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HeteClass: A Meta-path based framework for transductive classification of objects in heterogeneous information networks

机译:HeteClass:基于Meta-path的框架,用于异构信息网络中对象的转导分类

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Transductive classification using labeled and unlabeled objects in a heterogeneous information network for knowledge extraction is an interesting and challenging problem. Most of the real-world networks are heterogeneous in their natural setting and traditional methods of classification for homogeneous networks are not suitable for heterogeneous networks. In a heterogeneous network, various meta-paths connecting objects of the target type, on which classification is to be performed, make the classification task more challenging. The semantic of each meta-path would lead to the different accuracy of classification. Therefore, weight learning of meta-paths is required to leverage their semantics simultaneously by a weighted combination. In this work, we propose a novel meta-path based framework, HeteClass, for transductive classification of target type objects. HeteClass explores the network schema of the given network and can also incorporate the knowledge of the domain expert to generate a set of meta-paths. The regularization based weight learning method proposed in HeteClass is effective to compute the weights of symmetric as well as asymmetric meta-paths in the network, and the weights generated are consistent with the real-world understanding. Using the learned weights, a homogeneous information network is formed on target type objects by the weighted combination, and transductive classification is performed. The proposed framework HeteClass is flexible to utilize any suitable classification algorithm for transductive classification and can be applied on heterogeneous information networks with arbitrary network schema. Experimental results show the effectiveness of the HeteClass for classification of unlabeled objects in heterogeneous information networks using real-world data sets. (C) 2016 Elsevier Ltd. All rights reserved.
机译:在异构信息网络中使用标记和未标记的对象进行知识分类的转导分类是一个有趣且具有挑战性的问题。大多数现实世界的网络在其自然环境中都是异构的,因此,同类网络的传统分类方法不适合异构网络。在异构网络中,连接要执行分类的目标类型的对象的各种元路径使分类任务更具挑战性。每个元路径的语义将导致分类的准确性不同。因此,需要对元路径进行权重学习,以通过加权组合同时利用其语义。在这项工作中,我们提出了一个新颖的基于元路径的框架HeteClass,用于目标类型对象的转导分类。 HeteClass探索给定网络的网络架构,也可以结合领域专家的知识来生成一组元路径。 HeteClass中提出的基于正则化的权重学习方法可以有效地计算网络中对称元路径和非对称元路径的权重,并且所产生的权重与现实世界的理解相符。使用所学习的权重,通过加权组合在目标类型对象上形成同类信息网络,并进行转导分类。所提出的框架HeteClass可以灵活地利用任何合适的分类算法进行转导分类,并且可以应用于具有任意网络模式的异构信息网络。实验结果表明,HetClass对于使用真实数据集对异构信息网络中未标记对象进行分类的有效性。 (C)2016 Elsevier Ltd.保留所有权利。

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