Word sense disambiguation via high order of learning in complex networks

T. C. Silva, D. R. Amancio
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引用次数: 42

Abstract

Complex networks have been employed to model many real systems and as a modeling tool in a myriad of applications. In this paper, we use the framework of complex networks to the problem of supervised classification in the word disambiguation task, which consists in deriving a function from the supervised (or labeled) training data of ambiguous words. Traditional supervised data classification takes into account only topological or physical features of the input data. On the other hand, the human (animal) brain performs both low- and high-level orders of learning and it has facility to identify patterns according to the semantic meaning of the input data. In this paper, we apply a hybrid technique which encompasses both types of learning in the field of word sense disambiguation and show that the high-level order of learning can really improve the accuracy rate of the model. This evidence serves to demonstrate that the internal structures formed by the words do present patterns that, generally, cannot be correctly unveiled by only traditional techniques. Finally, we exhibit the behavior of the model for different weights of the low- and high-level classifiers by plotting decision boundaries. This study helps one to better understand the effectiveness of the model.
复杂网络中基于高阶学习的词义消歧
复杂网络已被用于对许多实际系统进行建模,并在无数应用中作为建模工具。在本文中,我们使用复杂网络的框架来解决单词消歧任务中的监督分类问题,该问题包括从歧义词的监督(或标记)训练数据中导出一个函数。传统的监督数据分类只考虑输入数据的拓扑或物理特征。另一方面,人类(动物)的大脑执行低级和高级的学习顺序,并且它有能力根据输入数据的语义来识别模式。在本文中,我们在词义消歧领域应用了一种包含两种类型学习的混合技术,并证明了高阶学习确实可以提高模型的准确率。这一证据表明,词汇形成的内部结构确实呈现出一些模式,而这些模式通常仅靠传统技术是无法正确揭示的。最后,我们通过绘制决策边界来展示模型在低阶和高阶分类器不同权重下的行为。这项研究有助于人们更好地理解模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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