依赖关系对姿态检测有帮助吗?

A. T. Cignarella, C. Bosco, Paolo Rosso
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引用次数: 1

摘要

在本文中,我们提出了一组多语言实验,处理五种不同语言的姿态检测任务:英语,西班牙语,加泰罗尼亚语,法语和意大利语。此外,我们研究了关于六个不同目标的立场现象-每种语言一个,意大利语两个不同-采用各种机器学习算法,主要利用形态和句法知识作为特征,在整个通用依赖关系格式中表示。结果似乎表明所采用的方法本身没有好处,但是用不同的方法利用相同的特性可能是有用的。
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Do Dependency Relations Help in the Task of Stance Detection?
In this paper we present a set of multilingual experiments tackling the task of Stance Detection in five different languages: English, Spanish, Catalan, French and Italian. Furthermore, we study the phenomenon of stance with respect to six different targets – one per language, and two different for Italian – employing a variety of machine learning algorithms that primarily exploit morphological and syntactic knowledge as features, represented throughout the format of Universal Dependencies. Results seem to suggest that the methodology employed is not beneficial per se, but might be useful to exploit the same features with a different methodology.
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