的运营商打电话。所提出的公式适用于解决广泛的语音理解、信息检索和主题识别问题的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discriminative training of natural language call routers
This paper shows how discriminative training can significantly improve classifiers used in natural language processing, using as an example the task of natural language call routing, where callers are transferred to desired departments based on natural spoken responses to an open-ended "How may I direct your call?" prompt. With vector-based natural language call routing, callers are transferred using a routing matrix trained on statistics of occurrence of words and word sequences in a training corpus. By re-training the routing matrix parameters using a minimum classification error criterion, a relative error rate reduction of 10-30% was achieved on a banking task. Increased robustness was demonstrated in that with 10% rejection, the error rate was reduced by 40%. Discriminative training also improves portability; we were able to train call routers with the highest known performance using as input only text transcription of routed calls, without any human intervention or knowledge about what terms are important or irrelevant for the routing task. This strategy was validated with both the banking task and a more difficult task involving calls to operators in the UK. The proposed formulation is applicable to algorithms addressing a broad range of speech understanding, information retrieval, and topic identification problems.
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