Comparative Study of Inductive Graph Neural Network Models for Text Classification

Saran Pandian, Uttkarsh Chaurasia, Shudhanshu Ranjan, Shefali Saxena
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Abstract

Graph neural networks(GNN) are a special variant of neural networks which help in dealing with unstructured data such as graph data. The advent of the GNN has helped in dealing with problems in different domains, especially in the domain of Natural Language Processing(NLP). In NLP, GNNs are used to implement tasks such as text classification which has a wide variety of applications. There are two ways to represent the text data using GNN namely, Inductive and transductive. In this paper, we apply the approach of the inductive model using different variants of GNN. We observed that the GAT variant gave better performance compared to other variants. Moreover, we observed that the complexity of the model and the dataset size influences the entropy of the output.
文本分类中归纳图神经网络模型的比较研究
图神经网络(GNN)是神经网络的一种特殊变体,用于处理非结构化数据,如图数据。GNN的出现有助于处理不同领域的问题,特别是在自然语言处理(NLP)领域。在自然语言处理中,gnn用于实现文本分类等具有广泛应用的任务。使用GNN表示文本数据有两种方法,即归纳和转换。在本文中,我们将归纳模型的方法应用于GNN的不同变体。我们观察到,与其他变体相比,GAT变体具有更好的性能。此外,我们观察到模型的复杂性和数据集的大小影响输出的熵。
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