使用不同分类器发现IMRaD结构

Sergio Ribeiro, Jingtao Yao, D. Rezende
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引用次数: 6

摘要

在世界各地的科学期刊上发表的论文中的信息以引言、方法、结果和结论(IMRaD)的格式组织。人类的阅读和分析能力无法处理如此大量的信息。如果我们能够识别出结构,并将其提取给需要部分结构的用户,特别是一篇外语文章,将节省时间。机器学习(ML)和自然语言处理(NLP)等计算方法已广泛用于类似目的。然而,确定哪一个或哪一组分类器更适合特定类型的问题是非常重要的。这项工作的目的是通过分析和比较不同ML分类器产生的结果来识别适用的分类器,这些分类器用于将论文摘要中的句子定位和分类到IMRaD结构中。这项工作展示了基于IMRaD结构的文章句子分类中整合ML和NLP的可能性。它还验证了在不需要太多计算资源的情况下,通过简单的实现可以获得良好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovering IMRaD Structure with Different Classifiers
Information within published papers around the world in scientific journals are structured in the format of Introduction, Methodology, Results, and Conclusion (IMRaD). Human ability to read and analyze is not capable of processing these large amounts of information. If we could identify the structure and consequently extract it to a user who needs a part of the structure, particularly an article in a foreign language, time will be saved as result. Computational approaches like Machine Learning (ML) and Natural Language Processing (NLP) have been widely used for similar purposes. However, it is very important to identify which one, or which group of classifiers work better for a specific kind of problem. The objective of this work is to identify applicable classifiers by analyzing and comparing results produced by different ML classifiers used in locating and classifying sentences from abstract of a paper into the IMRaD structure. This work demonstrates the possibility of integrating ML and NLP for the articles' sentence classification based on the IMRaD structure. It also verifies that it is possible to achieve good results with simple implementations without the need of too many computational resources.
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