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Compiling Boostexter Rules into a Finite-state Transducer

机译:将Boostexter规则编译成有限状态传感器

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摘要

A number of NLP tasks have been effectively modeled as classification tasks using a variety of classification techniques. Most of these tasks have been pursued in isolation with the classifier assuming unambiguous input. In order for these techniques to be more broadly applicable, they need to be extended to apply on weighted packed representations of ambiguous input. One approach for achieving this is to represent the classification model as a weighted finite-state transducer (WFST). In this paper, we present a compilation procedure to convert the rules resulting from an AdaBoost classifier into an WFST. We validate the compilation technique by applying the resulting WFST on a call-routing application.
机译:使用各种分类技术,已将许多NLP任务有效地建模为分类任务。这些任务大多数都是在分类器假定输入明确的情况下单独进行的。为了使这些技术更广泛地适用,需要对其进行扩展以应用于歧义输入的加权打包表示。实现此目的的一种方法是将分类模型表示为加权有限状态换能器(WFST)。在本文中,我们提出了一种编译过程,可将AdaBoost分类器生成的规则转换为WFST。我们通过将生成的WFST应用于呼叫路由应用程序来验证编译技术。

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