Learning contextual rules for document understanding

G. Semeraro, F. Esposito, D. Malerba
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引用次数: 9

Abstract

We propose a supervised inductive learning approach for the problem of document understanding, that is, recognizing logical components of a document. For this purpose, FOCL and NDUBI/H, two systems that learn Horn clauses, have been employed. Several experimental results are reported and a critical view of the underlying independence assumption, made by almost all systems that learn from examples, is presented. This led us to redefine the problem of document understanding in terms of a new strategy of supervised inductive learning, called contextual learning. Experiments, in which a dependency hierarchy between concepts is defined, show that contextual rules increase predictive accuracy and decrease learning time for labelling problems, like document understanding. Encouraging results have been obtained when we tried to discover a linear dependency order by means of statistical methods.<>
学习文档理解的上下文规则
我们提出了一种有监督的归纳学习方法来解决文档理解问题,即识别文档的逻辑组件。为此,我们使用了FOCL和NDUBI/H这两个学习霍恩分句的系统。报告了几个实验结果,并提出了对几乎所有从实例中学习的系统所做的潜在独立性假设的批判观点。这导致我们根据一种新的监督归纳学习策略(称为上下文学习)来重新定义文档理解问题。定义概念之间依赖层次的实验表明,上下文规则提高了预测的准确性,减少了标签问题(如文档理解)的学习时间。当我们试图用统计方法发现线性依赖顺序时,得到了令人鼓舞的结果。
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