Graph-based Security and Privacy Analytics via Collective Classification with Joint Weight Learning and Propagation
Binghui Wang, Jinyuan Jia, Neil Zhenqiang Gong

TL;DR
This paper introduces a novel collective classification framework for graph-based security and privacy analytics that jointly learns edge weights and propagates reputation scores, improving accuracy over existing methods.
Contribution
The paper proposes a new joint learning framework that optimizes edge weights and reputation propagation simultaneously for better classification accuracy.
Findings
Achieves higher accuracy than state-of-the-art methods.
Demonstrates effectiveness on large-scale real-world datasets.
Maintains acceptable computational overhead.
Abstract
Many security and privacy problems can be modeled as a graph classification problem, where nodes in the graph are classified by collective classification simultaneously. State-of-the-art collective classification methods for such graph-based security and privacy analytics follow the following paradigm: assign weights to edges of the graph, iteratively propagate reputation scores of nodes among the weighted graph, and use the final reputation scores to classify nodes in the graph. The key challenge is to assign edge weights such that an edge has a large weight if the two corresponding nodes have the same label, and a small weight otherwise. Although collective classification has been studied and applied for security and privacy problems for more than a decade, how to address this challenge is still an open question. In this work, we propose a novel collective classification framework to…
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Taxonomy
TopicsSpam and Phishing Detection · Advanced Graph Neural Networks · Complex Network Analysis Techniques
