Meta Path-Based Collective Classification in Heterogeneous Information Networks
Xiangnan Kong, Bokai Cao, Philip S. Yu, Ying Ding, David J. Wild

TL;DR
This paper introduces a novel meta-path-based approach for collective classification in heterogeneous networks, capturing complex dependencies among objects through different semantic paths to improve label prediction accuracy.
Contribution
It proposes a new method, HCC, that leverages meta-paths to model diverse dependencies among objects in heterogeneous networks for collective classification.
Findings
HCC effectively captures multiple dependency types.
Meta-path selection significantly impacts classification accuracy.
Empirical results show improved performance over existing methods.
Abstract
Collective classification has been intensively studied due to its impact in many important applications, such as web mining, bioinformatics and citation analysis. Collective classification approaches exploit the dependencies of a group of linked objects whose class labels are correlated and need to be predicted simultaneously. In this paper, we focus on studying the collective classification problem in heterogeneous networks, which involves multiple types of data objects interconnected by multiple types of links. Intuitively, two objects are correlated if they are linked by many paths in the network. However, most existing approaches measure the dependencies among objects through directly links or indirect links without considering the different semantic meanings behind different paths. In this paper, we study the collective classification problem taht is defined among the same type of…
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Taxonomy
TopicsComplex Network Analysis Techniques · Advanced Graph Neural Networks · Data Stream Mining Techniques
