Active Learning on Heterogeneous Information Networks: A Multi-armed Bandit Approach

Doris Xin, Ahmed El-Kishky, De Liao, Brandon Norick, Jiawei Han
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引用次数: 7

Abstract

Active learning exploits inherent structures in the unlabeled data to minimize the number of labels required to train an accurate model. It enables effective machine learning in applications with high labeling cost, such as document classification and drug response prediction. We investigate active learning on heterogeneous information networks, with the objective of obtaining accurate node classifications while minimizing the number of labeled nodes. Our proposed algorithm harnesses a multi-armed bandit (MAB) algorithm to determine network structures that identify the most important nodes to the classification task, accounting for node types and without assuming label assortativity. Evaluations on real-world network classification tasks demonstrate that our algorithm outperforms existing methods independent of the underlying classification model.
异构信息网络上的主动学习:一种多臂强盗方法
主动学习利用未标记数据中的固有结构来最小化训练准确模型所需的标签数量。它可以在高标签成本的应用中实现有效的机器学习,例如文档分类和药物反应预测。我们研究了异构信息网络上的主动学习,目的是在最小化标记节点数量的同时获得准确的节点分类。我们提出的算法利用多臂强盗(MAB)算法来确定识别分类任务中最重要节点的网络结构,考虑节点类型且不假设标签分类性。对真实网络分类任务的评估表明,我们的算法优于现有的独立于底层分类模型的方法。
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