在序列标记解析中,并非所有的线性化都同样需要数据

Alberto Muñoz-Ortiz, Michalina Strzyz, David Vilares
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引用次数: 5

摘要

已经提出了不同的线性化,将依赖解析转换为序列标记,并将任务解决为:(i)头部选择问题,(ii)寻找标记弧作为括号字符串的表示,或(iii)将基于转换的解析器的部分转换序列关联到单词。然而,人们对这些线性化在低资源环境下的表现知之甚少。在这里,我们首先研究它们的数据效率,模拟来自各种丰富资源树库的数据限制设置。其次,我们测试这些差异是否在真正的低资源设置中表现出来。结果表明,头部选择编码在理想(黄金)框架中具有更高的数据效率和更好的性能,但是当运行设置类似于现实世界的低资源配置时,这种优势在括号格式中大大消失。
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Not All Linearizations Are Equally Data-Hungry in Sequence Labeling Parsing
Different linearizations have been proposed to cast dependency parsing as sequence labeling and solve the task as: (i) a head selection problem, (ii) finding a representation of the token arcs as bracket strings, or (iii) associating partial transition sequences of a transition-based parser to words. Yet, there is little understanding about how these linearizations behave in low-resource setups. Here, we first study their data efficiency, simulating data-restricted setups from a diverse set of rich-resource treebanks. Second, we test whether such differences manifest in truly low-resource setups. The results show that head selection encodings are more data-efficient and perform better in an ideal (gold) framework, but that such advantage greatly vanishes in favour of bracketing formats when the running setup resembles a real-world low-resource configuration.
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