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Applying Stacking and Corpus Transformation to a Chunking Task

机译:将堆叠和语料库转换应用于块根任务

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In this paper we present an application of the stacking technique to a chunking task: named entity recognition. Stacking consists in applying machine learning techniques for combining the results of different models. Instead of using several corpus or several tagger generators to obtain the models needed in stacking, we have applied three transformations to a single training corpus and then we have used the four versions of the corpus to train a single tagger generator. Taking as baseline the results obtained with the original corpus (F_(β=1) value of 81.84), our experiments show that the three transformations improve this baseline (the best one reaches 84.51), and that applying stacking also improves this baseline reaching an F_(β=1) measure of 88.43.
机译:在本文中,我们将堆叠技术应用于块任务:命名实体识别。堆叠包括应用机器学习技术,以组合不同模型的结果。而不是使用多个语料库或几个标签生成器来获取堆叠所需的模型,而是将三个转换应用于单个培训语料库,然后我们使用了四个版本的语料库来训练单个标记发生器。作为基线,用原始语料库获得的结果(F_(β= 1)值为81.84),我们的实验表明,三种变换改善了这一基线(最好的一个达到84.51),并且应用堆叠也改善了该基线到达了这一基线F_(β= 1)测量为88.43。

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