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Enhanced discriminative models with tree kernels and unsupervised training for entity detection

机译:增强具有树内核和无监督培训的实体检测的判别歧视模型

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This work explores two approaches to improve the discriminative models that are commonly used nowadays for entity detection: tree-kernels and unsupervised training. Feature-rich classifiers have been widely adopted by the Natural Language processing (NLP) community because of their powerful modeling capacity and their support for correlated features, which allow separating the expert task of designing features from the core learning method. The first proposed approach consists in leveraging the fast and efficient linear models with unsupervised training, thanks to a recently proposed approximation of the classifier risk, an appealing method that provably converges towards the minimum risk without any labeled corpus. In the second proposed approach, tree kernels are used with support vector machines to exploit dependency structures for entity detection, which relieve designers from the burden of carefully design rich syntactic features manually. We study both approaches on the same task and corpus and show that they offer interesting alternatives to supervised learning for entity recognition.
机译:这项工作探讨了两种方法,以改善目前实体检测的常用歧视模型:树内核和无监督的培训。自然语言处理(NLP)社区已广泛采用特征的分类器,因为它们强大的建模能力及其对相关特征的支持,这允许将专家任务从核心学习方法分开。第一个拟议的方法包括利用快速高效的线性模型,由于最近提出的分类器风险的近似,这是一种吸引人的方法,这些方法可从无任何标记的语料库中达到最小风险。在第二个提出的方法中,树内核与支持向量机一起使用,以利用实体​​检测的依赖性结构,该依赖于实体检测,从手动设计仔细设计丰富的句法特征的负担中释放设计者。我们研究了同一任务和语料库的方法,并表明他们为监督实体认可的学习提供有趣的替代方案。

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