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Pattern-based rule disambiguation

机译:基于模式的规则消歧

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摘要

The biggest challenges to rules-based approaches to Natural Language Processing (NLP) are the resources required to do an exhaustive search for rule-matching, and the decision to select the optimal rule when there are multiple possible matches. In this paper, we propose a novel approach named pattern-based rule disambiguation (PRD) to face these challenges. PRD helps to determine which rule is activated by a pattern when the pattern activates more than one rule. To tackle this task, we first collect and annotate the samples following the same pattern, but activating different rules; Then, we leverage the corpus to train a statistic classifier to disambiguate the pattern. This new approach is applied to the task of emotion cause detection, adopting a linguistic rule-drive paradigm which was the only one available for this task. The experimental results demonstrated the effectiveness of our PRD approach and offered a promising solution of the resolution of multiple-matched rules challenge for future NLP tasks.
机译:基于规则的自然语言处理方法(NLP)的最大挑战是对规则匹配的详尽搜索所需的资源,以及当有多个可能的匹配时选择最佳规则的决定。在本文中,我们提出了一种名为基于模式的规则歧义(PRD)的新型方法,以面对这些挑战。 PRD有助于确定模式激活多个规则的模式是否通过模式激活了该规则。为了解决这项任务,我们首先通过相同的模式收集并注释样本,但激活不同的规则;然后,我们利用语料库培训统计分类器来消除模式。这种新方法适用于情绪导致检测的任务,采用语言规则驱动范例,这是唯一可用此任务的范式。实验结果表明了我们的PRD方法的有效性,并为未来的NLP任务提供了有希望的多匹配规则挑战的解决方案。

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