Node Classification through Graph Embedding Techniques

Karedla Sai Pranathi, C. Prathibhamol
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引用次数: 2

Abstract

The purpose of this paper is to collate advanced embedding techniques for the classification of nodes with the help of state-of-art technology named JDeep LearningJ, The main agenda of this classification is to predict the most likely labels of nodes in the network. It is considered to be efficient only if the network dimension is reduced before predicting the labels. Hence, the graph embedding technique is used to reduce it to a low-dimensional network. It also helps to capture and preserve the structure of a network. Comparison is done using various available graph embedding techniques to observe the accuracy.
基于图嵌入技术的节点分类
本文的目的是在最新技术JDeep LearningJ的帮助下整理节点分类的先进嵌入技术,该分类的主要议程是预测网络中最可能的节点标签。只有在预测标签之前降低网络维数,才被认为是有效的。因此,采用图嵌入技术将其降维为低维网络。它还有助于捕获和保存网络的结构。使用各种可用的图嵌入技术进行比较,以观察其准确性。
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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