基于信息性的图:探索相互kNN和标记顶点的半监督学习

Lilian Berton, A. Lopes
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引用次数: 5

摘要

数据存储库越来越大,在大多数情况下,只有一小部分数据项被标记。在这种情况下,半监督学习(SSL)技术变得非常重要。在这些算法中,基于图的算法在该领域得到了突出的应用。基于图的SSL方法中的一个重要步骤是将表格数据转换为加权图。然而,大多数SSL文献都侧重于开发标签推理算法,而没有研究图构造方法及其对基本算法性能的影响。本文提出了一种利用互kNN和标记顶点构建图的新技术。先验信息的使用,即考虑标记顶点的一小部分,在SSL文献中尚未得到充分的探讨,相互kNN仅在聚类中得到了探讨。当将所提出的图应用于标签传播任务时,对其精度的实证评估显示出有希望的结果。此外,所得网络的平均度比kNN网络低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Informativity-based graph: Exploring mutual kNN and labeled vertices for semi-supervised learning
Data repositories are getting larger and in most of the cases, only a small subset of their data items is labeled. In such scenario semi-supervised learning (SSL) techniques have become very relevant. Among these algorithms, those based on graphs have gained prominence in the area. An important step in graph-based SSL methods is the conversion of tabular data into a weighted graph. However, most of the SSL literature focuses on developing label inference algorithms without studying graph construction methods and its effect on the base algorithm performance. This paper provides a novel technique for building graph by using mutual kNN and labeled vertices. The use of prior information, i.e., to consider the small fraction of labeled vertices, has been underexplored in SSL literature and mutual kNN has been only explored in clustering. The empirical evaluation of the proposed graph showed promising results in terms of accuracy, when it is applied to the label propagation task. Additionally, the resultant networks have lower average degree than kNN networks.
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