Affiliation:
1. Carnegie Mellon University
2. Technical University of Munich
3. Flipkart, India
Abstract
Given a heterogeneous network, with nodes of different types - e.g., products, users and sellers from an online recommendation site like Amazon - and labels for a few nodes ('honest', 'suspicious', etc), can we find a closed formula for Belief Propagation (BP), exact or approximate? Can we say whether it will converge?
BP, traditionally an inference algorithm for graphical models, exploits so-called "network effects" to perform graph classification tasks when labels for a subset of nodes are provided; and it has been successful in numerous settings like fraudulent entity detection in online retailers and classification in social networks. However, it does not have a closed-form nor does it provide convergence guarantees in general. We propose ZooBP, a method to perform fast BP on undirected heterogeneous graphs with provable convergence guarantees. ZooBP has the following advantages: (1)
Generality
: It works on heterogeneous graphs with multiple types of nodes and edges; (2)
Closed-form solution:
ZooBP gives a closed-form solution as well as convergence guarantees; (3)
Scalability:
ZooBP is linear on the graph size and is up to 600×
faster
than BP, running on graphs with
3.3 million edges
in a few seconds. (4)
Effectiveness:
Applied on real data (a F
lipkart
e-commerce network with users, products and sellers), ZooBP identifies fraudulent users with a near-perfect precision of
92.3 %
over the top 300 results.
Subject
General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development
Cited by
32 articles.
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