Deep Learning meets Knowledge Graphs for Scholarly Data Classification

Fabian Hoppe, D. Dessí, Harald Sack
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引用次数: 9

Abstract

The amount of scientific literature continuously grows, which poses an increasing challenge for researchers to manage, find and explore research results. Therefore, the classification of scientific work is widely applied to enable the retrieval, support the search of suitable reviewers during the reviewing process, and in general to organize the existing literature according to a given schema. The automation of this classification process not only simplifies the submission process for authors, but also ensures the coherent assignment of classes. However, especially fine-grained classes and new research fields do not provide sufficient training data to automatize the process. Additionally, given the large number of not mutual exclusive classes, it is often difficult and computationally expensive to train models able to deal with multi-class multi-label settings. To overcome these issues, this work presents a preliminary Deep Learning framework as a solution for multi-label text classification for scholarly papers about Computer Science. The proposed model addresses the issue of insufficient data by utilizing the semantics of classes, which is explicitly provided by latent representations of class labels. This study uses Knowledge Graphs as a source of these required external class definitions by identifying corresponding entities in DBpedia to improve the overall classification.
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深度学习满足知识图的学术数据分类
科学文献的数量不断增长,这对科研人员管理、发现和探索科研成果提出了越来越大的挑战。因此,科学作品的分类被广泛应用于检索,支持在审稿过程中寻找合适的审稿人,并根据给定的模式组织现有文献。这个分类过程的自动化不仅简化了作者的提交过程,而且还确保了类的一致分配。然而,特别是细粒度类和新的研究领域并没有提供足够的训练数据来自动化这个过程。此外,考虑到大量的非互斥类,训练能够处理多类多标签设置的模型通常是困难的,并且计算成本很高。为了克服这些问题,本工作提出了一个初步的深度学习框架,作为计算机科学学术论文的多标签文本分类的解决方案。提出的模型通过利用类的语义来解决数据不足的问题,类的语义是由类标签的潜在表示明确提供的。本研究使用知识图作为这些所需的外部类定义的来源,通过在DBpedia中识别相应的实体来改进总体分类。
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