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Partial Or Complete, That Is The Question

机译:部分或完整,这是问题

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For many structured learning tasks, the data annotation process is complex and costly. Existing annotation schemes usually aim at acquiring completely annotated structures, under the common perception that partial structures are of low quality and could hurt the learning process. This paper questions this common perception, motivated by the fact that structures consist of interdependent sets of variables. Thus, given a fixed budget, partly annotating each structure may provide the same level of supervision, while allowing for more structures to be annotated. We provide an information theoretic formulation for this perspective and use it, in the context of three diverse structured learning tasks, to show that learning from partial structures can sometimes outperform learning from complete ones. Our findings may provide important insights into structured data annotation schemes and could support progress in learning protocols for structured tasks.
机译:对于许多结构化学习任务,数据注释过程复杂且昂贵。现有的注释方案通常旨在获得完全注释的结构,根据惯性结构质量低,可能损害学习过程的常见感知。本文提出了这种常见的感知,其使结构包括相互依存的变量组。因此,给定固定预算,部分注释每个结构可以提供相同的监督水平,同时允许更多的结构注释。我们为此的视角提供了一个信息理论制定,并在三种不同的结构化学习任务的上下文中使用它,以表明从部分结构的学习有时可以从完整的方面倾斜。我们的调查结果可能会对结构化数据注释方案提供重要的见解,并可以支持用于结构化任务的学习协议的进度。

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